Atmospheric chemistry models are a central tool to study and forecast the impact of air pollution on the environment, vegetation, and human health. However, the numerical simulation of chemical kinetics is computationally expensive due to the stiffness of the system of ordinary differential equations that describes atmospheric chemistry. Here we present an alternative approach to the computation of atmospheric chemistry based on machine learning. Our training data set is produced using the NASA Goddard Earth Observing System (GEOS) model with GEOS-Chem chemistry, run on the NASA Center for Climate Simulation (NCCS) Discover supercomputing cluster on 384 Intel Xeon Haswell cores. This model spends more than 50% of total run time on solving a...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
Chemical transport models (CTMs) are used to improve our understanding of the complex processes infl...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
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 is a high-dimensionality, large-data problem and thus may be suited to machine...
The study of atmospheric chemistry-climate interactions is one of today's great computational challe...
Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the ...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
Atmospheric models are a representation of dynamical, physical, chemical, dynamical, and radiative ...
We present a series of optimizations to alleviate stack memory overflow issues and improve overall p...
Better forecasting of atmospheric composition is a critical aspect of environmental and climate moni...
The use of massively parallel computers provides an avenue to overcome the computational requirement...
We discuss a model for computing the chemical reactions occurring among air pollutants and predict t...
We present a computationally efficient adaptive method for calculating the time evolution of the con...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
Chemical transport models (CTMs) are used to improve our understanding of the complex processes infl...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
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 is a high-dimensionality, large-data problem and thus may be suited to machine...
The study of atmospheric chemistry-climate interactions is one of today's great computational challe...
Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the ...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
Atmospheric models are a representation of dynamical, physical, chemical, dynamical, and radiative ...
We present a series of optimizations to alleviate stack memory overflow issues and improve overall p...
Better forecasting of atmospheric composition is a critical aspect of environmental and climate moni...
The use of massively parallel computers provides an avenue to overcome the computational requirement...
We discuss a model for computing the chemical reactions occurring among air pollutants and predict t...
We present a computationally efficient adaptive method for calculating the time evolution of the con...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...
Chemical transport models (CTMs) are used to improve our understanding of the complex processes infl...
A methodology rested on model-based machine learning using simple linear regressions and the paramet...