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Reinforcement Learning and Deep Neural Networks for PI Controller Tuning

机译:PI控制器调谐的加固学习和深神经网络

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Reinforcement Learning, using deep neural networks, has recently gained prominence owing to its ability to train autonomous agents that have defeated human players in various complex games. Here, Reinforcement Learning is applied to the challenge of automatically tuning a proportional-integral controller, given only the process variable, set-point, manipulated variable and prior controller gains. The training considers random changes in plant dynamics, disturbances and measurement noise. Two training procedures were tested in this work, one that built up the difficulty of the simulation over time, and another that used the full complexity of the simulation throughout the training. The results show that building up the difficulty of the simulation by introducing greater degrees of randomness as the training progresses, produces an agent that is better able to tune the controller in question. Additional experience gathered in completing this work is also discussed to enable the reader to avoid some of the challenges encountered.
机译:利用深神经网络的强化学习最近获得了突出的突出,这是培养在各种复杂游戏中击败人类参与者的自治代理商的能力。在这里,将加强学习应用于自动调谐比例积分控制器的挑战,只给出了过程变量,设定点,操纵变量和先前控制器增益。培训考虑了植物动力学,干扰和测量噪声的随机变化。在这项工作中测试了两项训练程序,其中一个内置了模拟难度随着时间的推移,另一个在整个训练中使用了模拟的全部复杂性。结果表明,通过引入培训进展的更大程度的随机性来构建模拟的难度,产生更好能够调整所讨论的控制器的代理。还讨论了聚集在完成这项工作的其他经验,以使读者能够避免一些遇到的挑战。

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