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Article

Chemical Characteristics and Sources Analysis of PM2.5 in Shaoxing in Winter

1
College of Civil Engineering and Architecture, Zhejiang University of Water Resources and Electric Power, Hangzhou 310018, China
2
Ecological Environment Low Carbon Development Center of Zhejiang Province, Hangzhou 310012, China
3
Eco-Environmental Science Research & Design Institute of Zhejiang Province, Hangzhou 310007, China
4
Key Laboratory of Environmental Pollution Control Technology of Zhejiang Province, Hangzhou 310007, China
5
Zheneng Jinjiang Environment Holding Co., Ltd., Hangzhou 310011, China
*
Authors to whom correspondence should be addressed.
Atmosphere 2023, 14(8), 1256; https://doi.org/10.3390/atmos14081256
Submission received: 25 June 2023 / Revised: 27 July 2023 / Accepted: 1 August 2023 / Published: 7 August 2023
(This article belongs to the Topic Atmospheric Chemistry, Aging, and Dynamics)

Abstract

:
By analyzing the mass concentrations and compositions of atmospheric PM2.5 in Shaoxing from December 2019 to February 2020, the characteristics of carbon-containing components, water-soluble ions and metal elements were obtained. NO3, OC, SO42− and NH4+ were the main components of PM2.5 in winter. The OC/EC ratio was 3.27, which proved the existence of SOC. The proportion of SOC in OC was 47.3%, which showed that secondary sources made a significant contribution. The values of OC/EC and NO3/SO42− indicated that vehicle exhaust emissions also made a significant contribution to PM2.5. Trace elements of Na, Ca, K and Cd had higher enrichment factor values and were enriched due to human activities. Finally, PM2.5 sources analysis was performed by the positive matrix factorization model. The results showed that secondary inorganic salts (49.3%), motor vehicles and industrial sources (21.3%) and dust sources (17.0%) were the important sources of PM2.5 pollution.

1. Introduction

At present, PM2.5 has become the primary pollutant in most cities in China [1]. The primary aerosol particles and gaseous pollutants emitted by industry, transportation and fossil fuel combustion, as well as the secondary aerosols transformed by primary aerosols, are the main causes of PM2.5 pollution [2]. The chemical components of PM2.5 are complex, including water-soluble ions, organic carbon, elemental carbon and metal elements, mainly derived from human activities [3]. Water-soluble ions, especially secondary inorganic ions NH4+, SO42− and NO3, have become the main components of PM2.5 in most cities in China [4].
In recent years, Zhejiang Province has successively conducted research on the components and sources of PM2.5, mainly focusing on rapidly developing cities such as Hangzhou, Wenzhou and Ningbo. Li et al. focused on analyzing the pollution characteristics of carbon-containing components of PM2.5 in winter in Hangzhou [5] and found that organic carbon accounted for a relatively high proportion. The compositional characteristics of water-soluble ions in PM2.5 in Hangzhou were analyzed separately by Chen et al., and the results showed that SO42−, NO3, NH4+ and Cl were the main components [6]. Ge et al. analyzed the pollution characteristics of water-soluble ions in PM2.5 in Wenzhou and found that SO42−, NO3 and NH4+ were also the main components, mainly sourced from coal combustion, motor vehicle exhaust and biomass combustion [7]. Wang et al. conducted a study on the characteristics and sources of PM2.5 pollution in Ningbo and found that the source categories that made significant contributions to PM2.5 were secondary nitrates, secondary sulfates, marine sources, biomass combustion, high chlorine sources, heavy oil combustion, motor vehicle emissions, industrial smelting and mixed dust [8]. A targeted analysis on the spatiotemporal distribution of carbon-containing components in PM2.5 was conducted by Du et al., also in Ningbo. The results showed that secondary organic carbon contributed significantly to the carbon components [9]. Xu et al. compared the pollution characteristics of polycyclic aromatic hydrocarbons in PM2.5 in Hangzhou and Ningbo, and the results showed that the concentration of polycyclic aromatic hydrocarbons exceeded the national standard [10]. In addition, some scholars have begun to pay attention to the PM2.5 pollution characteristics of small and medium-sized cities in Zhejiang Province. For example, Fang et al. studied the distribution characteristics of secondary organic aerosol indicators in PM2.5 in Lanxi, which is a small city in Zhejiang Province [11]. Isoprene and toluene made significant contributions to secondary organic carbon (SOC).
Although extensive research has been conducted in many cities, there is still a lack of comprehensive studies on the chemical components and sources of PM2.5 in Shaoxing. Shaoxing is a typical industrial city in Zhejiang Province. Zhang et al. detected the pollution characteristics of metal elements in PM2.5 in Shaoxing [12]. Zhu et al. also analyzed the characteristics of organic carbon (OC) and elemental carbon (EC) since Shaoxing belongs to the urban agglomeration around Hangzhou Bay, which is the area with the most serious PM2.5 pollution in the Yangtze River Delta [13]. The impact of anthropogenic sources on PM2.5 pollution in Shaoxing is obvious.
Since 2013, due to the frequent occurrence of winter haze pollution, China has been committed to controlling particulate matter pollution, and the concentration of PM2.5 has continued to decrease in recent years. However, according to the online monitoring data of air pollutants in China on http://www.aqistudy.cn/ (accessed on 26 July 2023), PM2.5 pollution is still the most serious in winter. In winter, a PM2.5 concentration exceeding the national standard limit often occurs in Shaoxing.
Therefore, this study focused on analyzing the chemical characteristics and sources of PM2.5 in the atmosphere of Shaoxing from December 2019 to February 2020 by detecting the components such as carbon-containing components, water-soluble ions and metal elements. It would provide scientific support for the management of PM2.5 pollution in Shaoxing during the winter.

2. Materials and Methods

2.1. Field Measurement

Considering urban functional area distribution, population density, environmental sensitivity and other factors, the environmental monitoring station of Shaoxing was selected as the sampling site. Shaoxing Environmental Monitoring Station is located at No. 38 Shuxiawang Road, which is a central area of commerce, transportation and residences.
Samples were collected from December 2019 to February 2020. Teflon filter membrane and quartz filter membrane were used for synchronous collection for 23 h. A 4-channel small-flow sampler and a medium-flow sampler were used to collect PM2.5 samples, with sampling flow rates of 16.7 L/min and 100 L/min, respectively. The small-flow sampler collected four parallel samples (two quartz filter samples and two Teflon filter samples), and the medium-flow sampler synchronously collected one quartz filter sample, the brand of which was Waterman. A total of 25 groups of samples were collected.

2.2. Chemical Analysis

2.2.1. PM2.5 Mass Concentration

Before sampling, a filter membrane was placed in a constant temperature and humidity chamber (temperature 20 °C and humidity 50%) for 24 h, and then an automatic weighing system (CR-4; Chinese Intelligent Manufacturing, Hangzhou, China) was used to weigh this filter membrane, and its mass was recorded. After sampling, the same instrument was used to weigh the same filter membrane and the mass was also recorded under the same conditions. The difference in mass was used to determine the mass concentration of PM2.5.

2.2.2. Analysis of Water-Soluble Ions and Elemental Components

The concentrations of water-soluble ions were determined by ion chromatography. A 1/4 of one sample filter was taken and put into the sample bottle. The water-soluble components were extracted from the filter into 20.0 mL of deionized water, entered the sample bottle and soaked for 30 min. Then, the sample bottle was put into the ultrasonic instrument for ultrasonic extraction for 20 min. Ice was added into the ultrasonic instrument to ensure that the temperature was not higher than 20 °C. This could reduce the component loss. The extract was filtered by 0.45 μm microporous membrane filter and then sent to ion chromatograph (Ics-5000; Thermo Fisher, Waltham, USA) for analysis.
A filter sample collected by a small-flow sampler was put into a dry and clean sample box, and then analyzed by the WD-XRF wavelength dispersive X-ray fluorescence spectrometer (S4 pioneer; Bruker, Saarbrücken, Germany). Then, the concentrations of element components were determined.

2.2.3. Carbon-Containing Components Analysis

According to the Technical and Methodological Guidelines for Analytical Monitoring of Ambient Air Particulate Matter Sources (trial) (Second Edition) [14], the carbon-containing components were determined by the thermo-photometry method. A certain area of quartz sample filter membrane was put into a quartz boat and analyzed by the thermal optical carbon analyzer (DRI Model 2015; Desert Research Institute, Reno, USA). Firstly, under the condition of pure He, heated in temperature gradients of 140 °C (OC1), 280 °C (OC2), 480 °C (OC3) and 580 °C (OC4), all organic carbon in the sample was evaporated or decomposed, left the filter membrane and entered the oxidation furnace with the He gas flow (900 °C). The carbon element in the organic matter was oxidized to CO2 by MnO2. The CO2 flowed out of the oxidation furnace with the He gas flow and was mixed with H2. The mixture entered the reduction furnace (420 °C) and was reduced to CH4 by Ni. Finally, the generated CH4 was detected by flame ion detector (FID) to calculate the carbon content.
Then, He/O2 mixed gas containing 10% O2 was introduced, and the sample furnace was gradually heated up again. The sample was heated at 580 °C (EC1), 740 °C (EC2) and 840 °C (EC3). In this process, the elemental carbon was oxidized in the oxidation furnace. The carbonaceous material was oxidized to CO2, and then reduced to CH4. Finally, the carbon-containing contents were calculated by detecting the generated CH4 by FID. The total carbon (TC) mass concentration was the sum of the mass concentrations of OC and EC.

2.2.4. Quality Control and Quality Assurance

The testing process strictly followed the testing methods and procedures. Before injection, a solvent blank test and an experimental process blank test were conducted. The samples were injected in the order of PM2.5 mass concentration, and no target compounds were detected in the blank test.
Recovery experiments were conducted during the detection of water-soluble ions. The standard solution was dropped onto the blank filter membrane. After the solution was air dried, the pretreatment process was performed following the sample operation process. Then, the blank filter membrane was tested on the machine. The added amount was equivalent to the actual concentration of the sample, and the results showed the recovery rates ranging from 80.0% to 120%.

2.3. Analysis Methods

2.3.1. Estimation of Enrichment Factor (EF)

The EF method was used to assess the man-made influence on metal elements. The calculation formula was shown as follows:
EF = C X / C R aerosol C X / C R crust
where C X was the mass concentration of element X , μg/m3; C R was the mass concentration of the reference element, μg/m3. The subscripts aerosol and crust referred to the recipient sample and crust sample, respectively.
In this study, Al, which experiences less interference from human pollution, was used as the reference element [15]. When EF is less than 10, it indicates that these elements are not enriched and might be unaffected by human activities. When EF is larger than 10 and less than 100, it indicates that these elements are enriched to different degrees. When EF is larger than 100, it indicates that these elements are seriously enriched due to human activities [16].

2.3.2. Estimation of Sulfur Oxidation Rate (SOR) and Nitrogen Oxidation Rate (NOR)

SOR and NOR were used to characterize the conversion rates of SO42− and NO3 in PM2.5. The larger the SOR and NOR, the higher the secondary conversion efficiency [16]. The calculation equations were as follows:
SOR = C SO 4 2 C SO 4 2 + C SO 2
NOR = C NO 3 C NO 3 + C NO 2
where C SO 4 2 was the mass concentration of water-soluble sulfate ion, μg/m3; C NO 3 was the mass concentration of water-soluble nitrate ion, μg/m3; C SO 2 was the mass concentration of SO2 in the atmosphere, μg/m3; C NO 2 was the mass concentration of NO2 in the atmosphere, μg/m3.

2.3.3. Calculation of Secondary Organic Carbon

The minimum OC/EC ratio was used to evaluate and verify the contribution of SOC to total organic carbon, and the specific calculation equation [17] was as follows:
SOC = OC EC × OC / EC min
where OC / EC min was the minimum OC/EC value of the detection results of OC and EC.

3. Results and Discussion

3.1. PM2.5 Mass Concentrations

During the sampling period, the average mass concentration of PM2.5 in Shaoxing was 45.3 μg/m3, which exceeded the national standard limit (35 μg/m3, GB3095-2012) of 10.3 μg/m3. The daily variation sequence of PM2.5 concentrations manually sampled is shown in Figure 1. During the sampling period, there were a total of 15 days in which the daily average concentration of PM2.5 exceeded the national standard limit, accounting for 60% of the total sampling days. The high daily average concentration ultimately led to exceeding the standard limit of the average concentration of PM2.5 in winter.

3.2. Carbon-Containing Components Characteristics

The daily variations in TC, OC and EC mass concentrations in winter in Shaoxing are shown in Figure 2. The average concentrations of TC, OC and EC were 9.86 μg/m3, 7.41 μg/m3 and 2.45 μg/m3, accounting for 21.8%, 16.4% and 5.41% of PM2.5 concentration, respectively. It could be seen that OC was the important component of PM2.5.
EC mainly comes from the incomplete combustion of fossil fuels or biomass, and only exists in the primary sources. OC sources include primary organic carbon (POC) emitted from coal, fuel and biomass combustion, and SOC formed by the conversion of VOCs and SVOCs [18]. That is to say, the POC sources in OC are consistent with EC sources. Therefore, the correlation analysis between OC and EC could be used to preliminarily determine the sources of carbon-containing components [19]. If the correlation coefficient between OC and EC is close to 1, it indicates that the OC and EC sources are consistent, both from primary sources [20]. If the correlation coefficient is less than 0.5, it indicates that the OC and EC sources are not consistent. As shown in Figure 3, the correlation coefficient R between OC and EC was only 0.71, indicating that the main sources of OC and EC in Shaoxing were not consistent. OC was more affected by SOC.
The ratio of OC/EC could reveal carbon-containing components’ sources to some extent, and an OC/EC of 2.0 is often used as a basis for determining the presence of SOC [21]. The OC/EC ratio in this study was 3.27, indicating the presence of SOC in the carbon components of PM2.5. The SOC was calculated using Equation (4), and the result is shown in Table 1. The average concentration of SOC was 3.54 μg/m3, accounting for 47.8% of OC concentration and 7.82% of PM2.5 concentration. This indicated that the contribution and impact of SOC were significant. Therefore, a more detailed analysis of the SOC characteristics should be conducted in the future, which will help to deepen the understanding of the PM2.5 pollution characteristics in Shaoxing.
Additionally, OC/EC is commonly used to preliminarily determine the types of primary and secondary sources of carbon-containing components. Through calculation, the OC/EC of Shaoxing was 3.27. According to the literature, when the OC/EC ratio is between 1.0 and 4.2, it indicates that exhaust emissions from diesel and gasoline vehicles exist [22,23]; meanwhile, 2.5 to 10.5 indicates coal-fired emissions contribute to carbon components [24]. Therefore, diesel vehicles, gasoline vehicles and coal-fired emissions all contributed to the carbon-containing contents of PM2.5 in Shaoxing.

3.3. Variation Characteristics of Water-Soluble Ions

The water-soluble ions detected in this study included SO42−, NO3, F, Cl, Na+, NH4+, K+, Mg2+, Ca2+, etc. The mass concentrations of these ions are shown in Figure 4. The average total concentration of water-soluble ions during the sampling period was 30.6 μg/m3. The highest average concentrations of NO3, SO42− and NH4+ were 14.9, 7.23 and 6.58 μg/m3, respectively.
The total concentration of water-soluble ions accounted for 67.5% of PM2.5 concentration. NO3, SO42− and NH4+ accounted for the highest proportions, accounting for 32.9%, 16.0% and 14.5%, respectively. This illustrated that NO3, SO42− and NH4+ had become the important components of PM2.5 in Shaoxing. K+ and Cl, as representative elements of coal-fired combustion, also had a place in PM2.5 (a total of 2.94%). K+ is also usually considered as a marker for biomass combustion. This proved that coal and biomass combustion made contributions to PM2.5 in winter.
In Shaoxing, the proportion of NO3 was higher than that of SO42−. This result was different from the reports about Hangzhou and Wenzhou [6,7]. The possible reason was that the emission sources had changed. The research about Wenzhou and Hangzhou was conducted in 2014 and 2015. According to the statistical yearbooks of these three cities, the numbers of vehicles in Hangzhou and Wenzhou in 2014 were 2.18 million and 1.57 million [25,26], respectively. Between 2014 and 2019, the number of vehicles in Shaoxing increased from 851,200 to 1.67 million [27,28]. Therefore, based on the large increase in the number of vehicles, the proportion of NO3 from vehicle exhaust in Shaoxing significantly increased.
NO3 and SO42−, known as the secondary inorganic aerosols, are secondary reactions of primary pollutants such as SO2 and NO2 emitted into the atmosphere. In the past decade, due to the pollution problems caused by coal-fired sources (such as acid rain and particulate matter pollution), China has increased its efforts to govern SO2 from coal-fired sources. The sources of NO2 are more complex. The governance effect on NO2 is not as good as SO2. Therefore, the concentration of SO2 has been maintained at a low level. According to the data from http://www.aqistudy.cn/ (accessed on 26 July 2023), the average concentration of SO2 in the atmosphere of Shaoxing was only 7 μg/m3 and the average concentration of NO2 was 32 μg/m3. This inevitably led to a significant increase in NO3.
SOR and NOR reflect the conversion degrees of SO2 and NO2 into SO42– and NO3 in the atmosphere, respectively. If NOR and SOR are larger than 0.1, it indicates that sulfates and nitrates are mainly produced by the photochemical oxidation of SO2 and NO2. Therefore, secondary pollution exists [29]. The higher the SOR and NOR, the higher the conversion efficiency. Thus, in this study, the SOR and NOR values were calculated using Equations (2) and (3), with average values of 0.61 and 0.34, respectively. This indicates that the conversion effect of SO2 was stronger than that of NO2.
Usually, with the concentration of particulate matter increasing, SO2 is more likely to adsorb onto the surface of the particulate matter and undergo various homogeneous and heterogeneous reactions to generate secondary ions [30]. This might be the reason for the higher conversion rate of SO2 in winter. There is a negative correlation between NOR and temperature [31], leading to a poor conversion of NO2 under low temperature conditions in winter.
The correlations between various inorganic water-soluble ions in PM2.5 can reflect the similarity in properties and sources between each ion [32]. NH4+ and NO3, NH4+ and SO42− had high correlations and the R values were 0.98 and 0.86, respectively (Figure 5). It indicates that these three ions mainly existed in the forms of (NH4)2SO4 and NH4NO3 [32,33].
The NO3/SO42− ratio could reflect the situation of vehicle exhaust and fixed combustion sources to some extent [31]. If the NO3/SO42− ratio is larger than 1, it indicates that the effect of vehicle exhaust is more obvious than that of fixed combustion sources; if the NO3/SO42− ratio is less than 1, it suggests that the contribution of fixed combustion sources is greater than that of vehicle exhaust [18]. The average ratio of NO3/SO42− was 2.06, suggesting that there were more sources to PM2.5 emissions from vehicle exhaust compared to fixed combustion sources in the winter in Shaoxing.

3.4. Characteristics of Metal Elements

The mass concentrations and proportions of metal elements in PM2.5 are shown in Table 2. K had the highest proportion, followed by Fe and Si. The background values of soil elements in Zhejiang Province [34] were selected to calculate the enrichment factors of metal elements, as shown in Figure 6. The EF values of Na, Ca, K and Cd were greater than 10, indicating that the impact of human activities was obvious and enriched these elements.
The sources of K were consistent with K+ and might come from coal or biomass combustion. Coal or biomass combustion belong to anthropogenic sources. Na, Fe, Al and Si were crustal elements, mainly derived from crustal sources such as ground dust and soil fly ash. Although most of Fe came from crustal sources, it might be also influenced by human activities, such as steel smelting. In this study, the EF value of Na was greater than 10, indicating that crustal sources have caused Na to be enriched. Similarly, Ca was an indicator element for building construction [35]. The construction dust in Shaoxing has also enriched Ca. The EF value of Fe was less than 10, suggesting the influence of anthropogenic sources was weak. It indicates that Fe in PM2.5 in Shaoxing was mainly from crustal sources.
Except for the above elements, the EF values of the other elements were all less than 10, indicating that they were not enriched.

3.5. PM2.5 Sources Analysis

The positive matrix factorization (PMF) model was used to analyze the PM2.5 sources in winter in Shaoxing. Based on the stability of the PMF analysis results, seven factors were identified as the optimal components spectra for various compounds in PM2.5 (Figure 7).
The main contributions of factor 1 were Mg2+, Ca2+, Na+ and SO42−, which were inferred as the dusts from construction sites and roads. The main contributors to factor 2 were NO3 and NH4+, which were secondary nitrates. The main contributor to factor 3 was L-glycan, which was inferred as biomass combustion [36]. Factor 4 was characterized by Cl, which was believed to mainly come from coal combustion in addition to natural sources. Therefore, factor 4 was inferred as the coal-fired source. Factor 5 was characterized by OC and EC, which were related to motor exhaust emissions. It also enriched metal elements such as Mn, Zn, Fe and Cu, which were related to industrial production activities [37]. Therefore, factor 5 was inferred as industrial sources and automotive exhaust. Factor 6 was characterized by Ti, Al and Si, which was inferred as soil dust. In this study, the dusts included road dust and construction dust, which belonged to man-made dust. The main contributors to factor 7 were NH4+ and SO42−, which were secondary sulfates.
Among them, factors 1 and 6 were both related to the dusts, and factors 2 and 7 represented secondary inorganic salts. Thus, these factors were merged. As a result, the sources of PM2.5 in Shaoxing were simplified into five categories: coal combustion, dust, biomass combustion, motor vehicle exhaust and industrial sources and secondary inorganic salts.
Figure 8 shows secondary inorganic salts had the highest proportion to PM2.5 in winter in Shaoxing, with a contribution value of 49.3%. The proportions of motor vehicles and industrial sources and dust sources were 21.3% and 17.0%, respectively. Biomass burning also made a contribution, accounting for 7.79%, perhaps because of the biomass burning in autumn and winter in Shaoxing.

4. Conclusions

A total of 25 groups of PM2.5 samples were collected to analyze the components in Shaoxing in winter. During the sampling period, the average concentration of PM2.5 was 45.3 μg/m3. There was an obvious pollution phenomenon. The chemical composition of PM2.5 in winter was mainly composed of water-soluble ions and carbon-containing components.
Among all water-soluble ions, NO3, SO42− and NH4+ were three main components accounting for 63.4% totally of PM2.5. These three ions mainly existed in the form of (NH4)2SO4 and NH4NO3. Through the calculation of SOR and NOR, it could be found that a considerable portion of NO2 and SO2 in the air was converted into NO3 and SO42−. The secondary conversion was very obvious. Based on the ratio of NO3/SO42−, it could be determined that the impact of vehicle exhaust on PM2.5 pollution was more obvious than that of fixed combustion emission.
OC was the main component among the carbon-containing components. The OC/EC ratio was 3.27, indicating secondary aerosols existed in PM2.5. After calculation, the average concentration of SOC was 3.54 μg/m3, accounting for 47.8% of OC. The proportion of SOC in OC was relatively high.
The concentrations of metal elements in PM2.5 were relatively low compared with carbon-containing components and water-soluble ions. However, the EF values of Na, Ca, K and Cd exceeded 10, indicating that these elements were obviously enriched due to human activities.
Finally, this study used the PMF model to analyze the sources of PM2.5 in Shaoxing in winter. The result indicated that the PM2.5 primary source was secondary inorganic salts (49.3%), followed by motor vehicles and industrial sources (21.3%) and dust sources (17.0%).

Author Contributions

Q.W. and F.Y. conducted the PMF analysis; J.W. conducted the sampling; W.L. prepared the original draft and analyzed the data; Y.Z. amended the language; R.W. completed the writing—review and editing. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by Zhejiang Province Ecological Environment Research and Achievement Promotion Project (ZY0444202210018).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

All relevant data are within the paper.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Guo, X.B.; Wei, H.Y. Progress on the health effects of ambient PM2.5 pollution. Chin. Sci. Bull. 2013, 58, 1171–1177. (In Chinese) [Google Scholar]
  2. Yu, J.Y.; Wang, J.; Xu, L.P.; Li, L.; Liu, R.L.; Liu, J. Characteristics of chemical components of PM2.5 and its seasonal variations in Chongqing urban area. Chin. J. Environ. Eng. 2017, 11, 6372–6378. (In Chinese) [Google Scholar]
  3. Sun, Y.L.; Zhang, G.S.; Wang, Y.; Han, L.H.; Guo, J.H.; Dan, M.; Zhang, W.J.; Wang, Z.F.; Hao, Z.P. The air-borne particulate pollution in Beijing-concentration, composition, distribution and sources. Atmos. Environ. 2004, 38, 5991–6004. [Google Scholar] [CrossRef]
  4. Li, X.R.; Wang, Y.S.; Guo, X.P.; Wang, Y.F. Seasonal variation and source apportionment of organic and inorganic compounds in PM2.5 and PM10 particulates in Beijing, China. J. Environ. Sci. 2013, 25, 741–750. [Google Scholar] [CrossRef]
  5. Li, L.W.; Dai, Q.L.; Bi, X.H.; Gao, J.X.; Yang, J.M.; Hong, S.M.; Feng, Y.C. Characteristics and sources of carbonaceous species in atmospheric PM2.5 during winter in Hangzhou City. Res. Environ. Sci. 2017, 30, 340–348. (In Chinese) [Google Scholar]
  6. Chen, J.Y.; Tang, K.J.; Zhu, Y.; Liu, B.C. Pollution characteristics of water-soluble ions in PM2.5 of Hangzhou. J. Zhejiang Univ. Technol. 2016, 44, 410–416. (In Chinese) [Google Scholar]
  7. Ge, L.L.; Zheng, Y.Z.; Tu, S.F.; Zhu, J.K.; Wang, Q.L.; Wang, X.Q.; Li, J.S.; Li, W. Characteristics and sources apportionment of water-soluble ions in PM2.5 of Wenzhou, Zhejiang Province. J. Zhejiang Univ. 2017, 44, 112–120. (In Chinese) [Google Scholar]
  8. Wang, W.F.; Ying, H.M.; Yu, J.; Zhou, J.; Xu, D.D.; Hu, M.; Du, B.H. PM2.5 pollution characteristics and source analysis in Ningbo City. In Proceedings of the 9th Ningbo Academic Conference, Ningbo, China, 16 November 2016. (In Chinese). [Google Scholar]
  9. Du, B.H.; Huang, X.F.; He, L.Y.; Hu, M.; Wang, C.; Ren, Y.C.; Ying, H.M.; Zhou, J.; Wang, W.F.; Xu, D.D. Seasonal and spatial variations of carbon fractions in PM2.5 in Ningbo and the estimation of secondary organic carbon. Environ. Sci. 2015, 36, 3128–3134. (In Chinese) [Google Scholar]
  10. Xu, H.H.; Xu, J.S.; He, J.; Pu, J.J.; Yu, K.A. Characteristics analyses of PAHs in PM2.5 in the northern Zhejiang province. China Environ. Sci. 2018, 38, 3247–3253. (In Chinese) [Google Scholar]
  11. Fang, Y.Z.; Zhou, M.T.; Jiang, M.; Huang, Y.N.; Feng, J.L. Characterization of secondary organic tracers in PM2.5 in a representative city in mid-western Zhejiang Province. Res. Environ. Sci. 2018, 31, 2094–2102. (In Chinese) [Google Scholar]
  12. Zhang, H.Y.; Xu, Q.E.; Yao, S.; Wang, Q.H.; Liu, S.J.; Li, H. Pollution characteristics and health risks of metal elements in ambient PM2.5 in Shaoxing. Mod. Chem. Res. 2022, 6, 72–77. (In Chinese) [Google Scholar]
  13. Zhu, J.; Wang, Q.Z.; Ding, H.; Li, H.; Yu, F.W.; Ji, Z.Q.; Jiang, Q.Q.; Wu, J.; Li, W.J. Characteristics and sources of organic carbon and elemental carbon in PM2.5 in autumn and winter of Hangzhou Bay Area. Environ. Pollut. Control 2021, 43, 864–870. (In Chinese) [Google Scholar]
  14. China Ministry of Ecology and Environment. The Guideline for Source Analysis and Monitoring Techniques of Environmental Air Particles. 2020. Available online: https://www.mee.gov.cn/xxgk2018/xxgk/sthjbsh/202005/t20200514_779089.html (accessed on 14 May 2020). (In Chinese)
  15. Hsu, S.C.; Liu, S.C.; Tsai, F. High wintertime particulate matter pollution over an offshore island (Kinmen) off southeastern China: An overview. J. Geophys. Res. 2010, 115, 17309–17325. [Google Scholar] [CrossRef] [Green Version]
  16. Yan, G.X.; Zhang, P.Z.; Huang, H.Y.; Gao, Y.; Zhang, J.W.; Song, X.; Zhang, J.Y.; Li, H.G.; Gao, Z.G.; Jiang, J.S.; et al. Concentration characteristics and source analysis of PM2.5 during wintertime in Zhengzhou-Xinxiang. Environ. Sci. 2019, 40, 2027–2035. (In Chinese) [Google Scholar]
  17. Li, M.Y.; Yang, M.; Wei, M.; Zhu, H.X.; Liu, H.F. Characteristics and sources apportionment of fine particulate matter in a typical coastal city during the heating period. Environ. Sci. 2020, 41, 1550–1560. (In Chinese) [Google Scholar]
  18. Lin, Y.; Ye, Z.X.; Yang, H.J.; Zhang, J.; Yin, W.W.; Li, X.F. Pollution level and source apportionment of atmospheric particles PM2.5 in southwest suburb of Chengdu in spring. Environ. Sci. 2016, 37, 1629–1638. (In Chinese) [Google Scholar]
  19. Wang, Y.J.; Dong, Y.P.; Feng, J.J.; Guan, J.J.; Zhao, W.; Li, H.J. Characteristics and influencing factors of carbonaceous aerosols in PM2.5 in Shanghai, China. Environ. Sci. 2010, 31, 1755–1761. (In Chinese) [Google Scholar]
  20. Turpin, B.J.; Huntzicher, J.J. Identification of secondary organic aerosol episodes and quantitation of primary and secondary organic aerosol concentration during SCAQS. Atmos. Environ. 1995, 29, 3527–3544. [Google Scholar] [CrossRef]
  21. Wang, P.; Zhao, Y.Z.; Ding, W.C.; Li, Z.Z.; Liu, S.X. Chemical characteristics and source apportionment of PM2.5 at Jinniu District of Chengdu city in winter. China Powder Sci. Technol. 2020, 26, 14–21. (In Chinese) [Google Scholar]
  22. Schauer, J.J.; Kleeman, M.J.; Cass, G.R.; Simoneit, B.R.T. Measurement of emissions from air pollution sources. 2. C1 through C30 organic compounds from medium duty diesel trucks. Environ. Sci. Technol. 1999, 33, 1578–1587. [Google Scholar] [CrossRef]
  23. Schauer, J.J.; Kleeman, M.J.; Cass, G.R.; Simoneit, B.R.T. Measurement of emissions from air pollution sources. 5. C1-C32 organic compounds from gasoline powered motor vehicles. Environ. Sci. Technol. 2002, 36, 1169–1180. [Google Scholar] [CrossRef] [PubMed]
  24. Chen, Y.J.; Zhi, G.R.; Feng, Y.L.; Fu, J.M.; Feng, J.L.; Sheng, G.Y.; Simoneit, B.R.T. Measurements of emission factors for primary carbonaceous particles from residential raw coal combustion in China. Geophys. Res. Lett. 2006, 332, 382–385. [Google Scholar] [CrossRef]
  25. Wenzhou Municipal Bureau of Statistics. Wenzhou Statistical Yearbook 2014. 2019. Available online: http://wztjj.wenzhou.gov.cn/art/2019/9/12/art_1467318_38058877.html (accessed on 12 September 2019). (In Chinese)
  26. Hangzhou Municipal Bureau of Statistics. Hangzhou Statistical Yearbook 2014. 2015. Available online: http://tjj.hangzhou.gov.cn/art/2015/11/1/art_1229453592_3819408.html (accessed on 1 November 2015). (In Chinese)
  27. Shaoxing Municipal Bureau of Statistics. Shaoxing Statistical Yearbook 2015. 2015. Available online: http://tjj.sx.gov.cn/art/2015/12/31/art_1229362048_3587783.html (accessed on 31 December 2015). (In Chinese)
  28. Shaoxing Municipal Bureau of Statistics. Shaoxing Statistical Yearbook 2019. 2019. Available online: http://tjj.sx.gov.cn/art/2019/12/31/art_1229362048_3587790.html (accessed on 31 December 2019). (In Chinese)
  29. Han, T.T.; Liu, X.G.; Zhang, Y.H.; Yu, Q.; Zeng, L.M.; Hu, M.; Zhu, T. Role of secondary aerosols in haze formation in summer in the megacity Beijing. J. Environ. Sci. 2015, 31, 51–60. [Google Scholar] [CrossRef]
  30. Behera, S.N.; Sharma, M. Degradation of SO2, NO2 and NH3 leading to formation of secondary inorganic aerosols: An environmental chamber study. Atmos. Environ. 2011, 45, 4015–4024. [Google Scholar] [CrossRef]
  31. Arimoto, R.; Duce, R.A.; Savoie, D.L.; Prospero, J.M.; Talbot, R.; Cullen, J.D.; Tomza, U.; Lewis, N.F.; Ray, B.J. Relationships among aerosol constituents from Asia and the north pacific during PEM-West A. J. Geophys. Res. Atmos. 1996, 101, 2011–2023. [Google Scholar] [CrossRef]
  32. Chen, X.Q.; Chen, J.S.; Wu, S.P.; Lin, C.C. The Causes and Control Mechanisms of Atmospheric Compound Pollution in Urban Agglomerations on West Coast of the Taiwan Strait; Science Press: Beijing, China, 2014; p. 64. (In Chinese) [Google Scholar]
  33. Zhao, Y.N.; Wang, Y.S.; Wen, T.X.; Dai, G.H. Seasonal variation of water-soluble ions in PM2.5 at Changbai Mountain. Environ. Sci. 2014, 35, 9–14. (In Chinese) [Google Scholar]
  34. Fan, Y.H.; Wang, Y.Q. Background characteristics of soil elements in four plains of Zhejiang Province. Geophys. Geochem. Explor. 2009, 33, 132–134. (In Chinese) [Google Scholar]
  35. Yang, F.M.; He, K.B.; Ma, Y.L.; Cadle, S.H.; Chan, T.; Mulawa, P.A. Characteristics of Mineral Component in Ambient PM2.5 in Beijing. Environ. Sci. 2004, 25, 26–30. (In Chinese) [Google Scholar]
  36. Urban, R.C.; Alves, C.A.; Allen, A.G.; Cardoso, A.A.; Queiroz, M.E.C.; Campos, M.L.A.M. Sugar markers in aerosol particles from an agro-industrial region in Brazil. Atmos. Environ. 2014, 90, 106–112. [Google Scholar] [CrossRef]
  37. Chen, P.F.; Bi, X.H.; Zhang, J.Q.; Wu, J.H.; Feng, Y.C. Assessment of heavy metal pollution characteristics and human health risk of exposure to ambient PM2.5 in Tianjin, China. Particuology 2015, 20, 104–109. [Google Scholar] [CrossRef]
Figure 1. Daily variation sequence of PM2.5 concentrations during the sampling period.
Figure 1. Daily variation sequence of PM2.5 concentrations during the sampling period.
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Figure 2. The daily variations in TC, OC and EC during the sampling period.
Figure 2. The daily variations in TC, OC and EC during the sampling period.
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Figure 3. The correlation between OC and EC.
Figure 3. The correlation between OC and EC.
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Figure 4. The average mass concentrations of water-soluble ions.
Figure 4. The average mass concentrations of water-soluble ions.
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Figure 5. The correlations between NH4+ and NO3 (a), NH4+ and SO42− (b).
Figure 5. The correlations between NH4+ and NO3 (a), NH4+ and SO42− (b).
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Figure 6. The EF values of metal elements.
Figure 6. The EF values of metal elements.
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Figure 7. Factor profiles (% of species) of each source for the PMF model for PM2.5.
Figure 7. Factor profiles (% of species) of each source for the PMF model for PM2.5.
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Figure 8. The result of sources analysis.
Figure 8. The result of sources analysis.
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Table 1. The characteristics of SOC in winter in Shaoxing.
Table 1. The characteristics of SOC in winter in Shaoxing.
SeasonOC (μg/m3)EC (μg/m3)OC/ECminSOC (μg/m3)SOC/OC
Winter7.412.451.583.5447.8%
Table 2. The mass concentrations and proportions of metal elements in PM2.5.
Table 2. The mass concentrations and proportions of metal elements in PM2.5.
Metal ElementMass Concentration (μg/m3)Proportion in Metal Element (%)Proportion in PM2.5 (%)
K0.51410.72%1.14%
Fe0.3006.26%0.66%
Si0.2845.92%0.63%
Na0.1593.31%0.35%
Ca0.1523.16%0.33%
Al0.1092.27%0.24%
Zn0.0841.76%0.19%
Pb0.0581.21%0.13%
Cd0.0551.15%0.12%
Mg0.0450.95%0.10%
Ba0.0390.81%0.09%
Mn0.0300.62%0.07%
Sn0.0270.56%0.06%
Sb0.0240.50%0.05%
Cr0.0160.34%0.04%
Ti0.0150.31%0.03%
Cu0.0110.22%0.02%
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Li, W.; Wu, J.; Zhou, Y.; Wang, Q.; Yu, F.; Wang, R. Chemical Characteristics and Sources Analysis of PM2.5 in Shaoxing in Winter. Atmosphere 2023, 14, 1256. https://doi.org/10.3390/atmos14081256

AMA Style

Li W, Wu J, Zhou Y, Wang Q, Yu F, Wang R. Chemical Characteristics and Sources Analysis of PM2.5 in Shaoxing in Winter. Atmosphere. 2023; 14(8):1256. https://doi.org/10.3390/atmos14081256

Chicago/Turabian Style

Li, Wenjuan, Jian Wu, Yangyi Zhou, Qiongzhen Wang, Fuwei Yu, and Rupei Wang. 2023. "Chemical Characteristics and Sources Analysis of PM2.5 in Shaoxing in Winter" Atmosphere 14, no. 8: 1256. https://doi.org/10.3390/atmos14081256

APA Style

Li, W., Wu, J., Zhou, Y., Wang, Q., Yu, F., & Wang, R. (2023). Chemical Characteristics and Sources Analysis of PM2.5 in Shaoxing in Winter. Atmosphere, 14(8), 1256. https://doi.org/10.3390/atmos14081256

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