Ice-nucleating particles near two major dust source regions

. Mineral dust and sea spray aerosol represent important sources of ice-nucleating particles (INPs), the minor fraction of aerosol particles able to trigger cloud ice crystal formation and, consequently, inﬂuence multiple climate-relevant cloud properties including lifetime, radiative properties and precipitation initiation efﬁciency. Mineral dust is considered the dominant INP source in many parts of the world due to its ice nucleation efﬁciency and its sheer abundance, with global emission rates of up to 4700 Tg a − 1 . However, INPs emitted from the ocean surface in sea spray aerosol frequently dominate INP populations in remote marine environments, including parts of the Southern Ocean where cloud-resolving model simulations have demonstrated that cloud radiative properties are likely strongly controlled by INPs. Here we report INP concentrations measured in aerosol and seawater samples during Air Quality and Climate Change in the Arabian Basin (AQABA), a shipborne campaign that spanned the Red Sea, Gulf of Aden, Arabian Sea, Arabian Gulf and part of the Mediterranean. In aerosol samples collected within a few hundred kilometers of the ﬁrst and second ranked sources of dust glob-ally, the Sahara and Arabian Peninsula, INP concentrations ranged from 0.2 to 11 L − 1 at − 20 ◦ C with observed ice-active surface site densities ( n s ) 1–3 orders of magnitude below levels predicted by mineral dust INP parameterizations. Over half of the samples (at least 14 of 26) were collected during dust storms with average dust mass concentrations between 150 and 490 µg m − 3 (PM 10 ), as simulated by the Modern-Era Retrospective analysis for Research and Application, version 2 (MERRA-2). The impacts of heat and peroxide treatments indicate that organics dominated the observed ice nucleation (IN) activity at temperatures ≥ − 15 ◦ C with proteinaceous (heat-labile) INPs frequently observed at high freezing temperatures > − 10 ◦ C. INP concentrations in seawater samples ranged between 3 and 46 seawater in the region as compared to seawater from multiple other regions reported previously. Overall, our results demonstrate that despite proximity to the Sahara and the Arabian Peninsula and the dominance of mineral dust in the aerosol sampled, existing mineral dust parameterizations alone would not skillfully represent the near-surface n s in the observed temperature regime ( − 6 to − 25 ◦ C). Future efforts to develop or improve representations of dust INPs at modest supercooling ( ≥ − 15 ◦ C) would beneﬁt from a characterization of the speciﬁc organic species associated with dust INPs. More generally, an improved understanding of the organic species associated with increased IN activity and their variability across dust source regions would directly in-form efforts to determine whether n s -based parameterizations are appropriate for faithful representation of dust INPs in this sensitive temperature regime, whether region-speciﬁc parameterizations are required, or whether an alternative to the n s approach is necessary.


Introduction
Ice-nucleating particles (INPs) modulate the temperature and relative humidity at which ice particle formation occurs in the atmosphere and thus are a key factor that controls icephase partitioning in clouds. As initiators of ice formation and related phase-partitioning processes, INPs affect multiple cloud properties and exert a strong influence on cloud lifetime, radiative properties and precipitation initiation efficiency (e.g., Lohmann and Feichter, 2005;Vergara-Temprado et al., 2018;Brunner et al., 2021).
While Hoose and Möhler (2012) showed that mineral dust INPs generally activate ice crystals at freezing temperatures < − 15 • C, dust containing K-feldspar has been shown to nucleate ice at much warmer temperatures, up to −4 • C (Atkinson et al., 2013;Harrison et al., 2016;Niedermeier et al., 2015;Wex et al., 2014;Whale et al., 2015;Zolles et al., 2015). K-feldspars represent up to ∼ 24 % of Saharan and Asian dusts by mass (Nickovic et al., 2012). However, knowledge of the abundance and the available surface fraction of aerosolized K-feldspar would be necessary to evaluate the ice nucleation (IN) efficiency of dust at temperatures > − 15 • C (Kanji et al., 2017).
Though mineral dust is considered to be the dominant INP source in many regions, multiple modeling and observational studies suggest that marine INPs are frequently dominant by number in remote ocean regions in air masses with low concentrations of terrestrial aerosol (McCluskey et al., 2018b, c;Vergara-Temprado et al., 2017;Wilson et al., 2015;DeMott et al., 2016). Using a global aerosol model to simulate marine organic and K-feldspar INP populations, Vergara-Temprado et al. (2017) showed that the relative contribution of marine organic versus dust INPs in remote regions varies seasonally and that marine organic INPs frequently outnumber K-feldspar INPs (up to 100 % of the simulated days in the Southern Ocean during summer). Results from a follow-up cloud-resolving model study showed that Southern Ocean cloud reflectivity is strongly modulated by INP concentrations, indicating that accurate estimates of the radiative energy budget in the Southern Ocean likely require improved and reliable representation of both dust and marine organic INPs . By generating isolated nascent sea spray aerosol over a range of biological conditions, mesocosm studies have shown that marine INPs are comprised of two classes: a dissolved organic carbon (DOC) type composed of IN-active molecules and a particulate organic carbon (POC) type linked to the death phase of phytoplankton blooms (McCluskey et al., , 2018a. Parameterizations for both marine and mineral dust populations are commonly implemented in atmospheric models to estimate dust and marine INP concentrations. There are multiple existing mineral dust INP parameterizations used to estimate their concentrations in aerosolized desert dust, some based exclusively on laboratory measurements (e.g., Niemand et al., 2012;Ullrich et al., 2017) and others derived from a combination of laboratory and field measurements . There are, additionally, multiple mineral-specific INP parameterizations including illite (Broadley et al., 2012), kaolinite (Welti et al., 2012), quartz (Harrison et al., 2019) and K-feldspar (Atkinson et al., 2013; hereafter, "A13"). The parameterizations by Ullrich et al. (2017;hereafter, "U17") and Niemand et al. (2012; hereafter, "N12") were developed using dust samples from multiple deserts, and both found little variability in the IN ac-tivity between dusts from locations as disparate as the Sahara and Asia. DeMott et al. (2015;hereafter, "D15") found agreement between their observation-based parameterization and N12, supporting the validity of laboratory-based parameterizations. Results in D15 also confirmed the conclusions of N12 and U17: that to first order, dusts from distinct regions can be parameterized as a single particle type. The D15 parameterization has been considered to be representative of dust that has undergone atmospheric photochemical and oxidative processes in transport (i.e., "aged" dust) because the parameterization was derived from observations made far (thousands of kilometers) from the dust emission sources (Boose et al., 2016).
By contrast, few studies report in situ INP measurements near (e.g., <1 d of transport) a major dust source, and the lack of observations near dust source regions inhibit the evaluation of the ability of existing dust INP parameterizations to represent nascent dust populations (Boose et al., 2016;Gong et al., 2020a;Price et al., 2018a). INP observations are particularly lacking for the sensitive temperature regime >−20 • C. Boose et al. (2016) found that D15 overpredicted INPs observed during Saharan dust events at a location within hundreds of kilometers west of the Sahara (Izaña, Tenerife, Spain) by 2-3 orders of magnitude, suggesting that aging may lead to increased IN efficiency in mineral dust and that D15 may be less representative of nascent dust. These conclusions were supported by Conen et al. (2015), who found that concentrations of INPs at −20 • C measured during Saharan dust events were 1 order of magnitude higher at Jungfraujoch in the Swiss Alps than in Izaña, where dust events had occurred 1-7 d prior to reaching Jungfraujoch. Gong et al. (2020a) measured INPs in a variety of atmospheric and seawater sample types at Cabo Verde and determined mineral dust to be the dominant source of INPs observed in the atmosphere but found that INPs with freezing temperatures >−10 • C were likely biological. At altitudes between 30 and 3500 m in the same region, Price et al. (2018a) found that measured concentrations of INPs ranged 2 orders of magnitude at a given temperature and that the observed concentrations related to the atmospheric dust loadings.
Recently, multiple studies have provided new, muchneeded observations of ambient atmospheric INPs in marine environments Hartmann et al., 2020;McCluskey et al., 2018b;Yang et al., 2020) where data were historically lacking and, consequently, an impediment to achieving predictive understanding of global INP distributions (Burrows et al., 2013). There are now two parameterizations available for the estimation of atmospheric concentrations of marine INPs emitted from the ocean surface: Wilson et al. (2015), which estimates cumulative INPs from total organic carbon (TOC) concentrations in simulated sea spray aerosol (SSA), and McCluskey et al. (2018b), which estimates ice-active surface site density (n s ) from aerosol surface area. Wilson et al. (2015) and McCluskey et al. (2018b; hereafter "M18") derived marine INP parameterizations from field measurements of INPs in Atlantic and Arctic ocean sea surface microlayer samples and pristine SSA samples over the North Atlantic Ocean, respectively.
Here, we report observations of INPs measured in air masses influenced by both desert dust and marine aerosol  in close proximity to the two greatest global dust aerosol sources: the Sahara (no. 1) and the Arabian Peninsula (no. 2) (Kok et al., 2021). INP concentrations were measured in 26 ambient aerosol samples collected during Air Quality and Climate Change in the Arabian Basin (AQABA), a shipborne campaign which took place during July-August 2017 on a transect that spanned the central and eastern parts of the Mediterranean, the Red Sea, the Gulf of Aden, the Arabian Sea and the Arabian Gulf. The rest of this study will be structured as follows. We present an overview of measurements and data sources in Sect. 2 Methods. In Results Sect. 3.1, an overview of INP concentrations observed is presented, followed by an assessment of subsurface seawater (SSW) source potential (Sect. 3.2). Observed n s values are compared to dust and marine INP parameterizations in Sect. 3.3, followed by an analysis of the contributions of heat-labile (e.g., proteinaceous) and heat-stable organic compounds to observed INP populations in aerosol (Sect. 3.4). The same analysis is applied to assess organic contributions to observed INPs in a soil dust sample from a likely source region in Sect. 3.5. We discuss the findings and potential INP sources and compare them with prior studies in the Discussion Sect. 5. Finally, in Sect. 5 we offer strategies to address the challenges of evaluating dust-specific INP parameterizations and recommend measurements needed to develop predictive understanding of dust INPs at modest supercooling (T ≥ 15 • C).

Project overview
The AQABA campaign was conducted from 25 June to 3 September 2017 on board the RV Kommandor Iona. The research voyage was conducted in two transects: the first leg beginning in La-Seyne-sur-Mer, France, heading through the Suez Canal, around the Arabian Peninsula and ending in Kuwait, and the second leg was a return transect via the same route (Figs. S1-S2 in the Supplement). The campaign supported a large suite of on-and offline aerosol-and gas-phase measurements Celik et al., 2020;Edtbauer et al., 2020;Eger et al., 2019;Friedrich et al., 2021;Pfannerstill et al., 2019;Tadic et al., 2020;Wang et al., 2020).

Aerosol and trace gas measurements
Aerosol size distributions were measured using an optical particle spectrometer (OPC, Grimm model 1.109) and a fast mobility particle spectrometer (FMPS, TSI model 3091). The OPC measures particles in the size range 0.25-32 µm, and the FMPS measures particles with sizes between 5.6 and 560 nm, with 6 and 1 s time resolution, respectively. The inlet for the aerosol instrumentation was located at the top of a measurement container at a horizontal distance of about 15 m from the INP filter sampling unit (Figs. S3-S4). To avoid condensation in inlet lines, aerosol samples were passed through a drying system, which reduced ambient relative humidity (RH) to an average value of ≈ 40 % in the measurement container. Ambient RH ranged between 67 % and 81 % during INP sampling periods. OPC and FMPS data were averaged over 1 min time intervals. A filter flag based on aerosol measurements was derived to identify and eliminate stack emissions and applied to all aerosol data. The filter flag was based on short-term variation in particle number concentration measured by a condensation particle counter (CPC, TSI model 3787), black carbon concentrations (aethalometer, Magee AE33), wind direction and wind speed. The flag was set when the apparent wind direction was from the direction of the stack (± 30 • ) as seen from the aerosol inlet position (Fig. S3), and strong fluctuations of black carbon and/or particle number concentrations were observed relative to background levels. Particle losses were estimated using the particle loss calculator (PLC; von der Weiden et al., 2009). Losses were negligible (<1 %) up to 3.5 µm and increased to 40 % at 10 µm.
Particle surface area concentrations were derived from the 1 min time-averaged FMPS and OPC measurements as follows. Geometric diameters were estimated from the measured mobility diameters (FMPS) and optical particle diameters (OPC). Aerosols were assumed dry at sampling conditions following the drying system described above. To convert optical particle diameters into geometric diameters, it was assumed that all coarse particles (d p >3000 nm) were composed of sea salt and dust with a mass ratio of 25 % to 75 %, and using the respective refractive indices and shapes the measured optical particle diameters were converted into geometric diameters (Sect. S1.1). The sea salt : dust mass ratio was based on average dust and sea salt concentrations as measured in particles <10 µm (PM 10 ; see Sect. S2 for details).
Fine particle (d p <700 nm) size was converted from optical diameter (d opt ) into geometric diameter (d geo ) using the optical properties calculated from the chemical composition of particles <1 µm (PM 1 ) as measured by a highresolution time-of-flight aerosol mass spectrometer (Aerodyne HR-ToF-AMS), assuming spherical particles. For particles in the intermediate size range (700-3000 nm), log-linear interpolation of optical and spherical properties was applied for conversion of optical into geometric particle diameters (Sect. S1.2). The mobility diameters measured by the FMPS were considered equivalent to the geometric diameter, assuming spherical particles. From the resulting particle size distributions, particle surface area was calculated for each size bin. Total particle surface concentrations were deter-mined by integrating the surface area distribution for particles up to 10 µm (d geo ). The overall uncertainty of derived particle surface area concentrations is estimated to be 30 %, including the uncertainty due to particle losses (see Sect. S3).
The water-soluble fraction of total suspended particles (TSPs) was monitored with hourly resolution using a Monitor for AeRosols and Gases in Ambient Air instrument (MARGA; Metrohm Applikon model S2, Herisau, Switzerland). Sea salt concentrations were estimated by scaling measured soluble Na + concentrations by 3.27 following Manders et al. (2009) and were used as a proxy for SSA number concentrations. Size-resolved single particle chemical composition measurements have shown that sea salt represents 50 %-70 % of SSA particles by number (d p >0.5 µm) (Collins et al., 2014). Hourly composition data were linearly interpolated for four samples, for which 1-3 h (of 7-24 h total sampling time) was missing (Fig. S5). The MARGA sampling line was equipped with a PM 10 cyclone, but the sample was not dried as the instrument is not prone to condensation. Particle transmission losses to the MARGA were estimated using the PLC and found to be consistent with the aerosol sizing instruments described above.
Nitric oxide (NO) concentrations were measured using a commercially available two-channel chemiluminescence monitor (CLD 790 SR, ECO Physics AG, Dürnten, Switzerland). During the AQABA campaign, the CLD 790 SR, MARGA, FMPS, OPC, HR-ToF-AMS, CPC and aethalometer were operated within laboratory containers on the main deck of the research vessel. The NO measurements were used to prevent stack sampling during INP collection (see Sect. 2.4).

Dust mass concentrations from MERRA-2
Since dust concentrations were not measured during the campaign, hourly dust surface mass concentrations along the cruise track were obtained from the (0.5 × 0.625 • ) Modern-Era Retrospective analysis for Research and Application, version 2 (MERRA-2; Gelaro et al., 2017) and were averaged over the region covered during each sampling period. Buchard et al. (2017) showed a high degree of correlation between MERRA-2 and surface dust concentration observations (r ≥ 0.69), particularly during dust storms (r ≥ 0.92). MERRA-2 surface dust mass concentrations also correlated well with PM 10 observed during AQABA (r ≥ 0.71) (Fig. S6). MERRA-2 uses the GEOS-5 Earth system model (Molod et al., 2015;Rienecker et al., 2011) with 72 vertical layers between the surface and 0.01 hPa (∼ 80 km) and the three-dimensional variational data assimilation grid point statistical interpolation analysis system (Kleist et al., 2009;Wu et al., 2002; additional details in Sect. S4).

INP measurements in aerosol
Ambient aerosol sampling for offline measurement of INPs was conducted from 5 July to 31 August 2017 on the Kommandor Iona's wheelhouse top (platform above the bridge), ∼ 15 m horizontally from the online aerosol measurement inlet and ∼ 15 m from the ocean surface (Figs. S3-S4). Sampling locations along the cruise transect corresponding to each aerosol sample are shown in Figs. S1-S2.
Aerosol samples were collected over 3-28 h periods on polycarbonate filters (47 mm diameter, 0.2 µm pore size, Whatman ® Nuclepore, Chicago, Illinois, USA) placed in open-face Nalgene ® analytical filter units (Waltham, Massachusetts, USA). Sampling intervals and frequency were chosen with the aim of collecting >5000 L during dust events and >10 000 L when OPC particle counts were relatively low (e.g., during sampling periods f040-44), as conditions allowed. Aerosol sampling flow rates through the filter units were set to 10-13 L min −1 using a MassStream™ mass flow controller (Bethlehem, PA, USA) connected in line with a rotary vane pump (Thomas QR-0100, Gardner Denver ©, Monroe, LA, USA). To decrease exposure to stack emissions, the pump was automated to switch off when online measurements of NO exceeded 1 standard deviation above the average background concentration for over 1 min (∼ 0.4 ± 0.8 ppb). Comparing the stack contamination filter flag for aerosol measurements (Sect. 2.2) with INP sampling periods additionally indicates no influence of stack emissions on INP filter samples. Lacking a size-selective inlet for INP sampling, it is possible that aerosols >10 µm were present in INP samples during dust events. Surface area may be underestimated for these samples due to the PM 10 cutoff for aerosol sizing (Sects. 2.2 and S3), but we do not expect this to affect our overall conclusions, as increased aerosol surface area would further reduce n s (see Results Sect. 3.3 and Discussion Sect. 4). Prior to sampling, filters were cleaned by soaking in 10 % peroxide (H 2 O 2 ) for 10 min followed by rinsing three times with deionized water, the last rinse further "polished" by passage through a 0.1 µm pore-size syringe filter (Puradisc, Whatman ® , Maidstone, UK). Filters were pre-loaded into filter units in a laminar flow hood to further minimize contamination from handling. After collection, each aerosol filter was placed in a 60 mm diameter sterile Petri dish (Life Science Products, Frederick, Colorado, USA) using pre-cleaned acetyl plastic forceps (Fine Science Tools, Foster City, California, USA), sealed with Parafilm and stored frozen (−20 • C). Samples were shipped in a dry shipper via Cryoport ® High Volume Shipper at −180 • C and upon arrival at the laboratory were stored at −80 • C until processed, within 18 to 38 months of collection. To release collected particles, filters were immersed in 5-8 mL of ultrapure water (catalogue no. W4502, Sigma-Aldrich ® , St. Louis, MO, USA) and shaken by hand for 20 min just prior to measurement.
INP concentrations were measured using the Scripps Institution of Oceanography automated ice spectrometer (SIO-AIS), an immersion freezing droplet assay instrument that is described in detail in Beall et al. (2017). Briefly, the aerosol sample suspensions and SSW samples were distributed in 30 × 50 µL aliquots into clean 96-well polypropylene sample trays (OPTIMUM ® ULTRA Brand, Life Science Products). An equal number and volume of aliquots of ultrapure water accompanied each sample in the tray as a control. Trays were then inserted into an aluminum block that was cooled at −0.87 • C min −1 until the samples froze. Cumulative INP number concentrations per temperature per volume liquid are calculated using the fraction (f ) of unfrozen wells per given temperature interval: where V d is the volume of the sample in each well (Vali, 1971). For aerosol filter samples, cumulative INP number concentrations are calculated using the ratio of the ultrapure water volume used for resuspension of the particles (V re ) to the volume of air sampled (V A ): Prior to calculating n INP , the fraction of unfrozen wells (f ) was adjusted for contamination in the water used for suspension by subtracting the number of frozen ultrapure water wells per temperature interval from both the total number of unfrozen wells and total wells of the sample. The n INP was additionally adjusted for background INPs from filters and sampling handling processes. Background n INP were estimated using measured n INP in aerosol sample field blanks, which had been placed in the sampling apparatus ∼ 5 s (without actuating the pump) before removal and unloading and storage of the filter. Seven field blank samples were collected, one every ∼ 7 d of the cruise (Fig. S7). INP concentrations were measured in field blanks as described above, and the n INP was simulated using the mean air volume sampled (6680 L). Figure S7 shows the estimated n INP across the seven field blanks, which ranged between 1.0 × 10 −4 and 7.0 × 10 −3 L −1 at −20 • C. The freezing onset temperatures detected in the field blanks ranged between −6 and −27 • C. To correct n INP measured in aerosol samples for background INPs from sample handling, a linear regression based on the geometric mean n INP measured in field blank suspensions (mL −1 water) was used to estimate background concentrations of INPs in samples at all temperatures between −14.5 and −27 • C. The estimated background n INP was then subtracted from the INP concentration measured in filter sample suspension volumes in this temperature range prior to calculating n INP . The n INP measured in one aerosol sample (f033) fell within the estimated INP background levels.
For this study, the detection limit was 0.68 n INP mL −1 liquid or 0.001-0.0024 n INP L −1 air for the minimum and max-imum air volume sampled, respectively. To extend the upper limit of detection (i.e., the point at which all droplets have frozen), dilutions of 1 : 10 and 1 : 100 were performed on eight samples (Fig. S8).
The ice-active surface site density, n s , is a metric used to define the ice-nucleating capabilities of an aerosol species (i.e., an aerosol sample of all the same particle type) (Kanji et al., 2017) as follows: where N ice is the number of frozen droplets, N tot is the total number of particles in a monodisperse aerosol population, and A is the surface area per particle. The value of n s can also be approximated for polydisperse aerosol samples containing multiple aerosol types: where A tot is the total surface area of the polydisperse aerosol. The difference between the n s approximation (Eq. 4) and n s (Eq. 3) is that many particle types are typically included in the n s approximation, and in an ambient aerosol measurement most of these are not IN active (see also Hiranuma et al., 2015, their Sect. 2.4). Furthermore, the subset of INPs in the sample are likely also of different types, which likely have different n s in the strict sense (Eq. 3). Nevertheless, the n s approximation is a useful metric for comparing the ice-nucleating ability of different air masses and source regions and is often used for comparing data across studies of INPs measured in ambient air. It is extremely challenging to separate measurements of INPs and surface area by each particle type and requires, for example, combining online measurements of single particle chemistry, size distributions and INPs Cornwell et al., 2019). All n INP and n s are reported normalized to a standard temperature of 273.15 K and pressure of 1013 hPa. Heat and peroxide treatments were applied to a subset of samples (12 of 26) to test for heat-labile biological (e.g., proteinaceous) and organic INP composition, respectively, following the procedure described in McCluskey et al. (2018a) and Suski et al. (2018). The 12 samples were selected based on sampling location with the aim of getting a representative measurement from each region. For each heat-treated sample, a 2 mL aliquot of the original ultrapure water suspension was heated to 95 • C for 20 min in a water bath and retested for changes in n INP . For peroxide treatments, 1.6 mL of the original suspension was combined with 0.8 mL of 30 % peroxide (Sigma Aldrich ® , St. Louis, Missouri, USA) to achieve a final concentration of 10 %, and then the mixture was heated to 95 • C for 20 min while being illuminated with two 26 W UVB fluorescent bulbs. To remove residual peroxide and prevent freezing point depression, the solution was cooled, and catalase (catalogue no. IC10042910, MP Biomedicals, Santa Ana, California, USA) was added. Figure S7 shows the estimated n INP in a heat-and peroxidetreated blank sample. Fisher's exact test was applied to frozen and unfrozen well fractions between each untreated sample and its corresponding treated sample to test for significant differences (p<0.05). Note that significant difference in frozen well fraction is insufficient as a sole indicator of sensitivity in peroxide-treated samples because samples are diluted 2 : 3 (by 33 %) compared to untreated samples. As n INP can be corrected for the dilution by scaling (as opposed to frozen well fractions), the overlap in 95 % binomial sampling confidence intervals (Agresti and Coull, 1998) between the untreated and peroxide-treated sample is an additional indicator of sensitivity for a given data point in the peroxidetreated sample spectrum within ± 0.2 • C, the uncertainty in the SIO-AIS temperature measurement (Beall et al., 2021). A lack of overlap in the 95 % binomial sampling confidence interval within ± 0.2 • C equates to a significance threshold of p<0.005 (Krzywinski and Altman, 2013).
INP concentrations were additionally measured in untreated, heat-treated and peroxide-treated subsamples from an archived suspension of the soil dust sample N12 SD for comparison with this study ; hereafter referred to as "N12-SD"). N12-SD (sample CD1 in Megahed 2007) is sedimented airborne dust that was carried in boundary layer winds north and then east from the desert in central Egypt during a sandstorm to a sampling point ∼ 50 km north of Cairo, collected on 18 February 2003. The sample was stored in a "clean bottle" (no temperature of storage given) for further analysis (Megahed, 2007). Briefly, the sample was generated during the recent laboratory intercomparison of INP measurements (collected on a 0.2 µm Nuclepore polycarbonate membrane filter; Whatman ® , Chicago, Illinois, USA) and stored frozen at −20 • C until processed, as described in DeMott et al. (2018).

INP measurements in SSW
INP concentrations were additionally measured in 10 SSW samples. For seawater sampling, a water intake vertical steel pipe was positioned on the starboard side of the ship approximately 2 m below the sea surface level. The seawater was pumped into a 200 L stainless steel tank and continuously exchanged at a rate of 3000 L h −1 . SSW samples for INP analysis were collected in 15 mL sterile centrifuge tubes (Falcon™, ThermoFisher Scientific, Waltham, Massachusetts, USA) and stored frozen at −20 • C until they could be shipped in a dry shipper via Cryoport ® (−180 • C) and ultimately stored at −80 • C, as for aerosol samples until processed as described above (Sect. 2.4), within 18 to 38 months of collection. Storage duration was not correlated with INP concentration changes in frozen marine and coastal precipitation samples . Heat and peroxide treatments as described above were applied to 5 SSW samples from the Arabian Sea and the Gulf of Aden. The focus on these regions was motivated by the detection of marine aerosol originating from the upwelling region in Somalia reported in Edtbauer et al. (2020;see Sect. 3.3).To assess the contribution of submicron INPs to total measured INPs, 2 mL of SSW was filtered through a 0.2 µm sterile syringe-filter (Acrodisc ® Pall ® , Port Washington, New York, USA) and re-tested.
INP concentrations in SSW collected at the Ellen Browning Scripps Memorial Pier at Scripps Institution of Oceanography (SIO;32.8662 N, 117.2544 W) were assessed in 17 samples for comparison with SSW collected during AQABA. Samples were collected between 31 January and 7 May 2016 in 15-30 mL sterile centrifuge tubes (Falcon™, ThermoFisher Scientific, Waltham, Massachusetts, USA) at depths of 1-3 m and processed immediately using the SIO-AIS as described above.

INP concentrations in aerosol
A total of 26 aerosol samples were collected in July-August 2017 during AQABA for offline measurements of INPs. The INP concentrations (n INP ) measured in samples collected in the Mediterranean Sea, the Red Sea, the Gulf of Aden, Arabian Sea, Gulf of Oman and Arabian Gulf spanned up to 2 orders of magnitude at −15 • C (Fig. 1, Table 1), between 5 × 10 −3 and 5 × 10 −1 L −1 . This range agrees within an order of magnitude with that of Prodi et al. (1983), who measured n INP in the Mediterranean, Red Sea, Gulf of Aden and Indian Ocean nearly 4 decades prior to the present study (4 × 10 −2 to 2 L −1 at −16 • C). Average ambient dust concentrations during each sampling period ranged from 2 to 490 µg m −3 (PM 10 Table 1). There is no agreed-upon standard definition of extreme dust events in the literature, though the 24 h average WHO or US EPA health standards for average PM 10 are commonly used (Gandham et al., 2020;Khaniabadi et al., 2017). Using the US EPA health standard for PM 10 as a threshold for extreme events (150 µg m −3 ), 14 of the 26 samples were collected during dust events. This is conservative given the equivalent WHO guideline for PM 10 is 50 µg m −3 (WHO, 2005), in which case 22 of the 26 sampling periods would be classified as dust events. Prior studies have reported comparable PM 10 levels during dust events in the region (Gandham et al., 2020;Krasnov et al., 2016;Shahsavani et al., 2012). Figures S9-S10 show the extent of k-means clustered FLEXPART (FLEXible PARTicle dispersion model) back trajectories below the altitude of 1500 m (see Sect. S5 for details). This threshold was applied to eliminate most of the free tropospheric parts of the back trajectories and was selected based on the MERRA-2 monthly average planetary boundary layer (PBL) heights during the campaign period, which were 200-700 m over the ocean and up to 1700 m over land. Air mass back trajectories show that source re- gions included the Mediterranean, Nile Delta, Sinai Peninsula (f006-f008, f038), northeast Egypt (f009-f010), Iran (f023-f024), and southern and eastern Europe (f040, f042, f044) (Figs. S9-S16). Many samples collected during extreme dust events (f013, f014, f016, f018 and f020) were influenced by emissions from North Africa and the Arabian Peninsula (Figs. S9-S10, S12-14). The ranges of aerosol surface area concentrations for all sampling periods were <320 µm 2 cm −3 , with the exception of f024, for which the aerosol surface area range was >600 µm 2 cm −3 (Table 1).

Seawater source potential
The n INP values in 10 SSW samples collected during AQABA were used to characterize the INP source potential of SSA generated by bubble bursting (Wang et al., 2017). Results from prior studies have demonstrated that jet droplets are a more efficient transfer vehicle than film drops of INPs into SSA particles (Mitts et al., 2021;Wang et al., 2017). We measured the n INP in SSW to test whether the seawater source strength was comparable to that of prior studies or whether the SSW was possibly enriched with INPs due to biological activity or even dust deposition (Cornwell et al., 2020). Figure S17 shows how the n INP measured at −19 • C in 10 seawater samples varied by the sample collection location. Concentrations ranged between 1 and 50 n INP mL −1 and were highest between the Gulf of Oman and the Gulf of Aden. This region exhibited relatively high chlorophyll a during the cruise, with levels between 1 and 30 mg m −3   Schnell's (1977) SSW measurements are represented as a composite spectrum of 24 samples (blue shaded region) and 5 additional spectra (blue markers) from samples that exhibited higher freezing temperatures. All spectra presented are uncorrected for freezing point depression. (Fig. S18). In Fig. 2, n INP were compared with SSW from the Ellen Browning Scripps Memorial Pier in coastal southern California (SIO Pier), Cabo Verde in the Northeast Atlantic, the Southern Ocean (McCluskey et al., 2018c), and the Northwest Atlantic (Schnell, 1977). AQABA n INP were most comparable with Gong et al.'s (2020a) observations in Cabo Verde. The lack of any unusually high INP spectra suggests that INP enrichment due to dust deposition (Cornwell et al., 2020) was absent or infrequent. It is possible that storage of SSW samples (Sect. 2.5) could have decreased measured n INP , though we expect that n INP would be decreased by no more than 10× in untreated samples stored frozen (see discussion below).
Offline treatments for testing heat lability, organic composition and size were applied to 5 of the 10 seawater samples (Methods Sect. 2.5). Heat and 0.2 µm filtering treatments suggest that a large fraction of the seawater INPs were heat sensitive and larger than 0.2 µm (Fig. S19). These results are indicative of the POC type of marine INP defined in McCluskey et al. (2018a), though this result should be interpreted with caution as storage could potentially have increased sensitivity to filtering treatments.
Understanding of storage impacts on INPs measured in SSW is lacking. However, Beall et al. (2020) showed that average INP concentration changes for untreated coastal precipitation samples due to frozen storage were within 2× of n INP measured in fresh samples, with changes at the upper or lower end of the 95 % confidence interval exceeding 10× for some freezing temperatures. If SSW samples are similarly sensitive to storage, we would expect INP concentration changes to be within 2× on average but up to >10× for any particular untreated sample. Beall et al. (2020) also reported similar changes in INPs <0.45 µm with a greater tendency toward losses, which indicates that storage may have caused increased sensitivity to the filter treatments applied to stored samples.

Ice-active surface site densities in aerosol
In Fig. 3 Considering the frequency of dust events encountered (dust concentration >150 µg m −3 , see Table 1) and the high probability that dust was the dominant aerosol source during most sampling periods, it is striking that most n s spectra observed are 1-3 orders of magnitude lower than the values predicted by dust parameterizations. As noted in Gong et al. (2020a), some deviations could be expected due to the difference between approximated n s based on total particle surface area in ambient measurements and true n s based on surface area of a homogeneous aerosol population (see Methods Sect. 2.4).
Given the marine environment in which sampling took place, a significant amount of sea spray aerosol (SSA) was also detected in many of the sampled air masses, using sea salt as a proxy (Table 1), and likely present in others for which no composition data were available.  reported the detection of high levels of dimethyl sulfide (DMS, up to 800 ppt; parts per trillion) in the Gulf of Aden associated with a local phytoplankton bloom during  (Gong et al., 2020b;Price et al., 2018b). INP concentrations measured in sample f033 were below the detection limits imposed by field blanks (see Sect. 2.4, Fig. S7). Error bars represent 95 % binomial sampling confidence intervals (Agresti and Coull, 1998). Sample f020 is not shown due to missing aerosol surface area data during the sampling period. For the eight samples on which a dilution was performed (Fig. S8) AQABA (as evidenced by visible bioluminescence around the ship at night), as well as high levels of dimethyl sulfone (DMSO 2 ) and other marine biogenic volatile organic carbons (VOCs) from the Somalian upwelling region. As mentioned above, the n s for most samples between −6 and −18 • C agree with n s derived from observations across various locations within the marine boundary layer (Fig. 3). However, considering that SSA is associated with 1000× times fewer IN sites per unit surface area than dust (i.e., 1000× lower n s ) (McCluskey et al., 2018b), the characteristically low IN activity of untreated SSW (even in light of the modest changes expected from storage, Sect. 3.2) and the frequency of dust events during AQABA, our findings suggest it is unlikely that the observed INPs originated from SSA. In general, detection of marine INPs in ambient aerosol is challenging due to their low relative abundance and decreased efficiency compared to dust McCluskey et al., 2018b). Thus, while SSA contributed to the measured aerosol surface area (Table 1), it is unlikely that the INPs observed in this study were marine in origin or at least that this is indiscernible in the present study or based on present parameterizations of these populations.
Heterogeneous aerosol composition in the sampled air masses likely contributed to some of the low n s spectra observed due to the contribution of non-INPs to the measured aerosol surface area (see description of n s approximation in Sect. 2.4). However, the difference between n s observed during the most extreme dust events, i.e., when the aerosol population was likely approaching homogeneity in composition, and the n s predicted from N12 and U17 was still greater than 2 orders of magnitude. Figure 4a and b show overlap in n INP and n s observed in samples collected in low dust and high dust conditions, indicating that the INP populations observed during AQABA exhibited similar IN activity despite variation in total aerosol composition and dust loading. No correlation was found between n INP and aerosol surface area (Fig. S20), PM 10 , or dust concentration. This result is in contrast to Price et al. (2018a), who found the variability in n INP to be largely determined by variability in dust loading or aerosol surface area. Price et al. (2018a) reported higher maximum aerosol surface area concentrations of ∼ 1500 µm cm −3 from three samples collected in an exceptionally optically thick layer, compared to the maximum of 965 µm cm −3 in the present study (Table 1). Yet overall, the aerosol surface area concentrations compare very well with those observed by Price et al. (2018a), indicative of comparable dustiness in the two studies. Excluding the case mentioned above the average aerosol surface area was 227 ± 68 µm 2 cm −3 versus 226 ± 26 µm 2 cm −3 for the present study. Furthermore, the sample with the highest n s at −15 • C (f044) was collected when dust concentrations were lowest (<10 µg m −3 ) (Fig. 4, Table 1). This is also in direct contrast to Price et al. (2018a), who found that the highest n s observed corresponded to the highest dust loading.

Characterization of INPs in aerosol
Offline treatments for testing heat lability and organic composition of INPs were performed on 12 samples via heat and peroxide treatments, respectively (Fig. 5). Prior studies have shown that the IN-active component of various types of mineral dusts are insensitive to heat treatments (Conen et al., 2011;Hara et al., 2016;Hill et al., 2016;O'Sullivan et al., 2014). The IN activity of K-feldspar, the dominant ice-nucleating component of mineral dust, was additionally found to be insensitive to digestion with peroxide (O' Sullivan et al., 2014). A small number of studies reported degradation of IN activity with peroxide treatment and/or heat treatment in Arizona Test Dust (ATD) that they attributed to organic material (Perkins et al., 2020;Yadav et al., 2019). Thus, we assume here that any degradation of IN activity due to heat and peroxide treatment corresponds to loss of heat-labile (e.g., proteinaceous) and heat-stable organic INPs, respectively.
Fisher's exact test was applied to frozen and unfrozen well fractions for each untreated sample and its corresponding treated sample to test for significant differences (p<0.05). Sensitivity to peroxide in most samples (i.e., INP degradation) demonstrate the consistent presence of stable organic INPs at temperatures ≥ −15 • C. The lack of peroxide sen- Error bars represent 95 % binomial sampling confidence intervals (Agresti and Coull, 1998). The n s measured in samples collected during low dust conditions are equal to or greater than (up to 100×) the n s measured during dust events between −9 and −18 • C. INP concentrations measured in sample f033 were below the detection limits imposed by field blanks (see Sect. 2.4, Fig. S7). Sample f020 is not shown in (b) due to missing aerosol surface area data during the sampling period. For the eight samples on which a dilution was performed (Fig. S8), n s for both the raw undiluted and diluted samples are shown. sitivity at temperatures < − 15 • C indicates dominance by mineral dust INPs at lower temperatures. Heat sensitivity in five samples suggests that biological INPs contributed to their warmest freezing INPs. Gong et al. (2020a) similarly found heat sensitivity in INPs at temperatures > − 10 • C. A total of 4 of the 12 samples exhibited heat sensitivity at relatively moderate temperatures of −11 to −18 • C, including the two samples collected in the Mediterranean Sea. One sample (f010) exhibited increased n INP in freezing temperatures < − 18 • C after heat and peroxide treatments. That the response to both heat and peroxide were nearly identical (Fig. 5) suggests that compounds may have been released from the surface during heating, uncovering a more active IN-active surface underneath (heating was common to both procedures). The increased n INP post heat and peroxide treatment is an unexpected result given previous studies on treated soil dust measurements (Conen et al., 2011;Hill et al., 2016;O'Sullivan et al., 2014;Tobo et al., 2014). However, increases in IN activity after heat treatment have been reported previously for airborne Saharan desert dust and aerosol collected during Saharan dust intrusions (Boose et al., 2019;Conen et al., 2022), as well as SSA and precipitation (Martin et al., 2019;McCluskey et al., 2018a), and should be further investigated in future studies. An increase in IN activity after peroxide treatment has also been reported in a Himalayan dust sample (Paramonov et al., 2018).
Given the frequency of dust events and generally high concentrations of dust during most sampling periods, it is surprising that most samples exhibit peroxide sensitivity. Aridisols and Entisols are the dominant soil types in North Africa and the Arabian Peninsula (Nortcliff, 2012). Both types are associated with the lowest levels of organic carbon, commonly used as a proxy for total soil organic matter, compared to other soil types (3 and 9 g kg −1 , respectively) (Yost and Hartemink, 2019).

Characterization of INPs in a soil dust sample
INP measurements of soil dusts in this region are scarce and have only been reported for a single surface dust soil sample, sample "SD", collected 50 km north of Cairo (Niemand et al., 2012). FLEXPART back trajectories indicate this source region for several samples (f006-10, f038), though it should be noted that dust sources cannot be confirmed in this study lacking aerosol and soil dust mineralogy. For comparison with this study, we measured INPs in untreated, heattreated and peroxide-treated subsamples of an archived suspension of the N12-SD sample (Methods Sect. 2.4;DeMott et al., 2018). Sample N12-SD exhibits sensitivity to both heat and peroxide at temperatures >−16 • C, indicating biological composition of INPs at high freezing temperatures. Multiple AQABA samples influenced by desert air mass sources show similar sensitivities at higher temperatures: f006, f007, f019 and f020. Several others exhibit only peroxide sensitivity in this temperature range. Overall, the heat and peroxide sensitivities in the N12-SD sample indicate that desert dusts may contribute biological and/or organic INPs at moderate to high freezing temperatures, such as those observed in AQABA samples. Gong et al.'s (2020a) results showing heat sensitivity in INPs at temperatures > − 10 • C further demonstrate the contribution of biological INPs at high temperatures in dust-laden air masses near North Africa.

Discussion
Considering the high freezing temperatures observed, evidence of organic composition, and FLEXPART back trajectories showing that aerosol sources included populous re- gions and at least one agriculturally active region (the Nile River Delta; Figs. S9-S16), it is possible that agricultural soil dusts contributed to some of the relatively higher n s , n INP , and heat and peroxide sensitivity observed during AQABA. A range of n s values have been reported in studies of agricultural soil dusts, the lower end of which agrees with the n s observed in the present study between −8 and −25 • C ( Fig. 3; Steinke et al., 2016;Tobo et al., 2014;O'Sullivan et al., 2014). Samples from air masses influenced by the Nile River Delta or southern Europe (f007-8, f010, f038, f042, f044) show a higher fraction of heat-sensitive INPs (Fig. 5). Heat sensitivity is indicative of biological INPs, which have been associated with agricultural soil dusts in prior studies O'Sullivan et al., 2014). Hill et al. (2016) and O 'Sullivan et al. (2014) showed peroxide sensitivity in agricultural soil dusts at temperatures > − 18 to −15 • C, respectively, a range which aligns with the peroxide sensitivity exhibited in the present study.
Organic material can condense or adsorb onto aerosols during photochemical and oxidative processes, representing another potential source of organic INPs during AQABA (Dall'Osto et al., 2010;Hinz et al., 2005;Krueger et al., 2004). Could aging explain the organics and decreased n s observed? Though dust aerosol was collected within 1 d of transport from source regions throughout this study, we cannot rule out the possibility of aging impacts, lacking single particle chemistry measurements. In addition to field observations of n INP demonstrating that aging increased the IN efficiency of desert dust INPs (see Introduction; Boose et al., 2016;Conen et al., 2015), prior studies of the effects of aging on mineral dust INPs have yielded mixed and sometimes contradictory results, indicating that the impact of aging on IN properties likely depends on multiple factors including the ice nucleation pathway, the type of aging process, surface morphology and mineralogy (Perkins et al., 2020, and references therein). Multiple studies have investigated the effects of various aging processes on Arizona Test Dust (ATD) as  mand et al., 2012), that was treated with heat and peroxide to test for INP heat lability and organic composition, same as in Fig. 5 above (Methods Sect. 2.4). A 1 : 20 dilution of the sample is shown (triangles), and markers of heat-treated and peroxide-treated samples are filled to indicate significant INP concentration differences from untreated samples according to Fisher's exact test (p<0.05). Sensitivity to peroxide and heat treatments indicates biological INPs between −6 and −16 • C. a proxy for diverse natural dust samples. These included exposure to sulfuric acid, nitric acid vapor and solution-phase processes (Cziczo et al., 2009;Eastwood et al., 2009;Knopf and Koop, 2006;Salam et al., 2007;Sullivan et al., 2010a, b). Perkins et al. (2020) demonstrated the INP lability in ATD through multiple solution-phase aging processes (e.g., incubation in water, exposure to acid or salt), with up to 1000× reductions in INP abundance at freezing temperatures >10 • C. This result contrasts with the increase in IN activity attributed to aging reported in Boose et al. (2016) and Conen et al. (2015). Perkins et al. (2020) additionally reported that the lability of IN activity in ATD is temperature dependent, with large reductions evident at freezing temperature >10 • C, yet little to no change at temperatures <−15 • C. By contrast, most of the n s spectra in AQABA samples were 10-1000× lower than established dust parameterizations even at temperatures < − 15 • C. In summary, it has proven difficult to determine any consistent impact of atmospheric processing on the IN activity of dust in model systems such as ATD (Perkins et al., 2020), and few studies have investigated impacts of aging on ambient desert dust, especially at modest supercooling (Boose et al., 2016). Furthermore, the use of ATD as a proxy for natural dust in INP studies has been questioned due to the complex ice-nucleating properties of natural dust, including mineral composition and defect sites at the particle surface, the latter of which is likely affected by the mechanical processing and milling involved in ATD production (e.g., Perkins et al., 2020, and references therein). Gong et al. (2020a) also observed n s lower by more than 2 orders of magnitude compared to N12 and U17 despite the large fraction of supermicron INPs (77 %-83 % depending on temperature) and that the supermicron particles were mainly mineral dust. The cause of the decreased n s observed here and in Gong et al. (2020a) compared to dust n s parameterizations remains elusive. Both studies were conducted in air masses dominated by dust near major sources. In contrast, Price et al. (2018a) found agreement near the region of the Gong et al. (2020a) study. One obvious difference is that Price et al. (2018a) conducted measurements at higher altitudes, between 30 and 3500 m. A prior study that compared n INP in dust-laden air masses at the surface with n INP collected between 0.5 and 3 km above sea level found that median n INP increased by up to 10× above the surface and correlated to dust loading (Schrod et al., 2017). The differences between Price et al. (2018a) and the two surface-based studies draws attention to the need for vertical profiles of n s > − 25 • C in dust-laden air masses.
The decreased n s compared to Price et al. (2018a) is also unlikely to be related to differences in INP measurement. In all three studies, cold stage or droplet assay measurements of immersion mode INPs were used in resuspensions of aerosol collected on filter samples. Recent studies that intercompared instruments designed for measurement of immersion mode INPs showed excellent agreement (i.e., within measurement uncertainty) in measurements of standardized dust and biological samples  and when co-sampling ambient aerosol . Moreover, the De-Mott et al. (2018) intercomparison study demonstrated good agreement in multiple natural dust samples between the various measurement methods used to derive D15, N12 and U17 and the droplet assay methods applied in Gong et al. (2020a), Price et al. (2018a), and the present study.
Storage protocol represents another difference between Price et al. (2018a) and the two surface-based studies. Gong et al. (2020a) and the present study stored samples frozen prior to analysis, whereas Price et al. (2018a) processed samples immediately after collection. An understanding of storage impacts on INPs collected on filters is lacking , but we note that the discrepancies in n s between the two surface-based studies and Price et al. (2018a) exceed the range of INP concentration changes reported in untreated INP precipitation samples stored frozen .
Thus, the large differences between parameterized n s for dust and n s observed in both Gong et al. (2020a) and the present study between −12 and −25 • C indicate that existing n s -based parameterizations may not faithfully represent n s at moderate freezing temperatures despite proximity to major source regions. Whereas DeMott et al. (2015) found that for temperatures < − 20 • C, mineral dust particles from Saharan and Asian deserts may be parameterized as a common particle type, our findings suggest that characteristic n s parameterizations for dust from different source regions may be needed for > − 20 • C or, alternatively, that this temperature regime requires an alternative to an n s -based parameterizations. Gong et al. (2019) demonstrated that predicting n INP from surface area size distributions alone may not be feasible in environments where the aerosol and/or INP composition are unknown and proposed a probability density function (PDF)-based approach to predict INPs at a given freezing temperature.
In light of the evidence from this study that INPs were primarily influenced by organics associated with dust, especially at higher temperatures, and the lack of relationship between dust loading, n s , and n INP , we offer the following points for consideration. Prior studies of aerosolized dust demonstrated that it is frequently enriched in organic matter (6-20×) compared to soil dust and that wind erosion selectively removes the chemically enriched, fine portion of the soil higher in plant nutrients, organic matter and metals (Aryal et al., 2012;Delany and Zenchelsky, 1976;Van Pelt and Zobeck, 2007). Furthermore, a recent study that measured airborne concentrations of prokaryotic cells over the Red Sea characterized the region as a "global hot spot" with average concentrations of 155 000 (± 65 000) cells m −3 , 19× higher than that over the subtropical and tropical open oceans (Mayol et al., 2014;Yahya et al., 2019). Yahya et al. (2019) demonstrated that the microbial loading was very likely related to the high concentrations of dust, as 99.9 % of the cells were attached to dust particles. Organic and biological species have been shown to dominate IN activity at temperatures −15 • C in many studies (e.g., Ladino et al., 2019;O'Sullivan et al., 2018;Kanji et al., 2017, and references therein). Thus, a faithful representation of dust INPs may require two parameterizations: one for the IN activity dominated by minerals −15 • C such as D15, U17 and N12 and another for the dust-associated organics −15 • C. As INactive organics are limited compared to the IN-active mineral component of dust, we could expect an increase in n s slope between warm and cold regimes. The apparent decreased n s observed in this study between −18 and −12 • C could potentially be related to a plateau in n s through the transition between the mineral and organic "modes" (see untreated samples in Figs. 5-6). This study underscores the need to characterize the IN-active organic species associated with dust from major source regions and to investigate the extent to which biological and/or organic particles contribute to INP populations in dust-laden air masses at high to moderate freezing temperatures ≥ −15 • C.

Conclusions
Observations from the 2-month AQABA campaign in the Mediterranean, Red Sea, Arabian Sea and Arabian Gulf are among the first INP measurements made in close proximity to the two largest dust sources globally: the Sahara and the Arabian Peninsula (Kok et al., 2021). Observed n INP mea-sured in 26 aerosol samples spanned 2 orders of magnitude (5 × 10 −3 to 5 × 10 −1 L −1 at −15 • C).
In summary, INPs observed during AQABA were very likely dominated by mineral dust with some additional contributions possibly from densely populated and/or agricultural regions including the Nile River Delta region and southern or eastern Europe. Despite proximity to major dust sources and a high frequency of dust events with MERRA-2 simulated mass concentrations up to 490 µg m −3 (PM 10 ), the observed n s for most samples was lower by 1-3 orders of magnitude compared to n s predicted by dust parametrizations N12 and U17 at T < − 12 • C. Observed n s values in 48 % of the samples were equivalent within uncertainty to that of the A13 parameterization for K-feldspar (Atkinson et al., 2013), an ice-active component of desert dust. Observed n s agreed with many observations within the marine boundary layer Yang et al., 2020) and with Price et al.'s (2018a) measurements of n INP in dustladen air masses over the Tropical Atlantic, within measurement uncertainty. Peroxide sensitivity was evident in all samples tested (12 of 26) at temperatures ≥ −15 • C, demonstrating a consistent contribution of organic material to warm-temperature INPs. Heat sensitivity further suggested the presence of biological (e.g., proteinaceous) INPs in a subset of samples, particularly at high freezing temperatures > − 10 • C. A soil dust sample from North Africa (originally from N12) exhibited heat and peroxide sensitivity between −5 and −16 • C, further demonstrating that the IN activity of mineral dust could be associated with organic and/or biological material. Contrary to Price et al. (2018a), who measured INP in the dust-laden Tropical Atlantic, no correlation was found between dust loading and n INP or n s . Results from this study and Gong et al. (2020a) indicate that the existing n s parameterizations alone do not skillfully represent mineral dust associated INPs at modest supercooling near major dust sources.
The source strengths of Red Sea, Mediterranean, Arabian Sea, and Arabian Gulf bulk seawater were also evaluated. The maximum source potential was observed in the Arabian Sea (50 INP mL −1 at −19 • C). The observed n INP values for SSW samples were equivalent to those of Gong et al. (2020a) at Cabo Verde within the 95 % binomial sampling confidence intervals (Agresti and Coull, 1998).
Considering that desert dust parameterizations overpredicted the n s values observed during AQABA despite proximity to major global emissions sources, this study demonstrates the need to evaluate the fidelity of dust INP parameterizations in nascent versus aged dust populations. The discrepancies underscore the challenges of evaluating dustspecific INP parameterizations: limited observations at modest supercooling, few assured methods for distinguishing between different INP sources in ambient aerosol, a dearth of characteristic soil dust samples from major dust sources, and limited knowledge of the specific composition and characteristics of dust INPs at temperatures >−15 • C. Vertical profiles of n s in dust-laden air masses are also needed to determine whether n s is consistently lower at the surface and examine the variability in n s with altitude. Potential storage impacts on INPs collected on filters are an additional factor worthy of future investigation, though storage alone does not likely explain the relatively decreased n s compared to parameterizations observed in this study, as U17 and N12 were both derived from stored dust samples.
In addition to providing observations at high to moderate freezing temperatures, future studies could apply the methods developed in Gong et al. (2020a) to estimate the contribution of marine INPs to the aerosol sampled by assuming equivalent distributions of sea salt and INPs between seawater and air. Furthermore, given the combination of marine, dust, and anthropogenically influenced air masses encountered, as well as the evidence of organic and biological INPs at modest supercooling in this study and Gong et al. (2020a), future studies could benefit from advances in on-line light-induced fluorescence (LIF) measurement techniques. Whereas the interpretation of fluorescence data from most LIF-based instruments has been limited by the lack of spectroscopic information, newer instruments support realtime spectrally resolved size and fluorescence measurement information for single particles (Fennelly et al., 2018;Huffman et al., 2020;Könemann et al., 2019). This information could be used to potentially "tag" different classes of organics and biological aerosols, enabling investigations of relationships between n s , n INP and organic signatures in, for example, mineral dusts and agricultural soil dusts. Finally, the decreased n s observed in this study further motivate comprehensive aerosol-ice nucleation studies, which aim to achieve closure between measured and predicted ambient n INP by simultaneously characterizing ambient INPs and relevant ice nucleation properties of the total aerosol population, such as composition and aerosol chemical mixing state (Sullivan et al., 2007). Competing interests. At least one of the (co-)authors is a member of the editorial board of Atmospheric Chemistry and Physics. The peer-review process was guided by an independent editor, and the authors also have no other competing interests to declare.
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Acknowledgements. The authors acknowledge collaborations with King Abdullah University of Science and Technology (KAUST), the Cyprus Institute (CyI) and the Kuwait Institute for Scientific Research (KISR). We additionally thank Marcel Dorf and Claus Koeppel for the organization of the campaign, as well as Horst Fischer, Ivan Tadic and Uwe Parchatka for provision of the NO data. Analyses and visualizations of dust mass concentrations and chlorophyll a used in this paper were produced with the Giovanni online data system, developed and maintained by the NASA GES DISC. Maps throughout this article were created using ArcGIS ® software by Esri. We would also like to thank Hays Ships Ltd. and the Kommandor Iona's crew for their attention to the safety and well-being of the researchers. Finally, we thank the three anonymous reviewers whose insightful comments strengthened this paper. Review statement. This paper was edited by Corinna Hoose and reviewed by three anonymous referees.