Neural network-based emulation of interstellar medium models
Pierre Palud, Lucas Einig, Franck Le Petit, Emeric Bron, Pierre, Chainais, Jocelyn Chanussot, J\'er\^ome Pety, Pierre-Antoine Thouvenin, David, Languignon, Ivana Be\v{s}li\'c, Miriam G. Santa-Maria, Jan H. Orkisz,, L\'eontine E. S\'egal, Antoine Zakardjian, S\'ebastien Bardeau

TL;DR
This paper introduces neural network emulators that significantly speed up and improve the accuracy of interstellar medium models, facilitating faster analysis of astronomical observations.
Contribution
The authors develop a novel neural network-based method with strategies to handle complex ISM model outputs, outperforming traditional interpolation methods in speed and accuracy.
Findings
ANN emulators are 1000 times faster than interpolation methods.
Emulators achieve 4.5% average error on the Meudon PDR code.
Strategies improve emulator performance over standard approaches.
Abstract
The interpretation of observations of atomic and molecular tracers in the galactic and extragalactic interstellar medium (ISM) requires comparisons with state-of-the-art astrophysical models to infer some physical conditions. Usually, ISM models are too time-consuming for such inference procedures, as they call for numerous model evaluations. As a result, they are often replaced by an interpolation of a grid of precomputed models. We propose a new general method to derive faster, lighter, and more accurate approximations of the model from a grid of precomputed models. These emulators are defined with artificial neural networks (ANNs) designed and trained to address the specificities inherent in ISM models. Indeed, such models often predict many observables (e.g., line intensities) from just a few input physical parameters and can yield outliers due to numerical instabilities or…
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