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Preliminary Experimental Study on Closed-loop Flow Separation Control Utilizing Deep Q-Network over Fixed Angle-of-Attack Airfoil

机译:闭环流分离控制利用固定角度攻击翼型的闭环流分离控制的初步试验研究

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This paper experimentally investigates a closed-loop flow separation control system on a NACA 0015 airfoil using a DBD plasma actuator at the chord-Reynolds number of 63,000. The closed-loop control system is constructed utilizing the Deep Q-Network. The plasma actuator is installed to the surface of the airfoil at 5% of the chord length from the leading edge and driven with AC voltage. The time series data of surface pressure was used as the input data to the neural network, and the neural network is trained through the reinforce learning strategy (Q-learning) to select the optimum burst frequency of the actuator at angles of attacks of 12, 14, 14.5 degs. As a result, the trained neural network successfully selected the optimum burst frequency at 12 and 14 degs and controlled better than burst actuation with fixed F~+ at angle of attack of 14.5deg.
机译:本文通过在弦雷诺数为63,000的弦雷诺数,通过DBD等离子致动器实验在NACA 0015翼型上研究了闭环流分离控制系统。闭环控制系统利用深Q网络构造。等离子体致动器以沿线边缘的弦长的5%安装在翼型的表面上,并用AC电压驱动。表面压力的时间序列数据用作神经网络的输入数据,并且通过增强学习策略(Q-Learning)培训神经网络,以在12的攻击角度选择致动器的最佳爆破频率, 14,14.5°。结果,训练有素的神经网络在12和14℃下成功选择了最佳的爆破频率,并在14.5deg的攻角处具有固定的f〜+的突发致动。

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