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Deep reinforcement transfer learning of active control for bluff body flows at high Reynolds number

Zhicheng Wang, Dixia Fan, Xiaomo Jiang, Michael S. Triantafyllou, George Em Karniadakis

2023Journal of Fluid Mechanics39 citationsDOI

Abstract

We demonstrate how to accelerate the computationally taxing process of deep reinforcement learning (DRL) in numerical simulations for active control of bluff body flows at high Reynolds number ( $Re$ ) using transfer learning. We consider the canonical flow past a circular cylinder whose wake is controlled by two small rotating cylinders. We first pre-train the DRL agent using data from inexpensive simulations at low $Re$ , and subsequently we train the agent with small data from the simulation at high $Re$ (up to $Re=1.4\times 10^5$ ). We apply transfer learning (TL) to three different tasks, the results of which show that TL can greatly reduce the training episodes, while the control method selected by TL is more stable compared with training DRL from scratch. We analyse for the first time the wake flow at $Re=1.4\times 10^5$ in detail and discover that the hydrodynamic forces on the two rotating control cylinders are not symmetric.

Topics & Concepts

BluffReynolds numberWakeCylinderMechanicsComputer scienceFlow (mathematics)PhysicsTurbulenceGeometryMathematicsModel Reduction and Neural NetworksFluid Dynamics and Vibration AnalysisLattice Boltzmann Simulation Studies
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