2024
DOI: 10.3847/1538-4357/ad47a1
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MACE: A Machine-learning Approach to Chemistry Emulation

Silke Maes,
Frederik De Ceuster,
Marie Van de Sande
et al.

Abstract: The chemistry of an astrophysical environment is closely coupled to its dynamics, the latter often found to be complex. Hence, to properly model these environments a 3D context is necessary. However, solving chemical kinetics within a 3D hydro simulation is computationally infeasible for even a modest parameter study. In order to develop a feasible 3D hydro-chemical simulation, the classical chemical approach needs to be replaced by a faster alternative. We present mace, a Machine-learning Approach to Chemistr… Show more

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