Volume 56, pp. 117-137, 2022.
A machine learning framework for LES closure terms
Marius Kurz and Andrea Beck
Abstract
In the present work, we explore the capability of artificial neural
networks (ANN) to predict the closure terms for large eddy simulations (LES)
solely from coarse-scale data. To this end, we derive a consistent framework
for LES closure models, with special emphasis laid upon the incorporation of
implicit discretization-based filters and numerical approximation errors. We
investigate implicit filter types that are inspired by the solution
representation of discontinuous Galerkin and finite volume schemes and mimic
the behavior of the discretization operator, and a global Fourier cutoff
filter as a representative of a typical explicit LES filter. Within the
perfect LES framework, we compute the exact closure terms for the different
LES filter functions from direct numerical simulation results of decaying
homogeneous isotropic turbulence. Multiple ANN with a multilayer
perceptron (MLP) or a gated recurrent unit (GRU) architecture are trained to
predict the computed closure terms solely from coarse-scale input data. For
the given application, the GRU architecture clearly outperforms the MLP
networks in terms of accuracy, whilst reaching up to
Full Text (PDF) [6.9 MB], BibTeX , DOI: 10.1553/etna_vol56s117
Key words
large eddy simulation, turbulence models, deep learning, artificial neural networks, recurrent neural networks
AMS subject classifications
76F65, 68T07, 76F05