This repo includes the GEOS-Chem simulations and R scripts that are needed to replicate and evaluate the conclusions from Qiu, Zigler, and Selin, ACP, 2022 "Statistical and machine learning methods for evaluating trends in air quality under changing meteorological conditions". The GEOS-Chem simulations For the US (2011-2017): observational_o3_pm_2011_2017_us.rds: the simulated daily PM2.5 and O3 concentrations, and MERRA-2 meteorological features in the observational scenarios (changing meteorology, changing emissions). counterfactual_o3_pm_2011_2017_us.rds: the simulated daily PM2.5 and O3 concentrations, and MERRA-2 meteorological features in the counterfactual scenarios (constant meteorology, changing emissions). constant_emi...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
In this study, a methodological procedure combining a technique of meteorological normalisation, bas...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...
Abstract Traditional statistical methods (TSM) and machine learning (ML) methods have been widely us...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in ...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
This study uses machine learning (ML) models for a high-resolution prediction (0.1°×0.1°) of air fin...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in a...
This dissertation focuses on understanding the complex interaction of air quality and climate change...
Air pollution is the main environmental health issues that affects all the regions and causes millio...
Interventions used to improve air quality are often difficult to detect in air quality time series d...
Accurate regional air pollution simulation relies strongly on the accuracy of the mesoscale meteorol...
With the explosive growth of atmospheric data, machine learning models have achieved great success i...
A good understanding of trends, variations, and causes of atmospheric aerosols is vital to quantifyi...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
In this study, a methodological procedure combining a technique of meteorological normalisation, bas...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...
Abstract Traditional statistical methods (TSM) and machine learning (ML) methods have been widely us...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in ...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
This study uses machine learning (ML) models for a high-resolution prediction (0.1°×0.1°) of air fin...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in a...
This dissertation focuses on understanding the complex interaction of air quality and climate change...
Air pollution is the main environmental health issues that affects all the regions and causes millio...
Interventions used to improve air quality are often difficult to detect in air quality time series d...
Accurate regional air pollution simulation relies strongly on the accuracy of the mesoscale meteorol...
With the explosive growth of atmospheric data, machine learning models have achieved great success i...
A good understanding of trends, variations, and causes of atmospheric aerosols is vital to quantifyi...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
In this study, a methodological procedure combining a technique of meteorological normalisation, bas...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...