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Characterization of aerosol particles during the most polluted season (winter) in urban Chengdu (China) by single-particle analysis

机译:单粒子分析,城市成都(中国)最污染的季节(冬季)在城市成都(冬季)的特征

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摘要

Chengdu, the capital city of Sichuan Province, is one of the most polluted cities in China. We used single-particle aerosol mass spectrometer to monitor particulate matter pollution in an urban area of Chengdu from December 9, 2015 to January 4, 2016 to determine the characteristics of air pollution during the winter months. The mass concentrations of particulate matter were high during the whole observation period, with mean values for PM2.5 and PM10 of 101 +/- 60 and 162 +/- 99 g m(-3), respectively. The particles were clustered into nine distinct particle types: dust (3%), potassium-elemental carbon (KEC) (24%), organic carbon (OC) (12%), combined OC and EC (OCEC) (6%), K-organic nitrogen (KCN) (10%), K-nitrate (KNO3) (12%), K-sulfate (KSO4) (18%), K-sulfate and nitrate (KSN) (12%), and metal (3%) particles. Analysis on different types of day showed that: (1) from excellent (days with PM2.5 lower than 35 g m(-3)) to light pollution (PM2.5 between 75 and 115 g m(-3)) days, local/regional combustion was the major contributor, whereas the aggravation of pollution from light pollution to heavy pollution (PM2.5 higher than 150 g m(-3)) days was mainly determined by the combined effect of local/regional combustion and long-distance transport; (2) as the air quality deteriorated, the mixing of sulfate and nitrate in particles increased sharply, especially sulfate; and (3) the relative aerosols acidity increased from excellent to light pollution days, while decreased significantly from light pollution to heavy pollution days. Backward trajectory analysis showed that there were significant differences in PM2.5 concentrations and particle compositions between clusters of trajectories, which affected the level and evolution of PM2.5 pollution in Chengdu. These results give a deeper understanding of PM2.5 pollution in Chengdu and the Sichuan Basin.
机译:四川省首都成都是中国最污染的城市之一。我们使用单粒子气溶胶质谱仪于2015年12月9日至2016年1月4日至2016年1月4日监测成都市城区的颗粒物质污染,以确定冬季空气污染的特点。在整个观察期间,颗粒物质的质量浓度高,PM2.5和PM10的平均值分别为101 +/- 60和162 +/- 99g m(-3)。将颗粒聚集成九种不同的颗粒类型:粉尘(3%),钾 - 元素碳(KEC)(24%),有机碳(OC)(12%),组合OC和EC(OCEC)(6%), K-有机氮(KCN)(10%),K-硝酸酯(KNO3)(12%),K-硫酸盐(KSO4)(18%),K-硫酸盐和硝酸盐(KSN)(12%)和金属( 3%)颗粒。对不同类型的一天的分析表明:(1)优异(PM2.5低于35克(-3)的天(-3))到光污染(PM2.5在75至115克(-3)之间,本地/区域燃烧是主要的贡献者,而从轻度污染到重污染的污染(PM2.5高于150克(-3))的污染主要由局部/区域燃烧和长途运输的综合效应决定; (2)随着空气质量劣化,硫酸盐的混合颗粒中的含量急剧增加,尤其是硫酸盐; (3)相对气溶胶酸度从优异的污染日增加,而从轻微污染到重污染日则显着降低。向后轨迹分析表明,PM2.5浓度和颗粒之间存在显着差异,轨迹簇之间的颗粒组合物影响了成都PM2.5污染的水平和演变。这些结果深入了解成都和四川盆地的PM2.5污染。

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