Estimating the Impact of COVID-19 on the PM<sub>2.5</sub> Levels in China with a Satellite-Driven Machine Learning Model
Título
Estimating the Impact of COVID-19 on the PM<sub>2.5</sub> Levels in China with a Satellite-Driven Machine Learning Model
Autor
Qiulun Li, Qingyang Zhu, Muwu Xu, Yu Zhao, K. M. Venkat Narayan, Yang Liu
Descripción
China implemented an aggressive nationwide lockdown procedure immediately after the COVID-19 outbreak in January 2020. As China emerges from the impact of COVID-19 on national economic and industrial activities, it has become the site of a large-scale natural experiment to evaluate the impact of COVID-19 on regional air quality. However, ground measurements of fine particulate matters (PM2.5) concentrations do not offer comprehensive spatial coverage, especially in suburban and rural regions. In this study, we developed a machine learning method with satellite aerosol remote sensing data, meteorological fields and land use parameters as major predictor variables to estimate spatiotemporally resolved daily PM2.5 concentrations in China. Our study period consists of a reference semester (1 November 2018–30 April 2019) and a pandemic semester (1 November 2019–30 April 2020), with six modeling months in each semester. Each period was then divided into subperiod 1 (November and December), subperiod 2 (January and February) and subperiod 3 (March and April). The reference semester model obtained a 10-fold cross-validated R2 (RMSE) of 0.79 (17.55 μg/m3) and the pandemic semester model obtained a 10-fold cross-validated R2 (RMSE) of 0.83 (13.48 μg/m3) for daily PM2.5 predictions. Our prediction results showed high PM2.5 concentrations in the North China Plain, Yangtze River Delta, Sichuan Basin and Xinjiang Autonomous Region during the reference semester. PM2.5 levels were lowered by 4.8 μg/m3 during the pandemic semester compared to the reference semester and PM2.5 levels during subperiod 2 decreased most, by 18%. The southeast region was affected most by the COVID-19 outbreak with PM2.5 levels during subperiod 2 decreasing by 31%, followed by the Northern Yangtze River Delta (29%) and Pearl River Delta (24%).
Fecha
2021
Materia
covid-19, machine learning, air pollution, PM<sub>2.5</sub>, random forest, MAIAC AOD
Identificador
10.3390/rs13071351
Fuente
Epidemiology and Health
Editor
Korean Society of Epidemiology
Cobertura
Science
Colección
Citación
Qiulun Li, Qingyang Zhu, Muwu Xu, Yu Zhao, K. M. Venkat Narayan, Yang Liu, “Estimating the Impact of COVID-19 on the PM<sub>2.5</sub> Levels in China with a Satellite-Driven Machine Learning Model,” SOCICT Open, consulta 21 de abril de 2026, https://socictopen.socict.org/items/show/10317.
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