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Atmos Environ (1994)


Title:Unraveling the O(3)-NO(X)-VOCs relationships induced by anomalous ozone in industrial regions during COVID-19 in Shanghai
Author(s):Lu B; Zhang Z; Jiang J; Meng X; Liu C; Herrmann H; Chen J; Xue L; Li X;
Address:"Department of Environmental Science & Engineering, Fudan University, Shanghai, 200438, China. Leibniz-Institut fur Tropospharenforschung (IfT), Permoserstr. 15, 04318, Leipzig, Germany. Environment Research Institute, Shandong University, Qingdao, Shandong, 266237, China"
Journal Title:Atmos Environ (1994)
Year:2023
Volume:20230523
Issue:
Page Number:119864 -
DOI: 10.1016/j.atmosenv.2023.119864
ISSN/ISBN:1352-2310 (Print) 1352-2310 (Electronic) 1352-2310 (Linking)
Abstract:"The COVID-19 pandemic promoted strict restrictions to human activities in China, which led to an unexpected increase in ozone (O(3)) regarding to nitrogen oxides (NOx) and volatile organic compounds (VOCs) co-abatement in urban China. However, providing a quantitative assessment of the photochemistry that leads to O(3) increase is still challenging. Here, we evaluated changes in O(3) arising from photochemical production with precursors (NO(X) and VOC(S)) in industrial regions in Shanghai during the COVID-19 lockdowns by using machine learning models and box models. The changes of air pollutants (O(3), NO(X), VOCs) during the COVID-19 lockdowns were analyzed by deweathering and detrending machine learning models with regard to meteorological and emission effects. After accounting for effects of meteorological variability, we find increase in O(3) concentration (49.5%). Except for meteorological effects, model results of detrending the business-as-usual changes indicate much smaller reduction (-0.6%), highlighting the O(3) increase attributable to complex photochemistry mechanism and the upward trends of O(3) due to clear air policy in Shanghai. We then used box models to assess the photochemistry mechanism and identify key factors that control O(3) production during lockdowns. It was found that empirical evidence for a link between efficient radical propagation and the optimized O(3) production efficiency of NO(X) under the VOC-limited conditions. Simulations with box models also indicate that priority should be given to controlling industrial emissions and vehicle exhaust while the VOCs and NO(X) should be managed at a proper ratio in order to control O(3) in winter. While lockdown is not a condition that could ever be continued indefinitely, findings of this study offer theoretical support for formulating refined O(3) management in industrial regions in Shanghai, especially in winter"
Keywords:COVID-19 confinement Machine learning Ozone Photochemical box model Volatile organic compounds;
Notes:"PubMed-not-MEDLINELu, Bingqing Zhang, Zekun Jiang, Jiakui Meng, Xue Liu, Chao Herrmann, Hartmut Chen, Jianmin Xue, Likun Li, Xiang eng England 2023/05/30 Atmos Environ (1994). 2023 Sep 1; 308:119864. doi: 10.1016/j.atmosenv.2023.119864. Epub 2023 May 23"

 
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