Deep reinforcement learning for large-eddy simulation modeling in wall-bounded turbulence
Junhyuk Kim, Hyojin Kim, Jiyeon Kim, Changhoon Lee

TL;DR
This paper introduces a physics-constrained deep reinforcement learning framework to develop subgrid-scale models for large-eddy simulation of wall-bounded turbulence, achieving accurate turbulence statistics without high-fidelity data.
Contribution
It presents a novel DRL-based SGS modeling approach that automatically satisfies physical constraints and efficiently learns from limited target statistics in LES environments.
Findings
DRL models accurately reproduce turbulence statistics
Models satisfy physical invariances without extra training
Efficient learning with reward accumulation and pre-training
Abstract
The development of a reliable subgrid-scale (SGS) model for large-eddy simulation (LES) is of great importance for many scientific and engineering applications. Recently, deep learning approaches have been tested for this purpose using high-fidelity data such as direct numerical simulation (DNS) in a supervised learning process. However, such data are generally not available in practice. Deep reinforcement learning (DRL) using only limited target statistics can be an alternative algorithm in which the training and testing of the model are conducted in the same LES environment. The DRL of turbulence modeling remains challenging owing to its chaotic nature, high dimensionality of the action space, and large computational cost. In the present study, we propose a physics-constrained DRL framework that can develop a deep neural network (DNN)-based SGS model for the LES of turbulent channel…
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