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Online Tuning of a PID Controller with a Fuzzy Reinforcement Learning MAS for Flow Rate Control of a Desalination Unit

机译:用于脱盐装置流量控制的带有模糊强化学习MAS的PID控制器的在线调整

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This paper proposes a hybrid Zeigler-Nichols (Z-N) fuzzy reinforcement learning MAS (Multi-Agent System) approach for online tuning of a Proportional Integral Derivative (PID) controller in order to control the flow rate of a desalination unit. The PID gains are set by the Z-N method and then are adapted online through the fuzzy Q-learning MAS. The fuzzy Q-learning is introduced in each agent in order to confront with the continuous state-action space. The global state of the MAS is defined by the value of the error and the derivative of error. The MAS consists of three agents and the output signal of each agent defines the percentage change of each gain. The increment or the reduction of each gain can be in the range of 0% to 100% of its initial value. The simulation results highlight the performance of the suggested hybrid control strategy through comparison with the conventional PID controller tuned by Z-N.
机译:本文提出了一种混合式Zeigler-Nichols(Z-N)模糊强化学习MAS(Multi-Agent System)方法,用于对比例积分微分(PID)控制器进行在线调整,以控制海水淡化装置的流量。 PID增益通过Z-N方法设置,然后通过模糊Q学习MAS在线进行调整。在每个智能体中引入了模糊Q学习,以面对连续的状态作用空间。 MAS的全局状态由错误的值和错误的导数定义。 MAS由三个代理组成,每个代理的输出信号定义每个增益的百分比变化。每个增益的增加或减少可以在其初始值的0%到100%的范围内。仿真结果与通过Z-N调整的常规PID控制器相比,突出了所建议的混合控制策略的性能。

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