Reinforcement-Learning-Driven Active Flow Control for Airfoil Pitching Moment Trim
ORAL
Abstract
Deep Reinforcement Learning (DRL) is performed to discover closed-loop fluidic Active Flow Control (AFC) strategies for achieving zero pitching moment, i.e. the aerodynamic trim condition, about a moment reference point of a NACA0012 airfoil. The DRL agent controls the velocity of the AFC fluidic jets, while observing a sufficiently-Markov state in the form of velocity measurements probed from several locations around the airfoil in two-dimensional compressible Navier-Stokes simulations. The reward function is a function of the pitching moment and drives the learning agent towards discovering optimal control strategies to obtain a net-zero pitching moment. This study is a step towards control of aerodynamic moments that can yield novel approaches for replacing or enhancing the mechanical aerodynamic control surfaces on aircraft wings and wind turbine blades.
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Presenters
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Prasanna Thoguluva Rajendran
University of Arizona
Authors
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Prasanna Thoguluva Rajendran
University of Arizona
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Laurent Pagnier
University of Arizona
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Farzad Mashayek
University of Arizona