Wall Modeling in LES of Turbulent Flows Using Reinforcement Learning
ORAL
Abstract
Actual WMs indeed fail to reproduce strong non-equilibrium effects especially when they are spatially diffused.
As a result, the potential of machine learning (ML)-based WMs becomes a promising solution.
Two essential requirements for the development of ML-based WM are the generalization to larger Reynolds numbers and the validation of fundamental physical laws.
The use of RL for WM development removes the high-fidelity data cost issues that exist for other supervised learning methods.
Furthermore, it can provide a high level of interpretability of the model behavior.
A novel RL WM, utilizing agents dispersed near the flow wall, is proposed in this study.
Initially, the model will be compared with existing ML-based WMs using equilibrium half-channel flow up to large Reynolds numbers.
The agents' states-action map will provide valuable insights into the model's behavior, thereby enhancing the interpretability of the model.
Following this, the model's performance will be evaluated against non-equilibrium half-channel flows, under medium to high pressure gradients in both the spanwise and streamwise directions.
This research is supported by the Independent Research Fund Denmark (DFF) under the Grant No. 1051-00015B.
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Publication: Bae, H. J., & Koumoutsakos, P. (2022). Scientific multi-agent reinforcement learning for wall-models of turbulent flows. Nature Communications, 13(1), 1443.<br>Vadrot, A., Yang, X. I., & Abkar, M. (2023). Survey of machine-learning wall models for large-eddy simulation. Physical Review Fluids, 8(6), 064603.<br>Vadrot, A., Yang, X. I., Bae, H. J., & Abkar, M. (2023). Log-law recovery through reinforcement-learning wall model for large eddy simulation. Physics of Fluids, 35(5).
Presenters
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Aurélien Vadrot
Aarhus University
Authors
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Aurélien Vadrot
Aarhus University
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Xiang Yang
Pennsylvania State University, The Penn State Department of Mechanical Engineering, Penn State Department of Mechanical Engineering
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Jane Bae
Caltech, California Institute of Technology, Graduate Aerospace Laboratories, California Institute of Technology
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Mahdi Abkar
Aarhus University