LAPSE:2023.27553
Published Article

LAPSE:2023.27553
Deep Reinforcement Learning Control of Cylinder Flow Using Rotary Oscillations at Low Reynolds Number
April 4, 2023
Abstract
We apply deep reinforcement learning to active closed-loop control of a two-dimensional flow over a cylinder oscillating around its axis with a time-dependent angular velocity representing the only control parameter. Experimenting with the angular velocity, the neural network is able to devise a control strategy based on low frequency harmonic oscillations with some additional modulations to stabilize the Kármán vortex street at a low Reynolds number Re=100. We examine the convergence issue for two reward functions showing that later epoch number does not always guarantee a better result. The performance of the controller provide the drag reduction of 14% or 16% depending on the employed reward function. The additional efforts are very low as the maximum amplitude of the angular velocity is equal to 8% of the incoming flow in the first case while the latter reward function returns an impressive 0.8% rotation amplitude which is comparable with the state-of-the-art adjoint optimization results. A detailed comparison with a flow controlled by harmonic oscillations with fixed amplitude and frequency is presented, highlighting the benefits of a feedback loop.
We apply deep reinforcement learning to active closed-loop control of a two-dimensional flow over a cylinder oscillating around its axis with a time-dependent angular velocity representing the only control parameter. Experimenting with the angular velocity, the neural network is able to devise a control strategy based on low frequency harmonic oscillations with some additional modulations to stabilize the Kármán vortex street at a low Reynolds number Re=100. We examine the convergence issue for two reward functions showing that later epoch number does not always guarantee a better result. The performance of the controller provide the drag reduction of 14% or 16% depending on the employed reward function. The additional efforts are very low as the maximum amplitude of the angular velocity is equal to 8% of the incoming flow in the first case while the latter reward function returns an impressive 0.8% rotation amplitude which is comparable with the state-of-the-art adjoint optimization results. A detailed comparison with a flow controlled by harmonic oscillations with fixed amplitude and frequency is presented, highlighting the benefits of a feedback loop.
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Keywords
ANN, DRL, flow control
Subject
Suggested Citation
Tokarev M, Palkin E, Mullyadzhanov R. Deep Reinforcement Learning Control of Cylinder Flow Using Rotary Oscillations at Low Reynolds Number. (2023). LAPSE:2023.27553
Author Affiliations
Tokarev M: Institute of Thermophysics SB RAS, Lavrentyev ave. 1, 630090 Novosibirsk, Russia; Physics and Mathematics Departments, Novosibirsk State University, Pirogov str. 1, 630090 Novosibirsk, Russia
Palkin E: Physics and Mathematics Departments, Novosibirsk State University, Pirogov str. 1, 630090 Novosibirsk, Russia
Mullyadzhanov R: Institute of Thermophysics SB RAS, Lavrentyev ave. 1, 630090 Novosibirsk, Russia; Physics and Mathematics Departments, Novosibirsk State University, Pirogov str. 1, 630090 Novosibirsk, Russia
Palkin E: Physics and Mathematics Departments, Novosibirsk State University, Pirogov str. 1, 630090 Novosibirsk, Russia
Mullyadzhanov R: Institute of Thermophysics SB RAS, Lavrentyev ave. 1, 630090 Novosibirsk, Russia; Physics and Mathematics Departments, Novosibirsk State University, Pirogov str. 1, 630090 Novosibirsk, Russia
Journal Name
Energies
Volume
13
Issue
22
Article Number
E5920
Year
2020
Publication Date
2020-11-13
ISSN
1996-1073
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Original Submission
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PII: en13225920, Publication Type: Journal Article
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LAPSE:2023.27553
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https://doi.org/10.3390/en13225920
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