Harnessing machine learning for accurate treatment of overlapping opacity species in general circulation models
Aaron David Schneider, Paul Molli\`ere, Gilles Louppe, Ludmila Carone,, Uffe Gr{\aa}e J{\o}rgensen, Leen Decin, Christiane Helling

TL;DR
This paper introduces a machine learning-based method using DeepSets for efficient and accurate mixing of opacities in general circulation models, improving modeling of exoplanet atmospheres and disequilibrium chemistry.
Contribution
We propose a novel DeepSets-based machine learning method for opacity mixing in GCMs, demonstrating its accuracy and efficiency over existing methods.
Findings
DeepSets method is both accurate and fast for GCM opacity mixing.
RORR method is too slow for practical GCM use.
AEE's accuracy depends on implementation and may cause numerical issues.
Abstract
To understand high precision observations of exoplanets and brown dwarfs, we need detailed and complex general circulation models (GCMs) that incorporate hydrodynamics, chemistry, and radiation. For this study, we specifically examined the coupling between chemistry and radiation in GCMs and compared different methods for the mixing of opacities of different chemical species in the correlated-k assumption, when equilibrium chemistry cannot be assumed. We propose a fast machine learning method based on DeepSets (DS), which effectively combines individual correlated-k opacities (k-tables). We evaluated the DS method alongside other published methods such as adaptive equivalent extinction (AEE) and random overlap with rebinning and resorting (RORR). We integrated these mixing methods into our GCM (expeRT/MITgcm) and assessed their accuracy and performance for the example of the hot Jupiter…
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Taxonomy
TopicsAtmospheric Ozone and Climate · Atmospheric and Environmental Gas Dynamics · Spectroscopy and Laser Applications
