Composition and light absorption of N-containing aromatic compounds in organic aerosols from laboratory biomass burning
This study seeks to understand the compositional details of N-containing aromatic compounds (NACs) emitted during biomass burning (BB) and their contribution to light-absorbing organic carbon (OC), also termed brown carbon (BrC). Three laboratory BB experiments were conducted with two United States pine forest understory fuels typical of those consumed during prescribed fires. During the experiments, submicron aerosol particles were collected on filter media and subsequently extracted with methanol and examined for their optical and chemical properties. Significant correlations (p<0.05) were observed between BrC absorption and elemental carbon (EC)∕OC ratios for individual burns data. However, the pooled experimental data indicated that EC∕OC alone cannot explain the BB BrC absorption. Fourteen NAC formulas were identified in the BB samples, most of which were also observed in simulated secondary organic aerosol (SOA) from photooxidation of aromatic volatile organic compounds (VOCs) with NOx. However, the molecular structures associated with the identical NAC formula from BB and SOA are different. In this work, the identified NACs from BB are featured by methoxy and cyanate groups and are predominately generated during the flaming phase. The mass concentrations of identified NACs were quantified using authentic and surrogate standards, and their contributions to bulk light absorption of solvent-extractable OC were also calculated. The contributions of identified NACs to organic matter (OM) and BrC absorption were significantly higher in flaming-phase samples than those in smoldering-phase samples, and they correlated with the EC∕OC ratio (p<0.05) for both individual burns and pooled experimental data, indicating that the formation of NACs from BB largely depends on burn conditions. The average contributions of identified NACs to overall BrC absorption at 365 nm ranged from 0.087±0.024 % to 1.22±0.54 %, which is 3–10 times higher than their mass contributions to OM (0.023±0.0089 % to 0.18±0.067 %), so the NACs with light absorption identified in this work from BB are likely strong BrC chromophores. Further studies are warranted to identify more light-absorbing compounds to explain the unknown fraction (>98 %) of BB BrC absorption.
Biomass burning (BB), including residential burning for cooking, heating, and open burning, is a major source of atmospheric carbonaceous aerosol, contributing 62 % and 93 % of black carbon (BC) and primary organic carbon (OC) particle emissions, respectively (Bond et al., 2004). BC can absorb sunlight across the entire spectral range with a weak dependence on wavelength (λ) (Bond, 2001; Bond et al., 2013; Lack and Langridge, 2013). OC in particulate matter (PM) is commonly treated as a purely light-scattering component in global climate models (Chung and Seinfeld, 2002; Myhre et al., 2013). Recent field and laboratory studies found that the light absorption of BB OC increases rapidly from the purple-green region (400–550 nm) to the near-ultraviolet (UV) region (300–400 nm) (Kirchstetter et al., 2004; Laskin et al., 2015; Chakrabarty et al., 2016; Xie et al., 2017b). The light absorption and scattering by BC and OC from BB can directly affect the Earth's radiative balance (Ramanathan et al., 2001; Anderson et al., 2003; Bond and Bergstrom, 2006), and BC emission factors and their warming effect have been intensively investigated (Bond et al., 2004, 2013). However, the optical properties and chemical composition of light-absorbing OC, also termed brown carbon (BrC), from BB are less well characterized. The chromophores in BrC are expected to have a high degree of unsaturation or conjugation (Chen and Bond, 2010; Lin et al., 2014; Laskin et al., 2015) but are seldom identified and used as BrC tracers in the atmosphere (Desyaterik et al., 2013; Zhang et al., 2013; Teich et al., 2016).
Polycyclic aromatic hydrocarbons (PAHs) and their derivatives are typical BrC chromophores (Samburova et al., 2016; Huang et al., 2018), of which the light absorption in the UV and visible wavelength range is highly dependent on ring numbers and the degree of conjugation (Samburova et al., 2016). However, PAH emissions are not source-specific but are associated with multiple different combustion processes, including BB (Samburova et al., 2016), coal burning (Chen et al., 2005), and motor vehicle emissions (Riddle et al., 2007). Therefore, PAHs are not unique to BB BrC. N-containing aromatic compounds (NACs) are another class of BrC chromophores that have been detected in BB (Lin et al., 2016), cloud water (Desyaterik et al., 2013) and atmospheric particles (Zhang et al., 2013; Teich et al., 2017). In water extracts of atmospheric particles, NACs can contribute more than 3 % of the light absorption at 365–370 nm (Zhang et al., 2013; Teich et al., 2017). These results suggest that NACs are important BrC chromophores, but their composition and structures are less certain for BB aerosols. Nitrophenols, nitrocatechols, and methyl nitrocatechols (including isomers) are commonly observed in BB aerosols (Iinuma et al., 2010; Claeys et al., 2012; Lin et al., 2016, 2017) and are also generated from the photooxidation of benzene, toluene, and m-creosol in the presence of NOx (Iinuma et al., 2010; Lin et al., 2015; Xie et al., 2017a). As such, other NAC structures specific to BB are needed to represent BB BrC chromophores. Additionally, very few studies have examined the influence of burn conditions on the formation of NACs in BB emissions, although it is well known that increasing combustion temperature, or flaming-dominated combustion, is associated with strong BrC absorption (Chen and Bond, 2010; Saleh et al., 2014).
The present study attempts to characterize the compositional profile of NACs from BB, identify additional NAC structures in laboratory BB samples, and evaluate the contributions of NACs to bulk absorption of solvent-extractable OC from BB. A high-performance liquid chromatograph interfaced to a diode array detector (HPLC/DAD) and quadrupole (Q) time-of-flight mass spectrometer (ToF-MS) was used to examine NACs in PM2.5 (particulate matter with aerodynamic diameter ≤2.5 µm) from three BB experiments. A thermal–optical instrument determined bulk OC and elemental carbon (EC) in the PM, and a UV–visible (UV–Vis) spectrometer was used to measure total BrC absorption in methanol extracts of BB PM2.5. In this work, a number of NAC formulas with structures that might be specifically related to BB were identified, and the contributions of identified NACs to bulk BrC absorption were calculated. These results shed light on the light-absorbing characteristics of BB OC at bulk chemical and molecular levels, benefiting the understanding of BrC sources and chromophores.
2.1 Laboratory open BB simulations
Laboratory simulations of open BB were conducted at the U.S. EPA (Research Triangle Park, RTP; North Carolina, NC) Open Burn Test Facility (OBTF), a 70 m3 enclosure, as detailed in Grandesso et al. (2011). Details of the protocols for biomass fuel collection and burn simulations were provided elsewhere (Aurell and Gullett, 2013; Aurell et al., 2015; Holder et al., 2016). Briefly, forest understory fuels were gathered from two different locations in the southeastern United States – Florida (FL) and NC. The FL forest field (Eglin Air Force Base, FL) is characteristic of a well-managed long leaf pine (Pinus palustris) ecosystem. The NC forest was located near the EPA campus in RTP, and it contained mainly loblolly pine (Pinus taeda) with some deciduous hardwood tree leaf litter. Biomass fuel was divided by a quartering procedure (Aurell and Gullett, 2013) and burned in batches (1 kg) on an aluminum-foil-coated steel pan (1 m×1 m). Ambient air was pulled into the OBTF through a large inlet at ground level and the combustion exhaust was drawn through a roof duct near a baghouse using a high-volume blower. PM2.5 was sampled at 10 L min−1 on Teflon (47 mm, Pall, Ann Arbor, Michigan, USA) and preheated (550 ∘C, 12 h) quartz filters (QF, diameter 43 mm, Pall) with a PM2.5 impactor (SKC, Pittsburgh, Pennsylvania, USA). For the NC forest fire simulation, filter samples were collected during an initial flaming phase lasting approximately 1–3 min. After most of the flames were extinguished, a second set of filter samples were obtained for the smoldering emissions. Smoldering samples were collected until there was little or no visible smoke being emitted from the fuel bed, typically lasting 6–15 min. Two separate experiments were done with the NC forest fuels in spring and summer, respectively, with different ambient temperatures (Table S1 in the Supplement). Sampling of the FL forest fire simulations was done in fall over the complete burn and was not divided into flaming and smoldering phases. Only one experiment was done for the FL forest fuels collected in fall. Background samples were obtained post-burn inside the OBTF. A summary of the sample information is provided in Table S1.
2.2 Bulk carbon and light absorption measurement
Details of the bulk OC, EC, and light absorption analysis methods are provided in Xie et al. (2017a, b). Briefly, the bulk OC and EC were measured using an OC–EC analyzer (Sunset Laboratories, Portland, OR) with a modified NIOSH method 5040 protocol (NIOSH, 1999). For light absorption measurement, one filter punch (1.5 cm2) was extracted in 5 mL methanol (HPLC grade) ultrasonically for 15 min and then filtered through a 30 mm diameter polytetrafluoroethylene (PTFE) filter with a 0.2 µm pore size (National Scientific Company). The light absorption of methanol extracts was measured with a UV–Vis spectrometer (V660, Jasco Incorporated, Easton MD) over the wavelength range of 200 to 900 nm. To ensure data quality, the wavelength accuracy (±0.3 nm) and repeatability (±0.05 nm) were tracked every month with a NIST traceable holmium oxide standard. Solvent background was subtracted with a reference cuvette containing pure methanol. The extracted filter was air-dried in a fume hood overnight, and the residual OC was measured with the Sunset thermal–optical analyzer. The extraction efficiency (η, %) of OC by methanol is calculated by
where OCb is the OC content of the PM2.5 filter before extraction and OCr is the OC content in the air-dried filter after extraction.
The light absorption coefficient of the methanol extracts (Absλ, Mm−1) is calculated as
where A700 is subtracted from Aλ to correct baseline drift, Vl (m3) is the solvent volume (5 mL) used for extraction, Va (m3) is the air volume of the extracted filter area, L (0.01 m) is the optical path length, and ln (10) converts the absorption coefficient in units of m−1 from log base 10 to natural log (Hecobian et al., 2010). The bulk mass absorption coefficient (MACλ, m2 g C−1) is calculated by
where COC is the mass concentration of extractable OC (OCb−OCr) for each filter sample (µg m−3). The solution absorption Ångström exponent (Åabs) is determined from the slope of the linear regression of log10(Absλ) vs. log10(λ) over the λ range of 300 to 550 nm. In the current work, Absλ and MACλ were focused at 365 and 550 nm, representing the BrC absorption at the near-UV and visible regions, respectively (Zhang et al., 2013; Saleh et al., 2014). The EC∕OC ratio, methanol extraction efficiency (η), and light-absorbing properties (Absλ, MACλ, and Åabs) of each BB sample are listed in Table S1 in the Supplement and summarized in Table 1.
2.3 Filter extraction and HPLC/DAD-Q-ToF-MS analysis
The PM2.5 filter extraction and subsequent instrumental analysis methods used here are the same as those described in Xie et al. (2017a). Briefly, a 4–6 cm2 piece of each filter was pre-spiked with 25 µL of 10 ng µL−1 nitrophenol-d4 (internal standard, IS) and extracted ultrasonically in 3–5 mL of methanol twice (15 min each). After filtration and concentration, the final volume was roughly 500 µL prior to HPLC/DAD-Q-ToF-MS analysis. An Agilent 1200 series HPLC equipped with a Zorbax Eclipse Plus C18 column (2.1 mm×100 mm, 1.8 µm particle size, Agilent Technologies) was used to separate the target NACs with an injection volume of 2 µL. The flow rate of the column was set at 0.2 mL min−1, and the gradient separation was conducted with 0.2 % acetic acid (v∕v) in water (eluent A) and methanol (eluent B). The concentration of eluent B was 25 % for the first 3 min, increased to 100 % from 3 to 10 min, held at 100 % from 10 to 32 min, and then decreased back to 25 % from 32 to 37 min. The identification and quantification of NACs were determined with an Agilent 6520 Q-ToF-MS. The Q-ToF-MS was equipped with a multimode ion source operating in electrospray ionization (ESI) and negative (−) ion modes. All samples were analyzed in full scan mode (40–1000 Da), and an acceptance criterion of ±10 ppm mass accuracy was set for compound identification and quantification. Then selected samples were re-examined using the collision-induced dissociation (CID) technique under identical chromatographic conditions. The MS∕MS spectra of target [M–H]− ions provided m∕z data, which were used for identifying NAC structures.
The extracted ion chromatograms (EICs) and Q-ToF MS∕MS spectra for identified compounds in selected BB samples are provided in Fig. S1 in the Supplement and in Fig. 1, respectively. The Q-ToF MS∕MS spectra of standard and surrogate compounds used in this work are obtained from Xie et al. (2017a) and provided in Fig. S2 for comparison. Table 2 provides the formulas, standard and surrogate assignments, and proposed structures of the identified NACs. Due to the lack of authentic standards, most of the NACs in BB samples were quantified using surrogates in this work. In general, the surrogate compound with similar molecular weight (MW) and/or structure was selected for the mass quantification of each identified NAC. Since the standard compound with hydroxyphenyl cyanate structure is not commercially available, C8H7NO4 and C9H9NO4 were quantified as 2-methyl-5-nitrobenzoic acid (C8H7NO4) and 2,5-dimethyl-4-nitrobenzoic acid (C9H9NO4), respectively; all the identified NACs with MW >200 Da were quantified as 2-nitrophloroglucinol (C6H5NO5). The mass quantification was conducted using the internal standard method with nine-point calibration curves (∼0.01–2 ng µL−1). The compounds corresponding to each NAC formula (including isomers) were quantified individually and added together for the calculation of mass contribution (%) to organic matter (OM µg m−3) in each sample. The quality assurance and control (QA∕QC) procedures applied for NAC quantification were provided in Xie et al. (2017a). Field blank and background samples were free of contamination for NACs. Average recoveries of standard compounds ranged from 75.1 % to 116 %, and the method detection limit ranged from 0.70 to 17.6 pg (Table S2).
3.1 Light absorption of extractable OC
The average EC∕OC ratio, OC extraction efficiency, MAC365, MAC550, and Åabs of all samples grouped by experiment and fire phase are shown in Table 1. Abbreviations for each sample group are also listed in the table. The optical properties and bulk composition of the FL forest samples were reported in Xie et al. (2017b). The average extraction efficiency for all groups of BB samples is greater than 95 % (range 97.0±1.87 % to 99.5±0.33 %), and the light absorption exhibits strong wavelength dependence, with average Åabs values ranging from 5.68±0.70 to 7.95±0.22. For each of the two NC forest experiments, the samples collected during the flaming phase (NF1 and NF2) have significantly higher (Student's t test, p<0.05) average EC∕OC ratios, MAC365, and MAC550 and lower (p<0.05) Åabs than those collected during the smoldering phase (NS1 and NS2). When combining the results from the two NC forest experiments, the average MAC365 values for NC forest 2 are significantly (p<0.05) higher than NC forest 1, despite having a comparable EC∕OC ratio ( and , and ). Additionally, the average EC∕OC ratio of FF samples is 5–30 times higher than the NF and NS samples, while the average MAC365 and MAC550 values of FF samples (1.13±0.15 and 0.053±0.023 m2 g C−1) are comparable to NS1 samples (1.10±0.11 and 0.054±0.015 m2 g C−1) but lower than other NC forest samples.
a Isomer 1; b standard compounds used for the quantification of identified N-containing aromatic compounds; c standard compounds used to estimate the light absorption of N-containing aromatic compounds.
High-temperature pyrolysis or intense flaming conditions are known to increase the fraction of EC in the total carbonaceous aerosol emissions of BB (Hosseini et al., 2013; Eriksson et al., 2014; Martinsson et al., 2015; Nielsen et al., 2017). Several studies found that the light-absorbing properties of BB OC could be parameterized as a function of the EC∕OC or BC∕OA (organic aerosol) ratio, a measurement proxy for burn conditions (McMeeking et al., 2014; Saleh et al., 2014; Lu et al., 2015; Pokhrel et al., 2016), and inferred that the absorptivity of BB OC depended strongly on burn conditions, not fuel type. In Xie et al. (2017b), significant correlations (p<0.05) between MAC365 of methanol-extractable OC from BB and EC∕OC ratios were observed only for samples with identical fuel type but not for pooled samples with different fuel types, indicating that both burn conditions and fuel types can impact the light absorption of BB OC. The contradiction is possibly ascribed to different approaches used in characterizing the light absorption of BB OC and different test fuel types (Xie et al., 2017b). In the current work, we combined the sample measurements from all three BB experiments and analyzed the correlations of bulk MAC365 vs. EC∕OC. For the analysis, we removed one FL forest experiment sample due to the extremely high EC∕OC ratio of 0.58 (burn 3, Table S1). Generally, EC∕OC ratios are <0.4 for laboratory BB (Akagi et al., 2011; Pokhrel et al., 2016; Xie et al., 2017b) and ≤0.1 for field BB (Aurell et al., 2015; Xie et al., 2017b; Zhou et al., 2017). Thus, the burn condition of the FL forest burn 3 (Table S1) is unrepresentative of laboratory BB simulations or field BB. In Fig. 2a, the bulk MAC365 of methanol-extracted OC correlated significantly (p<0.05) with EC∕OC for each BB experiment. However, grouping these sample measurements resulted in no correlation between MAC365 and the EC∕OC ratio (Fig. 2b). Similar results were also observed for MAC550 vs. EC∕OC and Åabs vs. EC∕OC correlations (Fig. S3a–d). These results show that BB BrC absorption depends on more than fire conditions, and light-absorbing components can be formed at relatively low EC∕OC (e.g., tar balls) from smoldering biomass combustion (Chakrabarty et al., 2010).
In this work, both the comparison of the flaming versus smoldering samples for each NC experiment (Table 1) and the regressions of bulk MAC365 versus EC∕OC for individual burns (Fig. 2a) suggest that the light absorption of OC from BB is strongly dependent on burn conditions when the fuel type and ambient conditions are similar. The comparison of the FL versus NC forest experiments (Table 1) and the relationship between bulk MAC365 and EC∕OC for grouped measurements (Fig. 2b) indicate that the burn conditions are not the only factor impacting BB OC absorption. The two NC forest experiments were conducted in spring and summer, respectively, with distinct ambient conditions (Table S1), and their average MAC365 values were significantly (p<0.05) different. This could be partly ascribed to the fact that more semi-volatile organic compounds (SVOCs) will partition into the gas phase in summer with higher ambient temperatures, and the SVOC is less light-absorbing than OC with low volatility (Chen and Bond, 2010; Saleh et al., 2014). However, if the relative abundance of EC and OC from BB emissions is similar between the two NC forest experiments, the evaporation of SVOCs in summer will lead to higher EC∕OC ratios, which is not observed in Table 1. No previous study investigated the seasonal variation in BrC absorption from BB with similar fuel type. Chen et al. (2001) found that the ambient temperature might play a role in EC production from traffic by changing the air density. We suspected that the BB samples from NC forest 2 combustion in summer contained much stronger light-absorbing components than those from NC forest 1 combustion in spring, although the formation mechanism of these strong BrC components is uncertain and merits further study. Therefore, the light absorption of BB OC is influenced by factors other than burn conditions, and EC∕OC ratios alone may not predict BB OC light absorption from burns with varying fuel types and ambient conditions.
3.2 Identification and quantification of NACs
In the current work, 14 NAC chemical formulas in BB samples were identified (Table 2) using the HPLC/DAD-Q-ToF-MS analysis, covering all the NACs with high abundance and strong absorption in ambient and BB particles reported in previous work (Claeys et al., 2012; Mohr et al., 2013; Zhang et al., 2013; Chow et al., 2016; Lin et al., 2016, 2017). Their EICs are provided in Fig. S1. The NAC structures corresponding to each chemical formula were examined using MS∕MS data in Fig. 1. In Table S3, the averages and ranges of relative mass contributions of identified NACs to OM are provided by the BB experiment and burn condition. Here the OM mass was calculated as 1.7×OC mass (Reff et al., 2009). In addition, the average relative mass contributions of each NAC in BB samples are shown in Fig. 3.
The three BB experiments have consistent mass contribution profiles (Fig. 3), although they used different fuel types and were conducted in different seasons. In Table S3, the BB samples collected during flaming periods (NF1 and NF2) contain significantly higher (p<0.05) average relative mass contributions from total NACs to OM (tNACOM %: NF1 0.18±0.067 %, NF2 0.16±0.045 %) than those collected during smoldering periods (NS1 0.055±0.026 %, NS2 0.023±0.0089 %). During the FL forest burn experiment, flaming and smoldering phases were not separated for sampling, and the average tNACOM % is 0.13±0.059 %, which is between the tNACOM % of the flaming and smoldering samples of the NC forest experiments. If we recalculate the average tNACOM % for the NC forest experiments by combining the flaming and smoldering sample data in each burn, the three BB experiments (FL forest, NC forest 1, and NC forest 2) show similar average tNACOM % (0.11±0.017 %–0.13±0.059 %), and the average tNACOM % across all samples in this work is 0.12±0.051 % (range 0.037 % to 0.21 %). This value is comparable to that observed at Detling (∼0.5 %), United Kingdom, during winter, when domestic wood burning is prevalent (Mohr et al., 2013). In the current work, most of the NACs were quantified using surrogates, and their contributions to OM from BB may change if authentic standards or different surrogates are used for quantification. However, the three experiments might still have consistent relative mass contribution profiles of NACs and similar average tNACOM %, assuming burn conditions and fuel types have minor impact on the OM∕OC ratio. As shown in Figs. S3e and 2c, tNACOM % correlated (p<0.05) with EC∕OC for both individual burns and pooled experimental data. Therefore, unlike the light absorption of methanol-extractable OC, the formation of NACs in BB seems to depend largely on burn conditions rather than fuel types and ambient conditions.
Among the 14 identified NAC formulas, C6H5NO4 and C9H9NO4 have the highest concentrations (Fig. 3) in FL forest and NC forest flaming-phase samples, accounting for 0.029±0.011 % to 0.037±0.011 % and 0.023±0.012 % to 0.049±0.016 % of the OM, respectively (Table S3). In NC forest smoldering-phase samples, C6H5NO4 has the highest mass contribution (NS1 0.024±0.0098 %, NS2 0.010±0.0027 %), followed by C7H7NO4 (NS1 0.0087±0.0030 %, NS2 0.0043±0.0010 %) and C9H9NO4 (NS1 0.0052±0.0033 %, NS2 0.0047±0.0013 %) (Table S3). The C6H5NO4 was identified as 4-nitrocatechol by comparing its MS∕MS spectrum (Fig. 1b) with that of an authentic standard (Fig. S2b) in Xie et al. (2017a). The EIC of C9H9NO4 exhibited three to four isomers (Fig. S1i), while only two MS∕MS spectra (Fig. 1l, m) were obtained due to the weak EIC intensity for compounds eluting at times ≥10 min. The fragmentation patterns of C9H9NO4 compounds (Fig. 1l, m) are different from that of 2,5-dimethyl-4-nitrobenzoic acid (reference standards with the same formula, Fig. S2g) without the loss of CO2, suggesting that the C9H9NO4 compounds identified in this work lack a carboxylic acid group. Both MS∕MS spectra of the two C9H9NO4 isomers reflect the loss of OCN (Fig. 1l, m), suggesting a skeleton of benzoxazole or benzisoxazole or the existence of a cyanate (–O–C≡N) or isocyanate (–N=C=O) group. Volatile organo-isocyanate structures (e.g., CH3NCO) were identified from anthropogenic biomass burning (Priestley et al., 2018), and benzoxazole structures have been observed in pyrolyzed charcoal smoke (Kaal et al., 2009). Giorgi et al. (2004) investigated the fragmentation of 3-methyl-1,2-benzisoxazole and 2-methyl-1,3-benzoxazole using a CID technique under different energy frames and found a loss of CO but not OCN for both of them. In this work, four standard compounds, including phenyl cyanate (C6H5OCN), benzoxazole (C7H5NO), 4-methoxyphenyl isocyanate (CH3OC6H4NCO), and 2,4-dimethoxyphenyl isocyanate ((CH3O)2C6H3NCO) were analyzed using a gas chromatographer (Agilent 6890) coupled to a mass spectrometer (Agilent 5975B) under electron ionization (EI, 70 eV) mode. These compounds do not have a phenol structure and cannot be detected using ESI under negative ion mode. The MS∕MS spectra of 4-methoxyphenyl isocyanate and 2,4-dimethoxyphenyl isocyanate were obtained by using a modified method (ESI at positive ion mode) for NAC analysis in this work. As shown in Fig. S4a and b, the loss of OCN is observed for phenyl cyanate but not benzoxazole. In Fig. S4c and d, the ions at m∕z 106 and 136 can be produced from the species at m∕z 149 and 179 through the loss of CH3+CO or H+NCO (43 Da). The MS∕MS spectra of 4-methoxyphenyl isocyanate and 2,4-dimethoxyphenyl isocyanate (Fig. S4e, f) confirmed the loss of CH3+CO, and the loss of CH3 reflected the presence of a methoxy group. As such, the C9H9NO4 compounds identified in this work are expected to contain a phenyl cyanate structure.
C6H5NO3 (Fig. 1a) is identified as 4-nitrophenol using an authentic standard (Fig. S2a). C7H7NO4 has at least two isomers as shown in Fig. S1c that are identified as 4-methyl-5-nitrocatechol and 3-methyl-6-nitrocatechol according to Iinuma et al. (2010) and Xie et al. (2017a). Referring to the MS∕MS spectrum of 4-nitrocatechol (Fig. S2b), the C6H5NO5 compound should have a nitrocatechol skeleton with an extra hydroxyl group on the benzene ring. Like C9H9NO4 (Fig. 1l, m), the loss of OCN was observed for the fragmentation of C8H7NO4 in the MS∕MS spectra (Fig. 1f, g), and a phenyl cyanate structure was proposed (Table 2). However, the fragmentation mechanism associated with the loss of single nitrogen is unknown and warrants further study. The C8H9NO4 identified in this work should have several isomers (Fig. S1f), and two representative MS∕MS spectra are provided in Fig. 1h and i. The first isomer of C8H9NO4 has a dominant ion of m∕z 137, reflecting the loss of NO and CH3. Comparing to the MS∕MS spectrum of 4-nitrophenol (Fig. S2a), the first C8H9NO4 isomer might contain a methyl nitrophenol skeleton with a methoxy group. The fragmentation pattern of the second isomer of C8H9NO4 is similar to C7H7NO4, and the molecule is postulated as ethyl nitrocatechol. C7H7NO5 has a similar fragmentation pattern to C6H5NO4 and C7H7NO4 and is identified as methoxy nitrocatechol. For NC forest burns, C10H7NO3 was only detected in flaming-phase samples (Fig. 3). The MS∕MS spectrum of C10H7NO3 was subject to considerable noise, although the loss of NO2 could be identified (Fig. 1k). In Fig. 1n, the ion at m∕z 167 is attributed to the loss of two CH3 from the [M–H]− ion of C8H9NO5, and the loss of is a common feature shared by several nitrophenol-like compounds (Fig. 1b, c, e, i), so the C8H9NO5 compound was identified as dimethoxynitrophenol. The MS∕MS spectra of C10H11NO4, C10H11NO5, C11H13NO5, and C11H13NO6 were characterized by the loss of CH3 and/or OCN (Fig. 1o–t), indicating the existence of methoxy and/or cyanate groups (Fig. S4). Although the exact structure of these NACs cannot be determined, their functional groups on the benzene ring were proposed in Table 2 from their fragmentation patterns.
In this work, three of the identified NACs, 4-nitrophenol, 4-nitrocatechol, and methyl nitrocatechols, were commonly observed in BB emissions or BB-impacted atmospheres (Claeys et al., 2012; Mohr et al., 2013; Budisulistiorini et al., 2017). These compounds can also be generated from the photooxidation of aromatic VOCs in the presence of NOx (Iinuma et al., 2010; Lin et al., 2015; Xie et al., 2017a). Both BB and fossil fuel combustion can emit a mixture of aromatic precursors (e.g., benzene, toluene) for secondary NAC formation (Martins et al., 2006; Lewis et al., 2013; George et al., 2014, 2015; Gilman et al., 2015; Hatch et al., 2015). Therefore, the NACs uniquely related to BB are needed to represent BB emissions. In this work, the NAC formulas with molecular weight <200 Da (from C6H5NO3, 138 Da; to C8H9NO5, 198 Da) were all identified in secondary organic aerosol (SOA) generated from chamber reactions with NOx (Xie et al., 2017a). However, the NACs from BB emissions and SOA formations with identical formulas might have different structures. For example, the MS∕MS spectra of C7H7NO5 and C8H9NO5 from BB in this work and aromatic VOCs and NOx reactions in Xie et al. (2017a) had distinct fragmentation patterns (Fig. S5). In Xie et al. (2017a), the C8H7NO4 and C9H9NO4 generated from ethylbenzene and NOx reactions might have fragile structures and their MS∕MS spectra were not available. In this work, C8H7NO4 and C9H9NO4 from BB emissions are more stable and are supposed to have a phenyl cyanate structure. Among the four NAC formulas with MW >200 Da identified in this work (Table 2), C10H11NO4 was also observed as 5-methoxy-4-nitro-2-(prop-2-en-1-yl)phenol in SOA from reactions of methyl chavicol and NOx (Pereira et al., 2015), which cannot be assigned to the C10H11NO4 from BB emissions in this work. Compared to the NACs in aromatic VOCs and NOx SOA (Iinuma et al., 2010; Lin et al., 2015; Xie et al., 2017a; Pereira et al., 2015), the structures of NACs from BB in this work were characterized by methoxy and cyanate groups. The methoxyphenol structure is a feature in polar organic compounds from BB (Schauer et al., 2001; Simpson et al., 2005; Mazzoleni et al., 2007). The cyanate group was rarely reported in gas- or particle-phase pollutants from BB, which might be a missed feature of BB NACs. Vähä-Savo et al. (2015) found that cyanate could be formed during the thermal conversion (e.g., pyrolysis, gasification) of black liquor, which is the waste product from the kraft process when digesting pulpwood into paper pulp and composed by an aqueous solution of mixed biomass residues. According to Table 2 and Fig. 3, the NACs containing methoxy and/or cyanate groups are predominately generated during the flaming phase in the two NC forest experiments. Before using these compounds as source markers for BB NACs, additional work is warranted to understand their exact structures and lifetimes in the atmosphere. The quantification of these compounds might also be subject to high variability due to the usage of surrogates.
3.3 Contribution of NACs to Abs365
For each sample extract, individual NAC contributions to Abs365 (Abs365,NAC %) were calculated using their mass concentrations (ng m−3) and the MAC365 values of individual compound standards (MAC365,NAC), as applied in Zhang et al. (2013) and Xie et al. (2017a). Here, the MAC365,NAC value is OM based with a unit of m2 g−1. Each NAC formula was assigned to an authentic or surrogate standard compound to estimate the contribution to Abs365 of extracted OM (Table 2). Except for the NACs with a phenyl cyanate structure, the standard compounds used for the NAC absorption calculation and mass quantification were the same (Table 2), and their UV–Vis spectra were obtained from Xie et al. (2017a) and are shown in Fig. S6a. The UV–Vis spectra of three standard compounds with cyanate or isocyanate groups are given in Fig. S6b, and none of them has absorption in the range from 350 to 550 nm. As such, the NACs with cyanate groups identified in this work were supposed to have no contribution to bulk Abs365. Details of the method for Abs365,NAC % calculation are provided in Xie et al. (2017a) and the MAC365,NAC values for identified NAC formulas in this work are listed in Table S4. Since the standard compounds used in this work have no absorption at 550 nm, the identified NAC contributions to Abs550 were expected to be 0. The average and ranges of Abs365,NAC % in BB samples are listed in Table S5. For simplicity, the average Abs365,NAC % values in the five groups of BB samples (FF, NF1 and 2, NS1 and 2) are stacked in Fig. 4.
In general, the average contributions of total NACs to Abs365 (Abs365,tNAC % 0.087±0.024 % to 1.22±0.54 %) were 3–10 times higher than their average tNACOM % (0.023±0.0089 % to 0.18±0.067 %) in BB samples (Tables S5 and S3), indicating that the identified NACs with contributions to Abs365 (not including those with cyanate groups) are strong BrC chromophores. Similar to the NAC mass contributions and compositions, the samples collected during flaming periods (NF1 and NF2) had a significantly higher (p<0.05) average Abs365,tNAC % (NF1 1.21±0.38 %, NF2 0.42±0.15 %) than those collected during smoldering periods (NS1 0.72±0.27 %, NS2 0.087±0.024 %); Abs365,tNAC % correlated (p<0.05) with EC∕OC for both individual burns (Fig. S3f) and pooled experimental data (Fig. 2d). C6H5NO4 (0.037±0.0080 % to 0.31±0.11 %) and C7H7NO4 (0.029±0.0051 % to 0.27±0.12 %) have the highest Abs365,NAC % among the identified NACs across all the three BB experiments (Table S5). The average Abs365,tNAC % values here are comparable to those obtained for atmospheric particles in Germany (0.10±0.06 % to 1.13±1.03 %) (Teich et al., 2017) and Detling, United Kingdom (4±2 %) (Mohr et al., 2013), but are more than 10 times lower than those from chamber reactions of benzene (28.0±8.86 %), naphthalene (20.3±8.01 %), and m-cresol (50.5±15.8 %) with NOx (Xie et al., 2017a). Lin et al. (2016, 2017) calculated the absorbance fraction contributed by NACs in BB OC based on signal peaks at particular retention times in HPLC/PDA (photodiode array) spectrophotometry chromatograms and attributed a large portion (up to or greater than 50 %) of the solvent extract absorption to a limited number of NACs with MW mostly lower than 500 Da. However, the absorbance signals in HPLC/PDA chromatograms are composed by a mixture of light-absorbing compounds due to coelution, and some of them are not NACs or even cannot be ionized with ESI. In this study, standards or surrogates were used to calculate the absorption for individual NAC molecules. These different approaches gave different results. Di Lorenzo et al. (2017) studied the absorbance as a function of the molecular size of organic aerosols from BB and concluded that the majority of aqueous extract absorption (λ=300 nm) was due to compounds with MW greater than 500 Da and a carbon number greater than 20. In this work, less than 2 % of the BrC absorption in BB aerosols at λ=365 was ascribed to the identified NACs with a MW range of 138 to 254 Da, of which the contribution at a longer wavelength (λ=550 nm) was expected to be 0. Future work is needed to identify high-MW light-absorbing compounds in BB aerosols to apportion a greater fraction of BrC absorption in BB aerosols.
The comparisons of light-absorbing properties (MAC365, MAC550, and Åabs) of BB OC with EC∕OC in this study show that burn conditions are not the only factor impacting BrC absorption. Other factors like fuel type or ambient conditions may also play important roles in determining BrC absorption from BB. It may be impractical to predict BrC absorption solely based on EC∕OC ratios in BB emissions from different fuels or over different seasons. The present study identified 14 NAC chemical formulas in BB aerosols. The average tNACOM % values of the FL forest, NC forest 1, and NC forest 2 (flaming and smoldering samples were combined) experiments were 0.13±0.059 %, 0.13±0.067 %, and 0.11±0.017 % by weight, respectively, and the NAC composition was also similar across the three BB experiments. Most of the NAC formulas identified in this work were also observed in simulated SOA generated from chamber reactions of aromatic VOCs with NOx, but the same NAC formula from BB and SOA could not be assigned to the identical compound. In this work, the structures of NACs from BB were characterized by methoxy and cyanate groups, which were predominately generated during the flaming phase and might be an important feature for BB NACs. More work is warranted to understand their exact structures and lifetimes. The average tNACOM % and Abs365,tNAC % of the flaming-phase samples were significantly higher (p<0.05) than those of smoldering-phase samples in the two NC forest BB experiments. Unlike the bulk MAC365 and MAC550, tNACOM % and Abs365,tNAC % correlated (p<0.05) with EC∕OC for both individual burns and pooled experimental data, suggesting that burn conditions are an important factor in determining NAC formation in BB. Except for the compounds with cyanate groups, the NACs identified in this work are likely strong BrC chromophores, as the average contributions of total NACs to bulk Abs365 (0.0.087±0.024 % to 1.22±0.54 %) are 3–10 times higher than their average mass contributions to OM (0.023±0.0089 % to 0.18±0.067 %). However, more light-absorbing compounds from BB with high MW need to be identified to apportion the unknown fraction (>98 %) of BrC absorption.
Data used in the writing of this paper are available at the U.S. Environmental Protection Agency's Environmental Dataset Gateway (https://edg.epa.gov, last access: 4 March 2019).
The supplement related to this article is available online at: https://doi.org/10.5194/acp-19-2899-2019-supplement.
MX and ALH designed the research. MX and XC performed the experiments. ALH and MDH managed sample collection. MX analyzed the data and wrote the paper with significant contributions from all co-authors.
The authors declare that they have no conflict of interest.
The views expressed in this article are those of the authors and do not necessarily represent the views or policies of the U.S. Environmental Protection Agency.
This research was supported by the National Natural Science Foundation of
China (NSFC, 41701551), the State Key Laboratory of Pollution Control and
Resource Reuse Foundation (no. PCRRF17040), and the Startup Foundation for
Introducing Talent of NUIST (no. 2243141801001). We would like to
acknowledge Brian Gullett, Johanna Aurell, and Brannon Seay for assistance
with laboratory biomass burning sampling. This work was funded by the U.S.
Environmental Protection Agency.
Edited by: Yinon Rudich
Reviewed by: three anonymous referees
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