Neural networks: solving the chemistry of the interstellar medium
Lorenzo Branca, Andrea Pallottini

TL;DR
This paper demonstrates that Physics Informed Neural Networks (PINNs) can efficiently solve complex, stiff thermo-chemical systems in astrophysics, offering significant speed-ups over traditional methods for modeling interstellar medium chemistry.
Contribution
It introduces PINNs as a viable alternative to traditional ODE solvers for interstellar medium chemistry, achieving high accuracy and substantial computational speed improvements.
Findings
PINNs achieve errors less than 10% in modeling ISM chemistry.
Speed-ups of up to 200 times compared to traditional ODE solvers.
PINNs show consistent performance regardless of initial conditions.
Abstract
Non-equilibrium chemistry is a key process in the study of the InterStellar Medium (ISM), in particular the formation of molecular clouds and thus stars. However, computationally it is among the most difficult tasks to include in astrophysical simulations, because of the typically high (>40) number of reactions, the short evolutionary timescales (about times less than the ISM dynamical time) and the characteristic non-linearity and stiffness of the associated Ordinary Differential Equations system (ODEs). In this proof of concept work, we show that Physics Informed Neural Networks (PINN) are a viable alternative to traditional ODE time integrators for stiff thermo-chemical systems, i.e. up to molecular hydrogen formation (9 species and 46 reactions). Testing different chemical networks in a wide range of densities () and temperatures ($1 < \log T/{\rm…
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