Accelerating exoplanet climate modelling: A machine learning approach to complement 3D GCM grid simulations
Alexander Plaschzug, Amit Reza, Ludmila Carone, Sebastian Gernjak, Christiane Helling

TL;DR
This paper develops machine learning models to rapidly predict 3D exoplanet atmospheric structures, significantly reducing computational costs while maintaining accuracy comparable to traditional GCM simulations.
Contribution
It introduces a new ML approach using DNN and XGBoost trained on a comprehensive 3D GCM grid for hot Jupiters, enabling fast and reliable atmospheric predictions.
Findings
ML models predict temperature fields with spectra within 32 ppm accuracy.
ML emulators reliably simulate atmospheres of hot Jupiters around various star types.
Predictions have minimal impact on gas chemistry and cloud formation modeling.
Abstract
With the development of ever-improving telescopes capable of observing exoplanet atmospheres in greater detail and number, there is a growing demand for enhanced 3D climate models to support and help interpret observational data from space missions like CHEOPS, TESS, JWST, PLATO, and Ariel. However, the computationally intensive and time-consuming nature of general circulation models (GCMs) poses significant challenges in simulating a wide range of exoplanetary atmospheres. This study aims to determine whether machine learning (ML) algorithms can be used to predict the 3D temperature and wind structure of arbitrary tidally-locked gaseous exoplanets in a range of planetary parameters. A new 3D GCM grid with 60 inflated hot Jupiters orbiting A, F, G, K, and M-type host stars modelled with Exorad has been introduced. A dense neural network (DNN) and a decision tree algorithm (XGBoost) are…
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