| Literature DB >> 33769804 |
Dawei Lu1,2, Jingwei Zhang3,2, Chaoyang Xue1,2, Peijie Zuo1,2, Zigu Chen1,2, Luyao Zhang1,2, Weibo Ling1,2, Qian Liu1,2,4, Guibin Jiang1,2.
Abstract
The contradiction between the regional imbalance and an one-size-fits-all policy is one of the biggest challenges in current air pollution control in China. With the recent implementation of first-level public health emergency response (FLPHER) in response to the COVID-19 pandemic in China (a total of 77 041 confirmed cases by February 22, 2020), human activities were extremely decreased nationwide and almost all economic activities were suspended. Here, we show that this scenario represents an unprecedented "base period" to probe the short-term emission control effect of air pollution at a city level. We quantify the FLPHER-induced changes of NO2, SO2, PM2.5, and PM10 levels in 174 cities in China. A machine learning prediction model for air pollution is established by coupling a generalized additive model, random effects meta-analysis, and weather research and forecasting model with chemistry analysis. The short-term control effect under the current energy structure in each city is estimated by comparing the predicted and observed results during the FLPHER period. We found that the short-term emission control effect ranges within 53.0%-98.3% for all cities, and southern cities show a significantly stronger effect than northern cities (P < 0.01). Compared with megacities, small-medium cities show a similar control effect on NO2 and SO2 but a larger effect on PM2.5 and PM10.Entities:
Keywords: COVID-19; air pollution; emission reduction; machine learning; public health emergency
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Year: 2021 PMID: 33769804 DOI: 10.1021/acs.est.0c07170
Source DB: PubMed Journal: Environ Sci Technol ISSN: 0013-936X Impact factor: 9.028