Evaluating emissions and meteorological contributions to air quality trends in northern China based on measurements at a regional background station†

IF 2.8 Q3 ENVIRONMENTAL SCIENCES
Weiwei Pu, Yingruo Li, Xiaowan Zhu, Xiangxue Liu, Di He, Fan Dong, Heng Guo, Guijie Zhao, Liyan Zhou, Shuangshuang Ge and Zhiqiang Ma
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Abstract

The contributions of meteorology and emissions to air pollutant trends are critical for air quality management, but they have not been fully analyzed, especially in the background area of northern China. Here, we used a machine learning technique to quantify the impacts of meteorological conditions and emissions on PM2.5, NO2, SO2, O3, and CO pollution during 2013–2021 and evaluated their contributions to Clean Air Action policies. The annual effect of the meteorology on PM2.5, NO2, SO2, and CO levels was dominated by the meteorological conditions during the cold season, while that of the O3 level largely depended on the meteorological conditions during the warm season. Meteorology-driven anomalies contributed −14.8 to 10.3%, −8.5 to 7.3%, −11 to 7.1%, −7.9 to 6.0%, and −7.4 to 7.3% to the annual mean concentrations of PM2.5, NO2, SO2, O3, and CO during the study period, respectively. The Clean Air Actions have led to a major improvement in the air quality at regional scale, with the reduction of 1.7 μg m−3 year−1, 0.2 μg m−3 year−1, 1.5 μg m−3 year−1, 0.7 μg m−3 year−1, and 0.03 mg m−3 year−1 for PM2.5, NO2, SO2, O3, and CO at background area, respectively, after meteorological correction. Although emissions dominated the long-term variations in pollutants, the meteorological conditions obviously played a positive role during the action periods for pollutants except for O3. Considering the notable effects of the meteorological conditions on air pollution and the interreaction between pollutants, a more comprehensive control strategy should be considered on a broader regional scale.

Abstract Image

基于区域本底站的测量结果,评估排放和气象对中国北方空气质量趋势的影响†。
气象和排放对空气污染物趋势的影响对于空气质量管理至关重要,但目前尚未对其进行全面分析,尤其是在中国北方的背景地区。在此,我们利用机器学习技术量化了 2013-2021 年气象条件和排放对 PM2.5、NO2、SO2、O3 和 CO 污染的影响,并评估了它们对清洁空气行动政策的贡献。气象对 PM2.5、NO2、SO2 和 CO 水平的年度影响主要受寒冷季节气象条件的影响,而对 O3 水平的影响则主要取决于温暖季节的气象条件。在研究期间,气象驱动的异常对 PM2.5、NO2、SO2、O3 和 CO 年平均浓度的影响分别为-14.8%至 10.3%、-8.5%至 7.3%、-11%至 7.1%、-7.9%至 6.0%和-7.4%至 7.3%。清洁空气行动大大改善了区域范围内的空气质量,经气象校正后,背景区域 PM2.5、NO2、SO2、O3 和 CO 的浓度分别降低了 1.7 μg m-3 年-1、0.2 μg m-3 年-1、1.5 μg m-3 年-1、0.7 μg m-3 年-1 和 0.03 mg m-3 年-1。虽然排放主导了污染物的长期变化,但除 O3 外,气象条件在污染物的作用期明显发挥了积极作用。考虑到气象条件对空气污染的显著影响以及污染物之间的相互影响,应在更广泛的区域范围内考虑更全面的控制策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.90
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