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Reinforcement Learning for Active Noise Control in a Hydraulic System

机译:液压系统中主动噪声控制的加固学习

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摘要

Hydraulic pressure ripple in a pump, as a result of converting rotational power to fluid power, continues to be a problem faced when developing hydraulic systems due to the resulting noise generated. In this paper, we present simulation results from leveraging an actor-critic reinforcement learning method as the control method for active noise control in a hydraulic system. The results demonstrate greater than 96%, 81%, and 61% pressure ripple reduction for the first, second, and third harmonics, respectively, in a single operating point test, along with the advantage of feed forward like control for high bandwidth response during dynamic changes in the operating point. It also demonstrates the disadvantage of long convergence times while the controller is effectively learning the optimal control policy. Additionally, this work demonstrates the ancillary benefit of the elimination of the injection of white noise for the purpose of system identification in the current state of the art.
机译:由于将旋转功率转换为流体动力,泵中的液压波动仍然是开发液压系统时面临的一个问题,因为由此产生的噪声。在本文中,我们给出了一个仿真结果,该仿真结果是利用一种演员-评论家强化学习方法作为液压系统主动噪声控制的控制方法。结果表明,在单工作点测试中,一次谐波、二次谐波和三次谐波的压力纹波降低分别大于96%、81%和61%,并且在工作点动态变化期间,前馈控制具有高带宽响应的优势。这也说明了当控制器有效地学习最优控制策略时,收敛时间长的缺点。此外,本工作还展示了在当前技术水平下,为了系统识别的目的,消除白噪声注入的辅助益处。

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