An adaptive method for speeding up the numerical integration of chemical mechanisms in atmospheric chemistry models: application to GEOS-Chem version 12.0.0
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Published:2020-05-28
Issue:5
Volume:13
Page:2475-2486
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ISSN:1991-9603
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Container-title:Geoscientific Model Development
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language:en
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Short-container-title:Geosci. Model Dev.
Author:
Shen Lu, Jacob Daniel J., Santillana Mauricio, Wang XuanORCID, Chen Wei
Abstract
Abstract. The major computational bottleneck in atmospheric
chemistry models is the numerical integration of the stiff coupled system of
kinetic equations describing the chemical evolution of the system as defined
by the model chemical mechanism (typically over 100 coupled species). We
present an adaptive method to greatly reduce the computational cost of that
numerical integration in global 3-D models while maintaining high accuracy.
Most of the atmosphere does not in fact require solving for the full
chemical complexity of the mechanism, so considerable simplification is
possible if one can recognize the dynamic continuum of chemical complexity
required across the atmospheric domain. We do this by constructing a limited
set of reduced chemical mechanisms (chemical regimes) to cover the range of
atmospheric conditions and then pick locally and on the fly which mechanism
to use for a given grid box and time step on the basis of computed production
and loss rates for individual species. Application to the GEOS-Chem global
3-D model for oxidant–aerosol chemistry in the troposphere and stratosphere
(full mechanism of 228 species) is presented. We show that 20 chemical
regimes can largely encompass the range of conditions encountered in the
model. Results from a 2-year GEOS-Chem simulation shows that our method can
reduce the computational cost of chemical integration by 30 %–40 % while
maintaining accuracy better than 1 % and with no error growth. Our method
retains the full complexity of the original chemical mechanism where it is
needed, provides the same model output diagnostics (species production and
loss rates, reaction rates) as the full mechanism, and can accommodate
changes in the chemical mechanism or in model resolution without having to
reconstruct the chemical regimes.
Publisher
Copernicus GmbH
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