Physics Informed Machine Learning for Chemistry Tabulation
- URL: http://arxiv.org/abs/2211.03022v1
- Date: Sun, 6 Nov 2022 04:24:38 GMT
- Title: Physics Informed Machine Learning for Chemistry Tabulation
- Authors: Amol Salunkhe, Dwyer Deighan, Paul Desjardin, Varun Chandola
- Abstract summary: We build on the base formulation and implementation ChemTab to include the dynamically generated Themochemical State Variables.
We discuss the challenges in the implementation of this deep neural network architecture and experimentally demonstrate it's superior performance.
- Score: 5.368509527675853
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Modeling of turbulent combustion system requires modeling the underlying
chemistry and the turbulent flow. Solving both systems simultaneously is
computationally prohibitive. Instead, given the difference in scales at which
the two sub-systems evolve, the two sub-systems are typically (re)solved
separately. Popular approaches such as the Flamelet Generated Manifolds (FGM)
use a two-step strategy where the governing reaction kinetics are pre-computed
and mapped to a low-dimensional manifold, characterized by a few reaction
progress variables (model reduction) and the manifold is then ``looked-up''
during the runtime to estimate the high-dimensional system state by the flow
system. While existing works have focused on these two steps independently, in
this work we show that joint learning of the progress variables and the
look--up model, can yield more accurate results. We build on the base
formulation and implementation ChemTab to include the dynamically generated
Themochemical State Variables (Lower Dimensional Dynamic Source Terms). We
discuss the challenges in the implementation of this deep neural network
architecture and experimentally demonstrate it's superior performance.
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