Deep Reinforcement Learning for Turbulence Modeling in Large Eddy Simulations
Marius Kurz, Philipp Offenh\"auser, Andrea Beck

TL;DR
This paper introduces a reinforcement learning approach to turbulence modeling in large eddy simulations, enabling dynamic, stable, and accurate eddy-viscosity adjustments that outperform traditional models and adapt across different resolutions.
Contribution
It presents the first RL-based framework for turbulence modeling in implicitly filtered LES, addressing limitations of supervised learning methods.
Findings
RL models achieve long-term stable LES simulations.
RL models outperform traditional analytical turbulence models.
Models generalize well across different resolutions and discretizations.
Abstract
Over the last years, supervised learning (SL) has established itself as the state-of-the-art for data-driven turbulence modeling. In the SL paradigm, models are trained based on a dataset, which is typically computed a priori from a high-fidelity solution by applying the respective filter function, which separates the resolved and the unresolved flow scales. For implicitly filtered large eddy simulation (LES), this approach is infeasible, since here, the employed discretization itself acts as an implicit filter function. As a consequence, the exact filter form is generally not known and thus, the corresponding closure terms cannot be computed even if the full solution is available. The reinforcement learning (RL) paradigm can be used to avoid this inconsistency by training not on a previously obtained training dataset, but instead by interacting directly with the dynamical LES…
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Taxonomy
TopicsModel Reduction and Neural Networks · Fluid Dynamics and Turbulent Flows · Fluid Dynamics and Vibration Analysis
