Atmospheric chemistry is a high-dimensionality, large-data problem and thus may be suited to machine-learning algorithms. We show here the potential of a random forest regression algorithm to replace the gas-phase chemistry solver in the GEOS-Chem chemistry model. In this proof-of-concept study, we used one month of model output to train random forest regression models to predict the concentrations of each long-lived chemical species after integration based upon the physical and chemical conditions before the chemical integration. The choice of prediction type has a strong impact on the skill of the regression model. We find best results from predicting the change in concentration for very long-lived species and the absolute concentration f...
The formation, properties, and lifetime of secondary organic aerosols in the atmosphere are largely ...
Due to the intensive ozone research in recent decades, the processes that influence stratospheric oz...
Machine learning (ML) plays an important role in atmospheric environment prediction, having been wid...
Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the ...
Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the ...
Atmospheric chemistry is central to many environmental issues such as air pollution, climate change,...
Atmospheric chemistry models are a central tool to study and forecast the impact of air pollution on...
Chemical transport models (CTMs) are used to improve our understanding of the complex processes infl...
Thesis (Ph.D.)--University of Washington, 2023Global atmospheric chemistry is an exceptionally high-...
International audienceThe chemical composition of ambient organic aerosols plays a critical role in ...
Predictions from process-based models of environmental systems are biased, due to uncertainties in t...
The emission of reactive nitrogen species increased rapidly in the twentieth century causing a signi...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
The formation, properties, and lifetime of secondary organic aerosols in the atmosphere are largely ...
Due to the intensive ozone research in recent decades, the processes that influence stratospheric oz...
Machine learning (ML) plays an important role in atmospheric environment prediction, having been wid...
Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the ...
Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the ...
Atmospheric chemistry is central to many environmental issues such as air pollution, climate change,...
Atmospheric chemistry models are a central tool to study and forecast the impact of air pollution on...
Chemical transport models (CTMs) are used to improve our understanding of the complex processes infl...
Thesis (Ph.D.)--University of Washington, 2023Global atmospheric chemistry is an exceptionally high-...
International audienceThe chemical composition of ambient organic aerosols plays a critical role in ...
Predictions from process-based models of environmental systems are biased, due to uncertainties in t...
The emission of reactive nitrogen species increased rapidly in the twentieth century causing a signi...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
The formation, properties, and lifetime of secondary organic aerosols in the atmosphere are largely ...
Due to the intensive ozone research in recent decades, the processes that influence stratospheric oz...
Machine learning (ML) plays an important role in atmospheric environment prediction, having been wid...