基于神经网络的多变量模糊控制知识自动获取

J. Nie, D. Linkens
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引用次数: 0

摘要

本文介绍了一种简单系统的多变量模糊控制器自组织自学习控制知识的方案。该方法的出发点是将简化的模糊控制算法(SFCA)结构化地映射到反传播网络(CPN)中,使控制知识以网络连接权值的形式显式表示,控制规则库随着预先设定的性能要求的实现而逐步自构建。最后用软匹配合作策略代替赢者通吃的竞争策略进行近似推理。以血压和麻醉的多变量控制为例进行了研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Knowledege Acquisition for Multivariable Fuzzy Control Using Neural Network Approach
This paper introduce a simple and systematic scheme capable of self-organizing and self-learning the required control knowledge for use with multivariable fuzzy controllers. The starting point of the approach is to structurally map a simplified fuzzy control algorithm (SFCA) into a counterpropagation network (CPN) in such a way that the control knowledge is explicitly represented in the form of connection weights of the nets, the control rule-base is gradually self-constructed with the fulfillment of the prespecified performance requirements, and finally the approximate reasoning is carried out by replacing a winner-take-all competitive scheme with a soft matching cooperative strategy. Two problems of multivariable control of blood pressure and anaesthesia have been studied as demonstration examples.
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