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Enhancing airfoil performance through reinforcement learning-based closed loop flow control

ORAL

Abstract

We perform a reinforcement learning (RL)-based closed-loop flow control to enhance the lift-to-drag ratio of a wing section with an NLF(1)-0115 airfoil at angles of attack of 5 degrees and 10 degrees.The effects of key control parameters, including actuation location, observed state, reward function, and control actuation update interval, are evaluated at a chord length-based Reynolds number of Re=20,000. Results show that all parameters significantly influence control performance, with the update interval playing a particularly critical role. Properly chosen update intervals introduce a broader spectrum of actuation frequencies, enabling more effective interactions with a wider range of flow structures and contributing to improved control effectiveness. The optimally trained RL controller is further evaluated in a three-dimensional numerical setup at the same Reynolds number. Actuation is applied using both spanwise-uniform and spanwise-varying control profiles. The results demonstrate that the pretrained controller, combined with a physics-informed spanwise distribution, achieves substantial performance gains. The results show that using a pretrained RL-based control strategy is adaptable to larger or more complicated flows. Specifically, it can be applied to more complex airfoil flow scenarios than the one it was originally trained on.

Presenters

  • Qiong Liu

    New Mexico State University

Authors

  • Qiong Liu

    New Mexico State University

  • Luis Javier Trujillo Corona

    New Mexico State University

  • Fangjun Shu

    New Mexico State University

  • Andreas Gross

    New Mexico State University