Learning physics-constrained subgrid-scale closures in the small-data regime for stable and accurate LES
Published in Physica D, 2022
Recommended citation: Yifei Guan, Adam Subel, Ashesh Chattopadhyay, and Pedram Hassanzadeh. "Learning physics-constrained subgrid-scale closures in the small-data regime for stable and accurate LES." 2022 Physica D: Nonlinear Phenomena, p.133568. https://doi.org/10.1016/j.physd.2022.133568
Abstract:
We demonstrate how incorporating physics constraints into convolutional neural networks (CNNs) enables learning subgrid-scale (SGS) closures for stable and accurate large-eddy simulations (LES) in the small-data regime (i.e., when the availability of high-quality training data is limited). Using several setups of forced 2D turbulence as the testbeds, we examine the {\it a priori} and {\it a posteriori} performance of three methods for incorporating physics: 1) data augmentation (DA), 2) CNN with group convolutions (GCNN), and 3) loss functions that enforce a global enstrophy-transfer conservation (EnsCon). While the data-driven closures from physics-agnostic CNNs trained in the big-data regime are accurate and stable, and outperform dynamic Smagorinsky (DSMAG) closures, their performance substantially deteriorate when these CNNs are trained with 40x fewer samples (the small-data regime). We show that CNN with DA and GCNN address this issue and each produce accurate and stable data-driven closures in the small-data regime. Despite its simplicity, DA, which adds appropriately rotated samples to the training set, performs as well or in some cases even better than GCNN, which uses a sophisticated equivariance-preserving architecture. EnsCon, which combines structural modeling with aspect of functional modeling, also produces accurate and stable closures in the small-data regime. Overall, GCNN+EnCon, which combines these two physics constraints, shows the best {\it a posteriori} performance in this regime. These results illustrate the power of physics-constrained learning in the small-data regime for accurate and stable LES.
Recommended citation: Yifei Guan, Adam Subel, Ashesh Chattopadhyay, and Pedram Hassanzadeh. “Learning physics-constrained subgrid-scale closures in the small-data regime for stable and accurate LES.” 2022 Physica D: Nonlinear Phenomena, p.133568.