Data-driven Taylor-Galerkin Finite-Element Scheme for Convection Problems

TitleData-driven Taylor-Galerkin Finite-Element Scheme for Convection Problems
Publication TypeConference Proceedings
Year of Conference2021
AuthorsDrozda L., Mohanamuraly P., Realpe Y., Lapeyre C., Adler A., Daviller G., Poinsot T.
Conference NameNeurIPS Workshops
EditionThe Symbiosis of Deep Learning and Differential Equations
Date Published2021
Abstract

High-fidelity large-eddy simulations (LES) of high Reynolds number flows are essential to design low-carbon footprint energy conversion devices. The two-level Taylor-Galerkin (TTGC) finite-element method (FEM) has remained the workhorse of modern industrial-scale combustion LES. In this work, we propose an improved FEM termed ML-TTGC that introduces locally tunable parameters in the TTGC scheme, whose values are provided by a graph neural network (GNN). We show that ML-TTGC outperforms TTGC in solving the convection problem in both irregular and regular meshes over a wide-range of initial conditions. We train the GNN using parameter values that (i) minimize a weighted loss function of the dispersion and dissipation error and (ii) enforce them to be numerically stable. As a result no additional ad-hoc dissipation is necessary for numerical stability or to damp spurious waves amortizing the additional cost of running the GNN.

URLhttps://openreview.net/forum?id=jm1rLJikNfH