An implementation of an evolving fuzzy controller

S. Blažič, Andrej Zdešar
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引用次数: 1

Abstract

A fuzzy model reference adaptive control approach is proposed in the paper where the antecedent part of fuzzy rules evolves with the measured data. The consequent part consists of a controller with integral nature and the adaptation scheme is a direct one. The proposed algorithm is capable of controlling a plant with poorly known and/or time-varying nonlinearity which is an advantage over approaches with fixed antecedent part. It is intended for control of a large class of nonlinear plant models with the dominant dynamics of the first order. Such plants occur quite often in process industries. It is shown in the paper that the approach is also suitable for controlling an under-damped mechanical system.
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一种进化模糊控制器的实现
提出了一种模糊模型参考自适应控制方法,其中模糊规则的前项部分随测量数据的变化而变化。后续部分由一个整体控制器组成,自适应方案为直接自适应方案。所提出的算法能够控制具有未知和/或时变非线性的对象,这比具有固定前提部分的方法具有优势。它旨在控制一类具有一阶主导动力学的非线性植物模型。这种工厂经常出现在加工工业中。结果表明,该方法同样适用于欠阻尼机械系统的控制。
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