Comparative analysis of machine learning methods for active flow control
February 23, 2022 Β· Declared Dead Β· π Journal of Fluid Mechanics
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Authors
Fabio Pino, Lorenzo Schena, Jean Rabault, Miguel A. Mendez
arXiv ID
2202.11664
Category
physics.flu-dyn
Cross-listed
cs.LG,
cs.NE
Citations
53
Venue
Journal of Fluid Mechanics
Last Checked
3 months ago
Abstract
Machine learning frameworks such as Genetic Programming (GP) and Reinforcement Learning (RL) are gaining popularity in flow control. This work presents a comparative analysis of the two, bench-marking some of their most representative algorithms against global optimization techniques such as Bayesian Optimization (BO) and Lipschitz global optimization (LIPO). First, we review the general framework of the model-free control problem, bringing together all methods as black-box optimization problems. Then, we test the control algorithms on three test cases. These are (1) the stabilization of a nonlinear dynamical system featuring frequency cross-talk, (2) the wave cancellation from a Burgers' flow and (3) the drag reduction in a cylinder wake flow. We present a comprehensive comparison to illustrate their differences in exploration versus exploitation and their balance between `model capacity' in the control law definition versus `required complexity'. We believe that such a comparison paves the way toward the hybridization of the various methods, and we offer some perspective on their future development in the literature on flow control problems.
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