China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with the aim of reducing primary emissions and hence improving air quality at a national level. It is important to examine the effectiveness of such emission reductions and assess the resulting changes in air quality. However, such evaluation is difficult as meteorological factors can amplify, or obscure the changes of air pollutants, in addition to the emission reduction. In this study, we applied the random forest machine learning technique to decouple meteorological influences from emissions changes, and examined the deweathered trends of air pollutants in 12 Chinese mega-cities during 2013–2020. The observed concentrations of all criteria poll...
The COVID-19 restrictions in 2020 have led to distinct variations in NO2 and O3 concentrations in Ch...
‘‘SARS-CoV-2’’ which is responsible for the current pandemic of COVID-19 disease was first reported ...
Surface ozone concentrations increased in many regions of China from 2015 to 2019. While the central...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
The Beijing government implemented a number of clean air action plans to improve air quality in the ...
China's rapid industrialisation and urbanisation has led to poor air quality. The Chinese government...
Beijing's air pollution has become of increasing concern in recent years. The central and municipal ...
The COVID-19 lockdowns led to major reductions in air pollutant emissions. Here, we quantitatively e...
Machine learning models can emulate chemical transport models, reducing computational costs and enab...
The COVID-19 restrictions in 2020 have led to obvious variations in NO2 and O3 concentrations in Chi...
Due to the implementation of air pollution control measures in China, air quality has significantly ...
Air pollution is a serious environmental issue and leading contributor to the disease burden in Chin...
Traditional statistical methods (TSM) and machine learning (ML) methods have been widely used to sep...
The air quality in China has changed due to the implementation of clean air actions since 2013. Eval...
The COVID-19 restrictions in 2020 have led to distinct variations in NO2 and O3 concentrations in Ch...
‘‘SARS-CoV-2’’ which is responsible for the current pandemic of COVID-19 disease was first reported ...
Surface ozone concentrations increased in many regions of China from 2015 to 2019. While the central...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
The Beijing government implemented a number of clean air action plans to improve air quality in the ...
China's rapid industrialisation and urbanisation has led to poor air quality. The Chinese government...
Beijing's air pollution has become of increasing concern in recent years. The central and municipal ...
The COVID-19 lockdowns led to major reductions in air pollutant emissions. Here, we quantitatively e...
Machine learning models can emulate chemical transport models, reducing computational costs and enab...
The COVID-19 restrictions in 2020 have led to obvious variations in NO2 and O3 concentrations in Chi...
Due to the implementation of air pollution control measures in China, air quality has significantly ...
Air pollution is a serious environmental issue and leading contributor to the disease burden in Chin...
Traditional statistical methods (TSM) and machine learning (ML) methods have been widely used to sep...
The air quality in China has changed due to the implementation of clean air actions since 2013. Eval...
The COVID-19 restrictions in 2020 have led to distinct variations in NO2 and O3 concentrations in Ch...
‘‘SARS-CoV-2’’ which is responsible for the current pandemic of COVID-19 disease was first reported ...
Surface ozone concentrations increased in many regions of China from 2015 to 2019. While the central...