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Physics of Fluids • Vol 36 • No 1
Adaptive control of transonic buffet and buffeting flow with deep reinforcement learning
January 2024 • Kai Ren, Chuanqiang Gao, Neng Xiong, Weiwei Zhang
The optimal control of flow and fluid–structure interaction (FSI) systems often requires an accurate model of the controlled system. However, for strongly nonlinear systems, acquiring an accurate dynamic model is a significant challenge. In this study, we employ the deep reinforcement learning (DRL) method, which does not rely on an accurate model of the controlled system, to address the control of transonic buffet (unstable flow) and transonic buffeting (structural vibration). DRL uses a deep neural network to de…
Transonic
Aeroelasticity
Aerodynamics
Physics
Aerospace Engineering
Engineering
Computer Science
Turbulence
Artificial Intelligence
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