the Creative Commons Attribution 4.0 License.
the Creative Commons Attribution 4.0 License.
Impacts of elevated anthropogenic emissions on physicochemical characteristics of black-carbon-containing particles over the Tibetan Plateau
Jinbo Wang
Jiaping Wang
Yuxuan Zhang
Tengyu Liu
Xuguang Chi
Xin Huang
Dafeng Ge
Shiyi Lai
Caijun Zhu
Lei Wang
Qiaozhi Zha
Ximeng Qi
Wei Nie
Congbin Fu
Aijun Ding
Black carbon (BC) in the Tibetan Plateau (TP) region has distinct climate effects that strongly depend on its mixing state. The aging processes of BC in the TP are subject to emissions from various regions, resulting in considerable variability of its mixing state and physicochemical properties. However, the mechanism and magnitude of this effect are not yet clear. In this study, field observations on physicochemical properties of BC-containing particles (PMBC) were conducted in the northeast (Xihai) and southeast (Lulang) regions of the TP to investigate the impacts of transported emissions from lower-altitude areas on BC characteristics in the TP. Large spatial discrepancies were found in the chemical composition of PMBC. Both sites showed higher concentrations of PMBC when they were affected by transported air masses outside the TP but with diverse chemical composition. Source apportionment for organic aerosol (OA) suggested that primary OA in the northeastern TP was attributed to hydrocarbon OA (HOA) from anthropogenic emissions, while it was dominated by biomass burning OA (BBOA) in the southeastern TP. Regarding secondary aerosol, a marked enhancement in nitrate fraction was observed on aged BC coating in Xihai when the air masses were brought by updrafts and easterly winds from lower-altitude areas. With the development of boundary layer, the enhanced turbulent mixing promoted the elevation of anthropogenic pollutants. In contrast to Xihai, the thickly coated BC in Lulang was mainly caused by elevation and transportation of biomass burning plumes from south Asia, showing a large contribution of secondary organic aerosol (SOA). The distinct transported emissions lead to substantial variations of both chemical composition and light absorption ability of BC across the TP. The thicker coating and higher mass absorption cross-section (MAC) of PMBC in air masses elevated from lower-altitude regions reveal the promoted BC aging processes and their impacts on the mixing state and light absorption of BC in the TP. These findings emphasize the vulnerability of plateau regions to influences of elevated emissions, leading to significant changes in BC concentration, mixing states and light absorption across the TP, all of which need to be considered in the evaluation of BC radiative effects for the TP region.
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The Tibetan Plateau (TP) is the largest plateau of the world, covering approximately 2.5×106 km2. Its average altitude exceeds 4000 m, and its glaciers cover an area of over 100 000 km2 (Yao et al., 2012a). As the third pole, the TP plays a crucial role in the Asian monsoon systems, the hydrological cycle and the global climate (Duan and Wu, 2005; Wu et al., 2007, 2015). Pollutants affect the ecological environment of the TP and its surrounding region significantly. They result in increased air temperature (Gustafsson and Ramanathan, 2016), changes in cloud properties (Hua et al., 2020; Lai et al., 2024), glacier retreat (Kang et al., 2010, 2019; Xu et al., 2009; Yao et al., 2012b), anomalies in the hydrological cycle (Luo et al., 2020; Yang et al., 2014; Menon et al., 2002; Ramanathan et al., 2005) and the Asian monsoon (Meehl et al., 2008).
Black carbon (BC) is one of the most important aerosol species affecting climate, glaciers and hydrology in the TP (Kopacz et al., 2011; Xu et al., 2009; Yang et al., 2022) because of distinct climate effects (Bond et al., 2013). It is generated by the incomplete combustion of fossil fuels and biomass and is also known as refractory BC (rBC). BC influences the climate directly because it can absorb short-wave radiation (Zhu et al., 2017). The climate forcing of BC is highly dependent on its mixing state. BC can be coated with non-refractory aerosol like organics, nitrate () and sulfate () through condensation or coagulation and turns from an externally mixed to an internally mixed structure. The rBC mass absorption cross-section (MAC) of BC-containing particles (PMBC) can be affected by non-refractory components coated on BC (Cai et al., 2022; Cheng et al., 2016; Gao et al., 2021; Liu et al., 2017; Schnaiter et al., 2005; Wang et al., 2023) via the “lensing effect” (Lack and Cappa, 2010), causing the change in radiative properties of BC. The cloud microphysical properties may also be altered when PMBC are coated with hydrophilic materials and activated into cloud condensation nuclei (CCN), which influences climate indirectly (Bond et al., 2013; Dusek et al., 2006; Henning et al., 2010).
Previous studies have shown that BC has a remarkable direct radiative effect in the TP (Zhao et al., 2017; Liu et al., 2021). The radiative effects of BC are not only influenced by its concentration but also by its mixing state. In recent years, there has been an increasing number of field measurements of BC in the TP. It is reported that BC concentration can still occasionally reach high levels in the TP under certain meteorological and synoptic conditions (Babu et al., 2011; Zhu et al., 2016; Zhao et al., 2017). Observations of BC mixing states demonstrated that BC is mainly internally mixed (Yuan et al., 2019), and the BC coating enhances the MAC of BC in the TP (Wang et al., 2017; Wang et al., 2018; Chen et al., 2019; Tan et al., 2021). BC can be transported over long distances with wildfire plumes (Huang et al., 2023; Zheng et al., 2020). Some regions of the TP may be affected by biomass burning (BB) from lower-altitude areas (Cao et al., 2010; Zhang et al., 2015; Cong et al., 2015). External transport can raise BC concentration and affect its morphology and mixing state in the TP (Tan et al., 2021; Chen et al., 2023). However, research on how emissions from various sources affect the chemical composition of PMBC in the TP is scarce. Therefore, we conducted field observations of the physicochemical characteristics of PMBC at two typical sites in the TP. The objective of this study is to investigate the impacts of various pollutant emissions and the subsequent regional transport, particularly those from anthropogenic activities from low-altitude regions, on the mixing state and chemical composition of PMBC in the TP.
2.1 Site description
Field measurements were conducted at two observation stations in the TP (Fig. 1). The station in the northeast TP is located in Xihai (∼ 3100 ; 36°56′ N, 100°54′ E). The station in the southeast TP is the Southeast Tibet Plateau Observation and Research Station for the Alpine Environment, located in Lulang (∼ 3200 ; 29°46′ N, 94°44′ E). The field campaign was conducted from 2 April to 16 May 2021 in Lulang and from 3 to 23 June 2021 in Xihai. Both stations are typical high-altitude sites of mountainous areas (Fig. 1a) but potentially influenced by distinct emission sources. There are more wildfires around Lulang (Fig. 1a), but Xihai is close to the northwest region of China, which is largely affected by anthropogenic emissions (Fig. 1b).
2.2 Instrumentation
The Soot Particle Aerosol Mass Spectrometer (SP-AMS, Aerodyne Inc., USA) was used to measure rBC and non-refractory materials coated on rBC (NR-PMBC) (Onasch et al., 2012). The tungsten vaporizer was removed, and the intracavity infrared laser vaporizer was reserved to exclusively measure PMBC. After adjusting the SP-AMS to the laser-only configuration, only PMBC could be volatilized via the absorbing laser. We collected V-mode data due to their high sensitivity (DeCarlo et al., 2006). The total flow rate through the inlet was maintained at ∼ 3 L min−1. A PM2.5 cyclone was used in the front of the inlet (URG Corp., USA), and only particles in the size range of 50–1000 nm could be focused by the lens of inlet system. The bounce effect of aerosol was eliminated because the tungsten vaporizer was removed, so the usual collection efficiency (CE) (Docherty et al., 2013; Drewnick et al., 2005) was not applicable. The overlap of the particle beam and laser beam determined the CE of the SP-AMS with a laser-only configuration (Willis et al., 2014). The new CE was acquired by intercomparison of rBC concentration measured using the SP2 and SP-AMS (Massoli et al., 2015) and was nearly 1 during this campaign.
SP-AMS data were processed by standard time-of-flight AMS data analysis software packages (SQUIRREL version v1.60P and PIKA v1.20P). Ionization efficiency (IE) calibration was done shortly before removing the tungsten vaporizer. The mass-based calibration method was used to obtain IE values by sampling the 300 nm dried pure ammonium nitrate particles into the SP-AMS. The 300 nm particles were selected with a differential mobility analyzer (DMA, model 3081, TSI Inc., USA). The relative IE (RIE) for organic aerosol (OA) and was 1.4 and 1.2, which was consistent with the RIE reported in a previous work (Canagaratna et al., 2007). The RIE for rBC was calibrated by sampling monodispersed 300 nm Regal Black particles in the SP-AMS. The detection limit was calculated based on the method in DeCarlo et al. (2006), and the detection limit of ammonium was higher, so the concentration of ammonium was estimated by ionic equilibrium. OA measured by the SP-AMS was subdivided into factors with different characteristics and sources based on positive matrix factorization (PMF) results (Zhang et al., 2005b, 2011). The PMF Evaluation Tool version 3.04A was used to perform PMF analysis on the high-resolution organic mass spectra (Ulbrich et al., 2009). Only ions with a mass-to-charge ratio below approximately 115 were considered in the PMF analysis.
The meteorological parameters, aerosol optical properties and gaseous pollutants were also measured simultaneously. Ozone (O3), carbon monoxide (CO), nitric oxide (NO), nitrogen oxides (NOx) and sulfur dioxide (SO2) were measured using online analyzers (Teledyne API Inc., USA). The photoacoustic extinctiometer (PAX, Droplet Measurement Technologies Inc., USA) measured light absorption coefficients. Temperature, relative humidity (RH) and other meteorological parameters were monitored by meteorological sensors (WXT530, Vaisala Inc., Finland).
2.3 Model configuration
In this study, we conducted regional chemical transport modeling using the Weather Research and Forecasting model coupled with Chemistry (WRF-Chem, version 3.7.1). This model encompasses a broad spectrum of physical and chemical processes, addressing the emission and deposition of pollutants, advection, diffusion, and gaseous and aqueous chemical transformations, as well as aerosol chemistry and dynamics (Grell et al., 2005). The model domain was centered at 35° N, 110° E with a grid resolution of 20 km, covering the northeastern Tibetan Plateau. The vertical structure of the model comprised 30 layers extending from the surface to the top pressure of 50 hPa. The simulation was conducted for a longer period including the time of the whole campaign from 3 to 23 June 2021. To establish accurate initial and boundary conditions for meteorological fields, we updated the model using 6-hourly 1° × 1° National Centers for Environmental Prediction (NCEP) FNL (final) global analysis data. In our pursuit of capturing the meteorological fields well, we assimilated NCEP Automated Data Processing (ADP) operation global surface observation and global upper-air observational weather data. This assimilation process utilized default nudging coefficients for wind, temperature, and moisture.
The Yonsei University planetary boundary layer (YSU PBL) scheme was used to parameterize boundary layer processes (Hong et al., 2006). Other essential physical parameterization options included the unified Noah land surface model (Ek et al., 2003), the Lin microphysics scheme (Lin et al., 1983) and the Grell–Freitas cumulus parameterization scheme (Grell and Freitas, 2014). For representing atmospheric chemistry numerically, we utilized the Carbon Bond Mechanism version Z photochemical mechanism along with the Model for Simulating Aerosol Interactions and Chemistry aerosol module (MOSAIC; Zaveri and Peters, 1999; Zaveri et al., 2008). Both natural and anthropogenic emissions were considered in this regional WRF-Chem modeling study. Anthropogenic emissions were derived from the Multi-resolution Emission Inventory for China (MEIC, 2023), which includes emissions from power plants, residential combustion, industrial processes, on-road mobile sources and agricultural activities (Li et al., 2017a). Biogenic emissions were calculated online using the Model of Emissions of Gases and Aerosols from Nature (MEGAN), encompassing more than 20 biogenic species (Guenther et al., 2006).
A comprehensive overview of the model configuration can be referenced in earlier investigations (Huang et al., 2016; Huang et al., 2018). Additionally, key configurations and validation for the WRF-Chem regional modeling are shown in Table S1 and Fig. S1 in the Supplement.
2.4 Other materials
The transport and emission conditions were considered in order to investigate their impacts on BC physical and chemical properties. The Hybrid Single-Particle Lagrangian Integrated Trajectory (HYSPLIT) model was used to calculate and cluster 72 h backward trajectories (Stein et al., 2015; Xu et al., 2018). The starting points of the simulation were Xihai and Lulang, and particles were released at a height of 1000 m above the ground level. The backward trajectories were calculated every hour during the field campaign. The boundary layer height is from the ECMWF Reanalysis v5 (Hersbach et al., 2023). The Fire Inventory from NCAR (FINN) was adopted to estimate daily open BB emissions with high spatial resolution (1 km) during the campaign (Wiedinmyer et al., 2006, 2011, 2022, 2023), and the anthropogenic emissions of major pollutants (MIX, 2021) were estimated using the MIX-Asia emission inventory (Li et al., 2017b).
Further, the optical properties of PMBC were investigated based on the widely used core–shell Mie model (Bohren and Huffman, 1983; Virkkula, 2021). The MAC and the absorption enhancement (Eabs) of PMBC were calculated following the algorithm developed by Mätzler (2002). The refractive index was 1.95–0.79i for rBC (Bond and Bergstrom, 2006) and 1.52–10−6i for BC coating (Pitchford et al., 2007) at 550 nm wavelength. The calculated optical properties of PMBC in PM1 were validated with good agreement with observed results of BC in PM2.5 (Fig. S2).
3.1 Overview of BC properties and meteorological conditions in the TP
Figure 2 presents the overall conditions during the campaign. The mass concentration of rBC shows large temporal variation at both sites, with ranges of 0.02–1.28 µg m−3 in Xihai and 0.02–2.22 µg m−3 in Lulang. PMBC concentration and light absorption coefficients (babs) increased in the latter period of Xihai campaign, contrasting with the marked decreasing pattern in PMBC concentration and babs observed during the latter period of Lulang campaign. In Xihai, the concentration and proportion of inorganic components, especially , rose in the latter phase of the campaign as the wind direction (WD) shifted to a southeasterly one (Fig. 2f). The RH also got higher with the change of wind direction. Another major feature is that the wind direction had distinct diurnal variations. In Xihai, the wind direction converted from easterly and northeasterly flows during the nocturnal hours to southerly direction during daytime. Conversely, Lulang is predominantly controlled by northerly to northeasterly winds throughout the campaign period. Nevertheless, the wind speed (WS) was similar in Xihai and Lulang, with mean values of 1.8 ± 1.2 and 1.5 ± 1.2 m s−1, respectively. In terms of gaseous pollutants, higher levels of NOx and O3 were observed in Xihai (5.3 ± 3.4 and 48 ± 13 ppb) than in Lulang (4.0 ± 2.5 and 35 ± 15 ppb).
We also compared the observed BC concentration at different sites of the TP. Note that the term “black carbon” (BC) has not been used rigorously or consistently throughout all the previous modeling and measurement literature (Bond et al., 2013). Similar terms including “rBC”, “equivalent BC (eBC)” and “elemental carbon (EC)” have also been widely used corresponding to different measurement techniques. BC measured by laser-induced techniques is often referred to as “rBC”, and measured BC using light absorption (e.g., Aethalometer, AE) and thermal–optical methods is normally named “eBC” and “EC”, respectively. In Table 1, BC concentrations in the TP measured by several common techniques were collected and grouped according to the methods to make clearer comparison. Compared to measurements using the same instrument in a metropolitan area (Cui et al., 2022), the rBC concentration of the TP (0.24 ± 0.20 µg m−3) was approximately 25 % of Shanghai (0.92 ± 0.81 µg m−3). The rBC concentration in Xihai was relatively high compared to the southeastern and central TP, measured using the same technique (Table 1). This was potentially attributed to the strong BC emissions in the surrounding area of the northeast TP (Fig. 1). The rBC concentration in Lulang exhibited a relatively lower mean value yet with a broad range of variation, suggesting that BC may be subject to diverse air masses with significant discrepancies in emission intensity across the southeast and southern regions of the TP (Fig. 1). Higher BC levels were observed at stations in proximity to Mainland Southeast Asia and the wider area of south Asia, where wildfire activities were extremely intense in spring. Therefore, the considerable variability of rBC concentrations in Lulang is likely due to the alternating influences from air masses transporting BB plumes and those originating from cleaner environments.
3.2 Physicochemical characteristics of BC-containing particles in the TP
The overall characteristics of PMBC in Xihai and Lulang were compared based on statistical results. As Fig. 3a and b show, the mass concentration of rBC and PMBC were higher in Xihai due to possible impacts of stronger anthropogenic emissions (Fig. 1b), and the difference (trBC = 2.8, = 2.1) between the two sites was shown by the t test (α = 0.05, ν = 50). Figure 3c compares the mixing state of PMBC in Xihai and Lulang, which was expressed by the mass ratio of BC coating to rBC (RBC). The frequency distribution of RBC showed an obvious difference at the two sites. RBC in Xihai was generally higher than in Lulang, indicating the thicker coating in Xihai. The peak of RBC occurred at [4.5,6] and [1.5,3] in Xihai and Lulang, respectively. RBC of more than 50 % PMBC was between 3.0 and 7.5, and only 11 % PMBC had RBC less than 3.0 in Xihai. Unlike Xihai, the percentage of thinly coated PMBC for which RBC was less than 3.0 was higher in Lulang at 33 %. The difference in mixing states of PMBC was also demonstrated by the t test ( = 2.4). The peak of MAC at both sites was between 12 and 14 m2 g−1 (Fig. 3d) which was significantly greater than the MAC of BC without coating (Bond and Bergstrom, 2006), and the average value and range of MAC in Xihai and Lulang were 12.8 (5.6–17.4) and 12.3 (6.8–15.7) m2 g−1. Over 61 % of BC was distributed in the larger MAC range (higher than 12.5 m2 g−1) in Xihai, showing stronger light absorption ability of BC in this region. Due to the synergy of higher mass concentration and light absorption ability, PMBC could have larger climate effects in the northeast TP.
The chemical characteristics and sources of OA in PMBC were identified by PMF. OA was separated into primary OA (POA) and oxygenated OA (OOA) at both sites (Figs. 4 and S3). In Xihai, there was one factor originating from primary emissions, and there were two factors from secondary formation. The POA factor had a higher signal of and , which are important alkyl fragments from primary sources (Hu et al., 2016), in its mass spectrum. It also had higher content of hydrogen; H:C was up to 1.84, and it had a lower signal of , which is the typical BB tracer. Hence, this factor was mainly emitted from fossil fuel combustion rather than BB and was named hydrocarbon OA (HOA). OOA factors were further divided into less-oxidized OOA (LO-OOA) and more-oxidized OOA (MO-OOA) factors. These two factors constitute secondary OA (SOA) formed through oxidation processes such as photochemical reactions (Kanakidou et al., 2005; Zhang et al., 2005a; Zhao et al., 2018). They had a higher fraction of the signal of the ion ( 44) and other oxygenic ions in the mass spectrum, which is similar to the mass spectra of typical OOA reported in other field campaigns (Crippa et al., 2013; Hu et al., 2016; Kim et al., 2020; Lee et al., 2017; Sun et al., 2016; Sun et al., 2020; Wang et al., 2016; Zhou et al., 2018). The O:C of the two OOA factors was also calculated (Canagaratna et al., 2015) to learn about the oxidation degree of OOA. MO-OOA exhibited a higher O:C ratio (0.84) than LO-OOA (0.49). Unlike Xihai, the POA factor in Lulang had a higher fraction of the signal of the ( 60) ion () in the mass spectrum, which is the fragment of levoglucosan mainly from BB (Lee et al., 2010). Therefore, this POA factor was identified as biomass burning OA (BBOA) in Lulang. Moreover, the and (0.065 versus 0.025) of this factor were also within the triangle area in a previous BBOA study (Cubison et al., 2011), and the was lower than the fresh BBOA, indicating that this factor was influenced by biomass burning activities and aging processes collectively. The remaining two factors were from SOA formation in Lulang and had a higher fraction of the signal of the ion. Based on the oxidation degree, the two factors were identified as MO-OOA and LO-OOA. The O:C of MO-OOA and LO-OOA was 0.95 and 0.46, respectively. Compared to Lulang, the OA in BC coating was under stronger impacts of anthropogenic emissions in Xihai, indicated by HOA.
Figure 5 presents PMBC chemical composition at two sites. BC coating had a higher mass contribution to PMBC in Xihai and Lulang compared to the urban site (Collier et al., 2018), indicating the thick coating of PMBC in the TP. The average mass fraction and concentration of BC coating were 84 % and 1.2 µg m−3 in Xihai. The mass fraction of coating was similar (83 %) in Lulang, although the concentration of BC coating was lower (0.85 µg m−3). OA was the dominant component of BC coating (Fig. 5a) at both sites, which was consistent with the observation in the central TP (Wang et al., 2017). OA took up a higher proportion of BC coating in Lulang compared to Xihai, Shanghai (Cui et al., 2022) and Fresno (Collier et al., 2018). During the field campaign, the average concentration of HOA, LO-OOA and MO-OOA was 0.25, 0.18 and 0.28 µg m−3 in Xihai. MO-OOA also had the highest concentration (0.32 µg m−3) of OA in Lulang and exceeded BBOA (0.15 µg m−3) and LO-OOA concentration (0.14 µg m−3). It demonstrated that SOA formation plays an important role in the coating process of PMBC. The BC coating was dominated by MO-OOA, which was importantly affected by atmospheric oxidizing process. The concentration of O3 highly relative to atmospheric oxidizing capacity improved significantly in the afternoon (Fig. S8), and the enhanced oxidizing capacity could cause an increase in MO-OOA in BC coating in both Xihai and Lulang. Besides MO-OOA, (17 %) and HOA (35 %) also made a large contribution to BC coating (Fig. 5a) and coated OA (Fig. 5b) in Xihai compared to Lulang. The HOA and were both closely associated with anthropogenic sources because the anthropogenic sources emitted HOA (Zhang et al., 2005a) and precursors of largely (Dall'Osto et al., 2009; Richter et al., 2005; Sun et al., 2018). This indicates that anthropogenic emissions have a strong influence on the coating process of PMBC in the northeast TP, which is quite different from the southeast TP.
Figure 6 shows the coating components of BC with different RBC in Xihai and Lulang. The mass fraction of MO-OOA was predominant in the thickly coated PMBC in both Xihai and Lulang. Notably, a more significant enhancement in MO-OOA contribution within the thickly coated PMBC was exhibited in Lulang, concomitant with a reduced fraction of inorganic components. The mass fraction of MO-OOA was only 9 % in the thin BC coating (RBC < 1.5), rising dramatically to 59 % in those with RBC exceeding 10.5 (thick BC coating). Another notable feature of the coating components was the higher contribution of BBOA in Lulang, especially when the coating thickness of PMBC was higher. This indicates that thickly coating of BC was affected by BB activities and atmospheric oxidation significantly. In contrast to Lulang, HOA contribution decreased with the growth of RBC, indicating a weaker effect of primary aerosol on thickly coated PMBC in Xihai. Besides the MO-OOA, also contributed significantly to the composition of thickly coated PMBC in Xihai, while the contribution of dropped with the rise of RBC in Lulang. As illustrated in Fig. 6a, the mass fraction of reached 35 % in the maximum bin of RBC (18–19.5) in Xihai. The abundant was closely associated with anthropogenic sources, as mentioned in the preceding paragraph. The results demonstrate substantial variability in the composition influencing BC aging across the TP, affected by diverse emission sources. Moreover, anthropogenic pollutant emissions had strong impacts on BC coating, even in the remote highland areas, and the contribution of inorganic aerosol to BC coating is non-negligible in the TP.
3.3 Impacts of transported emissions on BC-containing particles
As discussed above, PMBC in the TP region is possibly affected by both anthropogenic sources and BB transported from surrounding areas. To further investigate the impact mechanism of regional transport on BC, the cluster analysis of backward trajectories was carried out during field campaign of Xihai and Lulang, and backward trajectories were clustered into three kinds. In Xihai, the air masses were dominantly from the eastern region outside of the TP, as indicated by air masses of cluster1 (CL1), followed by the air masses of cluster2 (CL2) from the northwest of Xihai and the air masses of cluster3 (CL3) from the west of Xihai (Fig. 7a). PMBC was brought more to Xihai (Fig. 7c) by the air masses of CL1, which went through the lower-altitude regions with stronger anthropogenic BC emissions (Figs. 7a and 1b). In Lulang, the CL1 air masses from south Asia were heavily polluted and aged; the CL2 air masses from southern edge of Himalayas and the CL3 air masses from central inland of the TP were cleaner (Fig. 7b). Comparing the polluted air masses (CL1) at two sites, the chemical composition of PMBC showed an obvious difference between Xihai and Lulang (Fig. 7c and d). The contribution of inorganic species to BC coating was higher in Xihai, and there was more OA (especially MO-OOA) in polluted air mass of Lulang. MO-OOA was the major component of BC coating in CL1 in Lulang. As shown by Fig. 7b, there were intensive wildfires in the source region of CL1 air masses of Lulang, and the wildfire plume could be readily uplifted to higher altitudes due to prevailing upflow driven by the lifting of the plume (Freitas et al., 2007; Fromm et al., 2000; Labonne et al., 2007; Luderer et al., 2006; Sofiev et al., 2012) or large-scale westerly and small-scale southerly circulations during the pre-monsoon season (Zhang et al., 2020; Cao et al., 2010). Such circulation could transport BC and other co-emitted pollutants from wildfires in Mainland Southeast Asia and the wider area of south Asia over the mountains of the TP until they reached Lulang. Because the biomass burning during wildfires can emit plentiful volatile organic compounds (VOCs) like terpenes (Akagi et al., 2013; Fiddler et al., 2024), it is expected that SOA can be formed through oxidation from precursors in the plume, leading to a thick coating on PMBC. In Xihai, was one of the major coating species in PMBC in CL1 (Fig. 7c) with mass concentration of of up to 0.35 µg m−3 (accounting for 19 % of PMBC), and other air mass clusters had a higher mass fraction of HOA in BC coating, indicating that PMBC was less affected by oxidation and was fresher. CL1 transported air masses from the northwest region of China where the anthropogenic emissions are much stronger than the TP (Fig. 7a). With higher concentrations of primary pollutants like NOx, the formation and coating of can be enhanced in PMBC. The above results indicate that the effects of emission sources were discrepant in different regions of the TP, and the northeast part of the TP was significantly affected by anthropogenic emissions.
To further explore the coupling effect of horizontal and vertical transport on BC in high-altitude regions, both observations and simulations were performed to track the evolution of pollutants in the surrounding area. We chose a typical episode in CL1 in Xihai to conduct model simulations. As illustrated in the zonal profile plots of CO and BC, the high levels of anthropogenic pollutants were uplifted to Xihai (Fig. 8a and b). The updraft flow and the turbulent mixing in the boundary layer carried the anthropogenic emissions from the ground to high altitudes, and then the horizontal easterly winds transported the anthropogenic emissions to the northeast TP. The combination of upward wind and a developing boundary layer (Fig. S8c) allowed the pollutants emitted by the anthropogenic sources near the surface to be carried aloft and transported to the high-altitude TP in the afternoon. This effect can significantly change both the concentration and chemical composition of BC. Compared to the average diurnal variation during observation period, the diurnal variation during episode shows distinctive features (Fig. 8c and d). PMBC concentration increased remarkably from 15:00 (Beijing time) and peaked at 16:00 to 17:00 (Beijing time), with a maximum concentration of 4.0 µg m−3. Concurrently, and SOA also exhibit a noticeable increase along with the thickening of the BC coating in the afternoon. The , SOA and RBC rose from 0.41 µg m−3, 0.49 µg m−3 and 2.8 at 11:00 to 1.06 µg m−3, 1.31 µg m−3 and 10.2 at 16:00 (Beijing time, respectively. As Fig. S8a shows, O3 did not increase significantly after 15:00 (Beijing time) in Xihai, implying that the photochemistry and secondary aerosol formation might not be enhanced. However, the consistent radiative heating of the ground surface during the daytime kept a convective boundary layer (Fig. S8c), facilitating the vertical transport of anthropogenic emissions to higher altitudes and plausibly causing the enhanced air pollution in the afternoon in Xihai. This phenomenon is a good illustration of the vulnerability of remote plateau regions to intense anthropogenic influences, as pollutants can be transported from low-altitude regions to the plateau.
3.4 Impacts of diverse BC coating characteristics on light absorption
The effects of different emission sources on the BC light absorption ability were investigated. Compared to Lulang, the MACs of PMBC were higher in Xihai overall, indicating higher absorption efficiency and potentially stronger radiative forcing in this region. The MACs were all relatively high in three clusters of air masses of Xihai, with the distribution peaking between 12 and 14 m2 g−1 (Fig. 9a), which is numerically comparable to previous studies (Wang et al., 2015). The overall high MAC in Xihai may result from the significant impact of anthropogenic emissions in the northeast TP. The stronger emissions provided abundant precursors of BC coating to improve the coating thickness, and the thick coating enhanced the light absorption capacity of PMBC via the lensing effect, while the MAC was only higher under control of the polluted CL1 air masses in Lulang (Fig. 9b), indicating that the south Asian wildfire plume could significantly strengthen the light absorption ability of BC. The MAC in Lulang was also comparable to previous studies (Wang et al., 2018); the peak of the MAC distribution was 7.6 m2 g−1 at 870 nm (12.0 m2 g−1 at 550 nm if the absorption Ångström exponent of BC is 1.0). In CL1 air masses of Lulang, the MAC was mainly distributed at the bin between 12 and 14 m2 g−1. That is close to the MAC (13.1 m2 g−1 at 550 nm) at other TP sites affected by biomass burning plumes (Tan et al., 2021). The BC coating was thick (Fig. 7d) to improve the MAC in CL1 air masses of Lulang influenced by higher BB emissions. These results indicate that strong BB and anthropogenic emissions from the surrounding area could have noticeable impacts on the chemical composition and light absorption ability of BC in the TP, and these impacts were more prevalent in the northeast part of the TP.
In this study, we employed the SP-AMS in the laser-only configuration to quantitatively analyze the chemical composition of PMBC at distinct sites, Xihai and Lulang, located in the northeast and southeast regions of the TP. Our findings demonstrate the considerable variability and spatial heterogeneity of BC physical and chemical properties across the TP. Notably, Xihai exhibited higher mass concentrations of rBC and PMBC, with respective mean concentrations of 0.24 and 1.48 µg m−3, compared to 0.17 and 1.02 µg m−3 in Lulang. The PMBC in Xihai has a higher aging degree, as indicated by a higher mean RBC of 6.7, in contrast to the mean RBC of 4.5 in Lulang.
The marked differences in chemical composition of PMBC were also observed within the TP region. Due to differences in emission sources, the POA was distinct in Xihai and Lulang. HOA from fossil fuel combustion was one of the main components of PMBC in Xihai as the result of elevated anthropogenic emissions, and there was more BBOA in Lulang, especially when the air masses were from the plains of south Asia, affected by frequent wildfire. Besides primary species, the secondary coating components also showed larger differences. The contribution of secondary inorganic aerosols, particularly , was noticeably higher in Xihai because of the strong anthropogenic emission of NOx as the precursor of . SOA was comparatively higher in areas with less anthropogenic emissions like Lulang. The oxidizing level of SOA was high at both sites of the TP; MO-OOA occupied the largest mass fraction of SOA. We also investigated the variation of PMBC composition with its coating thickness in both sites. An enhancement in fraction was observed on aged BC coating in Xihai. In contrast, the mass contribution of decreased and SOA contribution notably increased during the thickening of PMBC in Lulang.
Backward trajectory analysis and regional chemical transport modeling were then performed to track the impacts of transported anthropogenic and BB emissions on the chemical composition of PMBC in the northeastern and southeastern TP. The effect of anthropogenic emissions was stronger in the northeastern TP when the air masses were brought by updrafts and easterly winds from lower-altitude areas, leading to an increase of and SOA coated on BC. With the development of the boundary layer, strong turbulent mixing promoted the elevation of anthropogenic pollutants. In contrast to Xihai, the thickly coated BC in Lulang was mainly caused by elevation and transportation of biomass burning plumes from south Asia, leading to a significantly higher contribution of MO-OOA and BBOA. The distinct transported emissions caused substantial variations of chemical composition and mixing state of BC, which further changes the light absorption ability of BC in the TP. The MAC of PMBC at both sites was at a high level, showing the strong absorption ability of BC in the TP region, especially in polluted air masses affected by biomass burning emission from south Asia. The overall thicker coating and higher MAC of PMBC in air masses elevated from lower-altitude regions reveal the impacts of promoted BC aging processes during transportation on the mixing state and light absorption of BC in the TP, which will further influence its radiative effects. Such impacts need to be considered in the evaluation of BC radiative effects for the TP region.
The FINN wildfire emission data are available at https://doi.org/10.5065/XNPA-AF09 (Wiedinmyer and Emmons, 2022). The MIX-Asia anthropogenic emission data inventory is available at http://meicmodel.org.cn/?page_id=541&lang=en (MEIC, 2023) and http://meicmodel.org.cn/?page_id=1772&lang=en (MIX, 2021). The boundary layer height (BLH) is acquired from the fifth-generation European Centre for Medium-Range Weather Forecasts (ECMWF) reanalysis data (ERA5; https://doi.org/10.24381/cds.adbb2d47, Hersbach et al., 2023). The measurement data covered in the article can be found at https://doi.org/10.6084/m9.figshare.25399024 (Wang, 2024). Additional data related to this paper may be requested from the authors.
The supplement related to this article is available online at: https://doi.org/10.5194/acp-24-11063-2024-supplement.
CF, AD, and JiaW conceptualized and supervised this study. JinW, YZ, TL, XC, DG, CZ, LW, XQ and WN conducted the field campaign. JinW and JiaW conducted the data analysis. SL and XH contributed to the model development and simulation. JinW wrote the draft and drew the plots. JiaW, XH and QZ discussed the results. JinW and JiaW reviewed and edited the paper with contributions from all co-authors.
The contact author has declared that none of the authors has any competing interests.
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.
We thank all the co-workers who contributed to the field campaign in Tibetan Plateau. We are grateful for the support of the funders.
This work was supported by the second Tibetan Plateau Scientific Expedition and Research (STEP) program (2019QZKK0106) and the National Natural Science Foundation of China (42005082).
This paper was edited by Zhibin Wang and reviewed by three anonymous referees.
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