Articles | Volume 24, issue 1
https://doi.org/10.5194/acp-24-123-2024
https://doi.org/10.5194/acp-24-123-2024
Research article
 | 
05 Jan 2024
Research article |  | 05 Jan 2024

Particulate-bound alkyl nitrate pollution and formation mechanisms in Beijing, China

Jiyuan Yang, Guoyang Lei, Jinfeng Zhu, Yutong Wu, Chang Liu, Kai Hu, Junsong Bao, Zitong Zhang, Weili Lin, and Jun Jin
Abstract

Fine particulate matter (PM2.5) samples were collected between November 2020 and October 2021 at the Minzu University of China in Beijing, and the n-alkyl nitrate concentrations in the PM2.5 samples were determined to investigate n-alkyl nitrate pollution and formation mechanisms. C9–C16 n-alkyl nitrate standards were synthesized, and the n-alkyl nitrate concentrations in PM2.5 were determined by gas chromatography triple quadrupole mass spectrometry. Temporal trends in and correlations between particulate-bound n-alkyl nitrate, ozone, PM2.5, and nitrogen dioxide concentrations were investigated to assess the relationships between particulate-bound n-alkyl nitrate concentrations and gas-phase homogeneous reactions in the photochemical process and speculate the particulate-bound n-alkyl nitrates' formation mechanisms. The n-alkyl nitrate concentrations in the PM2.5 samples were 9.67–2730 pg m−3, and the mean was 578 pg m−3. The n-alkyl nitrate homologue group concentrations increased as the carbon chain length increased; i.e., long-chain n-alkyl nitrates contributed more than short-chain n-alkyl nitrates to the total n-alkyl nitrate concentrations in PM2.5. The n-alkyl nitrate concentrations clearly varied seasonally and diurnally, the concentrations decreasing in the order winter > spring > autumn > summer and the mean concentrations being higher at night than in the day. The particulate-bound n-alkyl nitrate and ozone concentrations significantly negatively correlated despite gas-phase alkyl nitrate and ozone concentrations previously being found to positively correlate. This indicated that long-chain alkyl nitrates may not be produced during gas-phase homogeneous reactions. The particulate-bound n-alkyl nitrate concentrations followed the same trends as and significantly positively correlated with the PM2.5 and nitrogen dioxide concentrations. Nitrogen dioxide is an important contributor of nitrates in particulate matter. This indicated that particulate-bound n-alkyl nitrates may form through non-homogeneous reactions between alkanes and nitrates on particulate matter surfaces. As secondary pollutants, particulate-bound alkyl nitrates are important components of PM2.5 during haze events and strongly affect haze pollution and atmospheric visibility.

Dates
1 Introduction

Air pollution problems in China are complex but have been alleviated by adjusting the energy structure and controlling pollutant emissions (Li et al., 2017). However, air pollution (caused by frequent sandstorms in spring, photochemical pollution with ozone and secondary particles forming in summer and autumn, and serious haze pollution caused by emissions from heating buildings in winter) remains a problem in urban areas in North China (Bai et al., 2018). Air quality in China will therefore continue to pose serious challenges for some time.

Photochemical smog and haze are important types of air pollution that affect ambient air quality. Interactions between photochemical pollution and particulate pollution have become the main foci of air pollution research (Ma et al., 2012). Nitrogen oxide (NOx) emissions have increased by > 50 % in the last 30 years (Liu et al., 2013), and NOx concentrations in the atmosphere continue to increase as the number of vehicles increases (Richter et al., 2005; Mijling et al., 2013). Before NOx levels reach saturation, more oxidation potentially occurs in the atmosphere as NOx concentrations increase; meanwhile the contributions of anthropogenic emissions to volatile organic compound (VOC) concentrations in the atmosphere are also increasing (Liu et al., 2020). Challenges caused by synergistic photochemical smog and haze pollution are affecting urban areas in which background NOx concentrations are high and large amounts of anthropogenic VOCs are emitted. Future improvements in ambient air quality require both photochemical and particulate pollution to be controlled. Organic nitrates (ONs) formed in the atmosphere from the precursors NOx and VOCs are important atmospheric pollutants; they reflect both photochemical processes of ozone production and secondary organic aerosol (SOA) formation.

As a kind of semi-permanent reservoir species, ONs are important participants in the atmospheric nitrogen cycle, which involves various atmospheric sources and sinks of nitrogen oxides. The formation of ONs consumes nitrogen oxides and atmospheric oxidants, thus becoming an important sink for atmospheric nitrogen oxides (Perring et al., 2010) and affecting the atmospheric lifetimes of free radicals, the ozone concentration, and photochemical reactions (Calvert et al., 1987). In addition, ONs may release nitrogen dioxide and produce strong oxidants such as hydroxyl radicals by photolysis, affecting the balance of nitrogen oxides in regional NOx cycles (Barnes et al., 1993; Chen et al., 1998) and contributing to atmospheric oxidation capacity (Gen et al., 2022), respectively. Semi-volatile ONs are an important kind of sources and component of SOAs and contribute to fine particulate matter (PM2.5) (Rollins et al., 2012). As important secondary air pollutants, ONs affect the oxidation in the atmosphere and the formation of haze (Browne and Cohen, 2012); controlling particulate-bound ONs may therefore be key to controlling both PM2.5 and ozone in the atmosphere.

Particulate-bound ONs are some of the main components of particulate matter in China, particularly during pollution events, and strongly affect human health, air quality, and the climate at the regional scale (Zhai et al., 2023). The formation of particulate-bound ONs associated with non-homogeneous reactions (Zhen et al., 2022; Li et al., 2022), especially at night was highly correlated with nitrogen oxide levels. During strong air pollution events, SOAs can contribute up to 30 %–77 % of PM2.5, with particulate organic nitrates accounting for 5 %–40 % of the organic matter (Rollins et al., 2012; Xu et al., 2015; Sun et al., 2012). ONs have been found to be bound to atmospheric particles in various size ranges (Garnes and Allen, 2002), indicating that ONs are widely present in atmospheric particulate matter. The strong correlation between ONs and SOAs and the diurnal trend of ONs' particle size distribution indicate the key role of particulate-bound ONs (Yu et al., 2019). Recent studies of particulate-bound ONs have mainly been focused on biogenic ONs formed from precursors such as the olefins pinene (Shen et al., 2021; Rindelaub et al., 2015), limonene (Spittler et al., 2006), monoterpene (Barnes et al., 1990), and isoprene (Rollins et al., 2009; Perring et al., 2009; Vasquez et al., 2020; Wu et al., 2021) emitted from plants. Less attention has been paid to particulate-bound ONs that are related to emissions of anthropogenic pollutants.

Alkyl nitrates are common ONs. Alkanes, as the precursors of alkyl nitrates, have been found to be the most abundant species, contributing 54.1 %–64.7 % of the total VOC concentration (Li et al., 2020), and they were the main components of anthropogenic VOCs that are widely present in the atmosphere (Wei et al., 2018; Kang et al., 2018, 2016). It has been found that short-chain (C1–C5) alkyl nitrates are secondary products of photochemical reactions between alkanes and OH radicals in the gas phase (Jordan et al., 2008; Lim and Ziemann, 2009; Perring et al., 2013; Sun et al., 2018), so they are associated with photochemical pollution (Simpson et al., 2006; Wang et al., 2013; Ling et al., 2016). The vapour pressure decreases as the carbon chain length increases, so long-chain alkyl nitrates tend to enter the particle phase through gas–particle partitioning and can participate in particulate matter formation and contribute to haze pollution (Lim et al., 2005; Yee et al., 2012). Alkyl nitrates in particulate matter have not received attention in the past; few studies of particulate-bound alkyl nitrates have been performed. Yang et al. (2019) developed a gas chromatography triple quadrupole mass spectrometry (GC-MS/MS) method for determining n-alkyl nitrate concentrations and detecting n-alkyl nitrates in real PM2.5 samples. This indicated that n-alkyl nitrates can be present in airborne particulate matter in urban areas. Particulate-bound alkyl nitrates as a kind of secondary pollutants affected by anthropogenic emissions have an important influence on the oxidation of the atmospheric environment and the formation of regional haze pollution (Browne and Cohen, 2012), so it is important to improve our understanding of particulate-bound alkyl nitrate pollution characteristics, temporal variations, and formation mechanisms.

In this study, we determined the concentrations of C9–C16 n-alkyl nitrates in PM2.5 samples collected in Beijing in 2020 and 2021. The aim was to investigate n-alkyl nitrate pollution and assess temporal variations in n-alkyl nitrate compositions and concentrations. We also assessed the similarities in temporal trends and correlations between the particulate-bound n-alkyl nitrate, ozone, PM2.5, and nitrogen dioxide (NO2) concentrations to investigate the mechanisms involved in the formation of particulate-bound alkyl nitrates. The study was performed to improve our understanding of alkyl nitrates in PM2.5 and improve our ability to control haze pollution.

2 Materials and methods

2.1 Sampling period and location

Beijing is a typical densely populated large city in China. The heavy traffic in Beijing means that large amounts of exhaust gases are emitted by motor vehicles, and this causes serious haze pollution. Large amounts of anthropogenic n-alkanes are emitted to the atmosphere and act as precursors for particulate-bound alkyl nitrates (Kang et al., 2018; Cui et al., 2021). Haidian District is a relatively prosperous area in Beijing. Haidian District is a busy area with high traffic flow, making it suitable for studying anthropogenic alkyl nitrates in particulate matter. This study was performed at the Minzu University of China (39.57 N, 116.19 E) in Haidian District. PM2.5 samples were collected on the roof (about 20 m above the ground) of the College of Pharmacy at the Minzu University of China. Samples were collected in November and December 2021 and March, April, July, September, and October 2022. Separate day and night samples were collected for 1 week (23 to 29) in each of these months. Each daytime sample was collected from 07:00 to 20:00, and each night-time sample was collected from 20:30 to 06:30 according to the morning and evening rush hours in Beijing, which tend to be 07:00–09:00 and 17:00–20:00, respectively.

2.2 Sample collection and pretreatment

Each PM2.5 sample was collected at a flow rate of 16.7 L min−1 using a TH-16A low-flow sampler (Wuhan Tianhong, Wuhan, China) containing a Whatman QMA quartz fibre filter ( 47 mm; GE Healthcare Bio-Sciences, Pittsburgh, PA, USA). Before use, the quartz fibre filters were baked at 550 C for 5 h to remove organic matter. Each sample was wrapped in aluminium foil and stored at 20 C.

The n-alkyl nitrates in a PM2.5 sample were extracted using an ultrasonic extraction method that was described in detail in previous publications (Yang et al., 2019; Yang et al., 2023). The filter was cut into pieces and extracted with 15.0 mL of dichloromethane for 15 min with ultrasonication. The extraction step was repeated five times, and the extracts were combined and evaporated to 2.0 mL using a rotary evaporator. The extract was then transferred to a 15 mL centrifuge tube and centrifuged at 3000 rpm for 5 min. The supernatant was then evaporated almost to dryness under a stream of high-purity nitrogen and transferred into 100 µL toluene for instrumental analysis. The sample pretreatment processes were performed with light excluded to prevent photolysis of nitrates.

2.3 Synthesis and examination of standards

Standards of n-alkyl nitrates could not be purchased, so we synthesized C9–C16 n-alkyl nitrate standards by performing substitution reactions involving treating brominated n-alkanes with silver nitrate using a previously published method (Luxenhofer et al., 1994, 1996; Yang et al., 2019).

The standards were examined and analysed by GC-MS/MS and detected by full scan detection. According to the total ion flow diagrams and mass spectra obtained by GC-MS/MS, only one compound showed a high instrumental response in the total ion flow diagrams, indicating the high purity of synthesized standards. The characteristic ions of n-alkyl nitrates, [CH2ONO2]+ ion (m/z 76.07) and [NO2]+ ion (m/z 46.07), appeared in the mass spectra and have high relative abundance, indicating the synthesized standards are n-alkyl nitrates.

2.4 Instrumental analysis

The n-alkyl nitrates (C9–C16) were qualitatively and quantitatively analysed using a Trace 1310 gas chromatograph and TSQ 8000 Evo triple quadrupole mass spectrometer (Thermo Fisher Scientific, Waltham, MA, USA). Separation was achieved using a J&W Scientific DB-5M column (30 m long, 0.25 mm inner diameter, 0.1 µm film thickness; Agilent Technologies, Santa Clara, CA, USA). The injection volume was 1.0 µL, and splitless injection mode was used. The carrier gas was high-purity helium, and the flow rate was 1.0 mL min−1. The oven temperature programme started at 60 C, which was held for 3 min, and then it increased at 10 C min−1 to 280 C, which was held for 3 min. The triple quadrupole mass spectrometer was used in electron impact ionization mode. The ion source temperature was 280 C, and the transmission line temperature was 290 C. The mass spectrometer was used in selected ion detection mode, and n-alkyl nitrates were detected by monitoring the characteristic [NO2]+ ion (m/z 46.07) and [CH2ONO2]+ ion (m/z 76.07), which were used as the confirmation and quantitation ions. The GC-MS/MS data were processed, and the n-alkyl nitrates were quantified using TraceFinder 2.0 software (Thermo Fisher Scientific).

2.5 Quantitative analysis

The n-alkyl nitrates were quantified using an external standards method. We used the synthesized C9–C16 n-alkyl nitrates to prepare standard solutions at concentrations of 1000, 100, 50, 20, and 10 ng mL−1. A calibration curve was plotted for each analyte, with the concentrations of the standards on the x axis and the GC-MS/MS instrument responses on the y axis. The linear ranges of the standard curves for the C9–C16 n-alkyl nitrate homologues were 10–1000 ng mL−1, and the correlation coefficients were all > 0.998. The n-alkyl nitrate concentrations in the PM2.5 sample extracts were quantified using the calibration curves.

2.6 Quality assurance and control

Measured and spiked blanks were extracted with each batch of samples. The n-alkyl nitrate concentrations found in the blank samples were subtracted from the n-alkyl nitrate concentrations found in the samples. The detection and quantification limits of the GC-MS/MS instrument were defined as the concentrations giving signal-to-noise ratios of 3 and 10, respectively. The instrument detection limits for the n-alkyl nitrates were 1.0–10.0 pg, and the method quantification limits were 0.1–1.0 pg m−3.

The recoveries of the n-alkyl nitrates in the PM2.5 samples were determined by performing spike recovery experiments, and the recovery was defined as the ratio between the measured and spiked concentrations. Three parallel spiked blank samples were analysed, and 20 µL of a standard solution containing each C9–C16 n-alkyl nitrate at a concentration of 100 ng mL−1 was added to each. The spiked blanks were then treated and analysed using the method described above. The n-alkyl nitrate concentrations in the spiked blank samples were determined by GC-MS/MS, and the recoveries were calculated. The n-alkyl nitrate recoveries were 62.6 %–95.3 %, and the relative standard deviation was 2.65 %.

2.7 Data analysis

The PM2.5, ozone, and NO2 concentrations were obtained from the China Meteorological Administration (https://www.cma.gov.cn, last access: 31 October 2021). The particulate-bound n-alkyl nitrate concentration data were statistically analysed using SPSS 26.0 software (IBM, Armonk, NY, USA). Correlations between concentrations of different species were identified by performing Pearson correlation and Spearman correlation tests (two-tailed), and differences between the concentrations in different samples were assessed by performing independent sample t tests, paired-sample t tests, and one-way analysis of variance (ANOVA).

3 Results and discussion

3.1 Particulate-bound n-alkyl nitrate pollution

3.1.1 Concentrations and compositions

The C9–C16 n-alkyl nitrates were detected in the PM2.5 samples collected during day and night in all of the seasons, and the concentrations are shown in Fig. 1. The concentration ranges, mean concentrations, and detection rates for the different homologues are shown in Table 1.

https://acp.copernicus.org/articles/24/123/2024/acp-24-123-2024-f01

Figure 1Concentrations of C9–C16 n-alkyl nitrates in Beijing during the sampling period.

Download

Table 1C9–C16 n-alkyl nitrate concentration ranges, mean concentrations, and detection rates.

Download Print Version | Download XLSX

The C9 and C10 n-alkyl nitrate detection rates were < 50 %, the C11 n-alkyl nitrate detection rate was  70 %, and the C12–C16 n-alkyl nitrate detection rates were  90 %. The particulate-bound n-alkyl nitrate detection rates generally increased as the carbon chain length increased. These results indicated that particulate-bound n-alkyl nitrates are widely present in airborne particulate matter in Beijing. For n-alkyl nitrates with a single functional group, relatively long chain n-alkyl nitrates (C12–C16) are more abundant than relatively short chain n-alkyl nitrates (C9–C11).

The total C9–C16 n-alkyl nitrate concentrations were 9.67–2730 pg m−3, and the mean was 578 pg m−3. As shown in Table 1, the particulate-bound n-alkyl nitrate homologue concentration range and mean increased as the carbon chain length increased. The C16 n-alkyl nitrate homologue had the largest concentration range, and the mean concentration was significantly higher than the mean concentrations of the other homologues (p< 0.01). The C12–C16 n-alkyl nitrate concentrations were significantly higher than the C9–C11 n-alkyl nitrate concentrations (p< 0.01); i.e., the long-chain n-alkyl nitrate concentrations were higher than the short-chain n-alkyl nitrate concentrations in the PM2.5 samples.

The particulate-bound n-alkyl nitrate homologue group compositions in the day and night in the different seasons during the sampling period are shown in Figs. 2 and 3. It can be seen that the C12, C14, C15, and C16 n-alkyl nitrate homologues made relatively high contributions to the total n-alkyl nitrate concentrations and that n-alkyl nitrates with longer carbon chains (C12–C16) generally contributed more than n-alkyl nitrates with shorter carbon chains (C9–C11) to the total n-alkyl nitrate concentrations during the sampling period.

https://acp.copernicus.org/articles/24/123/2024/acp-24-123-2024-f02

Figure 2Contributions of the C9–C16 n-alkyl nitrate homologues to the total C9–C16 n-alkyl nitrate concentrations in the day samples collected in different seasons. (The x-axis labels are defined as the sampling time of the samples; for example, “201123” indicates the date of 23 November 2020, and “D” indicates samples collected in the day.)

Download

https://acp.copernicus.org/articles/24/123/2024/acp-24-123-2024-f03

Figure 3Contributions of the C9–C16 n-alkyl nitrate homologues to the total C9–C16 n-alkyl nitrate concentrations in the night samples collected in different seasons (The x-axis labels are defined as the sampling time of the samples; for example, “201123” indicates the date of 23 November 2020, and “N” indicates samples collected at night.)

Download

The long-chain n-alkyl nitrate concentrations and contributions to the total n-alkyl nitrate concentrations in PM2.5 may have been high because of high concentrations of precursor n-alkanes in the atmosphere and the abilities of n-alkyl nitrates to form on airborne particles. n-Alkane volatility decreases as the carbon chain length increases, and long-chain n-alkanes are more abundant than short-chain n-alkanes in airborne particulate matter. Our previous study found that the concentration of precursor n-alkanes in PM2.5 in Beijing ranged from 4.51 to 153 ng m−3 (mean 32.7 ng m−3), and they have rich anthropogenic emissions sources in the environment (Yang et al., 2023). The alkyl nitrate yield increases as the carbon chain lengths of the precursor alkanes increase (Lim and Ziemann, 2009; Matsunaga et al., 2009; Yeh et al., 2014). The n-alkyl nitrate (monofunctional organic nitrate) stability increases, and the saturated vapour pressure decreases as the carbon chain length increases. Long-chain alkyl nitrates therefore tend more than short-chain alkyl nitrates to be associated with airborne particles and to be involved in particulate matter formation (Lim and Ziemann, 2005; Yee et al., 2012). The increasing n-alkyl nitrate concentrations in the particulate phase as the n-alkyl nitrate carbon chain length increased need to be investigated further by investigating the influencing factors and the mechanisms involved in n-alkyl nitrate formation.

3.1.2 Diurnal and seasonal variations in n-alkyl nitrate concentrations and homologue patterns

As shown in Table 1, the mean C9–C16 n-alkyl nitrate concentrations in PM2.5 were higher at night than in the day and the mean C12–C16 n-alkyl nitrate concentrations were significantly higher at night than in the day (p< 0.01). However, the contributions of the different n-alkyl nitrate homologues to the total n-alkyl nitrate concentrations in the day and night samples were not significantly different, as shown in Figs. 2 and 3.

Temporal trends in the total C9–C16 n-alkyl nitrate concentrations during the sampling period are shown in Fig. 4. The n-alkyl nitrate concentrations varied seasonally, with the maximum total concentration occurring in winter and the mean concentration decreasing in the order winter > spring > autumn > summer. According to the analysis of variation, the contributions of the different n-alkyl nitrate homologues varied seasonally, with the contributions in summer being significantly different from the contributions in the other seasons (p< 0.01) but the compositions in winter, spring, and autumn not being significantly different. The mean particulate-bound n-alkyl nitrate concentrations in winter and spring were significantly higher than the mean particulate-bound n-alkyl nitrate concentrations in summer and autumn (p< 0.01) based on the independent samples' t test.

https://acp.copernicus.org/articles/24/123/2024/acp-24-123-2024-f04

Figure 4Total C9–C16 n-alkyl nitrate and PM2.5 concentrations during the sampling period in Beijing. (The x-axis labels are defined as the sampling time of the samples; for example, “201123” indicates the date of 23 November 2020, “D” indicates samples collected in the day, and “N” indicates samples collected at night. The dotted lines are the dividing lines and delineate the four seasons.)

Download

We inferred that the diurnal and seasonal differences and changes in the particulate-bound n-alkyl nitrate concentrations may be influenced by the meteorological factors and the changes in the particulate-bound alkyl nitrates' formation process. Temperature affects the partitioning of the semi-volatile organic compounds between the gas and particle phases, the fraction of ONs in the particle phase increases with decreasing temperature (Kenagy et al., 2021), and the precursor n-alkanes are more likely to partition into particles with the high partitioning coefficient of gas–particle partitioning when the temperature is lower (Wick et al., 2002; Lyu et al., 2016). Other meteorological factors such as the mixing-layer height and atmospheric dispersion conditions can also affect the concentration level of particulate-bound alkyl nitrates by influencing the concentrations of PM2.5 and precursor n-alkanes (Wang et al., 2009; Wagner and Schäfer, 2017). However, variations in the concentration of particulate-bound alkyl nitrates are more related to their formation (Rollins et al., 2013). More abundant particulate matter and n-alkanes, influenced by meteorological factors, may further provide the reaction conditions for the formation of particulate-bound alkyl nitrates.

In addition, the mean particulate-bound n-alkyl nitrate concentration was lowest in summer even though the maximum short-chain (C1–C5) alkyl nitrate concentration in the gas phase was previously found to occur in the summer (Simpson et al., 2006; Wang et al., 2013; Ling et al., 2016; Sun et al., 2018). Long-chain particulate-bound n-alkyl nitrates (C9–C16) and gaseous short-chain alkyl nitrates (C1–C5) in the same season such as summer showed different characteristics, which may be due to their different formation mechanisms. However, this needs to be analysed further.

3.2 Particulate-bound n-alkyl nitrate formation mechanisms

3.2.1 Differences between particulate-bound n-alkyl nitrates and gaseous alkyl nitrates

It is generally agreed that organic nitrates are secondary products of gas-phase photochemical reactions in the atmosphere (Perring et al., 2013; Ng et al., 2017) and that organic nitrates enter the particulate phase through gas–particle partitioning (Capouet and Müller, 2006; Gu et al., 2017). At high background NOx concentrations, short-chain (C1–C5) alkyl nitrates are mainly produced through gas-phase reactions between alkanes and OH radicals during the day (i.e., in the presence of sunlight) (Robert, 1990; Wisthaler et al., 2008). Alkanes react with OH radicals to form alkyl radicals through hydrogen subtraction, and the alkyl radicals are further oxidized to give RO2 radicals. Finally, the RO2 radicals react with nitric oxide to give alkyl nitrates. Short-chain (C1–C5) alkyl nitrates have been found to be secondary products of photochemical reactions; their concentrations correlate with the concentrations of photochemical pollutants, and, in particular, they significantly positively correlate with the ozone concentration (Wang et al., 2013; Ling et al., 2016; Sun et al., 2018). Short-chain alkyl nitrate concentrations vary temporally in a similar way to the peroxyacetyl nitrate concentration, with the maximum concentration occurring in summer (Simpson et al., 2006). However, the temporal trends in particulate-bound long-chain (C9–C16) n-alkyl nitrate concentrations we found were different from the temporal trends in gas-phase short-chain alkyl nitrate concentrations found in previous studies.

Temporal trends in the total C9–C16 n-alkyl nitrate concentrations and ozone concentrations during the sampling period were compared to investigate the relationships between particulate-bound n-alkyl nitrates and the gas-phase reactions of the photochemical process. The C9–C16 n-alkyl nitrate and ozone concentrations are shown in Fig. 5. The total particulate-bound n-alkyl nitrate and ozone concentrations followed opposite temporal trends, with the lowest ozone concentration and highest total particulate-bound n-alkyl nitrate concentration occurring in winter and the highest ozone concentration and lowest particulate-bound n-alkyl nitrate concentration occurring in summer. A significant negative correlation was found between the ozone and particulate-bound n-alkyl nitrate concentrations (p< 0.01, r=-0.411). The C9, C10, and C11 n-alkyl nitrate concentrations did not significantly correlate with the ozone concentration, but the C12–C16 n-alkyl nitrate concentrations significantly negatively correlated with the ozone concentration (p< 0.01).

https://acp.copernicus.org/articles/24/123/2024/acp-24-123-2024-f05

Figure 5Total C9–C16 n-alkyl nitrate and ozone concentrations during the sampling period in Beijing. (The x-axis labels are defined as the sampling time of the samples; for example, “201123” indicates the date of 23 November 2020, “D” indicates samples collected in the day, and “N” indicates samples collected at night. The dotted lines are the dividing lines and delineate the four seasons.)

Download

C9–C16 particulate-bound n-alkyl nitrates showed diametrically opposite characteristics and different environmental behaviours from gaseous alkyl nitrates, which suggest that particulate-bound n-alkyl nitrates are not the indicators of photochemical pollution and may form through different mechanisms from gas-phase short-chain (C1–C5) alkyl nitrates. Research has shown that there may be other reaction pathways for the formation of particulate organic nitrates; particulate-bound organic nitrates can be formed via non-homogeneous reactions (Li et al., 2022). Therefore, we inferred that particulate-bound n-alkyl nitrates may not be formed through the gas-phase reactions in the photochemical process involving ozone and that long-chain (C12–C16) n-alkyl nitrates may not be the secondary products of gas-phase homogeneous reactions in the photochemical process.

3.2.2 Possible particulate-bound n-alkyl nitrate formation mechanisms

The temporal trends in the particulate-bound n-alkyl nitrate and PM2.5 concentrations are shown in Fig. 4. The C9–C16 n-alkyl nitrate and PM2.5 concentrations followed similar temporal trends, and the concentrations of both changed synchronously, indicating that the C9–C16 n-alkyl nitrate and PM2.5 concentrations may have correlated. Statistical tests were performed, and, indeed, a significant positive correlation was found between the particulate-bound n-alkyl nitrate and PM2.5 concentrations (p< 0.01, r=0.664). The particulate-bound C9–C11 n-alkyl nitrate homologue concentrations did not significantly correlate with the PM2.5 concentration, and the C9–C11 n-alkyl nitrates and precursor n-alkanes were found at low detection rates and concentrations in the PM2.5 samples. We concluded that C9–C11 n-alkyl nitrates in particulate matter may form through both gas-phase and particle-phase reactions. The C12–C16 n-alkyl nitrate homologue concentrations significantly positively correlated with the PM2.5 concentration (p< 0.01). According to previous study about particulate-bound n-alkanes in Beijing (Yang et al., 2023), we found that particulate-bound n-alkyl nitrates showed the same temporal trends and pollution characteristics as n-alkanes; the particulate-bound n-alkanes and PM2.5 concentrations significantly correlated (p< 0.01, r=0.618). From this we hypothesize that C12–C16 particulate-bound n-alkyl nitrate and particulate matter concentrations probably correlated because of reactions involving precursors of n-alkyl nitrates on the particulate matter, meaning the particulate matter acted as a medium on which particulate-bound n-alkyl nitrates formed, or n-alkyl nitrates are involved in the formation of particulate matter.

We found that particulate-bound n-alkyl nitrates may not be the products of gas-phase homogeneous reactions, so other mechanisms may be involved in particulate-bound n-alkyl nitrate formation. It has previously been found that organosulfate compounds, which have similar structures to organic nitrates, can form through non-homogeneous reactions involving sulfate and organosulfate compound precursors on surfaces of particles (Farmer et al., 2010). Organosulfates and organic nitrates are important organic pollutants in particulate matter and play important roles in the formation of haze (Li et al., 2018). Similar compounds may form through similar mechanisms; studies have shown that ONs can be formed through non-homogeneous reactions (Zhen et al., 2022; Li et al., 2022), so we hypothesize that particulate-bound n-alkyl nitrates may form through reactions between alkanes and nitrate on particulate matter. Semi-volatile n-alkanes (precursors of n-alkyl nitrates) are widely present in particulate matter (Kang et al., 2018; Han et al., 2018; Lyu et al., 2019; Yang et al., 2023), and the n-alkane concentration in particulate matter increases as the carbon chain length increases (Aumont et al., 2012). Abundant n-alkanes in particulate matter make it possible for reactions to occur to form n-alkyl nitrates. Nitrogen oxides are precursors of organic nitrates and may be involved in the formation of particulate-bound n-alkyl nitrates, so we compared the temporal trends in the NO2 and particulate-bound n-alkyl nitrate concentrations. The NO2 and particulate-bound n-alkyl nitrate concentrations are shown in Fig. 6. The C9–C16 particulate-bound n-alkyl nitrate and NO2 concentrations are significantly positively correlated (p< 0.01, r=0.626). The C12, C13, C14, C15, and C16 concentrations are significantly positively correlated with the NO2 concentration (p< 0.01), indicating that NO2 may be involved in the formation of particulate-bound n-alkyl nitrates.

https://acp.copernicus.org/articles/24/123/2024/acp-24-123-2024-f06

Figure 6Total C9–C16 n-alkyl nitrate and NO2 concentrations during the sampling period in Beijing. (The x-axis labels are defined as the sampling time of the samples; for example, “201123” indicates the date of 23 November 2020, “D” indicates samples collected in the day, and “N” indicates samples collected at night. The dotted lines are the dividing lines and delineate the four seasons.)

Download

It has been found that the formation of nitrate (NO3-) in particulate matter is related to the presence of NO2 and that the NO3- and NO2 concentrations significantly positively correlate (Su et al., 2018). NO2 in the atmosphere can be oxidized to NO3- through non-homogeneous reactions on particulate matter surfaces (Goodman et al., 1998), and most particulate-phase NO3- forms through these non-homogeneous reactions (Zhu et al., 2010). The high NO2 concentrations found in the atmosphere in urban areas mean that particulate-phase nitrate can form. Particulate-bound n-alkyl nitrates may form through non-homogeneous reactions between n-alkanes and nitrate on particulate matter surfaces. It has previously been found that n-alkanes can react with nitrate at room temperature with catalysis by metallic copper to give alkyl nitrates (Luxenhofer et al., 1994, 1996). Copper is widely present in airborne particulate matter in urban areas (Duan et al., 2014; Gonzalez et al., 2016) and could catalyse the formation of particulate-bound n-alkyl nitrates. The similar temporal trends in the particulate-bound n-alkyl nitrate, n-alkanes, PM2.5, and NO2 concentrations and the significant positive correlations between the n-alkyl nitrate, PM2.5, and NO2 concentrations indicate that particulate-bound n-alkyl nitrates may form through non-homogeneous reactions between precursor alkanes and particulate-bound nitrate on particulate matter surfaces. However, the formation mechanism needs further study.

3.3 Contributions of particulate-bound n-alkyl nitrates to haze pollution

Previous studies have shown a tight correlation between ONs content and SOA particle number concentrations, implying that ONs may play an important role in the nucleation and growth of atmospheric nanoparticles (Berkemeier et al., 2016; Yu et al., 2019). Organic nitrates have been found to contribute 2 %–12 % of particulate matter in SOAs (Fry et al., 2009; Rollins et al., 2012; Fry et al., 2013; Xu et al., 2015), meaning that the contributions of organic nitrates to particulate matter in the atmosphere should not be ignored and that anthropogenic precursors for long-chain particulate-bound n-alkyl nitrates are abundant in the environment and should therefore be of more concern than is currently the case.

The temporal trends in the particulate-bound n-alkyl nitrate and PM2.5 concentrations were similar, as shown in Fig. 4. The particulate-bound n-alkyl nitrate and PM2.5 concentrations significantly positively correlated (p< 0.01, r=0.664), indicating that particulate-bound n-alkyl nitrates contributed to the formation of particulate matter. The particulate-bound n-alkyl nitrate and PM2.5 concentrations increased sharply during haze pollution events in winter, spring, and autumn, indicating that particulate-bound n-alkyl nitrates are important components of SOAs and make marked contributions to atmospheric particulate matter and haze. Similar results were found in previous studies of organic nitrates (Rollins et al., 2012). Changes in the C9–C16 particulate-bound n-alkyl nitrate homologue concentrations during the sampling period are shown in Fig. 7. It can be seen that the temporal changes in the n-alkyl nitrate homologue concentrations became more similar to the temporal changes in the PM2.5 concentration as the carbon chain length increased. Each C13–C16 n-alkyl nitrate homologue concentration significantly positively correlated with the PM2.5 concentration (p< 0.01), and the correlation coefficient increased as the n-alkyl nitrate carbon chain length increased. This indicated that the contribution of n-alkyl nitrates to the formation of particulate matter and haze increased as the carbon chain length increased. Because of the high background NOx concentration in ambient air in urban areas, particulate-bound n-alkyl nitrate SOAs can make important contributions to the particulate matter concentration and therefore to haze. The particulate-bound n-alkyl nitrate concentration and atmospheric visibility significantly negatively correlated (p< 0.01, r=-0.698), indicating that an increase in the particulate-bound n-alkyl nitrate concentration will strongly decrease atmospheric visibility during a haze event. According to previous studies, organic nitrates make an important contribution to total aerosols (Xu et al., 2015), and particulate-bound ONs have a significant correlation with SOAs (Yu et al., 2019). Although it was found in our study that the mass of C9–C16 particulate-bound n-alkyl nitrates accounts for only a small fraction of PM2.5 (about 1 ‰), they are only a small part of particulate-bound alkyl nitrates. Considering the different carbon chain lengths, carbon frame structures, and functional group substitution positions, etc., as well as isomers, and the pollution characteristics and trends of C9–C16 n-alkyl nitrates, we believe that the effect of particulate-bound alkyl nitrates on PM2.5 and haze formation should not be neglected. In addition, studies have shown that NOx is the key factor in the formation of atmospheric aerosols (Rollins et al., 2012); the formation of alkyl nitrates is one of the major pathways for the conversion of NOx from radical forms into semi-permanent reservoirs (Shepson, 2007). At high NOx concentrations, the oxidation of hydrocarbon compounds in urban areas produces more than 100 different alkyl nitrates (Calvert and Madronich, 1987), Atherton and Penner (1988) calculated from model simulations that 5 % of NOx can be converted to alkyl nitrates. Therefore, we conclude that there is a strong correlation between NOx, particulate-bound alkyl nitrates and PM2.5. Particulate-bound n-alkyl nitrates strongly affect haze pollution, and controlling anthropogenic emissions of NOx and VOCs (precursors of particulate-bound n-alkyl nitrates) would effectively control particulate matter pollution and improve air quality in urban areas.

https://acp.copernicus.org/articles/24/123/2024/acp-24-123-2024-f07

Figure 7C9–C16 n-alkyl nitrate homologue and PM2.5 concentrations during the sampling period in Beijing. (The x-axis labels are defined as the sampling time of the samples; for example, “201123” indicates the date of 23 November 2020, “D” indicates samples collected in the day, and “N” indicates samples collected at night. The dotted lines are the dividing lines and delineate the four seasons.)

Download

4 Summary

The concentrations of n-alkyl nitrates in PM2.5 were determined, and all eight C9–C16 n-alkyl nitrate homologues were detected in PM2.5, indicating that long-chain alkyl nitrates are present in airborne particulate matter in Beijing. The total C9–C16 n-alkyl nitrate concentrations during the sampling period were 9.67–2731.82 pg m−3, and the mean was 578.44 pg m−3 . The detection rate, concentration range, and mean concentration of each n-alkyl nitrate homologue group in the particulate matter samples increased as the carbon chain length increased. The C12–C16 n-alkyl nitrates contributed more than the C9–C11 n-alkyl nitrates to the total n-alkyl nitrate concentrations, indicating that long-chain n-alkyl nitrates were more abundant than short-chain n-alkyl nitrates in the particulate matter. There were marked diurnal and seasonal differences in the particulate-bound n-alkyl nitrate concentrations. The mean C12–C16 n-alkyl nitrate concentrations were significantly higher at night than in the day (p< 0.01). The maximum particulate-bound n-alkyl nitrate concentrations occurred in winter, and the mean concentrations decreased in the order winter > spring > autumn > summer. The lowest mean concentration was found in summer even though the maximum short-chain (C1–C5) alkyl nitrate concentrations in the gas phase have previously been found to occur in summer. The particulate-bound n-alkyl nitrate concentration followed the opposite temporal trend to and significantly negatively correlated with the ozone concentration. We concluded that long-chain particulate-bound n-alkyl nitrates may be formed through different mechanisms to gas-phase short-chain alkyl nitrates and may not be the secondary products of gas-phase homogeneous reactions in the photochemical process. The particulate-bound n-alkyl nitrate concentrations followed the same temporal trend to and significantly positively correlated with the PM2.5 and NO2 concentrations (p< 0.01). Particulate-bound n-alkyl nitrates may form through non-homogeneous reactions between alkanes and nitrate on particulate matter surfaces, meaning that particulate matter acts as a reaction substrate and reactant carrier. Particulate-bound alkyl nitrates are important contributors of airborne particulate matter and strongly affect atmospheric visibility, meaning the roles of particulate-bound alkyl nitrates in the formation of haze cannot be ignored, and controlling anthropogenic emissions of precursors of particulate-bound n-alkyl nitrates in urban areas with high background NOx concentrations will effectively control haze pollution and improve air quality.

Data availability

The data presented in this article are available from the authors upon request (junjin3799@126.com).

Author contributions

JJ conceived and designed the study, provided direct funding, and helped with manuscript revision as the corresponding author. JY mainly conducted the sampling and sample analysis and wrote the manuscript as the first author. GL mainly helped with sampling and data analysis and revised the manuscript as the co-first author. JZ, YW, CL, KH, JB, ZZ, and WL helped with sampling and analysis as the co-authors. All authors read and approved the final paper.

Competing interests

The contact author has declared that none of the authors has any competing interests.

Disclaimer

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. While Copernicus Publications makes every effort to include appropriate place names, the final responsibility lies with the authors.

Acknowledgements

This work was supported by the National Natural Science Foundation of China (grant no. 91744206) and the Beijing Science and Technology Planning Project (Z181100005418016). We also thank Gareth Thomas for his help in editing an earlier draft of this paper to improve the grammar.

Financial support

This research has been supported by the National Natural Science Foundation of China (grant no. 91744206).

Review statement

This paper was edited by Joachim Curtius and reviewed by Yongjie Wei and two anonymous referees.

References

Atherton, C. S. and Penner, J. E.: The transformation of nitrogen oxides in the polluted troposphere, Tellus B, 40, 380, https://doi.org/10.3402/tellusb.v40i5.16003, 1988. 

Aumont, B., Valorso, R., Mouchel-Vallon, C., Camredon, M., Lee-Taylor, J., and Madronich, S.: Modeling SOA formation from the oxidation of intermediate volatility n-alkanes, Atmos. Chem. Phys., 12, 7577–7589, https://doi.org/10.5194/acp-12-7577-2012, 2012. 

Bai, J. H., de Leeuw, G., De Smedt, I., Theys, N., Van Roozendael, M., Sogacheva, L., and Chai, W.: Variations and photochemical transformations of atmospheric constituents in North China, Atmos. Environ., 189, 213–226, https://doi.org/10.1016/j.atmosenv.2018.07.004, 2018. 

Barnes, I,, Becker, K. H., and Zhu, T.: Near UV absorption spectra and photolysis products of difunctional organic nitrates: Possible importance as NOx reservoirs, J. Atmos. Chem., 17, 353–373, https://doi.org/10.1007/BF00696854, 1993. 

Barnes, I., Bastian, V., Becker, K. H., and Zhu, T.: Kinetics and products of the reactions of nitrate radical with monoalkenes, dialkenes, and monoterpenes, J. Phys. Chem. C, 94, 2413–2419, https://doi.org/10.1021/j100369a041, 1990. 

Berkemeier, T., Ammann, M., Mentel, T. F., Pöschl, U., and Shiraiwa, M.: Organic nitrate contribution to new particle formation and growth in secondary organic aerosols from α-pinene ozonolysis, Environ. Sci. Technol., 50, 6334–6342, https://doi.org/10.1021/acs.est.6b00961, 2016. 

Browne, E. C. and Cohen, R. C.: Effects of biogenic nitrate chemistry on the NOx lifetime in remote continental regions, Atmos. Chem. Phys., 12, 11917–11932, https://doi.org/10.5194/acp-12-11917-2012, 2012. 

Calvert, J. G. and Madronich, S.: Theoretical study of the initial products of the atmospheric oxidation of hydrocarbons, J. Geophys. Res.-Atmos., 92, 2211–2220, https://doi.org/10.1029/JD092iD02p02211, 1987. 

Capouet, M. and Müller, J.-F.: A group contribution method for estimating the vapour pressures of α-pinene oxidation products, Atmos. Chem. Phys., 6, 1455–1467, https://doi.org/10.5194/acp-6-1455-2006, 2006. 

Chen, X. H., Hulbert, D., and Shepson, P. B.: Measurement of the organic nitrate yield from OH reaction with isoprene, J. Geophys. Res.-Atmos., 103, 25563–25568, https://doi.org/10.1029/98JD01483, 1998. 

Cui, M., Chen, Y. J., Li, C., Yin, J., Li, J., and Zheng, J.: Parent and methyl polycyclic aromatic hydrocarbons and n-alkanes emitted by construction machinery in China, Sci. Total Environ., 775, 144759, https://doi.org/10.1016/j.scitotenv.2020.144759, 2021. 

Duan, J. C., Tan, J. H., Hao, J. M., and Chai, F. H.: Size distribution, characteristics and sources of heavy metals in haze episod in Beijing, J. Environ. Sci., 26, 189–196, https://doi.org/10.1016/S1001-0742(13)60397-6, 2014. 

Farmer, D. K., Matsunaga, A., Docherty, K. S., Surratt, J. D., Seinfeld, J. H., Ziemann, P. J., and Jimenez, J. L.: Atmospheric Chemistry Special Feature: Response of an aerosol mass spectrometer to organonitrates and organosulfates and implications for atmospheric chemistry. P. Natl. Acad. Sci. USA, 107, 6670–6675, https://doi.org/10.1073/pnas.0912340107, 2010. 

Fry, J. L., Kiendler-Scharr, A., Rollins, A. W., Wooldridge, P. J., Brown, S. S., Fuchs, H., Dubé, W., Mensah, A., dal Maso, M., Tillmann, R., Dorn, H.-P., Brauers, T., and Cohen, R. C.: Organic nitrate and secondary organic aerosol yield from NO3 oxidation of β-pinene evaluated using a gas-phase kinetics/aerosol partitioning model, Atmos. Chem. Phys., 9, 1431–1449, https://doi.org/10.5194/acp-9-1431-2009, 2009. 

Fry, J. L., Draper, D. C., Zarzana, K. J., Campuzano-Jost, P., Day, D. A., Jimenez, J. L., Brown, S. S., Cohen, R. C., Kaser, L., Hansel, A., Cappellin, L., Karl, T., Hodzic Roux, A., Turnipseed, A., Cantrell, C., Lefer, B. L., and Grossberg, N.: Observations of gas- and aerosol-phase organic nitrates at BEACHON-RoMBAS 2011, Atmos. Chem. Phys., 13, 8585–8605, https://doi.org/10.5194/acp-13-8585-2013, 2013. 

Garnes, L. A. and Allen, D. T.: Size Distributions of Organonitrates in Ambient Aerosol Collected in Houston, Texas. Aerosol Sci. Tech., 36, 983–992, https://doi.org/10.1080/02786820290092186, 2002. 

Gen, M. S., Liang, Z. C, Zhang, R.F., Mabato, B. R. G., and Chan, C. K.: Particulate nitrate photolysis in the atmosphere, Environ. Sci. Atmos., 2, 111–127, https://doi.org/10.1039/D1EA00087J, 2022. 

Gonzalez, R. O., Strekopytov, S., Amato, F., Querol, X., Reche, C., and Weiss, D.: New insights from zinc and copper isotopic compositions into the sources of atmospheric particulate matter from two major European cities, Environ. Sci. Technol., 50, 9816–9824, https://doi.org/10.1021/acs.est.6b00863, 2016. 

Goodman, A. L., Miller, T. M., and Grassian, V. H.: Heterogeneous reactions of NO2 on NaCl and Al2 O3 particles, J. Vac. Sci. Technol. A, 16, 2585–2590, https://doi.org/10.1116/1.581386, 1998. 

Gu, F. T., Hu, M., Zheng, J., and Guo, S.: Research Progress on Particulate Organonitrates, Prog. Chem., 29, 962–969, https://doi.org/10.7536/PC170324, 2017 (in Chinese). 

Han, D., Fu, Q., Gao, S., Li, L., Ma, Y., Qiao, L., Xu, H., Liang, S., Cheng, P., Chen, X., Zhou, Y., Yu, J. Z., and Cheng, J.: Non-polar organic compounds in autumn and winter aerosols in a typical city of eastern China: size distribution and impact of gas–particle partitioning on PM2.5 source apportionment, Atmos. Chem. Phys., 18, 9375–9391, https://doi.org/10.5194/acp-18-9375-2018, 2018. 

Jordan, C. E., Ziemann, P. J., Griffin, R. J., Lim, Y. B., Atkinson, R., Arey, J.: Modeling SOA formation from OH reactions with C8–C17 n-alkanes, Atmos. Environ., 42, 8015–8026, https://doi.org/10.1016/j.atmosenv.2008.06.017, 2008. 

Kang, M. J., Fu, P. Q., Aggarwal, S. G., Kumar, S., Zhao, Y., Sun, Y. L., and Wang, Z. F.: Size distributions of n-alkanes, fatty acids and fatty alcohols in springtime aerosols from New Delhi, India, Environ. Pollut., 219, 957–966, https://doi.org/10.1016/j.envpol.2016.09.077, 2016. 

Kang, M. J., Ren, L., Ren, H., Zhao, Y., Kawamura, K., Zhang, H., Wei, L., Sun, Y., Wang, Z., and Fu, P.: Primary biogenic and anthropogenic sources of organic aerosols in Beijing, China: Insights from saccharides and n-alkanes, Environ. Pollut., 243, 1579–1587, https://doi.org/10.1016/j.envpol.2018.09.118, 2018. 

Kenagy, H. S., Romer Present, P. S., Wooldridge, P. J., Nault, B. A., Campuzano-Jost, P., Day, D. A., Jimenez, J. L., Zare, A., Pye, H. O., and Yu, J.: Contribution of Organic Nitrates to Organic Aerosol over South Korea during KORUS-AQ, Environ. Sci. Technol., 55, 16326–16338, https://doi.org/10.1021/acs.est.1c05521, 2021. 

Li, G. B., Cai, S. H., and Long, B.: New reactions for the formation of organic nitrate in the atmosphere, ACS omega, 7, 39671–39679, https://doi.org/10.1021/acsomega.2c03321, 2022. 

Li, H., Zhang, Q., Zheng, B., Chen, C., Wu, N., Guo, H., Zhang, Y., Zheng, Y., Li, X., and He, K.: Nitrate-driven urban haze pollution during summertime over the North China Plain, Atmos. Chem. Phys., 18, 5293–5306, https://doi.org/10.5194/acp-18-5293-2018, 2018. 

Li, Q., Wang, E. R., Zhang, T. T., and Hu, H.: Spatial and temporal patterns of air pollution in Chinese cities, Water Air Soil Pollut., 228, 1–22, https://doi.org/10.1007/s11270-017-3268-x, 2017. 

Li, Q. Q., Su, G. J., Li, C. Q., Liu, P. F., Zhao, X. X., Zhang, C. L., Sun, X., Mu, Y. J., Wu, M. G., and Wang, Q. L.: An investigation into the role of VOCs in SOA and ozone production in Beijing, China, Sci. Total Environ., 720, 137536, https://doi.org/10.1016/j.scitotenv.2020.137536, 2020. 

Lim, Y. B. and Ziemann, P. J.: Products and Mechanism of Secondary Organic Aerosol Formation from Reactions of n-Alkanes with OH Radicals in the Presence of NOx Environ. Sci. Technol., 39, 9229–9236, https://doi.org/10.1021/es051447g, 2005. 

Lim, Y. B. and Ziemann, P. J.: Chemistry of Secondary Organic Aerosol Formation from OH Radical-Initiated Reactions of Linear, Branched, and Cyclic Alkanes in the Presence of NOx, Aerosol Sci. Technol., 43, 604–619, https://doi.org/10.1080/02786820902802567, 2009. 

Ling, Z., Guo, H., Simpson, I. J., Saunders, S. M., Lam, S. H. M., Lyu, X., and Blake, D. R.: New insight into the spatiotemporal variability and source apportionments of C1–C4 alkyl nitrates in Hong Kong, Atmos. Chem. Phys., 16, 8141–8156, https://doi.org/10.5194/acp-16-8141-2016, 2016. 

Liu, X. J., Zhang, Y., Han, W. X., Tang, A. H., Shen, J. L., Cui, Z. L., Vitousek, P., Erisman, J. W., Goulding, K., Christie, P., Fangmeier, A., and Zhang, F. S.: Enhanced nitrogen deposition over China, Nature, 494, 458–463, https://doi.org/10.1038/nature11917, 2013. 

Liu, Y. and Wang, T.: Worsening urban ozone pollution in China from 2013 to 2017 – Part 2: The effects of emission changes and implications for multi-pollutant control, Atmos. Chem. Phys., 20, 6323–6337, https://doi.org/10.5194/acp-20-6323-2020, 2020. 

Luxenhofer, O., Schneider, E., and Ballschmiter, K.: Separation, detection and occurrence of (C2–C8)-alkyl- and phenyl-alkyl nitrates as trace compounds in clean and polluted air, Fresenius J. Anal. Chem., 350, 384–394, https://doi.org/10.1007/BF00325611, 1994. 

Luxenhofer, O., Schneider, M., Dambach, M. and Ballschmiter, K.: Semivolatile long chain C6–C17 alkyl nitrates as trace compounds in air, Chemosphere, 33, 393–404, https://doi.org/10.1016/0045-6535(96)00205-6, 1996. 

Lyu, R. H., Shi, Z. B., Alam, M. S., Wu, X. F., Liu, D., Vu, T. V, Stark, C., Xu, R. X., Fu, P. Q., Feng, Y. C., and Harrison, R. M: Alkanes and aliphatic carbonyl compounds in wintertime PM2.5 in Beijing, China, Atmos. Environ., 202, 244–255, https://doi.org/10.1016/j.atmosenv.2019.01.023, 2019. 

Lyu, Y., Xu, T. T., Yang, X., Chen, J. M., Cheng, T. T., and Li, X.: Seasonal contributions to size-resolved n-alkanes (C8–C40) in the Shanghai atmosphere from regional anthropogenic activities and terrestrial plant waxes, Sci. Total Environ., 579, 1918–1928, https://doi.org/10.1016/j.scitotenv.2016.11.201, 2016. 

Ma, J. Z., Xu, X. B., Zhao, C. S., and Yan, P.: A review of atmospheric chemistry research in China: Photochemical smog, haze pollution, and gas-aerosol interactions, Adv. Atmos. Sci., 29, 1006–1026, https://doi.org/10.1007/s00376-012-1188-7, 2012. 

Matsunaga, A., Ziemann, P. J.: Yields of beta-hydroxynitrates and dihydroxynitrates in aerosol formed from OH radical-initiated reactions of linear alkenes in the presence of NOx, J. Phys. Chem. A, 113, 599–606, https://doi.org/10.1021/jp807764d, 2009. 

Mijling, B., van der A, R. J., and Zhang, Q.: Regional nitrogen oxides emission trends in East Asia observed from space, Atmos. Chem. Phys., 13, 12003–12012, https://doi.org/10.5194/acp-13-12003-2013, 2013. 

Ng, N. L., Brown, S. S., Archibald, A. T., Atlas, E., Cohen, R. C., Crowley, J. N., Day, D. A., Donahue, N. M., Fry, J. L., Fuchs, H., Griffin, R. J., Guzman, M. I., Herrmann, H., Hodzic, A., Iinuma, Y., Jimenez, J. L., Kiendler-Scharr, A., Lee, B. H., Luecken, D. J., Mao, J., McLaren, R., Mutzel, A., Osthoff, H. D., Ouyang, B., Picquet-Varrault, B., Platt, U., Pye, H. O. T., Rudich, Y., Schwantes, R. H., Shiraiwa, M., Stutz, J., Thornton, J. A., Tilgner, A., Williams, B. J., and Zaveri, R. A.: Nitrate radicals and biogenic volatile organic compounds: oxidation, mechanisms, and organic aerosol, Atmos. Chem. Phys., 17, 2103–2162, https://doi.org/10.5194/acp-17-2103-2017, 2017. 

Perring, A. E., Wisthaler, A., Graus, M., Wooldridge, P. J., Lockwood, A. L., Mielke, L. H., Shepson, P. B., Hansel, A., and Cohen, R. C.: A product study of the isoprene + NO3 reaction, Atmos. Chem. Phys., 9, 4945–4956, https://doi.org/10.5194/acp-9-4945-2009, 2009. 

Perring, A. E., Bertram, T. H., Farmer, D. K., Wooldridge, P. J., Dibb, J., Blake, N. J., Blake, D. R., Singh, H. B., Fuelberg, H., Diskin, G., Sachse, G., and Cohen, R. C.: The production and persistence of ΣRONO2 in the Mexico City plume, Atmos. Chem. Phys., 10, 7215–7229, https://doi.org/10.5194/acp-10-7215-2010, 2010. 

Perring, A. E., Pusede, S. E., and Cohen, R. C.: An observational perspective on the atmospheric impacts of alkyl and multifunctional nitrates on ozone and secondary organic aerosol, Chem. Rev., 113, 5848–5870, https://doi.org/10.1021/cr300520x, 2013. 

Richter, A., Burrows, J. P., Nub, H., Granier, C., and Niemeier, U.: Increase in tropospheric nitrogen dioxide over China observed from space, Nature, 437, 129–132, https://doi.org/10.1038/nature04092, 2005. 

Rindelaub, J. D., Mcavey, K. M., and Shepson, P. B.: The photochemical production of organic nitrates from α-pinene and loss via acid-dependent particle phase hydrolysis, Atmos. Environ., 100, 193–201, https://doi.org/10.1016/j.atmosenv.2014.11.010, 2015. 

Roberts, J. M.: The atmospheric chemistry of organic nitrates. Atmos. Environ., 24, 243–287, https://doi.org/10.1016/0960-1686(90)90108-Y, 1990. 

Rollins, A. W., Kiendler-Scharr, A., Fry, J. L., Brauers, T., Brown, S. S., Dorn, H.-P., Dubé, W. P., Fuchs, H., Mensah, A., Mentel, T. F., Rohrer, F., Tillmann, R., Wegener, R., Wooldridge, P. J., and Cohen, R. C.: Isoprene oxidation by nitrate radical: alkyl nitrate and secondary organic aerosol yields, Atmos. Chem. Phys., 9, 6685–6703, https://doi.org/10.5194/acp-9-6685-2009, 2009. 

Rollins, A. W., Browne, E. C., Min, K. E., Pusede, S. E., Wooldridge, P. J., Gentner, D. R., Goldstein, A. H., Liu, S., Day, D. A., Russell, L. M.: Evidence for NOx Control over Nighttime SOA Formation, Science, 337, 1210–1212, https://doi.org/10.1126/science.1221520, 2012. 

Rollins, A. W., Pusede, S., Wooldridge, P., Min, K.-E., Gentner, D. R., Goldstein, A. H., Liu, S., Day, D. A., Russell, L. M., and Rubitschun, C. L.: Gas/particle partitioning of total alkyl nitrates observed with TD-LIF in Bakersfield, J. Geophys. Res.-Atmos., 118, 6651–6662, https://doi.org/10.1002/jgrd.50522, 2013. 

Shen, H. R., Zhao, D. F., Pullinen, L., Kang, S., Vereecken, L., Fuchs, L., Acir, I. H., Tillmann, R., Rohrer, f., Wildt, J.: Highly Oxygenated Organic Nitrates Formed from NO3 Radical-Initiated Oxidation of β-Pinene, Environ. Sci. Technol., 55, 15658–15671, https://doi.org/10.1021/acs.est.1c03978, 2021. 

Shepson, P. B.: Organic nitrates, Volatile Org. Compd. Atmos., 269–291, https://doi.org/10.1002/9780470988657.ch7, 2007. 

Simpson, I. J., Wang, T., Guo, H., Kwok, Y. H., Flocke, F., Atlas, E., Meinardi, S., Rowland, F. S., and Blake, D. R.: Long-term atmospheric measurements of C1–C5 alkyl nitrates in the Pearl River Delta region of southeast China, Atmos. Environ., 40, 1619–1632, https://doi.org/10.1016/j.atmosenv.2005.10.062, 2006. 

Spittler, M., Barnes, I., Bejan, I., Brockmann, K. J., Benter, T., and Wirtz, K.: Reactions of NO3 radicals with limonene and α-pinene: Product and SOA formation, Atmos. Environ., 40, 116–127, https://doi.org/10.1016/j.atmosenv.2005.09.093, 2006. 

Su, J., Zhao, P., and Dong, Q.: Chemical compositions and liquid water content of size-resolved aerosol in Beijing, Aerosol Air Qual. Res., 18, 680–692, https://doi.org/10.4209/aaqr.2017.03.0122, 2018. 

Sun, J., Li, Z., Xue, L., Wang, T., Wang, X., Gao, J., Nie, W., Simpson, I. J., Gao, R., and Blake, D. R.: Summertime C1–C5 alkyl nitrates over Beijing, northern China: Spatial distribution, regional transport, and formation mechanisms, Atmos. Res., 204, 102–109, https://doi.org/10.1016/j.atmosres.2018.01.014, 2018. 

Sun, Y. L., Zhang, Q., Schwab, J. J., Yang, T., Ng, N. L., and Demerjian, K. L.: Factor analysis of combined organic and inorganic aerosol mass spectra from high resolution aerosol mass spectrometer measurements, Atmos. Chem. Phys., 12, 8537–8551, https://doi.org/10.5194/acp-12-8537-2012, 2012. 

Vasquez, K. T., Crounse, J. D., Schulze, B. C., Bates, K. H., Wennberg, P. O.: Rapid hydrolysis of tertiary isoprene nitrate efficiently removes NOx from the atmosphere, P. Natl. Acad. Sci. USA, 117, 33011–33016, https://doi.org/10.1073/pnas.2017442117, 2020. 

Wagner, P. and Schäfer, K.: Influence of mixing layer height on air pollutant concentrations in an urban street canyon, Urban Clim., 22, 64–79, https://doi.org/10.1016/j.uclim.2015.11.001, 2017. 

Wang, M., Shao, M., Chen, W., Lu, S., Wang, C., Huang, D., Yuan, B., Zeng, L., and Zhao, Y.: Measurements of C1–C4 alkyl nitrates and their relationships with carbonyl compounds and O3 in Chinese cities, Atmos. Environ., 81, 389-398, https://doi.org/10.1016/j.atmosenv.2013.08.065, 2013. 

Wang, S., Feng, X., Zeng, X., Ma, Y., and Shang, K.: A study on variations of concentrations of particulate matter with different sizes in Lanzhou, China, Atmos. Environ., 43, 2823–2828, https://doi.org/10.1016/j.atmosenv.2009.02.021, 2009. 

Wei, W., L,i Y., Wang, Y., Cheng, S., and Wang, L.: Characteristics of VOCs during haze and non-haze days in Beijing, China: Concentration, chemical degradation and regional transport impact, Atmos. Environ., 194, 134–145, https://doi.org/10.1016/j.atmosenv.2018.09.037, 2018. 

Wick, C. D, Siepmann, J., Klotz, W. L, and Schure, M. R.: Temperature effects on the retention of n-alkanes and arenes in helium-squalane gas-liquid chromatography: experiment and molecular simulation, J. Chromatogr. A, 957, 181–190, https://doi.org/10.1016/S0021-9673(02)00171-1, 2002. 

Wisthaler, A., Apel, E. C., Bossmeyer, J., Hansel, A., Junkermann, W., Koppmann, R., Meier, R., Müller, K., Solomon, S. J., Steinbrecher, R., Tillmann, R., and Brauers, T.: Technical Note: Intercomparison of formaldehyde measurements at the atmosphere simulation chamber SAPHIR, Atmos. Chem. Phys., 8, 2189–2200, https://doi.org/10.5194/acp-8-2189-2008, 2008. 

Wu, R., Vereecken, L., Tsiligiannis, E., Kang, S., Albrecht, S. R., Hantschke, L., Zhao, D., Novelli, A., Fuchs, H., Tillmann, R., Hohaus, T., Carlsson, P. T. M., Shenolikar, J., Bernard, F., Crowley, J. N., Fry, J. L., Brownwood, B., Thornton, J. A., Brown, S. S., Kiendler-Scharr, A., Wahner, A., Hallquist, M., and Mentel, T. F.: Molecular composition and volatility of multi-generation products formed from isoprene oxidation by nitrate radical, Atmos. Chem. Phys., 21, 10799–10824, https://doi.org/10.5194/acp-21-10799-2021, 2021. 

Xu, L., Suresh, S., Guo, H., Weber, R. J., and Ng, N. L.: Aerosol characterization over the southeastern United States using high-resolution aerosol mass spectrometry: spatial and seasonal variation of aerosol composition and sources with a focus on organic nitrates, Atmos. Chem. Phys., 15, 7307–7336, https://doi.org/10.5194/acp-15-7307-2015, 2015. 

Yang, X. H., Luo, F. X., Li, J. Q., Chen, D. Y., E, Y., Lin, W. L., and Jun, J.: Alkyl and aromatic nitrates in atmospheric particles determined by gas chromatography tandem mass spectrometry, J. Am. Soc. Mass. Spectrom., 30, 2762–2770, https://doi.org/10.1007/s13361-019-02347-8, 2019.  

Yang, J., Lei, G., Liu, C., Wu, Y., Hu, K., Zhu, J., Bao, J., Lin, W., and Jin, J.: Characteristics of particulate-bound n-alkanes indicating sources of PM2.5 in Beijing, China, Atmos. Chem. Phys., 23, 3015–3029, https://doi.org/10.5194/acp-23-3015-2023, 2023. 

Yee, L. D., Craven, J. S., Loza, C. L., Schilling, K. A., Ng, N. L., Canagaratna, M. R., Ziemann, P. J., Flagan, R. C., and Seinfeld, J. H.: Secondary Organic Aerosol Formation from Low-NOx Photooxidation of Dodecane: Evolution of Multigeneration Gas-Phase Chemistry and Aerosol Composition, J. Phys. Chem. A, 116, 6211–6230, https://doi.org/10.1021/jp211531h, 2012. 

Yeh, G. K. and Ziemann, P. J.: Identification and yields of 1,4-hydroxynitrates formed from the reactions of C8–C16 n-alkanes with OH radicals in the presence of NOx, J. Phys. Chem. A, 118, 8797–8806, https://doi.org/10.1021/jp505870d, 2014. 

Yu, K., Zhu, Q., Du, K., and Huang, X.-F.: Characterization of nighttime formation of particulate organic nitrates based on high-resolution aerosol mass spectrometry in an urban atmosphere in China, Atmos. Chem. Phys., 19, 5235–5249, https://doi.org/10.5194/acp-19-5235-2019, 2019. 

Zhai, T., Lu, K., Wang, H., Lou, S., Chen, X., Hu, R., and Zhang, Y.: Elucidate the formation mechanism of particulate nitrate based on direct radical observations in the Yangtze River Delta summer 2019, Atmos. Chem. Phys., 23, 2379–2391, https://doi.org/10.5194/acp-23-2379-2023, 2023. 

Zhen, S. S., Luo, M., Shao, Y., Xu, D. D., and Ma, L. L.: Application of Stable Isotope Techniques in Tracing the Sources of Atmospheric NOX and Nitrate, Processes, 10, 2549, https://doi.org/10.3390/pr10122549, 2022. 

Zhu, T., Shang, J., and Zhao, D. F.: The roles of heterogeneous chemical processes in the formation of an air pollution complex and gray haze, Sci. China Chem., 40, 1731–1740, https://doi.org/10.1360/zb2010-40-12-1731, 2010. 

Download
Short summary
The atmospheric pollution and formation mechanisms of particulate-bound alkyl nitrate in Beijing were studied. C9–C16 long-chain n-alkyl nitrates negatively correlated with O3 but positively correlated with PM2.5 and NO2, so they may not be produced during gas-phase homogeneous reactions in the photochemical process but form through reactions between alkanes and nitrates on PM surfaces. Particulate-bound n-alkyl nitrates strongly affect both haze pollution and atmospheric visibility.
Altmetrics
Final-revised paper
Preprint