Statistical and machine learning methods for evaluating trends in air quality under changing meteorological conditions

Journal Article
Statistical and machine learning methods for evaluating trends in air quality under changing meteorological conditions
Qiu, M., C.M. Zigler and N.E. Selin (2022)
Atmospheric Chemistry and Physics, 22, 10551–10566 (doi: 10.5194/acp-22-10551-2022)

Abstract/Summary:

Abstract: Evaluating the influence of anthropogenic-emission changes on air quality requires accounting for the influence of meteorological variability. Statistical methods such as multiple linear regression (MLR) models with basic meteorological variables are often used to remove meteorological variability and estimate trends in measured pollutant concentrations attributable to emission changes. However, the ability of these widely used statistical approaches to correct for meteorological variability remains unknown, limiting their usefulness in the real-world policy evaluations.

Here, we quantify the performance of MLR and other quantitative methods using simulations from a chemical transport model, GEOS-Chem, as a synthetic dataset. Focusing on the impacts of anthropogenic-emission changes in the US (2011 to 2017) and China (2013 to 2017) on PM2.5 and O3, we show that widely used regression methods do not perform well in correcting for meteorological variability and identifying long-term trends in ambient pollution related to changes in emissions.

The estimation errors, characterized as the differences between meteorology-corrected trends and emission-driven trends under constant meteorology scenarios, can be reduced by 30 %–42 % using a random forest model that incorporates both local- and regional-scale meteorological features. We further design a correction method based on GEOS-Chem simulations with constant-emission input and quantify the degree to which anthropogenic emissions and meteorological influences are inseparable, due to their process-based interactions. We conclude by providing recommendations for evaluating the impacts of anthropogenic-emission changes on air quality using statistical approaches.

Citation:

Qiu, M., C.M. Zigler and N.E. Selin (2022): Statistical and machine learning methods for evaluating trends in air quality under changing meteorological conditions. Atmospheric Chemistry and Physics, 22, 10551–10566 (doi: 10.5194/acp-22-10551-2022) (https://acp.copernicus.org/articles/22/10551/2022/acp-22-10551-2022-discussion.html)
  • Journal Article
Statistical and machine learning methods for evaluating trends in air quality under changing meteorological conditions

Qiu, M., C.M. Zigler and N.E. Selin

22, 10551–10566 (doi: 10.5194/acp-22-10551-2022)
2022

Abstract/Summary: 

Abstract: Evaluating the influence of anthropogenic-emission changes on air quality requires accounting for the influence of meteorological variability. Statistical methods such as multiple linear regression (MLR) models with basic meteorological variables are often used to remove meteorological variability and estimate trends in measured pollutant concentrations attributable to emission changes. However, the ability of these widely used statistical approaches to correct for meteorological variability remains unknown, limiting their usefulness in the real-world policy evaluations.

Here, we quantify the performance of MLR and other quantitative methods using simulations from a chemical transport model, GEOS-Chem, as a synthetic dataset. Focusing on the impacts of anthropogenic-emission changes in the US (2011 to 2017) and China (2013 to 2017) on PM2.5 and O3, we show that widely used regression methods do not perform well in correcting for meteorological variability and identifying long-term trends in ambient pollution related to changes in emissions.

The estimation errors, characterized as the differences between meteorology-corrected trends and emission-driven trends under constant meteorology scenarios, can be reduced by 30 %–42 % using a random forest model that incorporates both local- and regional-scale meteorological features. We further design a correction method based on GEOS-Chem simulations with constant-emission input and quantify the degree to which anthropogenic emissions and meteorological influences are inseparable, due to their process-based interactions. We conclude by providing recommendations for evaluating the impacts of anthropogenic-emission changes on air quality using statistical approaches.

Posted to public: 

Monday, November 28, 2022 - 15:31