arXiv Open Access 2020

Physical invariance in neural networks for subgrid-scale scalar flux modeling

Hugo Frezat Guillaume Balarac Julien Le Sommer Ronan Fablet Redouane Lguensat
Lihat Sumber

Abstrak

In this paper we present a new strategy to model the subgrid-scale scalar flux in a three-dimensional turbulent incompressible flow using physics-informed neural networks (NNs). When trained from direct numerical simulation (DNS) data, state-of-the-art neural networks, such as convolutional neural networks, may not preserve well known physical priors, which may in turn question their application to real case-studies. To address this issue, we investigate hard and soft constraints into the model based on classical transformation invariances and symmetries derived from physical laws. From simulation-based experiments, we show that the proposed transformation-invariant NN model outperforms both purely data-driven ones as well as parametric state-of-the-art subgrid-scale models. The considered invariances are regarded as regularizers on physical metrics during the a priori evaluation and constrain the distribution tails of the predicted subgrid-scale term to be closer to the DNS. They also increase the stability and performance of the model when used as a surrogate during a large-eddy simulation. Moreover, the transformation-invariant NN is shown to generalize to regimes that have not been seen during the training phase.

Topik & Kata Kunci

Penulis (5)

H

Hugo Frezat

G

Guillaume Balarac

J

Julien Le Sommer

R

Ronan Fablet

R

Redouane Lguensat

Format Sitasi

Frezat, H., Balarac, G., Sommer, J.L., Fablet, R., Lguensat, R. (2020). Physical invariance in neural networks for subgrid-scale scalar flux modeling. https://arxiv.org/abs/2010.04663

Akses Cepat

Lihat di Sumber
Informasi Jurnal
Tahun Terbit
2020
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓