<?xml version="1.0" encoding="UTF-8"?>
<!DOCTYPE article PUBLIC "-//NLM//DTD Journal Publishing with OASIS Tables v3.0 20080202//EN" "https://jats.nlm.nih.gov/nlm-dtd/publishing/3.0/journalpub-oasis3.dtd">
<article xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:oasis="http://docs.oasis-open.org/ns/oasis-exchange/table" xml:lang="en" dtd-version="3.0" article-type="research-article">
  <front>
    <journal-meta><journal-id journal-id-type="publisher">ACP</journal-id><journal-title-group>
    <journal-title>Atmospheric Chemistry and Physics</journal-title>
    <abbrev-journal-title abbrev-type="publisher">ACP</abbrev-journal-title><abbrev-journal-title abbrev-type="nlm-ta">Atmos. Chem. Phys.</abbrev-journal-title>
  </journal-title-group><issn pub-type="epub">1680-7324</issn><publisher>
    <publisher-name>Copernicus Publications</publisher-name>
    <publisher-loc>Göttingen, Germany</publisher-loc>
  </publisher></journal-meta>
    <article-meta>
      <article-id pub-id-type="doi">10.5194/acp-26-6449-2026</article-id><title-group><article-title>Variability of ice supersaturated regions at flight altitudes: evaluation of ERA5 reanalysis using IAGOS in situ measurements</article-title><alt-title>Variability of ice supersaturated regions at flight altitudes</alt-title>
      </title-group>
      <contrib-group>
        <contrib contrib-type="author" corresp="yes" rid="aff1">
          <name><surname>Hildebrandt</surname><given-names>Katarina Grubbe</given-names></name>
          <email>k.g.hildebrandt@tudelft.nl</email>
        <ext-link>https://orcid.org/0009-0000-7761-5001</ext-link></contrib>
        <contrib contrib-type="author" corresp="no" rid="aff1">
          <name><surname>Castino</surname><given-names>Federica</given-names></name>
          
        <ext-link>https://orcid.org/0000-0002-7069-0356</ext-link></contrib>
        <contrib contrib-type="author" corresp="no" rid="aff1">
          <name><surname>Meijer</surname><given-names>Vincent</given-names></name>
          
        </contrib>
        <contrib contrib-type="author" corresp="yes" rid="aff1">
          <name><surname>Yin</surname><given-names>Feijia</given-names></name>
          <email>f.yin@tudelft.nl</email>
        <ext-link>https://orcid.org/0000-0002-6081-9136</ext-link></contrib>
        <aff id="aff1"><label>1</label><institution>Faculty of Aerospace Engineering,  Delft University of Technology, Delft, the Netherlands</institution>
        </aff>
      </contrib-group>
      <author-notes><corresp id="corr1">Katarina Grubbe Hildebrandt (k.g.hildebrandt@tudelft.nl) and Feijia Yin (f.yin@tudelft.nl)</corresp></author-notes><pub-date><day>13</day><month>May</month><year>2026</year></pub-date>
      
      <volume>26</volume>
      <issue>9</issue>
      <fpage>6449</fpage><lpage>6470</lpage>
      <history>
        <date date-type="received"><day>26</day><month>June</month><year>2025</year></date>
           <date date-type="rev-request"><day>22</day><month>August</month><year>2025</year></date>
           <date date-type="rev-recd"><day>9</day><month>January</month><year>2026</year></date>
           <date date-type="accepted"><day>29</day><month>March</month><year>2026</year></date>
      </history>
      <permissions>
        <copyright-statement>Copyright: © 2026 Katarina Grubbe Hildebrandt et al.</copyright-statement>
        <copyright-year>2026</copyright-year>
      <license license-type="open-access"><license-p>This work is licensed under the Creative Commons Attribution 4.0 International License. To view a copy of this licence, visit <ext-link ext-link-type="uri" xlink:href="https://creativecommons.org/licenses/by/4.0/">https://creativecommons.org/licenses/by/4.0/</ext-link></license-p></license></permissions><self-uri xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026.html">This article is available from https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026.html</self-uri><self-uri xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026.pdf">The full text article is available as a PDF file from https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026.pdf</self-uri>
      <abstract><title>Abstract</title>

      <p id="d2e109">Contrail cirrus is a major contributor to aviation's radiative forcing. Avoiding persistent contrail formation has been suggested as a measure to reduce the climate impact of aviation, requiring accurate forecasts of ice supersaturated conditions, where the relative humidity over ice (RHi) exceeds 100 %. Numerical weather prediction models and reanalysis products often underestimate or do not account for ice supersaturation. This study evaluates ice supersaturated regions (ISSRs) in the ECMWF ERA5 reanalysis dataset using In-service Aircraft for a Global Observing System (IAGOS) measurements over tropical and extratropical regions in the upper troposphere and lower stratosphere from 2011 to 2022. It considers seasonal and vertical differences, and how cloudy and clear-sky conditions affect ERA5’s ability to predict ISSRs. ERA5 underestimates ISSR occurrence due to a dry bias in RHi; the equitable threat score (ETS) is 0.2–0.4, indicating a weak to mediocre skill. Lowering the ERA5 RHi threshold improves ISSR prediction, with the largest improvements for RHi between 85 % and 95 %, although the optimal threshold varies with distance to the tropopause, region and season. Clear-sky conditions result in an ETS of 0.05–0.18, while the ETS is mostly below 0.1 in cloudy conditions, indicating an almost random relationship. In clear-sky conditions, lowering the threshold to 85 % increases the ETS by approximately 0.1. In cloudy conditions, lowering the threshold shows little benefit because increases in correctly predicted ISSRs are offset by increases in false positives. These findings improve our understanding of ISSR variability and has implications for accurate assessment of persistent contrail formation.</p>
  </abstract>
    
<funding-group>
<award-group id="gs1">
<funding-source>HORIZON EUROPE Climate, Energy and Mobility</funding-source>
<award-id>101056885</award-id>
</award-group>
<award-group id="gs2">
<funding-source>SESAR Joint Undertaking</funding-source>
<award-id>101167020</award-id>
</award-group>
</funding-group>
</article-meta>
  </front>
<body>
      

<sec id="Ch1.S1" sec-type="intro">
  <label>1</label><title>Introduction</title>
      <p id="d2e121">The aviation industry is a significant contributor to anthropogenic climate change. In 2018, aviation accounted for 2.5 % of the world's CO<sub>2</sub> emissions <xref ref-type="bibr" rid="bib1.bibx34" id="paren.1"/>. Aviation has also been estimated to contribute to 3.5 % to 5 % of global anthropogenic radiative forcing <xref ref-type="bibr" rid="bib1.bibx34" id="paren.2"/>. The anthropogenic radiative forcing is due to CO<sub>2</sub> and non-CO<sub>2</sub> emissions, which include NO<sub><italic>x</italic></sub> emissions, H<sub>2</sub>O, soot, contrails, and contrail cirrus <xref ref-type="bibr" rid="bib1.bibx35" id="paren.3"/>. The best estimate of contrail cirrus effective radiative forcing is almost twice as large as that of CO<sub>2</sub>, but is also subject to a much larger uncertainty range than that of CO<sub>2</sub> <xref ref-type="bibr" rid="bib1.bibx34" id="paren.4"/>. This is due to a number of uncertainty sources in the evaluation of contrail cirrus, related to the radiative transfer calculations, the upper tropospheric water budget and the modelling of contrail cirrus <xref ref-type="bibr" rid="bib1.bibx34" id="paren.5"/>.</p>
      <p id="d2e204">One solution to lowering the climate impact of aviation is to minimise the radiative forcing due to contrail cirrus. Contrail cirrus is the result of the dispersion of persistent contrails. Contrails form when the Schmidt-Appleman criterion (SAC) is met <xref ref-type="bibr" rid="bib1.bibx50" id="paren.6"/>, and persist when the ambient air is supersaturated with respect to ice, i.e. relative humidity over ice (RHi) is greater than 100 % <xref ref-type="bibr" rid="bib1.bibx17 bib1.bibx69" id="paren.7"/>. A region where the latter occurs is called an ice supersaturated region (ISSR)  <xref ref-type="bibr" rid="bib1.bibx46" id="paren.8"/>. Reducing persistent contrails can be realised by avoiding flying through ISSRs <xref ref-type="bibr" rid="bib1.bibx36 bib1.bibx14 bib1.bibx70 bib1.bibx4 bib1.bibx60 bib1.bibx37 bib1.bibx48 bib1.bibx54" id="paren.9"/>. This requires accurate predictions and evaluations of ice supersaturation (ISS). However, ISS is often not accounted for or underestimated in numerical weather prediction (NWP) models and reanalysis products <xref ref-type="bibr" rid="bib1.bibx45 bib1.bibx17 bib1.bibx67 bib1.bibx1 bib1.bibx68 bib1.bibx62 bib1.bibx69" id="paren.10"/>.</p>
      <p id="d2e222">The lack of ISS in NWP models and reanalysis products has been attributed to several factors. One reason is the large temporal and spatial variability of the humidity field, which exhibits sharp gradients <xref ref-type="bibr" rid="bib1.bibx67 bib1.bibx55 bib1.bibx69" id="paren.11"/>. Another factor is the limited availability of reliable relative humidity measurements at aircraft cruise altitudes <xref ref-type="bibr" rid="bib1.bibx55" id="paren.12"/> and due to the coarse resolution of weather models <xref ref-type="bibr" rid="bib1.bibx16" id="paren.13"/>. This leads to biases in the prediction of relative humidity in weather models. <xref ref-type="bibr" rid="bib1.bibx46" id="text.14"/> showed that ERA-Interim, the precursor of ERA5, underestimated RHi when greater than 100 %, leading to an underestimation in the occurrence of ISS when compared to MOZAIC (Measurement of OZONE and Water Vapour on Airbus in-service Aircraft), the predecessor programme of IAGOS. It has also been shown that ERA5 has a dry bias when RHi is above 100 %, when compared to MOZAIC/IAGOS (In-Service Aircraft for Global Observing system) <xref ref-type="bibr" rid="bib1.bibx17 bib1.bibx51 bib1.bibx61 bib1.bibx62 bib1.bibx69" id="paren.15"/>. <xref ref-type="bibr" rid="bib1.bibx11" id="text.16"/>, <xref ref-type="bibr" rid="bib1.bibx53" id="text.17"/> and <xref ref-type="bibr" rid="bib1.bibx6" id="text.18"/> have shown a moist bias in the lower stratosphere of the ECMWF Integrated Forecasting System (IFS). Meanwhile, there are often good agreements in temperature between model predictions and measurements <xref ref-type="bibr" rid="bib1.bibx11 bib1.bibx46 bib1.bibx69" id="paren.19"/>. Beyond these biases, recent work suggests that ISS representation in models may also be affected by synoptic conditions. <xref ref-type="bibr" rid="bib1.bibx10" id="text.20"/> found that ERA5 poorly captures ISS conditions in the dry intrusions over the North Atlantic.</p>
      <p id="d2e256">Another important factor contributing to the underestimation of RHi in NWP models and reanalysis products is related to the representation of the physics of the cloud nucleation process <xref ref-type="bibr" rid="bib1.bibx11" id="paren.21"/>. Previously, supersaturation with respect to ice was not allowed in models such as the ECMWF IFS <xref ref-type="bibr" rid="bib1.bibx11" id="paren.22"/>. However, the ECMWF IFS now uses a saturation adjustment in the ice cloud microphysical scheme that allows for ISS <xref ref-type="bibr" rid="bib1.bibx64 bib1.bibx69" id="paren.23"/>. When cloud formation occurs in an ice supersaturated grid box with this saturation adjustment, RHi is lowered to 100 % within the cloudy part of the grid-box in the next time step <xref ref-type="bibr" rid="bib1.bibx64 bib1.bibx59 bib1.bibx55" id="paren.24"/>. Recent work has focused on improving cloud cover and ice microphysical parametrizations. For example, <xref ref-type="bibr" rid="bib1.bibx19" id="text.25"/> demonstrated that the ICON NWP model captures ice supersaturation more accurately when using a two-moment ice microphysics scheme compared to a one-moment scheme that limits ISS representation. Similarly, a modified cloud scheme in the ARPEGE NWP model showed improved representation of ice supersaturation, although it remains limited in the maximum RHi values that can be attained <xref ref-type="bibr" rid="bib1.bibx3" id="paren.26"/>.</p>
      <p id="d2e279">In clear-sky conditions, models such as the IFS can also represent ISS <xref ref-type="bibr" rid="bib1.bibx64 bib1.bibx46" id="paren.27"/>. However, ERA5, generated with the ECMWF IFS Cycle 41r2, shows a lack of ISS under (almost) clear-sky conditions in the mid-latitudes, as reported by <xref ref-type="bibr" rid="bib1.bibx69" id="text.28"/>. <xref ref-type="bibr" rid="bib1.bibx65" id="text.29"/> showed that ERA5 was limited in predicting ISSRs under clear-sky conditions. Hence, issues in the representation of ISS occurs in both cloudy and clear-sky conditions in ERA5.</p>
      <p id="d2e291">Many of the studies analysing the accuracy of NWP models and reanalysis products in the prediction of ISS compared to observations, e.g. MOZAIC/IAGOS, are often limited in terms of regional and seasonal variations. The main area of interest are the mid-latitude regions as this is one of the most sampled regions by MOZAIC/IAGOS aircrafts <xref ref-type="bibr" rid="bib1.bibx46 bib1.bibx47 bib1.bibx69" id="paren.30"/>. Only <xref ref-type="bibr" rid="bib1.bibx17" id="text.31"/> compared IAGOS and ERA5 below a latitude of 30° N, considering four months in 2014. The entire MOZAIC/IAGOS framework now spans more than 20 years <xref ref-type="bibr" rid="bib1.bibx46" id="paren.32"/>. Furthermore, there are limited comparisons of RHi and ISS between the subregions of the globe. In some instances, this is due to a smaller focused area, i.e. the North Atlantic corridor. <xref ref-type="bibr" rid="bib1.bibx46" id="text.33"/> selected a larger region, considering North America, the North Atlantic corridor, and Europe, but the analysis on regional variations were limited. In case of the study by <xref ref-type="bibr" rid="bib1.bibx17" id="text.34"/>, variations due to different climates (tropics versus extratropics) is not included. Thus, there is a need to further quantify regional dependence of the differences in ISS between the weather model predictions and observations, in particular, the IAGOS measurements.</p>
      <p id="d2e309">Additionally, previous research shows that the occurrence of ISSRs has a seasonal dependence. Globally, this has been shown by <xref ref-type="bibr" rid="bib1.bibx15" id="text.35"/> and <xref ref-type="bibr" rid="bib1.bibx58" id="text.36"/>, and in the northern mid-latitudes by <xref ref-type="bibr" rid="bib1.bibx42" id="text.37"/>. Regional studies include the Paris area <xref ref-type="bibr" rid="bib1.bibx68" id="paren.38"/> and the Meteorological Observatory Lindenberg <xref ref-type="bibr" rid="bib1.bibx57 bib1.bibx16" id="paren.39"/>. Seasonality also varies regionally, as demonstrated by <xref ref-type="bibr" rid="bib1.bibx42" id="text.40"/> between Europe, the North Atlantic corridor and eastern North America. However, seasonal differences in ISSR occurrence between observations and NWP models as well as reanalysis products are rarely considered. <xref ref-type="bibr" rid="bib1.bibx17" id="text.41"/> analysed seasonal differences in RHi and ISS between IAGOS observations and the ERA5 reanalysis considering four months in 2014, with each month representing a season; some seasonal dependency on the differences between IAGOS and ERA5 was identified. Since the study only considered a four month dataset, it has a high potential to be expanded with extensive input data. Also, no analysis of seasonal differences as a function of geographic region appears to have been performed. Hence, it is important to further quantify these differences between observations and weather models.</p>
      <p id="d2e334">Therefore, the aim of this study is to further investigate differences in ISS between the ECMWF ERA5 reanalysis and IAGOS in situ measurements, with an extensive geographical and temporal range. Differences will be analysed from a regional and seasonal perspective, to understand if certain conditions might lead to a drier or more moist bias in ERA5. The impact of clouds on differences in ISS between IAGOS and ERA5 will also be analysed on an extended geographical scale. We also investigate if changing the ERA5 RHi threshold allows for better prediction of ISSRs in ERA5.</p>
      <p id="d2e337">Section <xref ref-type="sec" rid="Ch1.S2"/> describes the datasets and the methodology used in this study. Section <xref ref-type="sec" rid="Ch1.S3"/> documents differences in temperature and RHi and the impact of the prediction of ISSRs. In Sect. <xref ref-type="sec" rid="Ch1.S4"/>, we discuss the findings and compare to previous literature. Lastly, conclusions are drawn in Sect. <xref ref-type="sec" rid="Ch1.S5"/>.</p>
</sec>
<sec id="Ch1.S2">
  <label>2</label><title>Data and methodology</title>
<sec id="Ch1.S2.SS1">
  <label>2.1</label><title>IAGOS</title>
      <p id="d2e363">IAGOS <xref ref-type="bibr" rid="bib1.bibx40" id="paren.42"/> provides atmospheric composition measurements from commercial aircraft and was founded in 2011 <xref ref-type="bibr" rid="bib1.bibx26" id="paren.43"/>. It is the successor of the MOZAIC programme and the Civil Aircraft for the Regular Investigation of the Atmosphere Based on an Instrument Container (CARIBIC), which began measurements in 1997. Meanwhile, MOZAIC is no longer a project, CARIBIC continues within IAGOS and serves as a reference standard for the rest of the IAGOS fleet <xref ref-type="bibr" rid="bib1.bibx40" id="paren.44"/>.</p>
      <p id="d2e375">The IAGOS-CORE component is installed on long-range aircraft from internationally operated airlines <xref ref-type="bibr" rid="bib1.bibx40" id="paren.45"/>, with 10 aircraft currently active <xref ref-type="bibr" rid="bib1.bibx29" id="paren.46"/>. IAGOS-CORE contains several autonomous instruments for daily measurements of reactive, e.g. O<sub>3</sub>, and greenhouse gases, such as CO<sub>2</sub> and water vapour, as well as aerosol and cloud particles <xref ref-type="bibr" rid="bib1.bibx40" id="paren.47"/>. The main package installed in the entire IAGOS fleet is Package 1, which includes a humidity sensor (ICH) and a backscatter cloud probe (BCP) that measures cloud particles <xref ref-type="bibr" rid="bib1.bibx28" id="paren.48"/>.</p>
      <p id="d2e409">The ICH consists of a modified Vaisala HUMICAP<sup>®</sup> of type H sensor (capacitive relative humidity sensor) <xref ref-type="bibr" rid="bib1.bibx39" id="paren.49"/> and a platinum resistance sensor for temperature measurements at the surface of the humidity sensing element <xref ref-type="bibr" rid="bib1.bibx27" id="paren.50"/>. It has the capability to provide temperature and relative humidity (with respect to liquid) measurements. The relative humidity has a precision of <inline-formula><mml:math id="M10" display="inline"><mml:mo>±</mml:mo></mml:math></inline-formula>1 %, an accuracy of <inline-formula><mml:math id="M11" display="inline"><mml:mo>±</mml:mo></mml:math></inline-formula>6 % and a time resolution of 1 s at 300 K to 120 s at 200 K <xref ref-type="bibr" rid="bib1.bibx27" id="paren.51"/>. Temperature measurements have a precision of <inline-formula><mml:math id="M12" display="inline"><mml:mo>±</mml:mo></mml:math></inline-formula>0.2 K, an accuracy of <inline-formula><mml:math id="M13" display="inline"><mml:mo>±</mml:mo></mml:math></inline-formula>0.5 K and a time resolution of 4 s <xref ref-type="bibr" rid="bib1.bibx27" id="paren.52"/>.</p>
      <p id="d2e456">IAGOS aircraft measure the concentration of cloud particles in the size range of 5 to 75  <inline-formula><mml:math id="M14" display="inline"><mml:mrow class="unit"><mml:mi mathvariant="normal">µ</mml:mi><mml:mi mathvariant="normal">m</mml:mi></mml:mrow></mml:math></inline-formula> using the BCP, a single-particle optical backscattering spectrometer. The BCP operates using a laser diode, with a polarised light at a wavelength of 658 nm. The light is directed through a silicate glass window onto a target region approximately 4 cm from this window. When particles pass through the target region, they backscatter light with an intensity that depends on their size, refractive index, shape and the angle at which they intercept the beam. From this, the diameters and concentrations of the particles can be derived <xref ref-type="bibr" rid="bib1.bibx5" id="paren.53"/>.</p>
      <p id="d2e473">Given the start date of the IAGOS program and that the entire IAGOS fleet was equipped with the modified Vaisala HUMICAP<sup>®</sup> of type H sensor in 2011 <xref ref-type="bibr" rid="bib1.bibx39" id="paren.54"/>, data measured between 1 July 2011 and 31 December 2022 have been collected for the current study. The end date is set to 31 December 2022 due to a lack of published flight measurements with all observed variables after this date (at the time of data collection). The altitude is restricted between 8000  and 13 000 m as these are the flight levels that are the most visited by IAGOS aircraft. These are also the levels where we can expect ISSRs to occur in the midlatitudes <xref ref-type="bibr" rid="bib1.bibx33 bib1.bibx47" id="paren.55"/>. In the tropics, ISSRs are rare below 10 000 m, and have been shown to occur at altitudes of more than 15 000 m <xref ref-type="bibr" rid="bib1.bibx33" id="paren.56"/>. Commercial aircraft do not cruise at such high altitudes, as also seen from the IAGOS dataset. Hence, we maintain the upper bound of 13 000 m.</p>
      <p id="d2e488">Based on the global distribution of the IAGOS measurements during the considered time frame, as seen in Fig. <xref ref-type="fig" rid="F1"/>, only measurements located between 160° W and 150° E, and between 0  and 75° N will be considered. This is further divided into eight regions. The latitudes of the regions are based on the definition of extratropical (latitude <inline-formula><mml:math id="M15" display="inline"><mml:mo>&lt;</mml:mo></mml:math></inline-formula> 30° S and latitude <inline-formula><mml:math id="M16" display="inline"><mml:mo>&gt;</mml:mo></mml:math></inline-formula> 30° N) and tropical (30° S <inline-formula><mml:math id="M17" display="inline"><mml:mo>≤</mml:mo></mml:math></inline-formula> latitude <inline-formula><mml:math id="M18" display="inline"><mml:mo>≤</mml:mo></mml:math></inline-formula> 30° N) regions <xref ref-type="bibr" rid="bib1.bibx56" id="paren.57"/>. We considered the Northern and Southern Hemisphere tropics separately due to the inter-tropical convergence zone, which causes changes in wet and dry conditions across the equator depending on its position <xref ref-type="bibr" rid="bib1.bibx38" id="paren.58"/>, as discussed in Appendix <xref ref-type="sec" rid="App1.Ch1.S1"/>. Due to low sampling in the Southern Hemisphere tropics, we subsequently only focus on the Northern Hemisphere. The eight defined regions are shown in Fig. <xref ref-type="fig" rid="F1"/> and have the areal boundaries given in Table <xref ref-type="table" rid="T1"/>.</p>
      <p id="d2e534">Only points with a relative humidity with respect to liquid (RHL) between 0 % and 100 % are selected from IAGOS measurements. A RHL greater than 100 % implies flying through a liquid cloud, and contrails cannot form at temperatures where these clouds are present <xref ref-type="bibr" rid="bib1.bibx66" id="paren.59"/>.</p>
      <p id="d2e540">IAGOS uses validity flags to indicate the quality of the measurements. The following validity flags are used: “good” (0), “limited” (2), “erroneous” (3), “not validated” (4) and “missing value” (7) <xref ref-type="bibr" rid="bib1.bibx30" id="paren.60"/>. Only “good” and “limited” measurements are considered for temperature, relative humidity with respect to ice (RHi) and RHL. However, we use the RHL validity flag to select RHi values since the quality flag of RHi was not well derived at the time of data collection, but is known to be similar to that of RHL <xref ref-type="bibr" rid="bib1.bibx47" id="paren.61"/>. A summary of the criteria for the IAGOS measurements is provided in Table <xref ref-type="table" rid="T2"/>.</p>

      <fig id="F1" specific-use="star"><label>Figure 1</label><caption><p id="d2e553">IAGOS measurement density map per 2° grid box with regional division between 8000 and 13 000 m from 1 July 2011 to 31 December 2022, considering “good” or “limited” validity flags for RHL and temperature.</p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f01.png"/>

        </fig>

<table-wrap id="T1"><label>Table 1</label><caption><p id="d2e566">Areal boundaries of defined geographical regions.</p></caption><oasis:table frame="topbot"><oasis:tgroup cols="3">
     <oasis:colspec colnum="1" colname="col1" align="left"/>
     <oasis:colspec colnum="2" colname="col2" align="left"/>
     <oasis:colspec colnum="3" colname="col3" align="left"/>
     <oasis:thead>
       <oasis:row rowsep="1">
         <oasis:entry colname="col1">Region</oasis:entry>
         <oasis:entry colname="col2">Longitude</oasis:entry>
         <oasis:entry colname="col3">Latitude</oasis:entry>
       </oasis:row>
     </oasis:thead>
     <oasis:tbody>
       <oasis:row>
         <oasis:entry colname="col1">North America</oasis:entry>
         <oasis:entry colname="col2">160 to 65° W</oasis:entry>
         <oasis:entry colname="col3">30 to 75° N</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">North Atlantic</oasis:entry>
         <oasis:entry colname="col2">65 to 5° W</oasis:entry>
         <oasis:entry colname="col3">30 to 75° N</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">Europe</oasis:entry>
         <oasis:entry colname="col2">5° W to 30° E</oasis:entry>
         <oasis:entry colname="col3">30 to 75° N</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">North Asia</oasis:entry>
         <oasis:entry colname="col2">30 to 150° E</oasis:entry>
         <oasis:entry colname="col3">30 to 75° N</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">Southern Trans-Pacific</oasis:entry>
         <oasis:entry colname="col2">160 to 65° W</oasis:entry>
         <oasis:entry colname="col3">0 to 30° N</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">South Atlantic</oasis:entry>
         <oasis:entry colname="col2">65  to 5° W</oasis:entry>
         <oasis:entry colname="col3">0 to 30° N</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">Africa</oasis:entry>
         <oasis:entry colname="col2">5° W to 30° E</oasis:entry>
         <oasis:entry colname="col3">0 to 30° N</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">South Asia</oasis:entry>
         <oasis:entry colname="col2">30  to 150° E</oasis:entry>
         <oasis:entry colname="col3">0 to 30° N</oasis:entry>
       </oasis:row>
     </oasis:tbody>
   </oasis:tgroup></oasis:table></table-wrap>

      <p id="d2e695">Lastly, IAGOS records the measurements every four seconds. To avoid autocorrelation affecting our analysis, it is chosen to sample a measurement approximately every minute. This is done using a uniform random number generator ranging from 1 to the maximum number of measurement points from IAGOS, to avoid systematic bias. The sampling and application of the criterion from Table 2 results in using 3.8 % of all IAGOS measurements between 1 July 2011 and 31 December 2022.</p>

<table-wrap id="T2" specific-use="star"><label>Table 2</label><caption><p id="d2e701">Criteria for selection of IAGOS measurements.</p></caption><oasis:table frame="topbot"><oasis:tgroup cols="3">
     <oasis:colspec colnum="1" colname="col1" align="left"/>
     <oasis:colspec colnum="2" colname="col2" align="left"/>
     <oasis:colspec colnum="3" colname="col3" align="left"/>
     <oasis:thead>
       <oasis:row rowsep="1">
         <oasis:entry namest="col1" nameend="col3" align="center">Criterion </oasis:entry>
       </oasis:row>
     </oasis:thead>
     <oasis:tbody>
       <oasis:row>
         <oasis:entry colname="col1">Measurement dates</oasis:entry>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3">Between 1 July 2011 and 31 December 2022.</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">Altitude</oasis:entry>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3">Between 8000  and 13 000 m.</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">RHL</oasis:entry>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3">Between 0 % and 100 %.</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">Validity flags for RHL and temperature</oasis:entry>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3">Equal to 0 or 2, corresponding to “good” or “limited”.</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">Geographic coverage of measurements</oasis:entry>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3">Located between 160° W and 150° E, and between  0 and 75° N</oasis:entry>
       </oasis:row>
     </oasis:tbody>
   </oasis:tgroup></oasis:table></table-wrap>

</sec>
<sec id="Ch1.S2.SS2">
  <label>2.2</label><title>ERA5 reanalysis</title>
      <p id="d2e790">The ERA5 reanalysis is the fifth generation reanalysis from ECMWF <xref ref-type="bibr" rid="bib1.bibx20" id="paren.62"/>. To allow for a higher vertical resolution, the Analysis-Ready, Cloud Optimized (ARCO) ERA5 <xref ref-type="bibr" rid="bib1.bibx8" id="paren.63"/> has been used, which provides several atmospheric variables on model levels. ARCO ERA5 was retrieved using the python library pycontrails <xref ref-type="bibr" rid="bib1.bibx52" id="paren.64"/>, which also allows for the re-gridding of model levels to pressure levels. It was chosen to re-grid with a vertical resolution of 10 hPa. This is within the range of the model level resolution at typical cruise altitudes, which is between 8  and 15 hPa when considering a surface pressure of 1013.250 hPa <xref ref-type="bibr" rid="bib1.bibx12" id="paren.65"/>.</p>
      <p id="d2e805">The ERA5 reanalysis is (quadrilinearly) interpolated in time, pressure level, longitude and latitude onto the IAGOS flight tracks using the Delftblue supercomputer <xref ref-type="bibr" rid="bib1.bibx9" id="paren.66"/>. Since the ARCO ERA5 dataset does not provide RHi, it is derived from specific humidity, temperature and the saturation water vapour pressure over ice. The saturation water vapour pressure over ice is computed using the AERKI formula of <xref ref-type="bibr" rid="bib1.bibx2" id="text.67"/> to be consistent with the ECMWF IFS formulation <xref ref-type="bibr" rid="bib1.bibx13" id="paren.68"/>. RHi is calculated only for temperatures below 250.15 K <xref ref-type="bibr" rid="bib1.bibx21" id="paren.69"/>. However, specific humidity exhibits a nonlinear lapse rate <xref ref-type="bibr" rid="bib1.bibx44" id="paren.70"/>. To avoid biases due to linear interpolation, RHi is therefore calculated before interpolation, where we then interpolate in the RHi space <xref ref-type="bibr" rid="bib1.bibx44" id="paren.71"/>.</p>
</sec>
<sec id="Ch1.S2.SS3">
  <label>2.3</label><title>Vertical distribution of variables with respect to tropopause</title>
      <p id="d2e835">The vertical distribution of the temperature, relative humidity over ice, and ISSR fraction will be reported relative to the tropopause height. Both the dynamic and thermal tropopause have been considered, and were determined using ERA5 tropospheric data reported by <xref ref-type="bibr" rid="bib1.bibx25" id="text.72"/>. Given the stronger gradients in temperature and RHi associated with the thermal tropopause (see Appendix <xref ref-type="sec" rid="App1.Ch1.S2"/>), the results are presented relative to this definition. This will, for example, result in a drier lower stratosphere compared to using the dynamic tropopause definition.</p>
      <p id="d2e843">The flight measurements are distributed into layers with a thickness of 30 hPa, centered at the tropopause. The selection of layers for further analysis depends on the number of data points per level, which varies per geographical region, as seen in Fig. <xref ref-type="fig" rid="F2"/>. This figure shows that in the extratropic regions, the majority of measurements are distributed around the tropopause, allowing for upper tropospheric and lower stratospheric analysis. In the tropics, most of the samples are located in the upper troposphere since the tropopause is located at higher altitudes in this region.</p>

      <fig id="F2" specific-use="star"><label>Figure 2</label><caption><p id="d2e850"><bold>(a–h)</bold>Vertical distribution of number of samples with respect to distance to the thermal tropopause, <inline-formula><mml:math id="M19" display="inline"><mml:mrow><mml:mi>p</mml:mi><mml:mo>-</mml:mo><mml:msub><mml:mi>p</mml:mi><mml:mi mathvariant="normal">thm</mml:mi></mml:msub></mml:mrow></mml:math></inline-formula>, in different geographical regions.</p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f02.png"/>

        </fig>

</sec>
<sec id="Ch1.S2.SS4">
  <label>2.4</label><title>Differentiation of cloudy and clear-sky conditions</title>
      <p id="d2e884">To investigate the impact of cloudy and clear-sky conditions on the ability of ERA5 to predict ISS, we need to distinguish between these two conditions. For IAGOS, the ice crystal number concentration, <inline-formula><mml:math id="M20" display="inline"><mml:mrow><mml:msub><mml:mi>N</mml:mi><mml:mi mathvariant="normal">i</mml:mi></mml:msub></mml:mrow></mml:math></inline-formula>, can be used to differentiate between measurements within cirrus clouds and within cloud-free conditions. We use the same thresholds defined by <xref ref-type="bibr" rid="bib1.bibx41" id="text.73"/>, which are summarised in Table <xref ref-type="table" rid="T3"/>. Indeterminate conditions refer to measurements that cannot be identified as clouds and cannot be considered cloud-free. These measurements are most likely located within very thin cirrus <xref ref-type="bibr" rid="bib1.bibx41" id="paren.74"/></p>
      <p id="d2e905">For the ERA5 reanalysis, cloudy and clear-sky conditions can be differentiated using the cloud cover fraction, CC, which takes a value between 0 and 1. CC describes the proportion of a grid box covered by liquid or ice clouds <xref ref-type="bibr" rid="bib1.bibx21" id="paren.75"/>. For the analysis of RHi and ISSRs, we only consider data points where the temperature is below 235.15 K, which is below the threshold at which liquid clouds can occur <xref ref-type="bibr" rid="bib1.bibx18" id="paren.76"/>, hence we focus on ice clouds. To distinguish between cloudy, clear-sky and indeterminate conditions, we use the same thresholds as <xref ref-type="bibr" rid="bib1.bibx69" id="text.77"/>, which are also defined in Table <xref ref-type="table" rid="T3"/>.</p>

<table-wrap id="T3"><label>Table 3</label><caption><p id="d2e922">Thresholds used to define cloudy, clear-sky and indeterminate conditions in IAGOS and ERA5.</p></caption><oasis:table frame="topbot"><oasis:tgroup cols="3">
     <oasis:colspec colnum="1" colname="col1" align="left"/>
     <oasis:colspec colnum="2" colname="col2" align="left"/>
     <oasis:colspec colnum="3" colname="col3" align="left"/>
     <oasis:thead>
       <oasis:row rowsep="1">
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2">IAGOS</oasis:entry>
         <oasis:entry colname="col3">ERA5</oasis:entry>
       </oasis:row>
     </oasis:thead>
     <oasis:tbody>
       <oasis:row>
         <oasis:entry colname="col1">Cloudy</oasis:entry>
         <oasis:entry colname="col2"><inline-formula><mml:math id="M21" display="inline"><mml:mrow><mml:msub><mml:mi>N</mml:mi><mml:mi mathvariant="normal">i</mml:mi></mml:msub><mml:mo>≥</mml:mo><mml:mn mathvariant="normal">0.015</mml:mn></mml:mrow></mml:math></inline-formula> cm<sup>−3</sup></oasis:entry>
         <oasis:entry colname="col3"><inline-formula><mml:math id="M23" display="inline"><mml:mrow><mml:mn mathvariant="normal">0.8</mml:mn><mml:mo>≤</mml:mo><mml:mi mathvariant="normal">CC</mml:mi><mml:mo>≤</mml:mo><mml:mn mathvariant="normal">1</mml:mn></mml:mrow></mml:math></inline-formula></oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">Clear-sky</oasis:entry>
         <oasis:entry colname="col2"><inline-formula><mml:math id="M24" display="inline"><mml:mrow><mml:msub><mml:mi>N</mml:mi><mml:mi mathvariant="normal">i</mml:mi></mml:msub><mml:mo>≤</mml:mo><mml:mn mathvariant="normal">0.001</mml:mn></mml:mrow></mml:math></inline-formula> cm<sup>−3</sup></oasis:entry>
         <oasis:entry colname="col3"><inline-formula><mml:math id="M26" display="inline"><mml:mrow><mml:mi mathvariant="normal">CC</mml:mi><mml:mo>&lt;</mml:mo><mml:mn mathvariant="normal">0.2</mml:mn></mml:mrow></mml:math></inline-formula></oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">Indeterminate</oasis:entry>
         <oasis:entry colname="col2"><inline-formula><mml:math id="M27" display="inline"><mml:mrow><mml:mn mathvariant="normal">0.001</mml:mn><mml:mo>&lt;</mml:mo><mml:msub><mml:mi>N</mml:mi><mml:mi mathvariant="normal">i</mml:mi></mml:msub><mml:mo>&lt;</mml:mo><mml:mn mathvariant="normal">0.015</mml:mn></mml:mrow></mml:math></inline-formula> cm<sup>−3</sup></oasis:entry>
         <oasis:entry colname="col3"><inline-formula><mml:math id="M29" display="inline"><mml:mrow><mml:mn mathvariant="normal">0.2</mml:mn><mml:mo>≤</mml:mo><mml:mi mathvariant="normal">CC</mml:mi><mml:mo>&lt;</mml:mo><mml:mn mathvariant="normal">0.8</mml:mn></mml:mrow></mml:math></inline-formula></oasis:entry>
       </oasis:row>
     </oasis:tbody>
   </oasis:tgroup></oasis:table></table-wrap>

      <p id="d2e1107">The fraction of cloudy, clear-sky and indeterminate conditions, based on the definition of the ice crystal number concentration in IAGOS, per layer and geographical region, is visualised in Fig. <xref ref-type="fig" rid="F3"/>. The majority of samples are categorised as no clouds or no measurements. There are few indeterminate and cloudy conditions. The low number of cloud observations is in line with reports from <xref ref-type="bibr" rid="bib1.bibx47" id="text.78"/>.</p>

      <fig id="F3" specific-use="star"><label>Figure 3</label><caption><p id="d2e1117"><bold>(a–h)</bold> Fraction of cloudy, clear-sky and indeterminate conditions per layer and geographic region, based on the ice crystal number concentration, <inline-formula><mml:math id="M30" display="inline"><mml:mrow><mml:msub><mml:mi>N</mml:mi><mml:mi mathvariant="normal">i</mml:mi></mml:msub></mml:mrow></mml:math></inline-formula>, from IAGOS measurements. No measurements means that there is no data available on the ice crystal number concentration from IAGOS.</p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f03.png"/>

        </fig>

      <p id="d2e1139">The application of cloud cover to determine cloudy, clear-sky and indeterminate conditions using ERA5 results in the division seen in Fig. <xref ref-type="fig" rid="F4"/>. We applied the “no measurements” label to ERA5 for the same points as in IAGOS.</p>
      <p id="d2e1144">Comparing Figs. <xref ref-type="fig" rid="F3"/> and  <xref ref-type="fig" rid="F4"/>, it is noticeable that there are discrepancies in the labelling of cloudy, clear-sky and indeterminate conditions between IAGOS and ERA5. We see that ERA5 shows a higher frequency of indeterminate and cloudy conditions compared to IAGOS. However, the choice of definition to use to define cloudy and clear-sky conditions in IAGOS and ERA5 largely impacts the results as shown by the sensitivity study presented in Sect. S1 of the Supplement.</p>

      <fig id="F4" specific-use="star"><label>Figure 4</label><caption><p id="d2e1153"><bold>(a–h)</bold> Fraction of cloudy, clear-sky and indeterminate conditions per layer and region, based on the definitions using the cloud cover from ERA5. No measurements means that there is no data available on the ice crystal number concentration from IAGOS, which are flagged in the ERA5 dataset as well. </p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f04.png"/>

        </fig>


</sec>
</sec>
<sec id="Ch1.S3">
  <label>3</label><title>Results</title>
<sec id="Ch1.S3.SS1">
  <label>3.1</label><title>Seasonal and vertical variability of temperature between ERA5 and IAGOS</title>
      <p id="d2e1182">As a first step, we compare the IAGOS measured temperature and the ERA5 simulated temperature. Figure <xref ref-type="fig" rid="F5"/> shows the vertical mean temperature distribution of IAGOS and ERA5 per season, for the eight geographical regions defined. The same seasonal definition is applied for all regions to allow for a consistent comparison between the tropics and extratropics. The choice for the lower limit on the number of samples is explained in Sect. S2 in the Supplement.</p>
      <p id="d2e1187">The mean temperature differences in the tropical regions range between <inline-formula><mml:math id="M31" display="inline"><mml:mo>-</mml:mo></mml:math></inline-formula>0.25 K (ERA5 warmer than IAGOS) and 0.25 K, on average, in the upper troposphere as observed in Fig. S10 in the Supplement, which is within the IAGOS temperature sensor accuracy range. In Africa, we see mean temperature differences between 0.5  and 1 K. Furthermore, the tropics show an increased deviation between IAGOS and ERA5 close to and above the tropopause. In South Asia and Africa, the deviation causes a cold bias in ERA5, which can be attributed to the stratospheric cold bias in ERA5 <xref ref-type="bibr" rid="bib1.bibx53" id="paren.79"/>. However, in the Southern Trans-Pacific, the increased deviation results in a warm bias, which may be partially explained by sensor error.  In the extratropics, we find that ERA5 has a cold bias of 0.5 K on average in the upper troposphere, but it cannot be ruled out that this is due to sensor error as the mean difference is within accuracy range of the IAGOS temperature sensor. The lower stratosphere shows a slightly larger cold bias compared to the upper troposphere, with mean differences ranging from 0.75  to 1 K and can thus not be explained by sensor accuracy alone.</p>

      <fig id="F5" specific-use="star"><label>Figure 5</label><caption><p id="d2e1204"><bold>(a–h)</bold>Vertical distribution of IAGOS and ERA5 mean temperature per season and per region with shading showing the 95 % confidence interval, using levels based on distance to thermal tropopause, only considering levels, seasons and regions with 500<inline-formula><mml:math id="M32" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples.</p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f05.png"/>

        </fig>

</sec>
<sec id="Ch1.S3.SS2">
  <label>3.2</label><title>Seasonal and vertical variability of relative humidity over ice between ERA5 and IAGOS</title>
      <p id="d2e1230">Ice supersaturation is governed by the RHi. We only consider RHi for cases where the temperature is below the threshold of homogeneous freezing, assumed equal to 235.15 K. This is the lowest temperature at which supercooling of cloud droplets can occur <xref ref-type="bibr" rid="bib1.bibx18 bib1.bibx55" id="paren.80"/>.</p>
      <p id="d2e1236">The mean vertical distribution of RHi in the IAGOS and ERA5 datasets per season and geographic region is presented in Fig. <xref ref-type="fig" rid="F6"/>, using the same seasonal and regional definitions as in Sect. <xref ref-type="sec" rid="Ch1.S3.SS1"/>. In the tropics, we observe some seasonal behaviour in the Southern Trans-Pacific and in South Asia. South Asia has a larger mean RHi in season JJA compared to the other seasons in this region. The higher RHi may be the result of the tropics being a deep-convection region with strong updrafts, which result in ISS and high nucleation rates leading to a high ice crystal number concentration <xref ref-type="bibr" rid="bib1.bibx47" id="paren.81"/>. <xref ref-type="bibr" rid="bib1.bibx41" id="text.82"/> also found a correlation between a high ice crystal number concentration and high values of RHi. In fact, we find a higher frequency of cloudy conditions for season JJA compared to other seasons in South Asia when observing IAGOS measurements (see Fig. S12), showing that more measurements with larger ice crystal number concentrations are found in this season. Although deep convection can also happen in other tropical regions, we do not observe this due to the low sampling of in-cloud measurements with IAGOS in these regions.</p>
      <p id="d2e1249">For season JJA in South Asia, we also identify a moist bias in ERA5. <xref ref-type="bibr" rid="bib1.bibx49" id="text.83"/> showed that the latitudinal band of 0 to 30° N, for a region covering 65  to 95° E, received the most precipitation in JJA, including September. Hence, we suggest that the moist bias may be related to the type of weather encountered in South Asia in season JJA.</p>
      <p id="d2e1255">In the Southern Trans-Pacific, season DJF shows an overall lower mean RHi compared to other seasons. The majority of points in this region are located close to Hawaii or Central America/northwestern South America. In North America, North Atlantic, and Europe, the highest RHi values throughout the vertical profile occur during seasons DJF and MAM, which are also the seasons that exhibit the lowest mean temperatures, as seen in Fig. <xref ref-type="fig" rid="F5"/>. These are also the two seasons where we find a larger dry bias in ERA5. This is due to higher values of RHi favouring lower temperatures <xref ref-type="bibr" rid="bib1.bibx47" id="paren.84"/>, and ERA5 shows more inconsistencies in the prediction of large RHi <xref ref-type="bibr" rid="bib1.bibx69" id="paren.85"/>. We also find that the differences between IAGOS and ERA5 appear smallest in North America and increase as we move towards Europe, showing a possible longitudinal dependency. <xref ref-type="bibr" rid="bib1.bibx69" id="text.86"/> noticed the same behaviour and hypothesised it could be due to the spatial distribution of water vapour. From a global distribution of the mean RHi and ISS occurrence using IAGOS, we see that North America is drier, with less ISS occurrences, compared to the North Atlantic and Europe, which could result in larger differences in the two latter regions due larger biases in ERA5 close to and in ISS conditions <xref ref-type="bibr" rid="bib1.bibx42 bib1.bibx69" id="paren.87"/>.</p>
      <p id="d2e1273">In the lower stratosphere, there is a larger difference in the mean RHi between IAGOS and ERA5 compared to the upper troposphere, which can also be seen in Fig. S11 in the Supplement. This reflects the moist bias in IAGOS at low values of RHi in the dry lower stratosphere  <xref ref-type="bibr" rid="bib1.bibx69" id="paren.88"/>. This results from the limitation of the ICH sensor; it does not provide good quality results in dry conditions in the lower stratosphere due to the loss of sensitivity as a result of the adiabatic compression effect <xref ref-type="bibr" rid="bib1.bibx32" id="paren.89"/>. Although the mean difference is larger in the lower stratosphere, Fig. S11 shows that the range of differences is smaller compared to the upper troposphere. This indicates that under conditions where RHi is lower, there is better agreement between IAGOS and ERA5, but the systematic moist bias in IAGOS increases the mean difference.</p>

      <fig id="F6" specific-use="star"><label>Figure 6</label><caption><p id="d2e1284"><bold>(a–h)</bold> Vertical distribution of IAGOS and ERA5 mean relative humidity over ice per season and per region with shading showing the 95 % confidence interval, using levels based on distance to thermal tropopause, only considering levels, seasons and regions  with 500<inline-formula><mml:math id="M33" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples.</p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f06.png"/>

        </fig>

</sec>
<sec id="Ch1.S3.SS3">
  <label>3.3</label><title>Distribution of relative humidity over ice from IAGOS and ERA5 under cloudy and clear-sky conditions</title>
      <p id="d2e1310">In this section, we investigate the effect of clear-sky, indeterminate, and cloudy conditions based on the probability density function of RHi from IAGOS and ERA5. Instead of discrete vertical levels, we consider three atmospheric layers because of the low sampling of the ice crystal number concentration in IAGOS. The three layers are upper troposphere (UT), tropopause (TROP) and lower stratosphere (LS). Their definition is based on the distance to the thermal tropopause (<inline-formula><mml:math id="M34" display="inline"><mml:mrow><mml:mi>p</mml:mi><mml:mo>-</mml:mo><mml:msub><mml:mi>p</mml:mi><mml:mi mathvariant="normal">thm</mml:mi></mml:msub></mml:mrow></mml:math></inline-formula>). The UT is defined as <inline-formula><mml:math id="M35" display="inline"><mml:mrow><mml:mo>(</mml:mo><mml:mi>p</mml:mi><mml:mo>-</mml:mo><mml:msub><mml:mi>p</mml:mi><mml:mi mathvariant="normal">thm</mml:mi></mml:msub><mml:mo>)</mml:mo><mml:mo>&gt;</mml:mo><mml:mn mathvariant="normal">15</mml:mn></mml:mrow></mml:math></inline-formula> hPa, the TROP  as <inline-formula><mml:math id="M36" display="inline"><mml:mrow><mml:mo>-</mml:mo><mml:mn mathvariant="normal">15</mml:mn></mml:mrow></mml:math></inline-formula> hPa <inline-formula><mml:math id="M37" display="inline"><mml:mrow><mml:mo>≤</mml:mo><mml:mo>(</mml:mo><mml:mi>p</mml:mi><mml:mo>-</mml:mo><mml:msub><mml:mi>p</mml:mi><mml:mi mathvariant="normal">thm</mml:mi></mml:msub><mml:mo>)</mml:mo><mml:mo>≤</mml:mo><mml:mn mathvariant="normal">15</mml:mn></mml:mrow></mml:math></inline-formula> hPa and LS as <inline-formula><mml:math id="M38" display="inline"><mml:mrow><mml:mo>(</mml:mo><mml:mi>p</mml:mi><mml:mo>-</mml:mo><mml:msub><mml:mi>p</mml:mi><mml:mi mathvariant="normal">thm</mml:mi></mml:msub><mml:mo>)</mml:mo><mml:mo>&lt;</mml:mo><mml:mo>-</mml:mo><mml:mn mathvariant="normal">15</mml:mn></mml:mrow></mml:math></inline-formula> hPa.  Note that for this analysis we consider conditions with 250<inline-formula><mml:math id="M39" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples instead of 500<inline-formula><mml:math id="M40" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples due to less measurements with ice crystal number concentration within IAGOS. However, as seen in Sect. S2 in the supplement, 250<inline-formula><mml:math id="M41" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples should still be sufficient.</p>
      <p id="d2e1433">Figures <xref ref-type="fig" rid="F7"/> and  <xref ref-type="fig" rid="F8"/> display the probability density function (PDF) for the different cloudy conditions, per atmospheric layer, and per geographic region considered in this study. In the LS, we find that the extratropic clear-sky PDF is governed by low values of RHi and a general monotonically decreasing behaviour. The IAGOS measurements show that ISS is possible in the LS, but the probability of occurrence is low. Meanwhile, ERA5 shows little to no ISS occurrence under clear skies in the extratropics. In the tropic regions, the clear-sky PDF in the LS shows some multimodal behaviour, but this is likely the result of a small number of samples in this atmospheric layer due to the high altitude of the tropopause in these regions (see Fig. <xref ref-type="fig" rid="F2"/>). Here, the probability of ISS conditions is much more rare compared to the extratropics. However, we do observe a low probability of ISS conditions in South Asia.</p>
      <p id="d2e1442">Both the extratropics and tropics show small differences in low values of RHi in the LS under clear-sky conditions. This is not necessarily due to biases in ERA5, but may be due to limitations of the IAGOS ICH sensor as discussed in Sect. <xref ref-type="sec" rid="Ch1.S3.SS2"/>. However, this will not impact the prediction of ice supersaturated regions as the issue only arises below RHL <inline-formula><mml:math id="M42" display="inline"><mml:mo>≈</mml:mo></mml:math></inline-formula> 10 % <xref ref-type="bibr" rid="bib1.bibx32" id="paren.90"/>, which is equivalent to RHi <inline-formula><mml:math id="M43" display="inline"><mml:mo>≈</mml:mo></mml:math></inline-formula> 15 %–18 % given the mean temperature in the LS.</p>
      <p id="d2e1464">The UT has more moisture compared to the TROP and LS, allowing for higher probabilities of ISS occurrence. However, the TROP also shows high ISS occurrence, both in the tropics and extratropics. This is in line with <xref ref-type="bibr" rid="bib1.bibx46" id="text.91"/>, where it was found that there was a significant amount of in situ and ERA-interim data that exceeded the RHi <inline-formula><mml:math id="M44" display="inline"><mml:mo>=</mml:mo></mml:math></inline-formula> 100 % threshold near the tropopause in the North Atlantic flight corridor. For UT and TROP clear-sky conditions, the probability of RHi <inline-formula><mml:math id="M45" display="inline"><mml:mrow><mml:mo>&gt;</mml:mo><mml:mn mathvariant="normal">100</mml:mn></mml:mrow></mml:math></inline-formula> % is higher and there is a more uniform probability across the observed RHi range compared to the LS. ERA5 shows good approximation of RHi below ISS in UT and TROP clear-sky conditions until RHi <inline-formula><mml:math id="M46" display="inline"><mml:mo>≈</mml:mo></mml:math></inline-formula> 85 %–90 %, with a drop-off in probability just before <inline-formula><mml:math id="M47" display="inline"><mml:mrow><mml:mtext>RHi</mml:mtext><mml:mo>=</mml:mo><mml:mn mathvariant="normal">100</mml:mn><mml:mspace linebreak="nobreak" width="0.125em"/><mml:mi mathvariant="italic">%</mml:mi></mml:mrow></mml:math></inline-formula>. The underestimation of ISS in ERA5 for clear-sky conditions may be the result of the resolution of ERA5, which only provides hourly mean and grid cell values <xref ref-type="bibr" rid="bib1.bibx51" id="paren.92"/>. However, it shows that by lowering the threshold value of RHi for ISS, we could artificially increase the prediction of ISS in ERA5, though the value may differ per region; as seen from Fig. <xref ref-type="fig" rid="F7"/>, the RHi threshold value would be close to 100 % for North America, but it might be closer to 85 % in Europe.</p>
      <p id="d2e1516">Cloudy and indeterminate conditions in ERA5 for the UT and TROP are governed by narrow peaks centred around <inline-formula><mml:math id="M48" display="inline"><mml:mrow><mml:mtext>RHi</mml:mtext><mml:mo>=</mml:mo><mml:mn mathvariant="normal">100</mml:mn><mml:mspace width="0.125em" linebreak="nobreak"/><mml:mi mathvariant="italic">%</mml:mi></mml:mrow></mml:math></inline-formula> due to the saturation adjustment. For IAGOS, these peaks are centred at higher values of RHi, with wider distributions as cirrus clouds often exhibit an ice supersaturated wet mode, but they can also be subsaturated <xref ref-type="bibr" rid="bib1.bibx47" id="paren.93"/>. In South Asia, we find that this mode is subsaturated in the UT in the IAGOS measurements. This observation in South Asia may also provide insights into the moist bias found in JJA (Sect. <xref ref-type="sec" rid="Ch1.S3.SS2"/>). The mean vertical distribution of RHi shows a higher mean RHi for ERA5 compared to IAGOS in cloudy and indeterminate conditions for South Asia in JJA, at vertical levels below the tropopause. This is because the mean RHi in IAGOS for this particular region and season is less than 100 % in cloudy and indeterminate conditions, which aligns with the behaviour of the RHi PDF, whereas ERA5 shows a mean of 100 %. Therefore, the moist bias appears to arise because ERA5 cannot take into account that the wet mode in cloudy conditions can be subsaturated in some regions. Whether the subsaturation is a result of the specific weather conditions in JJA in South Asia is uncertain and requires further evaluation.</p>

      <fig id="F7" specific-use="star"><label>Figure 7</label><caption><p id="d2e1541"><bold>(a–l)</bold> Probability density function of IAGOS and ERA5 relative humidity over ice in the upper troposphere (UT), at the tropopause (TROP) and in the lower stratosphere (LS) for cloudy, clear-sky and indeterminate conditions in the four extratropic regions. The PDFs per subplot are normalised with respect to the number of observations within each subset of IAGOS or ERA5 used for that subplot. Only regions and atmospheric layers with 250<inline-formula><mml:math id="M49" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples are considered. </p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f07.png"/>

        </fig>

      <fig id="F8" specific-use="star"><label>Figure 8</label><caption><p id="d2e1561"><bold>(a–l)</bold> Probability density function of IAGOS and ERA5 relative humidity over ice in the upper troposphere (UT), at the tropopause (TROP) and in the lower stratosphere (LS) for cloudy, clear-sky and indeterminate conditions in the four tropic regions. The PDFs per subplot are normalised with respect to the number of observations within each subset of IAGOS or ERA5 used for that subplot. Only regions and atmospheric layers with 250<inline-formula><mml:math id="M50" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples are considered. </p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f08.png"/>

        </fig>

</sec>
<sec id="Ch1.S3.SS4">
  <label>3.4</label><title>Distribution of ice supersaturated regions in ERA5 and IAGOS</title>
      <p id="d2e1587">Comparison of the RHi showed a general dry bias in ERA5, compared to IAGOS, with some seasonal and regional differences. In the following section, we will explore the impact of such biases on the ice supersaturated region occurrence.</p>
      <p id="d2e1590">Figure <xref ref-type="fig" rid="F9"/> displays the vertical distribution of the ISSR fraction per season and geographical region. The ISSR fraction is calculated by finding the total number of points showing ISS conditions and dividing by the total number of points, per vertical level, season and geographical region. There is an overall underestimation of ISSRs in ERA5 due to the dry bias in RHi. In instances where the RHi is overestimated by ERA5, such as in South Asia for season JJA, the ISSR fraction is overestimated by ERA5.</p>
      <p id="d2e1595">In the tropics, we generally report an increasing ISSR fraction up to just below the tropopause, with a maximum of 20 %. The South Atlantic, Africa, and South Asia show little seasonal dependence. In the Southern Trans-Pacific, it is observed that the maximum ISSR fraction in the Southern Trans-Pacific occurs closer to the tropopause in DJF than in JJA. The vertical profile of the mean RHi in DJF for this region also showed a more pronounced increase near the tropopause compared to other seasons (see Fig. <xref ref-type="fig" rid="F6"/>). In the layer between 100  and 200 hPa below the tropopause, the ISSR fraction in DJF is lower than in the other seasons, which is consistent with the lower mean RHi in this layer.</p>
      <p id="d2e1600">For South Asia, we do not find that the ISSR fraction is higher in JJA in the IAGOS measurements, despite the higher overall mean RHi. This could be related to the higher frequency of cloudy conditions in South Asia in JJA, for which the wet mode of the RHi PDF is subsaturated, leading to less ISS occurrences. ERA5 shows a higher ISSR fraction throughout the vertical profile in JJA; this was also the season for which ERA5 showed a moist bias. Otherwise, we find no distinct seasonal behaviour in the tropics.</p>
      <p id="d2e1604">There is a clear seasonal pattern in North America, North Atlantic and Europe, with DJF and MAM showing the highest ISSR occurrence. For these seasons, IAGOS shows maximum ISSR fractions between 30 % and 35 % with IAGOS, typically occurring just below the tropopause (around 30 hPa, <inline-formula><mml:math id="M51" display="inline"><mml:mo>≈</mml:mo></mml:math></inline-formula> 750 m at cruise level; <xref ref-type="bibr" rid="bib1.bibx63 bib1.bibx42" id="altparen.94"/>) and decreases to zero in the lower stratosphere.</p>

      <fig id="F9" specific-use="star"><label>Figure 9</label><caption><p id="d2e1619"><bold>(a–h)</bold> Vertical distribution of IAGOS and ERA5 ice supersaturated region fraction per season and geographical region. Only levels, seasons and regions with 500<inline-formula><mml:math id="M52" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples are considered. </p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f09.png"/>

        </fig>

      <p id="d2e1637">To quantify the skill of ERA5 in predicting ISSRs, we can use the equitable threat score (ETS). This performance measure is preferred over measures such as the hit rate and false alarm rate since ISSRs can be a rare event <xref ref-type="bibr" rid="bib1.bibx17 bib1.bibx69" id="paren.95"/>, for example in the lower stratosphere. The ETS is calculated using Eq. (<xref ref-type="disp-formula" rid="Ch1.E1"/>), where <inline-formula><mml:math id="M53" display="inline"><mml:mi>r</mml:mi></mml:math></inline-formula> is found with Eq. (<xref ref-type="disp-formula" rid="Ch1.E2"/>) and the other variables are entries in the contingency table shown in Table <xref ref-type="table" rid="T4"/>. If <inline-formula><mml:math id="M54" display="inline"><mml:mrow><mml:mtext>ETS</mml:mtext><mml:mo>=</mml:mo><mml:mn mathvariant="normal">1</mml:mn></mml:mrow></mml:math></inline-formula>, there is a perfect correlation between the observation and the prediction <xref ref-type="bibr" rid="bib1.bibx17" id="paren.96"/>. When <inline-formula><mml:math id="M55" display="inline"><mml:mrow><mml:mtext>ETS</mml:mtext><mml:mo>=</mml:mo><mml:mn mathvariant="normal">0</mml:mn></mml:mrow></mml:math></inline-formula>, the relationship is completely random <xref ref-type="bibr" rid="bib1.bibx17" id="paren.97"/>. We investigate how the ETS varies with different RHi thresholds in ERA5, while keeping the threshold of 100 % in IAGOS.

                <disp-formula specific-use="gather" content-type="numbered"><mml:math id="M56" display="block"><mml:mtable displaystyle="true"><mml:mlabeledtr id="Ch1.E1"><mml:mtd><mml:mtext>1</mml:mtext></mml:mtd><mml:mtd><mml:mrow><mml:mstyle class="stylechange" displaystyle="true"/><mml:mtext>ETS</mml:mtext><mml:mo>=</mml:mo><mml:mstyle displaystyle="true"><mml:mfrac style="display"><mml:mrow><mml:mtext>TP</mml:mtext><mml:mo>-</mml:mo><mml:mi>r</mml:mi></mml:mrow><mml:mrow><mml:mtext>TP</mml:mtext><mml:mo>+</mml:mo><mml:mtext>FN</mml:mtext><mml:mo>+</mml:mo><mml:mtext>FP</mml:mtext><mml:mo>-</mml:mo><mml:mi>r</mml:mi></mml:mrow></mml:mfrac></mml:mstyle></mml:mrow></mml:mtd></mml:mlabeledtr><mml:mlabeledtr id="Ch1.E2"><mml:mtd><mml:mtext>2</mml:mtext></mml:mtd><mml:mtd><mml:mrow><mml:mstyle class="stylechange" displaystyle="true"/><mml:mi>r</mml:mi><mml:mo>=</mml:mo><mml:mstyle displaystyle="true"><mml:mfrac style="display"><mml:mrow><mml:mo>(</mml:mo><mml:mtext>TP</mml:mtext><mml:mo>+</mml:mo><mml:mtext>FN</mml:mtext><mml:mo>)</mml:mo><mml:mo>(</mml:mo><mml:mtext>TP</mml:mtext><mml:mo>+</mml:mo><mml:mtext>FP</mml:mtext><mml:mo>)</mml:mo></mml:mrow><mml:mrow><mml:mtext>TP</mml:mtext><mml:mo>+</mml:mo><mml:mtext>FN</mml:mtext><mml:mo>+</mml:mo><mml:mtext>FP</mml:mtext><mml:mo>+</mml:mo><mml:mtext>TN</mml:mtext></mml:mrow></mml:mfrac></mml:mstyle></mml:mrow></mml:mtd></mml:mlabeledtr></mml:mtable></mml:math></disp-formula></p>
      <p id="d2e1776">Figures <xref ref-type="fig" rid="F10"/> and <xref ref-type="fig" rid="F11"/> show the vertical distribution of the ETS per geographical region for different ERA5 RHi thresholds in DJF and JJA, respectively. When using the threshold of <inline-formula><mml:math id="M57" display="inline"><mml:mrow><mml:mtext>RHi</mml:mtext><mml:mo>=</mml:mo><mml:mn mathvariant="normal">100</mml:mn><mml:mspace linebreak="nobreak" width="0.125em"/><mml:mi mathvariant="italic">%</mml:mi></mml:mrow></mml:math></inline-formula>, the ETS lies between 0.2 and 0.4 in the upper troposphere, depending on the season, vertical distance to the tropopause and region. This means that there is a weak to mediocre correlation between IAGOS and ERA5 in the prediction of ISSRs. There are a few instances of high ETS scores: North America in season JJA at 180 hPa below the tropopause and North Atlantic in season DJF at 150 hPa below the tropopause. For North America in season JJA at <inline-formula><mml:math id="M58" display="inline"><mml:mrow><mml:mn mathvariant="normal">180</mml:mn><mml:mo>-</mml:mo><mml:msub><mml:mi>p</mml:mi><mml:mi mathvariant="normal">thm</mml:mi></mml:msub></mml:mrow></mml:math></inline-formula> hPa, there is a low number of ISSRs in both IAGOS and ERA5 (see Fig. <xref ref-type="fig" rid="F9"/>), where one measurement point is classified as TP, one point as FN and the rest as TN. Since the ISSR events are rare, resulting in a perfect hit rate, accompanied with most points classified as TN, the ETS can inflate. We see a similar low ISSR fraction for North America in season JJA at <inline-formula><mml:math id="M59" display="inline"><mml:mrow><mml:mn mathvariant="normal">150</mml:mn><mml:mo>-</mml:mo><mml:msub><mml:mi>p</mml:mi><mml:mi mathvariant="normal">thm</mml:mi></mml:msub></mml:mrow></mml:math></inline-formula> hPa, although the ETS is not as high. This can be attributed to more points being categorised as FN and FP, lowering the ETS. In the North Atlantic, in season DJF at 150 hPa below the tropopause, we also find a high ETS. In the instances where an ISSR is observed here, most of these events are classified as TP, with no misses (FN <inline-formula><mml:math id="M60" display="inline"><mml:mo>=</mml:mo></mml:math></inline-formula> 0), and there were few points classified as FP compared to TP. At the same time, there are also many points classified as TN. The combination of this leads to a high ETS.</p>

<table-wrap id="T4"><label>Table 4</label><caption><p id="d2e1841">Contingency table definition.</p></caption><oasis:table frame="topbot"><oasis:tgroup cols="3">
     <oasis:colspec colnum="1" colname="col1" align="justify" colwidth="2cm"/>
     <oasis:colspec colnum="2" colname="col2" align="left"/>
     <oasis:colspec colnum="3" colname="col3" align="left"/>
     <oasis:thead>
       <oasis:row>

         <oasis:entry rowsep="1" colname="col1" morerows="1">IAGOS observation</oasis:entry>

         <oasis:entry rowsep="1" namest="col2" nameend="col3" align="center">ERA5 prediction </oasis:entry>

       </oasis:row>
       <oasis:row rowsep="1">

         <oasis:entry colname="col2">Yes</oasis:entry>

         <oasis:entry colname="col3">No</oasis:entry>

       </oasis:row>
     </oasis:thead>
     <oasis:tbody>
       <oasis:row>

         <oasis:entry colname="col1">Yes</oasis:entry>

         <oasis:entry colname="col2">True positive (TP)</oasis:entry>

         <oasis:entry colname="col3">False negative (FN)</oasis:entry>

       </oasis:row>
       <oasis:row>

         <oasis:entry colname="col1">No</oasis:entry>

         <oasis:entry colname="col2">False positive (FP)</oasis:entry>

         <oasis:entry colname="col3">True negative (TN)</oasis:entry>

       </oasis:row>
     </oasis:tbody>
   </oasis:tgroup></oasis:table></table-wrap>

      <p id="d2e1904">By reducing the RHi threshold, we can improve the ability of ERA5 to predict ISSRs, as shown by the ETS. The optimal RHi thresholds are in the range of 85 % to 95 % in the upper troposphere and in the tropopause. However, it is also dependent on the region, distance from the tropopause and the season, but a clear pattern is difficult to establish. In the extratropics, more improvements in the ability of ERA5 to predict ISSRs can be achieved in DJF by reducing the RHi threshold compared to in JJA. This could be due to lower RHi values and thus less ISSRs in warmer months, such as JJA, although North Asia shows the highest ISSR fraction for this season, as seen in Fig. <xref ref-type="fig" rid="F9"/>. SON and MAM also show more improvements compared to JJA when lowering the RHi threshold (see Sect. S5 in the Supplement). Overall, only a certain improvement can be achieved by changing the RHi threshold. Not accounting for the outliers, we observe that we cannot achieve an ETS higher than approximately 0.5 in DJF and around 0.3 in JJA in the upper troposphere and in the tropopause.</p>
      <p id="d2e1909">In the extratropic lower stratosphere, lowering the RHi threshold in ERA5 shows a minor improvement in the ETS, but the ETS score still indicates a weak correlation between IAGOS and ERA5. There is a low number of ISSR occurrences in this layer, which combined with the underestimation of RHi in ISS conditions, might make it difficult for ERA5 to predict ISSRs in these instances, resulting in a low ETS.</p>
      <p id="d2e1912">In the tropics, DJF also shows larger ETS improvements by decreasing the RHi threshold compared to other seasons in the upper troposphere. It is also interesting to note that in South Asia in JJA, where we observed a moist bias in ERA5, both increasing and decreasing the RHi threshold in ERA5 has little to no impact on the ETS. This could be the result of a higher frequency of cloudy conditions in this particular season, for which changing the RHi threshold may not have a large effect. In Southern Trans-Pacific, we find that ERA5 shows better prediction of ISSRs when lowering the RHi threshold in DJF, compared to in JJA, MAM and SON, with SON showing the lowest ETS. SON has the highest fraction of cloudy conditions and DJF the lowest. The effect of cloudy conditions on the ETS with different RHi thresholds will be analysed further in the following section.</p>

      <fig id="F10" specific-use="star"><label>Figure 10</label><caption><p id="d2e1917"><bold>(a–h)</bold> Vertical distribution of ice supersaturated region equitable threat score per geographical region for different ERA5 RHi thresholds in DJF. For each level, we highlight the ETS for a threshold of 100 % and the ETS for the threshold at which we find the maximum value. ETS is calculated for level, season and region for which there are 500<inline-formula><mml:math id="M61" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples. </p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f10.png"/>

        </fig>

      <fig id="F11" specific-use="star"><label>Figure 11</label><caption><p id="d2e1937"><bold>(a–h)</bold> Vertical distribution of ice supersaturated region equitable threat score per geographical region for different ERA5 RHi thresholds in JJA. For each level, we highlight the ETS for a threshold of 100 % and the ETS for the threshold at which we find the maximum value. ETS is calculated for level, season and region for which there are 500<inline-formula><mml:math id="M62" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples. </p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f11.png"/>

        </fig>

</sec>
<sec id="Ch1.S3.SS5">
  <label>3.5</label><title>Prediction of ice supersaturated regions in ERA5 under cloudy and clear-sky conditions</title>
      <p id="d2e1964">In Sect. <xref ref-type="sec" rid="Ch1.S3.SS3"/>, the effect of cloudy conditions on the RHi was investigated for the different atmospheric layers and for the different geographical regions. Here, we explore the effect of cloudy and clear-sky conditions on the capability of ERA5 to correctly identify ice supersaturated regions, and the effect of varying the RHi threshold in ERA5. Again, we only consider the three atmospheric layers due to low sampling of the ice crystal number concentration in IAGOS, as described in Sect. <xref ref-type="sec" rid="Ch1.S3.SS3"/>.</p>
      <p id="d2e1971">Figures <xref ref-type="fig" rid="F12"/> and  <xref ref-type="fig" rid="F13"/> display the ETS for clear-sky and cloudy conditions for different ERA5 RHi thresholds. In clear-sky conditions, we find an ETS of approximately 0.15 in the extratropic UT and TP. This indicates a weak coherence in the prediction of ISSRs between IAGOS and ERA5 and is the result of the clear-sky dry bias in ERA5 discussed in Sect. <xref ref-type="sec" rid="Ch1.S3.SS3"/>. The ETS reduces to between 0 and 0.05 in the clear-sky LS due to the rare occurrence of ISSRs and the underestimation of ISSRs by ERA5. For cloudy conditions, the ETS is between 0.05 and 0.08 in most extratropic regions, indicating an almost purely random relationship between IAGOS and ERA5, which is most likely resulting from the saturation adjustment in the IFS. In North America, we find the ETS in the cloudy UT to be 0.14, showing a weak coherence. No ETS are calculated in the extratropic TP or LS under cloudy conditions due to insufficient samples.</p>
      <p id="d2e1980">In the tropics, the ETS is generally 0.05 in the clear-sky UT and show little increase or decrease in the TP when considering the RHi <inline-formula><mml:math id="M63" display="inline"><mml:mo>=</mml:mo></mml:math></inline-formula> 100 % threshold. In the cloudy UT, the tropics shows an ETS of 0.1 or less, showing an almost entirely random relationship. The lower ETS in the tropics is also inline with the results presented in Sect. <xref ref-type="sec" rid="Ch1.S3.SS4"/> and shows that ERA5 has little to no skill in predicting ISSR occurrence in tropic regions.</p>
      <p id="d2e1992">We find that by lowering the ERA5 RHi threshold, we can improve the predictive skill of ERA5 under clear-sky conditions. In the extratropics, a threshold of 85 % shows the best ETS in the UT and TROP, although the increase is only approximately 0.1. In the extratropical LS, decreasing the RHi threshold to 85 % results in only a marginal ETS improvement due to the low overall occurrence of ISSRs, with scores indicating a weak relationship. Similarly, in the tropical UT and TP, we find that the ETS increases by 0.1 on average when reducing the ERA5 RHi threshold to 85 % under clear-sky conditions.</p>
      <p id="d2e1996">Reducing the ERA5 RHi threshold under cloudy conditions in North America and North Asia also allows for minor improvements in the prediction of ISSRs in ERA5. In the North Atlantic and Europe, the best threshold appears to be 99 %, without showing much improvement in the ETS. In the North Atlantic, the hit rate and false alarm are both high at the threshold of 100 %. As the RHi threshold is decreased, both the hit rate and false alarm increase such that they are almost equal, while lowering the ETS. We see a similar occurrence in Europe; the difference is that the false alarm rates are lower, resulting in an ETS that is higher than in the North Atlantic. While this also occurs in North America and North Asia, the increase in the false alarm rate with the decrease in RHi threshold is not as high as in the North Atlantic or in Europe. The same reasoning also applies to the tropical regions. Hence, while lowering the RHi threshold does increase the number of correctly predicted ISSRs in ERA5, it comes at the cost of more false positives.</p>

      <fig id="F12" specific-use="star"><label>Figure 12</label><caption><p id="d2e2001"><bold>(a–h)</bold> Ice supersaturated region equitable threat score under clear-sky conditions for different ERA5 RHi thresholds in the upper troposphere (UT), tropopause (TP) and the lower stratosphere (LS). The different conditions have been matched between IAGOS and ERA5. Only combinations with 250<inline-formula><mml:math id="M64" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples are considered. For each layer, we highlight the ETS for a threshold of 100 % and the ETS for the threshold at which we find the maximum value.</p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f12.png"/>

        </fig>

      <fig id="F13" specific-use="star"><label>Figure 13</label><caption><p id="d2e2021"><bold>(a–h)</bold> Ice supersaturated region equitable threat score under cloudy conditions for different ERA5 RHi thresholds in the upper troposphere (UT), tropopause (TP) and the lower stratosphere (LS). The different conditions have been matched between IAGOS and ERA5. Only combinations with 250<inline-formula><mml:math id="M65" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples are considered. For each layer, we highlight the ETS for a threshold of 100 % and the ETS for the threshold at which we find the maximum value.</p></caption>
          <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f13.png"/>

        </fig>

</sec>
</sec>
<sec id="Ch1.S4">
  <label>4</label><title>Discussion</title>
      <p id="d2e2048">The results presented in this paper largely agree with other studies. The extratropical upper tropospheric cold bias of 0.5 K in ERA5 compared to IAGOS is in line with <xref ref-type="bibr" rid="bib1.bibx69" id="text.98"/>, who compared ERA5 and IAGOS in the mid-latitudes at different pressure levels. The observed extratropical lower stratospheric cold bias in ERA5 compared to IAGOS of 0.75–1 K aligns with results from <xref ref-type="bibr" rid="bib1.bibx53" id="text.99"/>, who reported a cold bias of up to 0.5 K in comparison to radiosondes in the lower stratosphere of ERA5 due to an underlying cold bias in the IFS. The vertical distribution of RHi using IAGOS measurements in the extratropics is similar to that reported by <xref ref-type="bibr" rid="bib1.bibx42" id="text.100"/>. The ERA5 extratropical dry bias is in line with other studies <xref ref-type="bibr" rid="bib1.bibx46 bib1.bibx69" id="paren.101"/>. We also observed a lower RHi from ERA5 than IAGOS in the lower stratosphere, but we cannot ascertain that it is due to biases in ERA5. In fact, some studies have also reported a general moist bias in the lower stratosphere in the ECMWF-IFS <xref ref-type="bibr" rid="bib1.bibx11 bib1.bibx53 bib1.bibx6" id="paren.102"/>.</p>
      <p id="d2e2066">The overall behaviour of the RHi PDF under cloudy, clear-sky and indeterminate conditions in the UT and TROP is similar to that found by <xref ref-type="bibr" rid="bib1.bibx69" id="text.103"/>, but we find larger difference in the peak probability between IAGOS and ERA5 for cloudy and indeterminate conditions. If we consider the same geographic area, pressure levels and time frame for IAGOS measurements as <xref ref-type="bibr" rid="bib1.bibx69" id="text.104"/> and do not consider separate atmospheric layers and do not normalise given the number of observations, we obtain more similar results to <xref ref-type="bibr" rid="bib1.bibx69" id="text.105"/>. We also found a low probability of RHi <inline-formula><mml:math id="M66" display="inline"><mml:mo>&gt;</mml:mo></mml:math></inline-formula> 100 % in the lower stratosphere using IAGOS measurements, which was also reported by <xref ref-type="bibr" rid="bib1.bibx15" id="text.106"/> using the global distribution of MOZAIC flights and by <xref ref-type="bibr" rid="bib1.bibx47" id="text.107"/> in high-latitude regions (60–80° N) using IAGOS measurements. In South Asia, we also found that the wet mode was subsaturated using IAGOS measurements. <xref ref-type="bibr" rid="bib1.bibx47" id="text.108"/> found similar observations when considering a larger tropical region.</p>
      <p id="d2e2095">In terms of the ISSR fraction, we observed that the ISSR fraction in the tropics increased up to just below the tropopause, and reached a maximum of 20 % when looking at IAGOS. This is similar to <xref ref-type="bibr" rid="bib1.bibx47" id="text.109"/>, who reported a maximum ISSR fraction of 15 % in the tropics using IAGOS; the ISSR frequency varied about 5 % or less among the four considered seasons in the tropics. <xref ref-type="bibr" rid="bib1.bibx33" id="text.110"/> also observed increasing ISSR occurrence with altitude in the tropics using MOZAIC, with maximum ISSR frequencies of up to 30 %, but this study considered the frequency per individual grid box. The vertical structure of the ISSR fraction found using IAGOS measurements in the extratropics is also consistent with earlier findings <xref ref-type="bibr" rid="bib1.bibx42 bib1.bibx46 bib1.bibx47" id="paren.111"/>, but we observe some variance in the maximum ISSR fraction reported with IAGOS/MOZAIC. A maximum ISSR fraction of 40 % was found when considering all seasons <xref ref-type="bibr" rid="bib1.bibx46" id="paren.112"/> and 20 % in the midlatitudes for DJF and MAM <xref ref-type="bibr" rid="bib1.bibx47" id="paren.113"/>. However, the ISSR fraction is sensitive to the number of samples and these studies use different subsets of the IAGOS/MOZAIC dataset.</p>
      <p id="d2e2113">We also found that the ISSR fraction is generally underestimated by ERA5 due to the observed dry bias. <xref ref-type="bibr" rid="bib1.bibx46" id="text.114"/> observed the same for ERA-interim when considering the North Atlantic region. As expected, when the RHi is overestimated by ERA5, such as in South Asia for season JJA, the ISSR fraction is overestimated by ERA5 as well. <xref ref-type="bibr" rid="bib1.bibx1" id="text.115"/> found a tendency for ERA5 to overestimate the ISSR occurrence at cruise altitudes in the tropics and mid-latitudes when compared to radiosonde measurements. However, the radiosonde measurements are not corrected for dry biases and the location of these radiosonde observations are generally over land and not very widespread as with the IAGOS measurements, which could lead to differences in obtained results.</p>
      <p id="d2e2123"><xref ref-type="bibr" rid="bib1.bibx17" id="text.116"/> calculated ETS between 0.05 and 0.25, depending on the season. The value of 0.05 is on the lower side compared to the results in Sect. <xref ref-type="sec" rid="Ch1.S3.SS4"/>, but this may be because the study does not take into account the different atmospheric layers or regions, and it also only considers four months of IAGOS measurements. If we do not take into account the vertical layers defined, the ETS remains between 0.15 and 0.3. Hence, the low ETS found by <xref ref-type="bibr" rid="bib1.bibx17" id="text.117"/> is most likely the result of using a smaller subset of IAGOS and ERA5 data. The study by <xref ref-type="bibr" rid="bib1.bibx65" id="text.118"/> shows an ETS of 0.23 upper troposphere (UT) and 0.14 in the lower stratosphere before application of the machine learning algorithm, which agrees well with the values identified in this study.</p>
      <p id="d2e2136">We find different ETS scores in clear-sky and cloudy conditions compared to <xref ref-type="bibr" rid="bib1.bibx65" id="text.119"/>, who found an ETS score of 0.06 in clear-sky upper troposphere and lower stratosphere (UTLS). In the cloudy UTLS, <xref ref-type="bibr" rid="bib1.bibx65" id="text.120"/> calculated an ETS score of 0.23. These different ETS scores are the result of using different methodologies for classifying cloudy and clear-sky conditions. <xref ref-type="bibr" rid="bib1.bibx65" id="text.121"/> uses the specific cloud ice water content from ERA5 to determine if a point is within a cloud or in clear-sky. Other papers use the ice crystal number concentration to determine cloudy conditions in IAGOS measurements <xref ref-type="bibr" rid="bib1.bibx41 bib1.bibx47 bib1.bibx69" id="paren.122"/>, but the reporting of cloudy conditions compared to ERA5 appears relatively new. Only <xref ref-type="bibr" rid="bib1.bibx69" id="text.123"/> and <xref ref-type="bibr" rid="bib1.bibx65" id="text.124"/> seem to have considered such a comparison, but use different variables to determine in-cloud conditions in ERA5. As discussed in Sect. S1 in the Supplement, the cloud ice water content definition tends to classify measurements as in-cloud even in the presence of subvisible cirrus. This reduces the number of points classified as clear-sky and, consequently the observable ISSR occurrence in these conditions. However, for contrail avoidance purposes, distinguishing between clear-sky and subvisible cirrus is not critical as contrail cirrus would result in a warming impact in both cases <xref ref-type="bibr" rid="bib1.bibx43" id="paren.125"/>. Hence, maintaining the ice crystal number concentration from IAGOS as the observational reference, we recommend using the cloud cover in ERA5 to distinguish between cloudy and clear-sky conditions.</p>
      <p id="d2e2161">In an attempt to identify when biases in ERA5 might arise and how to correct them, we recommend as future research to explore the correlation between weather pattern and the ability of ERA5 to estimate ISSRs. As an example, we explored whether the type of North Atlantic weather pattern can affect the observed biases in ERA5 since <xref ref-type="bibr" rid="bib1.bibx31" id="text.126"/> found that the probability of forming contrails as a function of altitude depends on the weather patterns when using ERA-Interim. The methodology is explained in the Supplement (Sect. S7). The variability of ERA5 biases under the five winter weather patterns was found to be larger than the one under the three summer weather patterns. For the winter weather patterns, we see more distinct weather dependency of the biases on eastbound routes compared to on westbound routes. We suggest that this could be due to the variability of the jet stream location and strength, which determines the distribution of ISSRs, although the interpretation of these findings requires further investigation.</p>
      <p id="d2e2167">Another factor influencing our conclusions is the availability of IAGOS measurements. Without enough measurements, our conclusions may not be representative. Therefore, we evaluated the necessary number of points needed to be confident in our results (see Sect. S2 in the Supplement). Nevertheless, there are still some limitations. In our evaluation on the prediction of ISSRs in ERA5 under cloudy and clear-sky conditions, we lowered the minimum sample size required for a representative result due to low sampling of the ice crystal number concentration in IAGOS. This results in a larger variability of the ETS, and thus the true value may be higher or lower than reported, though, the 95 % confidence interval lies close to the mean of 100 tests. For future work, it would be helpful to increase the number of IAGOS aircraft capable of measuring the ice crystal number concentration to further distinguish between cloudy and clear-sky conditions.</p>
</sec>
<sec id="Ch1.S5" sec-type="conclusions">
  <label>5</label><title>Conclusions</title>
      <p id="d2e2179">In this study, we evaluated ERA5 temperature, relative humidity over ice (RHi) and ice supersaturated region (ISSR) occurrence against IAGOS in situ measurements over the period 2011–2022. Differences in the frequency of ice supersaturation (ISS) were also compared. The analysis was performed over a large geographical area covering the tropics and extratropics. It included the upper troposphere (UT) and lower stratosphere (LS), with vertical levels defined based on distance to the thermal tropopause. The RHi and ISSR occurrence is also documented for cloudy and clear-sky conditions. We used the ice crystal number concentration in the IAGOS measurements and the cloud cover in ERA5 to distinguish between cloudy, clear-sky and indeterminate conditions. The impact of changing the ERA5 RHi threshold on the ability of ERA5 to predict ISSRs was also investigated. The main conclusions of our study are as follows: 
<list list-type="order"><list-item>
      <p id="d2e2186">The vertical distribution of temperature and relative humidity over ice was analysed per season and region for IAGOS and ERA5. Temperature differences between IAGOS and ERA5 were mainly a function of the atmospheric layer, with a larger cold bias in the LS. ERA5 showed a dry bias in RHi for all atmospheric layers, but the differences in the lower stratosphere may be due to limitations of the IAGOS ICH sensor. Larger dry biases were found in colder months in the extratropics due to larger values of RHi occurring in these conditions. A moist bias was identified in South Asia for season JJA.</p></list-item><list-item>
      <p id="d2e2190">We characterised the PDF of RHi in the UT, the tropopause (TROP) and the LS for cloudy, clear-sky and indeterminate conditions. In clear-sky conditions, ERA5 showed an underestimation of ISS. In cloudy conditions, ERA5 displayed large peaks centred at <inline-formula><mml:math id="M67" display="inline"><mml:mrow><mml:mtext>RHi</mml:mtext><mml:mo>=</mml:mo><mml:mn mathvariant="normal">100</mml:mn><mml:mspace width="0.125em" linebreak="nobreak"/><mml:mi mathvariant="italic">%</mml:mi></mml:mrow></mml:math></inline-formula>, due to the scheme that lowers RHi to saturation when clouds are present (saturation adjustment). This is more critical in the UT and TROP, since the LS is dry and cloud occurrence is rare, with little to no ISS conditions. While this generally also results in a dry bias, it can also cause a moist bias if the wet mode of the RHi PDF is subsaturated.</p></list-item><list-item>
      <p id="d2e2209">ERA5 showed a general underestimation of ISSRs in comparison to IAGOS due to biases in the RHi. The ability of ERA5 to predict ISSRs was estimated using the equitable threat score (ETS). With an RHi threshold of 100 %, ERA5 shows a weak to mediocre correlation with IAGOS. We found that the ability of ERA5 to predict ISSRs can be improved by decreasing the ERA5 RHi threshold. The optimal value ranges between 85 % to 95 % in the upper troposphere and tropopause, and it shows a dependency on the region, distance from the tropopause and the season, with more improvements possible in DJF compared to JJA. However, the improvement is limited, as ETS values do not exceed about 0.5 in DJF and 0.3 in JJA. In the lower stratosphere, RHi threshold adjustments have little effect on the predictive skills of ERA5.</p></list-item><list-item>
      <p id="d2e2213">The ETS for various ERA5 RHi thresholds was also calculated for the prediction of ISSRs under cloudy, clear-sky and indeterminate conditions. It showed a better coherence between IAGOS and ERA5 for clear-sky conditions compared to cloudy conditions, particularly in the extratropics. Better predictive skills of ERA5 can generally be achieved by lowering the RHi threshold to 85 %, albeit the improvements are limited and ERA5 still exhibits a weak to mediocre correlation with IAGOS. The ETS values for cloudy conditions indicate an almost random relationship. Improvements from lowering the RHi threshold are constrained by the resulting increase in false alarms.</p></list-item></list>
</p>
      <p id="d2e2218">This study is an extension of previous studies comparing IAGOS and ERA5, such as <xref ref-type="bibr" rid="bib1.bibx17" id="text.127"/> and <xref ref-type="bibr" rid="bib1.bibx69" id="text.128"/>. These studies also find ERA5 to underestimate ISSR occurrence compared to in situ measurements due to biases in estimation of RHi in ERA5. However, they are limited in their regional and seasonal coverage. Our analysis considers geographical areas not covered in the previously mentioned studies, such as the tropics, and provides a seasonal comparison within each subregion considered. It shows that we cannot assume that ERA5 has the same ability to predict ISSRs in different subregions and that ERA5 has less ability to predict ISSRs in the tropics. Our seasonal comparison reveals a similar seasonal pattern in ISSR occurrence in the extratropics as reported in previous studies, but we further find that the ability of ERA5 to predict ISSRs can itself be seasonally dependent.</p>
      <p id="d2e2227">With regard to the comparison of ice supersaturation in cloudy, clear-sky and indeterminate conditions, we find comparable results in the RHi PDF in the extratropics to those of <xref ref-type="bibr" rid="bib1.bibx69" id="text.129"/>, and the IAGOS RHi PDF closely resembled the results obtained by previous studies. We find larger differences in the peak probability of RHi between IAGOS and ERA5 under cloudy and indeterminate compared to <xref ref-type="bibr" rid="bib1.bibx69" id="text.130"/>, most likely due to the consideration of the atmospheric layers in this study. Moreover, we extended the analysis to the tropics and also quantified how cloudy, clear-sky and indeterminate conditions affect the ability of ERA5 to predict ISSRs, which was shown to be driven by the clear-sky dry bias in RHi and the saturation adjustment in ERA5. <xref ref-type="bibr" rid="bib1.bibx65" id="text.131"/> calculated the ETS for RHi <inline-formula><mml:math id="M68" display="inline"><mml:mo>&gt;</mml:mo></mml:math></inline-formula> 100 % with IAGOS and ERA5 under cloudy and clear-sky conditions, for which a higher ETS was found for cloudy conditions compared to clear-sky for a dataset covering the upper troposphere and lower stratosphere. <xref ref-type="bibr" rid="bib1.bibx65" id="text.132"/> used a different methodology to detect clear-sky and cloudy conditions compared to this study. We recommend using the cloud cover from ERA5 for comparing ISSRs with IAGOS under cloudy and clear-sky conditions when using the ice crystal number concentration from IAGOS as the observational reference. This is because the cloud ice water content classifies measurements as in-cloud in the presence of subvisible cirrus, which is not critical for contrail avoidance purposes since contrail cirrus would result in a warming impact in both cases <xref ref-type="bibr" rid="bib1.bibx43" id="paren.133"/>.</p>
      <p id="d2e2253">The representativeness of our results was also influenced by the availability of IAGOS measurements, particularly the sampling of the ice crystal number concentration. While the minimum sample size required for statistical robustness was evaluated, we had to relax this threshold for some analyses due to low sampling, resulting in a larger variability of the ETS. For example, this was done in the analyses on the prediction of ISSRs under cloudy and clear-sky conditions. Increasing the number of IAGOS aircraft capable of measuring the ice crystal number concentration would enable clearer separation of cloudy and clear-sky conditions, while improving the assessment of RHi and ISSRs under such conditions.</p>
      <p id="d2e2257">Based on the results of this study, the lack of ISS in clear-sky conditions is a key limitation in the ERA5 reanalysis dataset and should be addressed. Otherwise, ISSRs are systematically underestimated, potentially leading to an underestimation of the occurrence of persistent contrails and, consequently, uncertainties in their estimated climate impact. The lack of ISS may for the time being be improved by decreasing the RHi threshold for ISS, although the optimal threshold value can only be determined for regions where in situ measurements are available to validate it. The analysis also shows that the application of the saturation adjustment in the NWP model underlying the reanalysis should be revisited to properly account for ISS under cloudy conditions, as the current approach contributes to inaccuracies in the prediction of ISSRs in ERA5. Overall, these findings improve our understanding regarding the variability of ISSRs and the extent to which ERA5 is able to accurately predict them under different conditions. This has important implications for the accurate assessment of aviation induced persistent contrail formation, which can have a significant effect on the local radiative budget.</p>
</sec>

      
      </body>
    <back><app-group>

<app id="App1.Ch1.S1">
  <label>Appendix A</label><title>Distribution of temperature and relative humidity over ice in the Southern Hemisphere Tropics</title>
      <p id="d2e2271">We have analysed the impact of considering different latitudinal bands in the defined tropical regions, where we considered the bands 0 to 30° N and 0 to 30° S, while keeping the same longitudinal bands. Figure <xref ref-type="fig" rid="FA1"/> shows the results for the Southern Hemisphere (the Northern Hemisphere results are found in Fig. <xref ref-type="fig" rid="F6"/>).</p>
      <p id="d2e2278">We find that there is a reversal of the seasonal behaviour of RHi between these two latitudinal bands in South Asia. When considering the latitudinal band 0 to 30° N, the highest RHi values throughout the vertical profile occur during season JJA and the lowest in DJF. However, in the latitudinal band of 0 to 30° S, the highest RHi values occur in DJF and the lowest in JJA. This could be due to the seasonality of the location of the inter-tropical convergence zone (ITCZ), which can result in opposite behaviour across the equator <xref ref-type="bibr" rid="bib1.bibx38" id="paren.134"/>. For example, when the ITCZ shifts northward toward season JJA, wet conditions prevail in the tropical Northern Hemisphere while dry conditions prevail in the tropical Southern Hemisphere, and vice versa toward DJF <xref ref-type="bibr" rid="bib1.bibx38" id="paren.135"/>. In the South Atlantic and in Africa, we find a more distinct seasonal variation of the vertical distribution of RHi in the latitudinal band of 0 to 30° S compared to the band of 0 to 30° N. We do not find any measurements in the Southern Trans-Pacific between 0 to 30° S. To conclude, when considering the seasonality in the tropics, we recommend to consider the Northern and Southern Hemisphere separately.</p>

      <fig id="FA1"><label>Figure A1</label><caption><p id="d2e2289"><bold>(a–d)</bold> Vertical distribution of IAGOS and ERA5 mean relative humidity over ice per season in the Southern Hemisphere tropical regions, with shading showing the 95 % confidence interval. Vertical levels are shown in terms of distance to the thermal tropopause (<inline-formula><mml:math id="M69" display="inline"><mml:mrow><mml:mi>p</mml:mi><mml:mo>-</mml:mo><mml:msub><mml:mi>p</mml:mi><mml:mi mathvariant="normal">thm</mml:mi></mml:msub></mml:mrow></mml:math></inline-formula>). We only consider vertical levels, seasons and regions  with 500<inline-formula><mml:math id="M70" display="inline"><mml:mo>+</mml:mo></mml:math></inline-formula> samples.</p></caption>
        
        <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f14.png"/>

      </fig>

</app>

<app id="App1.Ch1.S2">
  <label>Appendix B</label><title>Distribution of temperature and relative humidity over ice with respect to thermal and dynamic tropopause</title>
      <p id="d2e2332">In this appendix, we present the vertical distribution of temperature and relative humidity over ice with respect to the thermal and dynamic tropopause. The tropopause data for both definitions are extracted from <xref ref-type="bibr" rid="bib1.bibx25" id="text.136"/>. Since there can be two thermal tropopauses according to the World Meteorological Organization (WMO) definition <xref ref-type="bibr" rid="bib1.bibx25" id="paren.137"/>, we only consider the first WMO tropopause.</p>
      <p id="d2e2341">Figure <xref ref-type="fig" rid="FB1"/> shows the vertical distribution of temperature and relative humidity over ice for the thermal and dynamic tropopause definitions from 1 July 2011 to 31 December 2022. We find similar distributions with both definitions, although there are some differences. For the vertical distribution of temperature, the dynamical and thermal tropopause show similar values for the mean and the 25 % and 75 % percentiles, especially in the upper troposphere. In the lower stratosphere, it is noticeable that the temperature gradient is sharper across the thermal tropopause in comparison to the dynamic tropopause. For the 99 % percentile, we notice that the thermal tropopause also has a sharper gradient in the upper troposphere, while for the 1 % percentile it is stronger for the dynamic tropopause. This is similar to observations by <xref ref-type="bibr" rid="bib1.bibx42" id="text.138"/>.  Larger differences between the two tropopause definitions are noticeable for the vertical distribution of relative humidity over ice. In the lower stratosphere, larger values of RHi are found when using the dynamic tropopause definition, due to the larger 99 % percentile range, for which the thermal tropopause definition shows a sharper vertical gradient. This is also shown by the smaller mean RHi for the thermal tropopause compared to the dynamic tropopause. This may be the result of the thermal tropopause being located at a higher altitude than the dynamical tropopause <xref ref-type="bibr" rid="bib1.bibx42" id="paren.139"/>, for which drier conditions may be observed with this definition. This is also inline with reports by  <xref ref-type="bibr" rid="bib1.bibx42" id="text.140"/>, who found a lower ISSR fraction in the lower stratosphere when using the thermal tropopause definition compared to the dynamic tropopause, indicating more moist conditions with the latter definition. We also find that the thermal tropopause is drier in comparison to the dynamic tropopause.</p>
      <p id="d2e2358">This analysis shows that the results are impacted by the choice of the tropopause definition. However, in this study, we are interested in the differences between IAGOS and ERA5, and are interested in the separation of dry and moist conditions. Although there are no significant differences in the results when using the thermal and dynamic tropopause definitions, there is a tendency for the dynamic tropopause definition to result in higher values of RHi in the lower stratosphere compared to the thermal tropopause definition. Therefore, we decided to use the thermal tropopause to ensure better separation of moist and dry conditions.</p>

      <fig id="FB1"><label>Figure B1</label><caption><p id="d2e2364">Vertical distribution of <bold>(a)</bold> temperature and <bold>(b)</bold> RHi for dynamic and thermal tropopause definitions using all considered IAGOS measurements in this study. Solid lines indicate mean values; dashed blue line and dark red shade indicate the 25 % and 75 % percentiles at the thermal and dynamical tropopause, respectively; similarly, dotted blue line and light red shade indicate the 1 % and 99 % percentiles.</p></caption>
        
        <graphic xlink:href="https://acp.copernicus.org/articles/26/6449/2026/acp-26-6449-2026-f15.png"/>

      </fig>


</app>
  </app-group><notes notes-type="codedataavailability"><title>Code and data availability</title>

      <p id="d2e2387">The Python code used to perform the analysis in this study is publicly available via the following DOI: <ext-link xlink:href="https://doi.org/10.4121/915dc859-c397-4294-8e85-83451ebaa881" ext-link-type="DOI">10.4121/915dc859-c397-4294-8e85-83451ebaa881</ext-link> <xref ref-type="bibr" rid="bib1.bibx23" id="paren.141"/>.</p>

      <p id="d2e2396">The IAGOS data can be obtained from the IAGOS data portal at <ext-link xlink:href="https://doi.org/10.25326/06" ext-link-type="DOI">10.25326/06</ext-link> <xref ref-type="bibr" rid="bib1.bibx7" id="paren.142"/>. The Analysis-Ready, Cloud Optimized (ARCO) ERA5 data can be obtained from Google Cloud Storage at <uri>https://console.cloud.google.com/marketplace/product/bigquery-public-data/arco-era5</uri> (last access: 20 November 2025). The ERA5 data used to classify weather patterns can be obtained from the ECMWF data catalog at  <ext-link xlink:href="https://doi.org/10.24381/cds.f17050d7" ext-link-type="DOI">10.24381/cds.f17050d7</ext-link> <xref ref-type="bibr" rid="bib1.bibx22" id="paren.143"/>. The ERA5 reanalysis tropopause data can be found here: <ext-link xlink:href="https://doi.org/10.26165/JUELICH-DATA/UBNGI2" ext-link-type="DOI">10.26165/JUELICH-DATA/UBNGI2</ext-link> <xref ref-type="bibr" rid="bib1.bibx24" id="paren.144"/>.</p>
  </notes><app-group>
        <supplementary-material position="anchor"><p id="d2e2421">The supplement related to this article is available online at <inline-supplementary-material xlink:href="https://doi.org/10.5194/acp-26-6449-2026-supplement" xlink:title="pdf">https://doi.org/10.5194/acp-26-6449-2026-supplement</inline-supplementary-material>.</p></supplementary-material>
        </app-group><notes notes-type="authorcontribution"><title>Author contributions</title>

      <p id="d2e2430">KGH and FY designed the study. KGH performed the data analysis and prepared the manuscript under the supervision of FY. FC applied the North Atlantic weather pattern classification. FC, VM, FY and KGH reviewed and edited the manuscript.</p>
  </notes><notes notes-type="competinginterests"><title>Competing interests</title>

      <p id="d2e2436">The contact author has declared that none of the authors has any competing interests.</p>
  </notes><notes notes-type="disclaimer"><title>Disclaimer</title>

      <p id="d2e2444">Publisher's note: Copernicus Publications remains neutral with regard to jurisdictional claims made in the text, published maps, institutional affiliations, or any other geographical representation in this paper. The authors bear the ultimate responsibility for providing appropriate place names. Views expressed in the text are those of the authors and do not necessarily reflect the views of the publisher.</p>
  </notes><ack><title>Acknowledgements</title><p id="d2e2450">We acknowledge the strong support of the European Commission, Airbus, national agencies in Germany (BMBF), France (MESR), and the UK (NERC), and the IAGOS member institutions (<uri>https://www.iagos.org/iagos-partner/</uri>,  last access: 17 April 2026), and the airlines (Lufthansa, Air France, Austrian, China Airlines, Hawaiian Airlines, Air Canada, Iberia, Eurowings Discover, Cathay Pacific, Air Namibia, Sabena) that have carried the MOZAIC or IAGOS measurement equipment free of charge and performed maintenance since 1994. The data are available at <uri>http://www.iagos.fr</uri> (last access: 2 September 2025) thanks to additional support from AERIS. IAGOS has been funded by the European Union projects IAGOS–DS and IAGOS–ERI, INSU-CNRS (France), Météo-France, Université Paul Sabatier (Toulouse, France), and Forschungszentrum Jülich (FZJ, Jülich, Germany).</p></ack><notes notes-type="financialsupport"><title>Financial support</title>

      <p id="d2e2462">This research has received funding from the Horizon Europe Research and Innovation Actions programme under Grant Agreement No. 101056885 and from Horizon Europe Research and Innovation Actions programme under Grant Agreement No. 101167020.</p>
  </notes><notes notes-type="reviewstatement"><title>Review statement</title>

      <p id="d2e2468">This paper was edited by Franziska Aemisegger and reviewed by Philipp Reutter and one anonymous referee.</p>
  </notes><ref-list>
    <title>References</title>

      <ref id="bib1.bibx1"><label>Agarwal et al.(2022)Agarwal, Meijer, Eastham, Speth, and Barret</label><mixed-citation>Agarwal, A., Meijer, V., Eastham, S. D., Speth, R. L., and Barret, S. R. H.: Reanalysis-driven simulations may overestimate persistent contrail formation by 100%–250%, Environ. Res. Lett., 17, <ext-link xlink:href="https://doi.org/10.1088/1748-9326/ac38d9" ext-link-type="DOI">10.1088/1748-9326/ac38d9</ext-link>, 2022.</mixed-citation></ref>
      <ref id="bib1.bibx2"><label>Alduchov and Eskridge(1996)</label><mixed-citation>Alduchov, O. A. and Eskridge, R. E.: Improved Magnus Form Approximation of Saturation Vapor Pressure, J. Appl. Meteorol. Clim., 35, 601–609, <ext-link xlink:href="https://doi.org/10.1175/1520-0450(1996)035&lt;0601:IMFAOS&gt;2.0.CO;2" ext-link-type="DOI">10.1175/1520-0450(1996)035&lt;0601:IMFAOS&gt;2.0.CO;2</ext-link>, 1996.</mixed-citation></ref>
      <ref id="bib1.bibx3"><label>Arriolabengoa et al.(2025)Arriolabengoa, Crispel, Jaron, Bouteloup, Vié, Li, Petzold, and Plu</label><mixed-citation>Arriolabengoa, S., Crispel, P., Jaron, O., Bouteloup, Y., Vié, B., Li, Y., Petzold, A., and Plu, M.: Modeling and verifying ice supersaturated regions in the ARPEGE model for persistent contrail forecast, Atmos. Chem. Phys., 25, 18051–18076, <ext-link xlink:href="https://doi.org/10.5194/acp-25-18051-2025" ext-link-type="DOI">10.5194/acp-25-18051-2025</ext-link>, 2025.</mixed-citation></ref>
      <ref id="bib1.bibx4"><label>Avila et al.(2019)Avila, Sherry, and Thompson</label><mixed-citation>Avila, D., Sherry, L., and Thompson, T.: Reducing global warming by airline contrail avoidance: A case study of annual benefits for the contiguous United States, Transportation Research Interdisciplinary Perspectives, 2, 100033, <ext-link xlink:href="https://doi.org/10.1016/j.trip.2019.100033" ext-link-type="DOI">10.1016/j.trip.2019.100033</ext-link>, 2019.</mixed-citation></ref>
      <ref id="bib1.bibx5"><label>Beswick et al.(2014)Beswick, Baumgardner, Gallagher, Volz-Thomas, Nedelec, Wang, and Lance</label><mixed-citation>Beswick, K., Baumgardner, D., Gallagher, M., Volz-Thomas, A., Nedelec, P., Wang, K.-Y., and Lance, S.: The backscatter cloud probe – a compact low-profile autonomous optical spectrometer, Atmos. Meas. Tech., 7, 1443–1457, <ext-link xlink:href="https://doi.org/10.5194/amt-7-1443-2014" ext-link-type="DOI">10.5194/amt-7-1443-2014</ext-link>, 2014.</mixed-citation></ref>
      <ref id="bib1.bibx6"><label>Bland et al.(2021)Bland, Gray, Methven, and Forbes</label><mixed-citation>Bland, J., Gray, S., Methven, J., and Forbes, R.: Characterising Extratropical Near-Tropopause Analysis Humidity Biases and Their Radiative Effects on Temperature Forecasts, Q. J. Roy. Meteor. Soc., 147, <ext-link xlink:href="https://doi.org/10.1002/qj.4150" ext-link-type="DOI">10.1002/qj.4150</ext-link>, 2021.</mixed-citation></ref>
      <ref id="bib1.bibx7"><label>Boulanger et al.(2018)</label><mixed-citation>Boulanger, D., Blot, R., Bundke, U., Gerbig, C., Hermann, M., Nédélec, P., Rohs, S., and Ziereis, H.:  IAGOS final quality controlled Observational Data L2 – Time series,    Aeris [data set], <ext-link xlink:href="https://doi.org/10.25326/06" ext-link-type="DOI">10.25326/06</ext-link>, 2018.</mixed-citation></ref>
      <ref id="bib1.bibx8"><label>Carver and Merose(2023)</label><mixed-citation>Carver, R. and Merose, A.: ARCO-ERA5: An Analysis-Ready Cloud-Optimized Reanalysis Dataset, 22nd Conf. on AI for Env. Science, Denver, CO, Amer. Meteo. Soc., 4A.1,, <uri>https://ams.confex.com/ams/103ANNUAL/meetingapp.cgi/Paper/415842</uri> (last access: 22 April 2025), 2023.</mixed-citation></ref>
      <ref id="bib1.bibx9"><label>Delft High Performance Computing Centre(2024)</label><mixed-citation>Delft High Performance Computing Centre: DelftBlue Supercomputer (Phase 2), <uri>https://www.tudelft.nl/dhpc/ark:/44463/DelftBluePhase2</uri> (last access: 30 April 2025), 2024.</mixed-citation></ref>
      <ref id="bib1.bibx10"><label>Driver et al.(2025)Driver, Stettler, and Gryspeerdt</label><mixed-citation>Driver, O. G. A., Stettler, M. E. J., and Gryspeerdt, E.: The ice supersaturation biases limiting contrail modelling are structured around extratropical depressions, Atmos. Chem. Phys., 25, 16411–16433, <ext-link xlink:href="https://doi.org/10.5194/acp-25-16411-2025" ext-link-type="DOI">10.5194/acp-25-16411-2025</ext-link>, 2025.</mixed-citation></ref>
      <ref id="bib1.bibx11"><label>Dyroff et al.(2014)Dyroff, Zahn, Christner, Forbes, Tompkins, and van Velthoven</label><mixed-citation>Dyroff, C., Zahn, A., Christner, E., Forbes, R., Tompkins, A., and van Velthoven, P.: Comparison of ECMWF analysis and forecast humidity data with CARIBIC upper troposphere and lower stratosphere observations, Q. J. Roy. Meteor. Soc., 141, <ext-link xlink:href="https://doi.org/10.1002/qj.2400" ext-link-type="DOI">10.1002/qj.2400</ext-link>, 2014.</mixed-citation></ref>
      <ref id="bib1.bibx12"><label>ECMWF(2025)</label><mixed-citation>ECMWF: L137 model level definitions, <uri>https://confluence.ecmwf.int/display/UDOC/L137+model+level+definitions</uri>, last access: 7 May 2025.</mixed-citation></ref>
      <ref id="bib1.bibx13"><label>European Centre for Medium-Range Weather Forecasts (ECMWF)(2016)</label><mixed-citation>European Centre for Medium-Range Weather Forecasts (ECMWF): IFS Documentation – Cy41r2, Part IV: Physical Processes, Tech. rep., European Centre for Medium-Range Weather Forecasts, operational implementation, <ext-link xlink:href="https://doi.org/10.21957/tr5rv27xu" ext-link-type="DOI">10.21957/tr5rv27xu</ext-link>, 8 March  2016.</mixed-citation></ref>
      <ref id="bib1.bibx14"><label>Filippone(2015)</label><mixed-citation>Filippone, A.: Assessment of Aircraft Contrail Avoidance Strategies, J. Aircraft, 52, 872–877, <ext-link xlink:href="https://doi.org/10.2514/1.C033176" ext-link-type="DOI">10.2514/1.C033176</ext-link>, 2015.</mixed-citation></ref>
      <ref id="bib1.bibx15"><label>Gierens et al.(1999)Gierens, Schumann, Helten, Smit, and Marenco</label><mixed-citation>Gierens, K., Schumann, U., Helten, M., Smit, H., and Marenco, A.: A distribution law for relative humidity in the upper troposphere and lower stratosphere derived from three years of MOZAIC measurements, Ann. Geophys., 17, 1218–1226, <ext-link xlink:href="https://doi.org/10.1007/s00585-999-1218-7" ext-link-type="DOI">10.1007/s00585-999-1218-7</ext-link>, 1999.</mixed-citation></ref>
      <ref id="bib1.bibx16"><label>Gierens et al.(2012)Gierens, Spichtinger, and Schumann</label><mixed-citation>Gierens, K., Spichtinger, P., and Schumann, U.: Ice Supersaturation, in: Atmospheric Physics: Background – Methods – Trends, Springer, <ext-link xlink:href="https://doi.org/10.1007/978-3-642-30183-4_9" ext-link-type="DOI">10.1007/978-3-642-30183-4_9</ext-link>, 2012.</mixed-citation></ref>
      <ref id="bib1.bibx17"><label>Gierens et al.(2020a)Gierens, Matthes, and Rohs</label><mixed-citation>Gierens, K., Matthes, S., and Rohs, S.: How Well Can Persistent Contrails Be Predicted?, Aerosapce, 7, <ext-link xlink:href="https://doi.org/10.3390/aerospace7120169" ext-link-type="DOI">10.3390/aerospace7120169</ext-link>, 2020a.</mixed-citation></ref>
      <ref id="bib1.bibx18"><label>Gierens et al.(2020b)Gierens, Wilhelm, Sommer, and Weaber</label><mixed-citation>Gierens, K., Wilhelm, L., Sommer, M., and Weaber, D.: On ice supersaturation over the Arctic, Meteorol. Z., 29, <ext-link xlink:href="https://doi.org/10.1127/metz/2020/1012" ext-link-type="DOI">10.1127/metz/2020/1012</ext-link>, 2020b.</mixed-citation></ref>
      <ref id="bib1.bibx19"><label>Hanst et al.(2025)Hanst, Köhler, Seifert, and Schlemmer</label><mixed-citation>Hanst, M., Köhler, C. G., Seifert, A., and Schlemmer, L.: Predicting ice supersaturation for contrail avoidance: ensemble forecasting using ICON with two-moment ice microphysics, Atmos. Chem. Phys., 25, 17253–17274, <ext-link xlink:href="https://doi.org/10.5194/acp-25-17253-2025" ext-link-type="DOI">10.5194/acp-25-17253-2025</ext-link>, 2025.</mixed-citation></ref>
      <ref id="bib1.bibx20"><label>Hersbach et al.(2020)Hersbach, Bell, Berrisford, Hirahara, Horányi, Muñoz-Sabater, Julien Nicolas, Radu, Schepers, Simmons, Soci, Abdalla, Abellan, Balsamo, Bechtold, Biavati, Bidlot, Bonavita, Chiara, Dahlgren, Dee, Diamantakis, Dragani, Flemming, Forbes, Fuentes, Geer, Haimberger, Healy, Hogan, Hólm, Janisková, Keeley, Laloyaux, Lopez, Lupu, Radnoti, de Rosnay, Rozum, Vamborg, Villaume, and Thépaut</label><mixed-citation>Hersbach, H., Bell, B., Berrisford, P., Hirahara, S., Horányi, A., Muñoz-Sabater, J., Julien Nicolas, C. P., Radu, R., Schepers, D., Simmons, A., Soci, C., Abdalla, S., Abellan, X., Balsamo, G., Bechtold, P., Biavati, G., Bidlot, J., Bonavita, M., Chiara, G. D., Dahlgren, P., Dee, D., Diamantakis, M., Dragani, R., Flemming, J., Forbes, R., Fuentes, M., Geer, A., Haimberger, L., Healy, S., Hogan, R. J., Hólm, E., Janisková, M., Keeley, S., Laloyaux, P., Lopez, P., Lupu, C., Radnoti, G., de Rosnay, P., Rozum, I., Vamborg, F., Villaume, S., and Thépaut, J.-N.: The ERA5 global reanalysis, Q. J. Roy. Meteor. Soc., 146, <ext-link xlink:href="https://doi.org/10.1002/qj.3803" ext-link-type="DOI">10.1002/qj.3803</ext-link>, 2020.</mixed-citation></ref>
      <ref id="bib1.bibx21"><label>Hersbach et al.(2023a)Hersbach, Bell, Berrisford, Biavati, Horányi, Muñoz Sabater, Nicolas, Peubey, Radu, Rozum, Schepers, Simmons, Soci, Dee, and Thépaut</label><mixed-citation>Hersbach, H., Bell, B., Berrisford, P., Biavati, G., Horányi, A., Muñoz Sabater, J., Nicolas, J., Peubey, C., Radu, R., Rozum, I., Schepers, D., Simmons, A., Soci, C., Dee, D., and Thépaut, J.-N.: ERA5 hourly data on pressure levels from 1940 to present, Copernicus Climate Change Service (C3S) Climate Data Store (CDS) [data set], <ext-link xlink:href="https://doi.org/10.24381/cds.bd0915c6" ext-link-type="DOI">10.24381/cds.bd0915c6</ext-link>,   2023a.</mixed-citation></ref>
      <ref id="bib1.bibx22"><label>Hersbach et al.(2023b)Hersbach, Bell, Berrisford, Horányi, Sabater, Nicolas, Peubey, Radu, Rozum, Schepers, Simmons, Soci, Dee, and Thépaut</label><mixed-citation>Hersbach, H., Bell, B., Berrisford, P., Horányi, A., Sabater, J. M., Nicolas, J., Peubey, C., Radu, R., Rozum, I., Schepers, D., Simmons, A., Soci, C., Dee, D., and Thépaut, J.-N.: ERA5 monthly averaged data on single levels from 1940 to present, Copernicus Climate Change Service (C3S) Climate Data Store (CDS) [data set], <ext-link xlink:href="https://doi.org/10.24381/cds.f17050d7" ext-link-type="DOI">10.24381/cds.f17050d7</ext-link>, 2023b.</mixed-citation></ref>
      <ref id="bib1.bibx23"><label>Hildebrandt(2026)</label><mixed-citation>Hildebrandt, K. G.:  Code accompanying the publication: “Variability of ice supersaturated regions at flight altitudes: evaluation of ERA5 reanalysis using IAGOS in situ measurements”,  4TU.ResearchData [code], <ext-link xlink:href="https://doi.org/10.4121/915DC859-C397-4294-8E85-83451EBAA881" ext-link-type="DOI">10.4121/915DC859-C397-4294-8E85-83451EBAA881</ext-link>, 2026.</mixed-citation></ref>
      <ref id="bib1.bibx24"><label>Hoffmann and Spang(2021)</label><mixed-citation>Hoffmann, L. and Spang, R.: Reanalysis Tropopause Data Repository, Jülich DATA, V1 [data set], <ext-link xlink:href="https://doi.org/10.26165/JUELICH-DATA/UBNGI2" ext-link-type="DOI">10.26165/JUELICH-DATA/UBNGI2</ext-link>, 2021.</mixed-citation></ref>
      <ref id="bib1.bibx25"><label>Hoffmann and Spang(2022)</label><mixed-citation>Hoffmann, L. and Spang, R.: An assessment of tropopause characteristics of the ERA5 and ERA-Interim meteorological reanalyses, Atmos. Chem. Phys., 22, 4019–4046, <ext-link xlink:href="https://doi.org/10.5194/acp-22-4019-2022" ext-link-type="DOI">10.5194/acp-22-4019-2022</ext-link>, 2022.</mixed-citation></ref>
      <ref id="bib1.bibx26"><label>IAGOS(2025a)</label><mixed-citation>IAGOS: Observed and Modelled Variables, <uri>https://iagos.aeris-data.fr/parameters/</uri>, last access: 15 April 2025a.</mixed-citation></ref>
      <ref id="bib1.bibx27"><label>IAGOS(2025b)</label><mixed-citation>IAGOS: HUMIDITY SENSOR (ICH, PART OF PACKAGE1), <uri>https://www.iagos.org/iagos-core-instruments/h2o/</uri>, last access: 15 April 2025b.</mixed-citation></ref>
      <ref id="bib1.bibx28"><label>IAGOS(2025c)</label><mixed-citation>IAGOS: IAGOS-CORE, <uri>https://www.iagos.org/iagos-core-instruments/</uri>, llast access: 15 April 2025c.</mixed-citation></ref>
      <ref id="bib1.bibx29"><label>IAGOS(2025d)</label><mixed-citation>IAGOS: IAGOS FLEET, <uri>https://www.iagos.org/iagos-fleet/</uri>, last access: 15 April 2025d.</mixed-citation></ref>
      <ref id="bib1.bibx30"><label>IAGOS(2025e)</label><mixed-citation>IAGOS: DATA QUALITY, <uri>https://iagos.aeris-data.fr/data-quality/</uri>, last access: 10 June 2025e.</mixed-citation></ref>
      <ref id="bib1.bibx31"><label>Irvine et al.(2012)Irvine, Hoskins, and Shine</label><mixed-citation>Irvine, E. A., Hoskins, B. J., and Shine, K. P.: The dependence of contrail formation on the weather pattern and altitude in the North Atlantic, Geophys. Res. Lett., 39, <ext-link xlink:href="https://doi.org/10.1029/2012GL051909" ext-link-type="DOI">10.1029/2012GL051909</ext-link>, 2012.</mixed-citation></ref>
      <ref id="bib1.bibx32"><label>Konjari et al.(2025)Konjari, Rolf, Hegglin, Rohs, Li, Zahn, Bönisch, Nedelec, Krämer, and Petzold</label><mixed-citation>Konjari, P., Rolf, C., Hegglin, M. I., Rohs, S., Li, Y., Zahn, A., Bönisch, H., Nedelec, P., Krämer, M., and Petzold, A.: Technical note: Water vapour climatologies in the extra-tropical upper troposphere and lower stratosphere derived from a synthesis of passenger and research aircraft measurements, Atmos. Chem. Phys., 25, 4269–4289, <ext-link xlink:href="https://doi.org/10.5194/acp-25-4269-2025" ext-link-type="DOI">10.5194/acp-25-4269-2025</ext-link>, 2025.</mixed-citation></ref>
      <ref id="bib1.bibx33"><label>Lamquin et al.(2012)Lamquin, Stubenrauch, Gierens, Burkhardt, and Smit</label><mixed-citation>Lamquin, N., Stubenrauch, C. J., Gierens, K., Burkhardt, U., and Smit, H.: A global climatology of upper-tropospheric ice supersaturation occurrence inferred from the Atmospheric Infrared Sounder calibrated by MOZAIC, Atmos. Chem. Phys., 12, 381–405, <ext-link xlink:href="https://doi.org/10.5194/acp-12-381-2012" ext-link-type="DOI">10.5194/acp-12-381-2012</ext-link>, 2012.</mixed-citation></ref>
      <ref id="bib1.bibx34"><label>Lee et al.(2021)Lee, Fahey, Skowron, Allen, Burkhardt, Chen, Doherty, Freeman, Forster, Fuglestvedt, Gettelman, León, Lim, Lund, Millar, Owen, Penner, Pitari, Prather, Sausen, and Wilcox</label><mixed-citation>Lee, D., Fahey, D., Skowron, A., Allen, M., Burkhardt, U., Chen, Q., Doherty, S., Freeman, S., Forster, P., Fuglestvedt, J., Gettelman, A., León, R. D., Lim, L., Lund, M., Millar, R., Owen, B., Penner, J., Pitari, G., Prather, M., Sausen, R., and Wilcox, L.: The contribution of global aviation to anthropogenic climate forcing for 2000 to 2018, Atmos. Environ., 244, 117 834, <ext-link xlink:href="https://doi.org/10.1016/j.atmosenv.2020.117834" ext-link-type="DOI">10.1016/j.atmosenv.2020.117834</ext-link>, 2021.</mixed-citation></ref>
      <ref id="bib1.bibx35"><label>Lee et al.(2009)Lee, Fahey, Forster, Newton, Wit, Lim, Owen, and Sausen</label><mixed-citation>Lee, D. S., Fahey, D. W., Forster, P. M., Newton, P. J., Wit, R. C., Lim, L. L., Owen, B., and Sausen, R.: Aviation and global climate change in the 21st century, Atmos. Environ., 43, 3520–3537, <ext-link xlink:href="https://doi.org/10.1016/j.atmosenv.2009.04.024" ext-link-type="DOI">10.1016/j.atmosenv.2009.04.024</ext-link>, 2009.</mixed-citation></ref>
      <ref id="bib1.bibx36"><label>Mannstein et al.(2005)Mannstein, Spichtinger, and Gierens</label><mixed-citation>Mannstein, H., Spichtinger, P., and Gierens, K.: A note on how to avoid contrail cirrus, Transpor. Res. D, 10, 421–426, <ext-link xlink:href="https://doi.org/10.1016/j.trd.2005.04.012" ext-link-type="DOI">10.1016/j.trd.2005.04.012</ext-link>, 2005.</mixed-citation></ref>
      <ref id="bib1.bibx37"><label>Martin Frias et al.(2024)Martin Frias, Shapiro, Engberg, Zopp, Soler, and Stettler</label><mixed-citation>Martin Frias, A., Shapiro, M. L., Engberg, Z., Zopp, R., Soler, M., and Stettler, M. E. J.: Feasibility of contrail avoidance in a commercial flight planning system: an operational analysis, Environ. Res., 4, 015013, <ext-link xlink:href="https://doi.org/10.1088/2634-4505/ad310c" ext-link-type="DOI">10.1088/2634-4505/ad310c</ext-link>, 2024.</mixed-citation></ref>
      <ref id="bib1.bibx38"><label>National Oceanic and Atmospheric Administration(2023)</label><mixed-citation>National Oceanic and Atmospheric Administration: Inter-Tropical Convergence Zone, <uri>https://www.noaa.gov/jetstream/tropical/convergence-zone</uri> (last access: 24 November 2025), 2023.</mixed-citation></ref>
      <ref id="bib1.bibx39"><label>Neis et al.(2015)Neis, Smit, Rohs, Bundke, Krämer, Spelten, Ebert, Buchholz, Thomas, and Petzold</label><mixed-citation>Neis, P., Smit, H. G. J., Rohs, S., Bundke, U., Krämer, M., Spelten, N., Ebert, V., Buchholz, B., Thomas, K., and Petzold, A.: Quality assessment of MOZAIC and IAGOS capacitive hygrometers: insights from airborne field studies, Tellus B, 67, <ext-link xlink:href="https://doi.org/10.3402/tellusb.v67.28320" ext-link-type="DOI">10.3402/tellusb.v67.28320</ext-link>, 2015.</mixed-citation></ref>
      <ref id="bib1.bibx40"><label>Petzold et al.(2015)Petzold, Thouret, Gerbig, Zahn, Brenninkmeijer, Gallagher, Hermann, Pontaud, Ziereis, Boulanger, Marshall, Nédélec, and Smit</label><mixed-citation>Petzold, A., Thouret, V., Gerbig, C., Zahn, A., Brenninkmeijer, C. A. M., Gallagher, M., Hermann, M., Pontaud, M., Ziereis, H., Boulanger, D., Marshall, J., Nédélec, P., and Smit, H. G. J.: Global-scale atmosphere monitoring by in-service aircraft – current achievements and future prospects of the European Research Infrastructure IAGOS, Tellus B, 67, 28452, <ext-link xlink:href="https://doi.org/10.3402/tellusb.v67.28452" ext-link-type="DOI">10.3402/tellusb.v67.28452</ext-link>, 2015.</mixed-citation></ref>
      <ref id="bib1.bibx41"><label>Petzold et al.(2017)Petzold, Krämer, Neis, Rold, Rohs, Berkes, Smit, Gallagher, Beswick, Lloyd, Baumgardner, Spichtinger, Nédélec, Ebert, Buchholz, Riese, and Wahner</label><mixed-citation>Petzold, A., Krämer, M., Neis, P., Rold, C., Rohs, S., Berkes, F., Smit, H. G. J., Gallagher, M., Beswick, K., Lloyd, G., Baumgardner, D., Spichtinger, P., Nédélec, P., Ebert, V., Buchholz, B., Riese, M., and Wahner, A.: Upper tropospheric water vapour and its interaction with cirrus clouds as seen from IAGOS long-term routine in situ observations, Faraday Discuss., 200, <ext-link xlink:href="https://doi.org/10.1039/C7FD00006E" ext-link-type="DOI">10.1039/C7FD00006E</ext-link>, 2017.</mixed-citation></ref>
      <ref id="bib1.bibx42"><label>Petzold et al.(2020)Petzold, Neis, Rütimann, Rohs, and Berkes</label><mixed-citation>Petzold, A., Neis, P., Rütimann, M., Rohs, S., Berkes, F., Smit, H. G. J., Krämer, M., Spelten, N., Spichtinger, P., Nédélec, P., and Wahner, A.: Ice-supersaturated air masses in the northern mid-latitudes from regular in situ observations by passenger aircraft: vertical distribution, seasonality and tropospheric fingerprint, Atmos. Chem. Phys., 20, 8157–8179, <ext-link xlink:href="https://doi.org/10.5194/acp-20-8157-2020" ext-link-type="DOI">10.5194/acp-20-8157-2020</ext-link>, 2020.</mixed-citation></ref>
      <ref id="bib1.bibx43"><label>Petzold et al.(2025)Petzold, Khan, Li, Spichtinger, Rohs, Crewell, Wahner, and Krämer</label><mixed-citation>Petzold, A., Khan, N. F., Li, Y., Spichtinger, P., Rohs, S., Crewell, S., Wahner, A., and Krämer, M.: Most long-lived contrails form within cirrus clouds with uncertain climate impact, Nat. Commun., 16, 9695, <ext-link xlink:href="https://doi.org/10.1038/s41467-025-65532-2" ext-link-type="DOI">10.1038/s41467-025-65532-2</ext-link>, 2025.</mixed-citation></ref>
      <ref id="bib1.bibx44"><label>pycontrails(2025)</label><mixed-citation>pycontrails: Specific humidity interpolation, <uri>https://py.contrails.org/notebooks/specific-humidity-interpolation.html</uri> (last access: 30 April 2025), 2025.</mixed-citation></ref>
      <ref id="bib1.bibx45"><label>Rädel and Shine(2010)</label><mixed-citation>Rädel, G. and Shine, K.: Validating ECMWF forecasts for the occurrence of ice supersaturation using visual observations of persistent contrails and radiosonde measurements over England, Q. J. Roy. Meteor. Soc., 136, <ext-link xlink:href="https://doi.org/10.1002/qj.670" ext-link-type="DOI">10.1002/qj.670</ext-link>, 2010.</mixed-citation></ref>
      <ref id="bib1.bibx46"><label>Reutter et al.(2020)Reutter, Neis, Rohs, and Sauvage</label><mixed-citation>Reutter, P., Neis, P., Rohs, S., and Sauvage, B.: Ice supersaturated regions: properties and validation of ERA-Interim reanalysis with IAGOS in situ water vapour measurements, Atmos. Chem. Phys., 20, 787–804, <ext-link xlink:href="https://doi.org/10.5194/acp-20-787-2020" ext-link-type="DOI">10.5194/acp-20-787-2020</ext-link>, 2020.</mixed-citation></ref>
      <ref id="bib1.bibx47"><label>Sanogo et al.(2024)Sanogo, Boucher, Bellouin, Borella, Wolf, and Rohs</label><mixed-citation>Sanogo, S., Boucher, O., Bellouin, N., Borella, A., Wolf, K., and Rohs, S.: Variability in the properties of the distribution of the relative humidity with respect to ice: implications for contrail formation, Atmos. Chem. Phys., 24, 5495–5511, <ext-link xlink:href="https://doi.org/10.5194/acp-24-5495-2024" ext-link-type="DOI">10.5194/acp-24-5495-2024</ext-link>, 2024.</mixed-citation></ref>
      <ref id="bib1.bibx48"><label>Sausen et al.(2024)Sausen, Hofer, Gierens, Bugliaro, Ehrmanntraut, Sitova, Walczak, Burridge-Diesing, Bowman, and Miller</label><mixed-citation>Sausen, R., Hofer, S., Gierens, K., Bugliaro, L., Ehrmanntraut, R., Sitova, I., Walczak, K., Burridge-Diesing, A., Bowman, M., and Miller, N.: Can we successfully avoid persistent contrails by small altitude adjustments of flights in the real world?, Meteorol. Z., 33, 83–98, <ext-link xlink:href="https://doi.org/10.1127/metz/2023/1157" ext-link-type="DOI">10.1127/metz/2023/1157</ext-link>, 2024.</mixed-citation></ref>
      <ref id="bib1.bibx49"><label>Schneider et al.(2014)Schneider, Bischoff, and Haug</label><mixed-citation>Schneider, T., Bischoff, T., and Haug, G. H.: Migrations and dynamics of the intertropical convergence zone, Nature, 513, 45–53, <ext-link xlink:href="https://doi.org/10.1038/nature13636" ext-link-type="DOI">10.1038/nature13636</ext-link>, 2014.</mixed-citation></ref>
      <ref id="bib1.bibx50"><label>Schumann(1996)</label><mixed-citation>Schumann, U.: On conditions for contrail formation from aircraft exhausts, Meteorol. Z., 5, 4–23, <ext-link xlink:href="https://doi.org/10.1127/metz/5/1996/4" ext-link-type="DOI">10.1127/metz/5/1996/4</ext-link>, 1996.</mixed-citation></ref>
      <ref id="bib1.bibx51"><label>Schumann et al.(2021)Schumann, Poll, Teoh, Koelle, Spinielli, Molloy, Koudis, Baumann, Bugliaro, Stettler, and Voigt</label><mixed-citation>Schumann, U., Poll, I., Teoh, R., Koelle, R., Spinielli, E., Molloy, J., Koudis, G. S., Baumann, R., Bugliaro, L., Stettler, M., and Voigt, C.: Air traffic and contrail changes over Europe during COVID-19: a model study, Atmos. Chem. Phys., 21, 7429–7450, <ext-link xlink:href="https://doi.org/10.5194/acp-21-7429-2021" ext-link-type="DOI">10.5194/acp-21-7429-2021</ext-link>, 2021.</mixed-citation></ref>
      <ref id="bib1.bibx52"><label>Shapiro et al.(2025)Shapiro, Engber, Teoh, Stettler, Dean, and Abbott</label><mixed-citation>Shapiro, M., Engber, Z., Teoh, R., Stettler, M., Dean, T., and Abbott, T.: pycontrails: Python library for modeling aviation climate impacts (v0.54.8), Zenodo [code], <ext-link xlink:href="https://doi.org/10.5281/zenodo.15170914" ext-link-type="DOI">10.5281/zenodo.15170914</ext-link>, 2025.</mixed-citation></ref>
      <ref id="bib1.bibx53"><label>Shepherd et al.(2018)Shepherd, Polichtchouk, Hogan, and Simmons</label><mixed-citation>Shepherd, T., Polichtchouk, I., Hogan, R., and Simmons, A.: Report on Stratosphere Task Force, <ext-link xlink:href="https://doi.org/10.21957/0vkp0t1xx" ext-link-type="DOI">10.21957/0vkp0t1xx</ext-link>, 2018.</mixed-citation></ref>
      <ref id="bib1.bibx54"><label>Sonabend-W et al.(2024)Sonabend-W, Elkin, Dean, Dudley, Ali, Blickstein, Brand, Broshears, Chen, Engberg, Galyen, Geraedts, Goyal, Grenham, Hager, Hecker, Jany, McCloskey, Ng, Norris, Opel, Rothenberg, Sankar, Sanekommu, Sarna, Schütt, Shapiro, Soh, Van Arsdale, and Platt</label><mixed-citation>Sonabend-W, A., Elkin, C., Dean, T., Dudley, J., Ali, N., Blickstein, J., Brand, E., Broshears, B., Chen, S., Engberg, Z., Galyen, M., Geraedts, S., Goyal, N., Grenham, R., Hager, U., Hecker, D., Jany, M., McCloskey, K., Ng, J., Norris, B., Opel, F., Rothenberg, J., Sankar, T., Sanekommu, D., Sarna, A., Schütt, O., Shapiro, M., Soh, R., Van Arsdale, C., and Platt, J. C.: Feasibility test of per-flight contrail avoidance in commercial aviation, Commun. Eng., 3, <ext-link xlink:href="https://doi.org/10.1038/s44172-024-00329-7" ext-link-type="DOI">10.1038/s44172-024-00329-7</ext-link>, 2024.</mixed-citation></ref>
      <ref id="bib1.bibx55"><label>Sperber and Gierens(2023)</label><mixed-citation>Sperber, D. and Gierens, K.: Towards a more reliable forecast of ice supersaturation: concept of a one-moment ice-cloud scheme that avoids saturation adjustment, Atmos. Chem. Phys., 23, 15609–15627, <ext-link xlink:href="https://doi.org/10.5194/acp-23-15609-2023" ext-link-type="DOI">10.5194/acp-23-15609-2023</ext-link>, 2023.</mixed-citation></ref>
      <ref id="bib1.bibx56"><label>Spichtinger and Leschner(2016)</label><mixed-citation>Spichtinger, P. and Leschner, M.: Horizontal scales of ice-supersaturated regions, Tellus   B, 68, <ext-link xlink:href="https://doi.org/10.3402/tellusb.v68.29020" ext-link-type="DOI">10.3402/tellusb.v68.29020</ext-link>, 2016.</mixed-citation></ref>
      <ref id="bib1.bibx57"><label>Spichtinger et al.(2003a)Spichtinger, Gierens, Leiterer, and .Dier</label><mixed-citation>Spichtinger, P., Gierens, K., Leiterer, U., and Dier, H.: Ice supersaturation in the tropopause region over Lindenberg, Germany, Meteorol. Z., 12, 143–156, <ext-link xlink:href="https://doi.org/10.1127/0941-2948/2003/0012-0143" ext-link-type="DOI">10.1127/0941-2948/2003/0012-0143</ext-link>, 2003a.</mixed-citation></ref>
      <ref id="bib1.bibx58"><label>Spichtinger et al.(2003b)Spichtinger, Gierens, and Read</label><mixed-citation>Spichtinger, P., Gierens, K., and Read, W.: The global distribution of ice-supersaturated regions as seen by the Microwave Limb Sounder, Q. J. Roy. Meteor. Soc., 129, 3391–3410, <ext-link xlink:href="https://doi.org/10.1256/qj.02.141" ext-link-type="DOI">10.1256/qj.02.141</ext-link>, 2003b.</mixed-citation></ref>
      <ref id="bib1.bibx59"><label>Straka(2009)</label><mixed-citation>Straka, J. M.: Saturation adjustment,  Cambridge University Press, 78–100, <ext-link xlink:href="https://doi.org/10.1017/CBO9780511581168.005" ext-link-type="DOI">10.1017/CBO9780511581168.005</ext-link>, 2009.</mixed-citation></ref>
      <ref id="bib1.bibx60"><label>Teoh et al.(2020)Teoh, Schumann, and Stettler</label><mixed-citation>Teoh, R., Schumann, U., and Stettler, M. E. J.: Beyond Contrail Avoidance: Efficacy of Flight Altitude Changes to Minimise Contrail Climate Forcing, Aerospace, 7, <ext-link xlink:href="https://doi.org/10.3390/aerospace7090121" ext-link-type="DOI">10.3390/aerospace7090121</ext-link>, 2020.</mixed-citation></ref>
      <ref id="bib1.bibx61"><label>Teoh et al.(2022)Teoh, Schumann, Gryspeerdt, Shapiro, Molloy, Koudis, Voigt, and Stettler</label><mixed-citation>Teoh, R., Schumann, U., Gryspeerdt, E., Shapiro, M., Molloy, J., Koudis, G., Voigt, C., and Stettler, M. E. J.: Aviation contrail climate effects in the North Atlantic from 2016 to 2021, Atmos. Chem. Phys., 22, 10919–10935, <ext-link xlink:href="https://doi.org/10.5194/acp-22-10919-2022" ext-link-type="DOI">10.5194/acp-22-10919-2022</ext-link>, 2022. </mixed-citation></ref>
      <ref id="bib1.bibx62"><label>Thompson et al.(2024)Thompson, Scholzen, O'Donoghue, Haughton, Jones, Durant, and Farrington</label><mixed-citation>Thompson, G., Scholzen, C., O'Donoghue, S., Haughton, M., Jones, R. L., Durant, A., and Farrington, C.: On the fidelity of high-resolution numerical weather forecasts of contrail-favorable conditions, Atmos. Res., 311, 107663, <ext-link xlink:href="https://doi.org/10.1016/j.atmosres.2024.107663" ext-link-type="DOI">10.1016/j.atmosres.2024.107663</ext-link>, 2024.</mixed-citation></ref>
      <ref id="bib1.bibx63"><label>Thouret et al.(2006)Thouret, Cammas, Sauvage, Athier, Zbinden, Nédélec, Simon, and Karcher</label><mixed-citation>Thouret, V., Cammas, J.-P., Sauvage, B., Athier, G., Zbinden, R., Nédélec, P., Simon, P., and Karcher, F.: Tropopause referenced ozone climatology and inter-annual variability (1994–2003) from the MOZAIC programme, Atmos. Chem. Phys., 6, 1033–1051, <ext-link xlink:href="https://doi.org/10.5194/acp-6-1033-2006" ext-link-type="DOI">10.5194/acp-6-1033-2006</ext-link>, 2006.</mixed-citation></ref>
      <ref id="bib1.bibx64"><label>Tompkins et al.(2007)Tompkins, Gierens, and Rädel</label><mixed-citation>Tompkins, A., Gierens, K., and Rädel, G.: Ice Supersaturation in the ECMWF integrated forecast system, Q. J. Roy. Meteor. Soc., 133, <ext-link xlink:href="https://doi.org/10.1002/qj.14" ext-link-type="DOI">10.1002/qj.14</ext-link>, 2007.</mixed-citation></ref>
      <ref id="bib1.bibx65"><label>Wang et al.(2025)Wang, Bugliaro, Gierens, Hegglin, Rohs, Petzold, Kaufmann, and Voigt</label><mixed-citation>Wang, Z., Bugliaro, L., Gierens, K., Hegglin, M. I., Rohs, S., Petzold, A., Kaufmann, S., and Voigt, C.: Machine learning for improvement of upper-tropospheric relative humidity in ERA5 weather model data, Atmos. Chem. Phys., 25, 2845–2861, <ext-link xlink:href="https://doi.org/10.5194/acp-25-2845-2025" ext-link-type="DOI">10.5194/acp-25-2845-2025</ext-link>, 2025.</mixed-citation></ref>
      <ref id="bib1.bibx66"><label>Wilhelm(2022)</label><mixed-citation>Wilhelm, L.: Meteorological Conditions for Strongly Warming Contrails and the Statistics of Contrail's Instantaneous Radiative Forcing, Master's thesis, University of Hohenheim, <uri>https://elib.dlr.de/148664/</uri> (last access: 10 April 2026), 2022.</mixed-citation></ref>
      <ref id="bib1.bibx67"><label>Wilhelm et al.(2022)Wilhelm, Gierens, and Rohs</label><mixed-citation>Wilhelm, L., Gierens, K., and Rohs, S.: Meteorological Conditions That Promote Persistent Contrails, Appl. Sci., 12, <ext-link xlink:href="https://doi.org/10.3390/app12094450" ext-link-type="DOI">10.3390/app12094450</ext-link>, 2022.</mixed-citation></ref>
      <ref id="bib1.bibx68"><label>Wolf et al.(2023)Wolf, Bellouin, and Boucher</label><mixed-citation>Wolf, K., Bellouin, N., and Boucher, O.: Long-term upper-troposphere climatology of potential contrail occurrence over the Paris area derived from radiosonde observations, Atmos. Chem. Phys., 23, 287–309, <ext-link xlink:href="https://doi.org/10.5194/acp-23-287-2023" ext-link-type="DOI">10.5194/acp-23-287-2023</ext-link>, 2023.</mixed-citation></ref>
      <ref id="bib1.bibx69"><label>Wolf et al.(2025)Wolf, Bellouin, Boucher, Rohs, and Li</label><mixed-citation>Wolf, K., Bellouin, N., Boucher, O., Rohs, S., and Li, Y.: Correction of ERA5 temperature and relative humidity biases by bivariate quantile mapping for contrail formation analysis, Atmos. Chem. Phys., 25, 157–181, <ext-link xlink:href="https://doi.org/10.5194/acp-25-157-2025" ext-link-type="DOI">10.5194/acp-25-157-2025</ext-link>, 2025.</mixed-citation></ref>
      <ref id="bib1.bibx70"><label>Yin et al.(2018)Yin, Grewe, Frömming, and Yamashita</label><mixed-citation>Yin, F., Grewe, V., Frömming, C., and Yamashita, H.: Impact on flight trajectory characteristics when avoiding the formation of persistent contrails for transatlantic flights, Transport. Res. D, 65, 466–484, <ext-link xlink:href="https://doi.org/10.1016/j.trd.2018.09.017" ext-link-type="DOI">10.1016/j.trd.2018.09.017</ext-link>, 2018.</mixed-citation></ref>

  </ref-list></back>
    <!--<article-title-html>Variability of ice supersaturated regions at flight altitudes: evaluation of ERA5 reanalysis using IAGOS in situ measurements</article-title-html>
<abstract-html/>
<ref-html id="bib1.bib1"><label>Agarwal et al.(2022)Agarwal, Meijer, Eastham, Speth, and
Barret</label><mixed-citation>
      
Agarwal, A., Meijer, V., Eastham, S. D., Speth, R. L., and Barret, S. R. H.:
Reanalysis-driven simulations may overestimate persistent contrail formation
by 100%–250%, Environ. Res. Lett., 17,
<a href="https://doi.org/10.1088/1748-9326/ac38d9" target="_blank">https://doi.org/10.1088/1748-9326/ac38d9</a>, 2022.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib2"><label>Alduchov and
Eskridge(1996)</label><mixed-citation>
      
Alduchov, O. A. and Eskridge, R. E.: Improved Magnus Form Approximation of
Saturation Vapor Pressure, J. Appl. Meteorol. Clim.,
35, 601–609, <a href="https://doi.org/10.1175/1520-0450(1996)035&lt;0601:IMFAOS&gt;2.0.CO;2" target="_blank">https://doi.org/10.1175/1520-0450(1996)035&lt;0601:IMFAOS&gt;2.0.CO;2</a>, 1996.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib3"><label>Arriolabengoa et al.(2025)Arriolabengoa, Crispel, Jaron, Bouteloup,
Vié, Li, Petzold, and Plu</label><mixed-citation>
      
Arriolabengoa, S., Crispel, P., Jaron, O., Bouteloup, Y., Vié, B., Li, Y., Petzold, A., and Plu, M.: Modeling and verifying ice supersaturated regions in the ARPEGE model for persistent contrail forecast, Atmos. Chem. Phys., 25, 18051–18076, <a href="https://doi.org/10.5194/acp-25-18051-2025" target="_blank">https://doi.org/10.5194/acp-25-18051-2025</a>, 2025.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib4"><label>Avila et al.(2019)Avila, Sherry, and Thompson</label><mixed-citation>
      
Avila, D., Sherry, L., and Thompson, T.: Reducing global warming by airline
contrail avoidance: A case study of annual benefits for the contiguous United
States, Transportation Research Interdisciplinary Perspectives, 2, 100033,
<a href="https://doi.org/10.1016/j.trip.2019.100033" target="_blank">https://doi.org/10.1016/j.trip.2019.100033</a>, 2019.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib5"><label>Beswick et al.(2014)Beswick, Baumgardner, Gallagher, Volz-Thomas,
Nedelec, Wang, and Lance</label><mixed-citation>
      
Beswick, K., Baumgardner, D., Gallagher, M., Volz-Thomas, A., Nedelec, P., Wang, K.-Y., and Lance, S.: The backscatter cloud probe – a compact low-profile autonomous optical spectrometer, Atmos. Meas. Tech., 7, 1443–1457, <a href="https://doi.org/10.5194/amt-7-1443-2014" target="_blank">https://doi.org/10.5194/amt-7-1443-2014</a>, 2014.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib6"><label>Bland et al.(2021)Bland, Gray, Methven, and
Forbes</label><mixed-citation>
      
Bland, J., Gray, S., Methven, J., and Forbes, R.: Characterising Extratropical
Near-Tropopause Analysis Humidity Biases and Their Radiative Effects on
Temperature Forecasts, Q. J. Roy. Meteor. Soc.,
147, <a href="https://doi.org/10.1002/qj.4150" target="_blank">https://doi.org/10.1002/qj.4150</a>, 2021.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib7"><label>Boulanger et al.(2018)</label><mixed-citation>
      
Boulanger, D., Blot, R., Bundke, U., Gerbig, C., Hermann, M., Nédélec, P., Rohs, S., and Ziereis, H.:  IAGOS final quality controlled Observational Data L2 – Time series,    Aeris [data set], <a href="https://doi.org/10.25326/06" target="_blank">https://doi.org/10.25326/06</a>, 2018.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib8"><label>Carver and Merose(2023)</label><mixed-citation>
      
Carver, R. and Merose, A.: ARCO-ERA5: An Analysis-Ready Cloud-Optimized
Reanalysis Dataset, 22nd Conf. on AI for Env. Science, Denver, CO, Amer.
Meteo. Soc., 4A.1,,
<a href="https://ams.confex.com/ams/103ANNUAL/meetingapp.cgi/Paper/415842" target="_blank"/> (last access: 22 April 2025),
2023.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib9"><label>Delft High Performance Computing Centre(2024)</label><mixed-citation>
      
Delft High Performance Computing Centre: DelftBlue
Supercomputer (Phase 2),
<a href="https://www.tudelft.nl/dhpc/ark:/44463/DelftBluePhase2" target="_blank"/> (last access:
30 April 2025), 2024.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib10"><label>Driver et al.(2025)Driver, Stettler, and
Gryspeerdt</label><mixed-citation>
      
Driver, O. G. A., Stettler, M. E. J., and Gryspeerdt, E.: The ice supersaturation biases limiting contrail modelling are structured around extratropical depressions, Atmos. Chem. Phys., 25, 16411–16433, <a href="https://doi.org/10.5194/acp-25-16411-2025" target="_blank">https://doi.org/10.5194/acp-25-16411-2025</a>, 2025.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib11"><label>Dyroff et al.(2014)Dyroff, Zahn, Christner, Forbes, Tompkins, and van
Velthoven</label><mixed-citation>
      
Dyroff, C., Zahn, A., Christner, E., Forbes, R., Tompkins, A., and van
Velthoven, P.: Comparison of ECMWF analysis and forecast humidity data with
CARIBIC upper troposphere and lower stratosphere observations, Q.
J. Roy. Meteor. Soc., 141, <a href="https://doi.org/10.1002/qj.2400" target="_blank">https://doi.org/10.1002/qj.2400</a>,
2014.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib12"><label>ECMWF(2025)</label><mixed-citation>
      
ECMWF: L137 model level definitions,
<a href="https://confluence.ecmwf.int/display/UDOC/L137+model+level+definitions" target="_blank"/>,
last access: 7 May 2025.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib13"><label>European Centre for Medium-Range Weather Forecasts
(ECMWF)(2016)</label><mixed-citation>
      
European Centre for Medium-Range Weather Forecasts (ECMWF): IFS
Documentation – Cy41r2, Part IV: Physical Processes, Tech. rep., European
Centre for Medium-Range Weather Forecasts, operational implementation, <a href="https://doi.org/10.21957/tr5rv27xu" target="_blank">https://doi.org/10.21957/tr5rv27xu</a>, 8
March  2016.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib14"><label>Filippone(2015)</label><mixed-citation>
      
Filippone, A.: Assessment of Aircraft Contrail Avoidance Strategies, J.
Aircraft, 52, 872–877, <a href="https://doi.org/10.2514/1.C033176" target="_blank">https://doi.org/10.2514/1.C033176</a>, 2015.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib15"><label>Gierens et al.(1999)Gierens, Schumann, Helten, Smit, and
Marenco</label><mixed-citation>
      
Gierens, K., Schumann, U., Helten, M., Smit, H., and Marenco, A.: A
distribution law for relative humidity in the upper troposphere and lower
stratosphere derived from three years of MOZAIC measurements, Ann.
Geophys., 17, 1218–1226, <a href="https://doi.org/10.1007/s00585-999-1218-7" target="_blank">https://doi.org/10.1007/s00585-999-1218-7</a>, 1999.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib16"><label>Gierens et al.(2012)Gierens, Spichtinger, and
Schumann</label><mixed-citation>
      
Gierens, K., Spichtinger, P., and Schumann, U.: Ice Supersaturation, in:
Atmospheric Physics: Background – Methods – Trends, Springer,
<a href="https://doi.org/10.1007/978-3-642-30183-4_9" target="_blank">https://doi.org/10.1007/978-3-642-30183-4_9</a>, 2012.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib17"><label>Gierens et al.(2020a)Gierens, Matthes, and
Rohs</label><mixed-citation>
      
Gierens, K., Matthes, S., and Rohs, S.: How Well Can Persistent Contrails Be
Predicted?, Aerosapce, 7, <a href="https://doi.org/10.3390/aerospace7120169" target="_blank">https://doi.org/10.3390/aerospace7120169</a>, 2020a.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib18"><label>Gierens et al.(2020b)Gierens, Wilhelm, Sommer, and
Weaber</label><mixed-citation>
      
Gierens, K., Wilhelm, L., Sommer, M., and Weaber, D.: On ice supersaturation
over the Arctic, Meteorol. Z., 29,
<a href="https://doi.org/10.1127/metz/2020/1012" target="_blank">https://doi.org/10.1127/metz/2020/1012</a>, 2020b.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib19"><label>Hanst et al.(2025)Hanst, Köhler, Seifert, and
Schlemmer</label><mixed-citation>
      
Hanst, M., Köhler, C. G., Seifert, A., and Schlemmer, L.: Predicting ice supersaturation for contrail avoidance: ensemble forecasting using ICON with two-moment ice microphysics, Atmos. Chem. Phys., 25, 17253–17274, <a href="https://doi.org/10.5194/acp-25-17253-2025" target="_blank">https://doi.org/10.5194/acp-25-17253-2025</a>, 2025.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib20"><label>Hersbach et al.(2020)Hersbach, Bell, Berrisford, Hirahara, Horányi,
Muñoz-Sabater, Julien Nicolas, Radu, Schepers, Simmons, Soci, Abdalla,
Abellan, Balsamo, Bechtold, Biavati, Bidlot, Bonavita, Chiara, Dahlgren, Dee,
Diamantakis, Dragani, Flemming, Forbes, Fuentes, Geer, Haimberger, Healy,
Hogan, Hólm, Janisková, Keeley, Laloyaux, Lopez, Lupu, Radnoti, de Rosnay,
Rozum, Vamborg, Villaume, and Thépaut</label><mixed-citation>
      
Hersbach, H., Bell, B., Berrisford, P., Hirahara, S., Horányi, A.,
Muñoz-Sabater, J., Julien Nicolas, C. P., Radu, R., Schepers, D., Simmons,
A., Soci, C., Abdalla, S., Abellan, X., Balsamo, G., Bechtold, P., Biavati,
G., Bidlot, J., Bonavita, M., Chiara, G. D., Dahlgren, P., Dee, D.,
Diamantakis, M., Dragani, R., Flemming, J., Forbes, R., Fuentes, M., Geer,
A., Haimberger, L., Healy, S., Hogan, R. J., Hólm, E., Janisková, M.,
Keeley, S., Laloyaux, P., Lopez, P., Lupu, C., Radnoti, G., de Rosnay, P.,
Rozum, I., Vamborg, F., Villaume, S., and Thépaut, J.-N.: The ERA5 global
reanalysis, Q. J. Roy. Meteor. Soc., 146,
<a href="https://doi.org/10.1002/qj.3803" target="_blank">https://doi.org/10.1002/qj.3803</a>, 2020.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib21"><label>Hersbach et al.(2023a)Hersbach, Bell, Berrisford,
Biavati, Horányi, Muñoz Sabater, Nicolas, Peubey, Radu, Rozum, Schepers,
Simmons, Soci, Dee, and Thépaut</label><mixed-citation>
      
Hersbach, H., Bell, B., Berrisford, P., Biavati, G., Horányi, A.,
Muñoz Sabater, J., Nicolas, J., Peubey, C., Radu, R., Rozum, I., Schepers,
D., Simmons, A., Soci, C., Dee, D., and Thépaut, J.-N.: ERA5 hourly data on
pressure levels from 1940 to present, Copernicus Climate Change Service (C3S)
Climate Data Store (CDS) [data set], <a href="https://doi.org/10.24381/cds.bd0915c6" target="_blank">https://doi.org/10.24381/cds.bd0915c6</a>,   2023a.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib22"><label>Hersbach et al.(2023b)Hersbach, Bell, Berrisford,
Horányi, Sabater, Nicolas, Peubey, Radu, Rozum, Schepers, Simmons, Soci,
Dee, and Thépaut</label><mixed-citation>
      
Hersbach, H., Bell, B., Berrisford, P., Horányi, A., Sabater, J. M., Nicolas,
J., Peubey, C., Radu, R., Rozum, I., Schepers, D., Simmons, A., Soci, C.,
Dee, D., and Thépaut, J.-N.: ERA5 monthly averaged data on single levels
from 1940 to present, Copernicus Climate Change Service (C3S) Climate Data
Store (CDS) [data set], <a href="https://doi.org/10.24381/cds.f17050d7" target="_blank">https://doi.org/10.24381/cds.f17050d7</a>,
2023b.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib23"><label>Hildebrandt(2026)</label><mixed-citation>
      
Hildebrandt, K. G.:  Code accompanying the publication: “Variability of ice supersaturated regions at flight altitudes: evaluation of ERA5 reanalysis using IAGOS in situ measurements”,  4TU.ResearchData [code], <a href="https://doi.org/10.4121/915DC859-C397-4294-8E85-83451EBAA881" target="_blank">https://doi.org/10.4121/915DC859-C397-4294-8E85-83451EBAA881</a>, 2026.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib24"><label>Hoffmann and Spang(2021)</label><mixed-citation>
      
Hoffmann, L. and Spang, R.: Reanalysis Tropopause Data Repository, Jülich DATA, V1 [data set],
<a href="https://doi.org/10.26165/JUELICH-DATA/UBNGI2" target="_blank">https://doi.org/10.26165/JUELICH-DATA/UBNGI2</a>, 2021.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib25"><label>Hoffmann and Spang(2022)</label><mixed-citation>
      
Hoffmann, L. and Spang, R.: An assessment of tropopause characteristics of the ERA5 and ERA-Interim meteorological reanalyses, Atmos. Chem. Phys., 22, 4019–4046, <a href="https://doi.org/10.5194/acp-22-4019-2022" target="_blank">https://doi.org/10.5194/acp-22-4019-2022</a>, 2022.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib26"><label>IAGOS(2025a)</label><mixed-citation>
      
IAGOS: Observed and Modelled Variables,
<a href="https://iagos.aeris-data.fr/parameters/" target="_blank"/>, last access:
15 April 2025a.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib27"><label>IAGOS(2025b)</label><mixed-citation>
      
IAGOS: HUMIDITY SENSOR (ICH, PART OF PACKAGE1),
<a href="https://www.iagos.org/iagos-core-instruments/h2o/" target="_blank"/>, last access:
15 April 2025b.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib28"><label>IAGOS(2025c)</label><mixed-citation>
      
IAGOS: IAGOS-CORE,
<a href="https://www.iagos.org/iagos-core-instruments/" target="_blank"/>, llast access:
15 April 2025c.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib29"><label>IAGOS(2025d)</label><mixed-citation>
      
IAGOS: IAGOS FLEET, <a href="https://www.iagos.org/iagos-fleet/" target="_blank"/>, last access:
15 April 2025d.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib30"><label>IAGOS(2025e)</label><mixed-citation>
      
IAGOS: DATA QUALITY,
<a href="https://iagos.aeris-data.fr/data-quality/" target="_blank"/>, last access:
10 June 2025e.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib31"><label>Irvine et al.(2012)Irvine, Hoskins, and
Shine</label><mixed-citation>
      
Irvine, E. A., Hoskins, B. J., and Shine, K. P.: The dependence of contrail
formation on the weather pattern and altitude in the North Atlantic,
Geophys. Res. Lett., 39, <a href="https://doi.org/10.1029/2012GL051909" target="_blank">https://doi.org/10.1029/2012GL051909</a>, 2012.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib32"><label>Konjari et al.(2025)Konjari, Rolf, Hegglin, Rohs, Li, Zahn,
Bönisch, Nedelec, Krämer, and Petzold</label><mixed-citation>
      
Konjari, P., Rolf, C., Hegglin, M. I., Rohs, S., Li, Y., Zahn, A., Bönisch, H., Nedelec, P., Krämer, M., and Petzold, A.: Technical note: Water vapour climatologies in the extra-tropical upper troposphere and lower stratosphere derived from a synthesis of passenger and research aircraft measurements, Atmos. Chem. Phys., 25, 4269–4289, <a href="https://doi.org/10.5194/acp-25-4269-2025" target="_blank">https://doi.org/10.5194/acp-25-4269-2025</a>, 2025.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib33"><label>Lamquin et al.(2012)Lamquin, Stubenrauch, Gierens, Burkhardt, and
Smit</label><mixed-citation>
      
Lamquin, N., Stubenrauch, C. J., Gierens, K., Burkhardt, U., and Smit, H.: A global climatology of upper-tropospheric ice supersaturation occurrence inferred from the Atmospheric Infrared Sounder calibrated by MOZAIC, Atmos. Chem. Phys., 12, 381–405, <a href="https://doi.org/10.5194/acp-12-381-2012" target="_blank">https://doi.org/10.5194/acp-12-381-2012</a>, 2012.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib34"><label>Lee et al.(2021)Lee, Fahey, Skowron, Allen, Burkhardt, Chen, Doherty,
Freeman, Forster, Fuglestvedt, Gettelman, León, Lim, Lund, Millar, Owen,
Penner, Pitari, Prather, Sausen, and
Wilcox</label><mixed-citation>
      
Lee, D., Fahey, D., Skowron, A., Allen, M., Burkhardt, U., Chen, Q., Doherty,
S., Freeman, S., Forster, P., Fuglestvedt, J., Gettelman, A., León, R. D.,
Lim, L., Lund, M., Millar, R., Owen, B., Penner, J., Pitari, G., Prather, M.,
Sausen, R., and Wilcox, L.: The contribution of global aviation to
anthropogenic climate forcing for 2000 to 2018, Atmos. Environ., 244,
117&thinsp;834, <a href="https://doi.org/10.1016/j.atmosenv.2020.117834" target="_blank">https://doi.org/10.1016/j.atmosenv.2020.117834</a>, 2021.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib35"><label>Lee et al.(2009)Lee, Fahey, Forster, Newton, Wit, Lim, Owen, and
Sausen</label><mixed-citation>
      
Lee, D. S., Fahey, D. W., Forster, P. M., Newton, P. J., Wit, R. C., Lim,
L. L., Owen, B., and Sausen, R.: Aviation and global climate change in the
21st century, Atmos. Environ., 43, 3520–3537,
<a href="https://doi.org/10.1016/j.atmosenv.2009.04.024" target="_blank">https://doi.org/10.1016/j.atmosenv.2009.04.024</a>, 2009.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib36"><label>Mannstein et al.(2005)Mannstein, Spichtinger, and
Gierens</label><mixed-citation>
      
Mannstein, H., Spichtinger, P., and Gierens, K.: A note on how to avoid
contrail cirrus, Transpor. Res. D,
10, 421–426, <a href="https://doi.org/10.1016/j.trd.2005.04.012" target="_blank">https://doi.org/10.1016/j.trd.2005.04.012</a>, 2005.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib37"><label>Martin Frias et al.(2024)Martin Frias, Shapiro, Engberg, Zopp, Soler,
and Stettler</label><mixed-citation>
      
Martin Frias, A., Shapiro, M. L., Engberg, Z., Zopp, R., Soler, M., and
Stettler, M. E. J.: Feasibility of contrail avoidance in a commercial flight
planning system: an operational analysis, Environ. Res., 4, 015013,
<a href="https://doi.org/10.1088/2634-4505/ad310c" target="_blank">https://doi.org/10.1088/2634-4505/ad310c</a>, 2024.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib38"><label>National Oceanic and Atmospheric
Administration(2023)</label><mixed-citation>
      
National Oceanic and Atmospheric Administration: Inter-Tropical Convergence
Zone, <a href="https://www.noaa.gov/jetstream/tropical/convergence-zone" target="_blank"/> (last
access: 24 November 2025), 2023.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib39"><label>Neis et al.(2015)Neis, Smit, Rohs, Bundke, Krämer, Spelten, Ebert,
Buchholz, Thomas, and Petzold</label><mixed-citation>
      
Neis, P., Smit, H. G. J., Rohs, S., Bundke, U., Krämer, M., Spelten, N.,
Ebert, V., Buchholz, B., Thomas, K., and Petzold, A.: Quality assessment of
MOZAIC and IAGOS capacitive hygrometers: insights from airborne field
studies, Tellus B, 67,
<a href="https://doi.org/10.3402/tellusb.v67.28320" target="_blank">https://doi.org/10.3402/tellusb.v67.28320</a>, 2015.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib40"><label>Petzold et al.(2015)Petzold, Thouret, Gerbig, Zahn, Brenninkmeijer,
Gallagher, Hermann, Pontaud, Ziereis, Boulanger, Marshall, Nédélec,
and Smit</label><mixed-citation>
      
Petzold, A., Thouret, V., Gerbig, C., Zahn, A., Brenninkmeijer, C. A. M.,
Gallagher, M., Hermann, M., Pontaud, M., Ziereis, H., Boulanger, D.,
Marshall, J., Nédélec, P., and Smit, H. G. J.: Global-scale
atmosphere monitoring by in-service aircraft – current achievements and
future prospects of the European Research Infrastructure IAGOS, Tellus B, 67, 28452,
<a href="https://doi.org/10.3402/tellusb.v67.28452" target="_blank">https://doi.org/10.3402/tellusb.v67.28452</a>, 2015.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib41"><label>Petzold et al.(2017)Petzold, Krämer, Neis, Rold, Rohs, Berkes, Smit,
Gallagher, Beswick, Lloyd, Baumgardner, Spichtinger, Nédélec, Ebert,
Buchholz, Riese, and
Wahner</label><mixed-citation>
      
Petzold, A., Krämer, M., Neis, P., Rold, C., Rohs, S., Berkes, F., Smit, H.
G. J., Gallagher, M., Beswick, K., Lloyd, G., Baumgardner, D., Spichtinger,
P., Nédélec, P., Ebert, V., Buchholz, B., Riese, M., and Wahner, A.: Upper
tropospheric water vapour and its interaction with cirrus clouds as seen from
IAGOS long-term routine in situ observations, Faraday Discuss., 200,
<a href="https://doi.org/10.1039/C7FD00006E" target="_blank">https://doi.org/10.1039/C7FD00006E</a>, 2017.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib42"><label>Petzold et al.(2020)Petzold, Neis, Rütimann, Rohs, and
Berkes</label><mixed-citation>
      
Petzold, A., Neis, P., Rütimann, M., Rohs, S., Berkes, F., Smit, H. G. J., Krämer, M., Spelten, N., Spichtinger, P., Nédélec, P., and Wahner, A.: Ice-supersaturated air masses in the northern mid-latitudes from regular in situ observations by passenger aircraft: vertical distribution, seasonality and tropospheric fingerprint, Atmos. Chem. Phys., 20, 8157–8179, <a href="https://doi.org/10.5194/acp-20-8157-2020" target="_blank">https://doi.org/10.5194/acp-20-8157-2020</a>, 2020.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib43"><label>Petzold et al.(2025)Petzold, Khan, Li, Spichtinger, Rohs, Crewell,
Wahner, and Krämer</label><mixed-citation>
      
Petzold, A., Khan, N. F., Li, Y., Spichtinger, P., Rohs, S., Crewell, S.,
Wahner, A., and Krämer, M.: Most long-lived contrails form within cirrus
clouds with uncertain climate impact, Nat. Commun., 16, 9695,
<a href="https://doi.org/10.1038/s41467-025-65532-2" target="_blank">https://doi.org/10.1038/s41467-025-65532-2</a>, 2025.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib44"><label>pycontrails(2025)</label><mixed-citation>
      
pycontrails: Specific humidity interpolation,
<a href="https://py.contrails.org/notebooks/specific-humidity-interpolation.html" target="_blank"/> (last access: 30 April 2025), 2025.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib45"><label>Rädel and Shine(2010)</label><mixed-citation>
      
Rädel, G. and Shine, K.: Validating ECMWF forecasts for the occurrence of
ice supersaturation using visual observations of persistent contrails and
radiosonde measurements over England, Q. J. Roy.
Meteor. Soc., 136, <a href="https://doi.org/10.1002/qj.670" target="_blank">https://doi.org/10.1002/qj.670</a>, 2010.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib46"><label>Reutter et al.(2020)Reutter, Neis, Rohs, and
Sauvage</label><mixed-citation>
      
Reutter, P., Neis, P., Rohs, S., and Sauvage, B.: Ice supersaturated regions: properties and validation of ERA-Interim reanalysis with IAGOS in situ water vapour measurements, Atmos. Chem. Phys., 20, 787–804, <a href="https://doi.org/10.5194/acp-20-787-2020" target="_blank">https://doi.org/10.5194/acp-20-787-2020</a>, 2020.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib47"><label>Sanogo et al.(2024)Sanogo, Boucher, Bellouin, Borella, Wolf, and
Rohs</label><mixed-citation>
      
Sanogo, S., Boucher, O., Bellouin, N., Borella, A., Wolf, K., and Rohs, S.: Variability in the properties of the distribution of the relative humidity with respect to ice: implications for contrail formation, Atmos. Chem. Phys., 24, 5495–5511, <a href="https://doi.org/10.5194/acp-24-5495-2024" target="_blank">https://doi.org/10.5194/acp-24-5495-2024</a>, 2024.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib48"><label>Sausen et al.(2024)Sausen, Hofer, Gierens, Bugliaro, Ehrmanntraut,
Sitova, Walczak, Burridge-Diesing, Bowman, and Miller</label><mixed-citation>
      
Sausen, R., Hofer, S., Gierens, K., Bugliaro, L., Ehrmanntraut, R., Sitova, I.,
Walczak, K., Burridge-Diesing, A., Bowman, M., and Miller, N.: Can we
successfully avoid persistent contrails by small altitude adjustments of
flights in the real world?, Meteorol. Z., 33, 83–98,
<a href="https://doi.org/10.1127/metz/2023/1157" target="_blank">https://doi.org/10.1127/metz/2023/1157</a>, 2024.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib49"><label>Schneider et al.(2014)Schneider, Bischoff, and
Haug</label><mixed-citation>
      
Schneider, T., Bischoff, T., and Haug, G. H.: Migrations and dynamics of the
intertropical convergence zone, Nature, 513, 45–53,
<a href="https://doi.org/10.1038/nature13636" target="_blank">https://doi.org/10.1038/nature13636</a>, 2014.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib50"><label>Schumann(1996)</label><mixed-citation>
      
Schumann, U.: On conditions for contrail formation from aircraft exhausts,
Meteorol. Z., 5, 4–23, <a href="https://doi.org/10.1127/metz/5/1996/4" target="_blank">https://doi.org/10.1127/metz/5/1996/4</a>, 1996.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib51"><label>Schumann et al.(2021)Schumann, Poll, Teoh, Koelle, Spinielli, Molloy,
Koudis, Baumann, Bugliaro, Stettler, and
Voigt</label><mixed-citation>
      
Schumann, U., Poll, I., Teoh, R., Koelle, R., Spinielli, E., Molloy, J., Koudis, G. S., Baumann, R., Bugliaro, L., Stettler, M., and Voigt, C.: Air traffic and contrail changes over Europe during COVID-19: a model study, Atmos. Chem. Phys., 21, 7429–7450, <a href="https://doi.org/10.5194/acp-21-7429-2021" target="_blank">https://doi.org/10.5194/acp-21-7429-2021</a>, 2021.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib52"><label>Shapiro et al.(2025)Shapiro, Engber, Teoh, Stettler, Dean, and
Abbott</label><mixed-citation>
      
Shapiro, M., Engber, Z., Teoh, R., Stettler, M., Dean, T., and Abbott, T.:
pycontrails: Python library for modeling aviation climate impacts (v0.54.8),
Zenodo [code], <a href="https://doi.org/10.5281/zenodo.15170914" target="_blank">https://doi.org/10.5281/zenodo.15170914</a>, 2025.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib53"><label>Shepherd et al.(2018)Shepherd, Polichtchouk, Hogan, and
Simmons</label><mixed-citation>
      
Shepherd, T., Polichtchouk, I., Hogan, R., and Simmons, A.: Report on
Stratosphere Task Force, <a href="https://doi.org/10.21957/0vkp0t1xx" target="_blank">https://doi.org/10.21957/0vkp0t1xx</a>, 2018.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib54"><label>Sonabend-W et al.(2024)Sonabend-W, Elkin, Dean, Dudley, Ali,
Blickstein, Brand, Broshears, Chen, Engberg, Galyen, Geraedts, Goyal,
Grenham, Hager, Hecker, Jany, McCloskey, Ng, Norris, Opel, Rothenberg,
Sankar, Sanekommu, Sarna, Schütt, Shapiro, Soh, Van Arsdale, and
Platt</label><mixed-citation>
      
Sonabend-W, A., Elkin, C., Dean, T., Dudley, J., Ali, N., Blickstein, J.,
Brand, E., Broshears, B., Chen, S., Engberg, Z., Galyen, M., Geraedts, S.,
Goyal, N., Grenham, R., Hager, U., Hecker, D., Jany, M., McCloskey, K., Ng,
J., Norris, B., Opel, F., Rothenberg, J., Sankar, T., Sanekommu, D., Sarna,
A., Schütt, O., Shapiro, M., Soh, R., Van Arsdale, C., and Platt, J. C.:
Feasibility test of per-flight contrail avoidance in commercial aviation,
Commun. Eng., 3, <a href="https://doi.org/10.1038/s44172-024-00329-7" target="_blank">https://doi.org/10.1038/s44172-024-00329-7</a>, 2024.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib55"><label>Sperber and Gierens(2023)</label><mixed-citation>
      
Sperber, D. and Gierens, K.: Towards a more reliable forecast of ice supersaturation: concept of a one-moment ice-cloud scheme that avoids saturation adjustment, Atmos. Chem. Phys., 23, 15609–15627, <a href="https://doi.org/10.5194/acp-23-15609-2023" target="_blank">https://doi.org/10.5194/acp-23-15609-2023</a>, 2023.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib56"><label>Spichtinger and Leschner(2016)</label><mixed-citation>
      
Spichtinger, P. and Leschner, M.: Horizontal scales of ice-supersaturated
regions, Tellus   B, 68,
<a href="https://doi.org/10.3402/tellusb.v68.29020" target="_blank">https://doi.org/10.3402/tellusb.v68.29020</a>, 2016.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib57"><label>Spichtinger et al.(2003a)Spichtinger, Gierens, Leiterer,
and .Dier</label><mixed-citation>
      
Spichtinger, P., Gierens, K., Leiterer, U., and Dier, H.: Ice supersaturation
in the tropopause region over Lindenberg, Germany, Meteorol.
Z., 12, 143–156, <a href="https://doi.org/10.1127/0941-2948/2003/0012-0143" target="_blank">https://doi.org/10.1127/0941-2948/2003/0012-0143</a>,
2003a.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib58"><label>Spichtinger et al.(2003b)Spichtinger, Gierens, and
Read</label><mixed-citation>
      
Spichtinger, P., Gierens, K., and Read, W.: The global distribution of
ice-supersaturated regions as seen by the Microwave Limb Sounder, Q.
J. Roy. Meteor. Soc., 129, 3391–3410,
<a href="https://doi.org/10.1256/qj.02.141" target="_blank">https://doi.org/10.1256/qj.02.141</a>, 2003b.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib59"><label>Straka(2009)</label><mixed-citation>
      
Straka, J. M.: Saturation adjustment,  Cambridge University Press, 78–100, <a href="https://doi.org/10.1017/CBO9780511581168.005" target="_blank">https://doi.org/10.1017/CBO9780511581168.005</a>,
2009.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib60"><label>Teoh et al.(2020)Teoh, Schumann, and Stettler</label><mixed-citation>
      
Teoh, R., Schumann, U., and Stettler, M. E. J.: Beyond Contrail Avoidance:
Efficacy of Flight Altitude Changes to Minimise Contrail Climate Forcing,
Aerospace, 7, <a href="https://doi.org/10.3390/aerospace7090121" target="_blank">https://doi.org/10.3390/aerospace7090121</a>, 2020.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib61"><label>Teoh et al.(2022)Teoh, Schumann, Gryspeerdt, Shapiro, Molloy, Koudis,
Voigt, and Stettler</label><mixed-citation>
      
Teoh, R., Schumann, U., Gryspeerdt, E., Shapiro, M., Molloy, J., Koudis, G., Voigt, C., and Stettler, M. E. J.: Aviation contrail climate effects in the North Atlantic from 2016 to 2021, Atmos. Chem. Phys., 22, 10919–10935, <a href="https://doi.org/10.5194/acp-22-10919-2022" target="_blank">https://doi.org/10.5194/acp-22-10919-2022</a>, 2022.


    </mixed-citation></ref-html>
<ref-html id="bib1.bib62"><label>Thompson et al.(2024)Thompson, Scholzen, O'Donoghue, Haughton, Jones,
Durant, and Farrington</label><mixed-citation>
      
Thompson, G., Scholzen, C., O'Donoghue, S., Haughton, M., Jones, R. L., Durant,
A., and Farrington, C.: On the fidelity of high-resolution numerical weather
forecasts of contrail-favorable conditions, Atmos. Res., 311,
107663, <a href="https://doi.org/10.1016/j.atmosres.2024.107663" target="_blank">https://doi.org/10.1016/j.atmosres.2024.107663</a>, 2024.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib63"><label>Thouret et al.(2006)Thouret, Cammas, Sauvage, Athier, Zbinden,
Nédélec, Simon, and Karcher</label><mixed-citation>
      
Thouret, V., Cammas, J.-P., Sauvage, B., Athier, G., Zbinden, R., Nédélec, P., Simon, P., and Karcher, F.: Tropopause referenced ozone climatology and inter-annual variability (1994–2003) from the MOZAIC programme, Atmos. Chem. Phys., 6, 1033–1051, <a href="https://doi.org/10.5194/acp-6-1033-2006" target="_blank">https://doi.org/10.5194/acp-6-1033-2006</a>, 2006.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib64"><label>Tompkins et al.(2007)Tompkins, Gierens, and
Rädel</label><mixed-citation>
      
Tompkins, A., Gierens, K., and Rädel, G.: Ice Supersaturation in the ECMWF
integrated forecast system, Q. J. Roy. Meteor.
Soc., 133, <a href="https://doi.org/10.1002/qj.14" target="_blank">https://doi.org/10.1002/qj.14</a>, 2007.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib65"><label>Wang et al.(2025)Wang, Bugliaro, Gierens, Hegglin, Rohs, Petzold,
Kaufmann, and Voigt</label><mixed-citation>
      
Wang, Z., Bugliaro, L., Gierens, K., Hegglin, M. I., Rohs, S., Petzold, A., Kaufmann, S., and Voigt, C.: Machine learning for improvement of upper-tropospheric relative humidity in ERA5 weather model data, Atmos. Chem. Phys., 25, 2845–2861, <a href="https://doi.org/10.5194/acp-25-2845-2025" target="_blank">https://doi.org/10.5194/acp-25-2845-2025</a>, 2025.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib66"><label>Wilhelm(2022)</label><mixed-citation>
      
Wilhelm, L.: Meteorological Conditions for Strongly Warming Contrails and the
Statistics of Contrail's Instantaneous Radiative Forcing, Master's thesis,
University of Hohenheim, <a href="https://elib.dlr.de/148664/" target="_blank"/> (last access: 10 April 2026), 2022.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib67"><label>Wilhelm et al.(2022)Wilhelm, Gierens, and
Rohs</label><mixed-citation>
      
Wilhelm, L., Gierens, K., and Rohs, S.: Meteorological Conditions That Promote
Persistent Contrails, Appl. Sci., 12, <a href="https://doi.org/10.3390/app12094450" target="_blank">https://doi.org/10.3390/app12094450</a>, 2022.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib68"><label>Wolf et al.(2023)Wolf, Bellouin, and
Boucher</label><mixed-citation>
      
Wolf, K., Bellouin, N., and Boucher, O.: Long-term upper-troposphere climatology of potential contrail occurrence over the Paris area derived from radiosonde observations, Atmos. Chem. Phys., 23, 287–309, <a href="https://doi.org/10.5194/acp-23-287-2023" target="_blank">https://doi.org/10.5194/acp-23-287-2023</a>, 2023.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib69"><label>Wolf et al.(2025)Wolf, Bellouin, Boucher, Rohs, and
Li</label><mixed-citation>
      
Wolf, K., Bellouin, N., Boucher, O., Rohs, S., and Li, Y.: Correction of ERA5 temperature and relative humidity biases by bivariate quantile mapping for contrail formation analysis, Atmos. Chem. Phys., 25, 157–181, <a href="https://doi.org/10.5194/acp-25-157-2025" target="_blank">https://doi.org/10.5194/acp-25-157-2025</a>, 2025.

    </mixed-citation></ref-html>
<ref-html id="bib1.bib70"><label>Yin et al.(2018)Yin, Grewe, Frömming, and Yamashita</label><mixed-citation>
      
Yin, F., Grewe, V., Frömming, C., and Yamashita, H.: Impact on flight
trajectory characteristics when avoiding the formation of persistent
contrails for transatlantic flights, Transport. Res. D, 65, 466–484, <a href="https://doi.org/10.1016/j.trd.2018.09.017" target="_blank">https://doi.org/10.1016/j.trd.2018.09.017</a>,
2018.

    </mixed-citation></ref-html>--></article>
