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Fine control of monotonic systems using a global self-learning adaptive fuzzy controller

机译:使用全局自学习自适应模糊控制器对单调系统进行精细控制

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The goal of this paper is to achieve real time control of a monotonic system which, in general, may be non-linear and whose differential equations are unknown. We assume that there is no model of the plant available so there cannot be any off-line pre-training of the main controller parameters. We propose a both adaptive and self-learning algorithm capable of starting from a "void" fuzzy controller and, in real time, optimizing the fuzzy controller's rules (both antecedents and consequents) in order to translate the state of the plant to the desired value in the shortest possible time.
机译:本文的目的是实现单调系统的实时控制,该系统通常可能是非线性的,其微分方程是未知的。我们假设没有可用的工厂模型,因此不能对主控制器参数进行任何离线预训练。我们提出了一种自适应和自学习算法,该算法能够从“无效”模糊控制器开始,并实时优化模糊控制器的规则(既有前因又有结果),以将植物的状态转化为所需的值在最短的时间内。

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