Neural networks: solving the chemistry of the interstellar medium

11/28/2022
by   Lorenzo Branca, et al.
0

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 10^4 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 (-2< log n/ cm^-3< 3) and temperatures (1 < log T/ K< 5), we find that a basic architecture can give a comfortable convergence only for simplified chemical systems: to properly capture the sudden chemical and thermal variations a Deep Galerkin Method is needed. Once trained (∼ 10^3 GPUhr), the PINN well reproduces the strong non-linear nature of the solutions (errors ≲ 10%) and can give speed-ups up to a factor of ∼ 200 with respect to traditional ODE solvers. Further, the latter have completion times that vary by about ∼ 30% for different initial n and T, while the PINN method gives negligible variations. Both the speed-up and the potential improvement in load balancing imply that PINN-powered simulations are a very palatable way to solve complex chemical calculation in astrophysical and cosmological problems.

READ FULL TEXT

page 13

page 14

research
12/03/2020

ChemNODE: A Neural Ordinary Differential Equations Approach for Chemical Kinetics Solvers

The main bottleneck when performing computational fluid dynamics (CFD) s...
research
11/09/2020

Stiff-PINN: Physics-Informed Neural Network for Stiff Chemical Kinetics

Recently developed physics-informed neural network (PINN) has achieved s...
research
11/24/2022

Design of Turing Systems with Physics-Informed Neural Networks

Reaction-diffusion (Turing) systems are fundamental to the formation of ...
research
07/01/2021

Efficient Analysis of Chemical Reaction Networks Dynamics based on Input-Output Monotonicity

Motivation: A Chemical Reaction Network (CRN) is a set of chemical react...
research
06/17/2021

Calculation of chemical reactions in electrophoresis

The main goal of the work is to find stationary solutions of the equatio...
research
05/28/2020

An Analytical Model for Molecular Communication over a Non-linear Reaction-Diffusion Medium

One of the main challenges in diffusion-based molecular communication is...
research
05/25/2020

3D CA model of tumor-induced angiogenesis

Tumor-induced angiogenesis is the formation of new sprouts from preexist...

Please sign up or login with your details

Forgot password? Click here to reset