Expert system with an adaptive fuzzy inference module

W. Kosinski, M. Weigl
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引用次数: 3

Abstract

An adaptive fuzzy expert system (AFES) is constructed as a hybrid in which an adaptive fuzzy inference module is combined with a neural network and equipped with a preprocessor of input data, user interface and a knowledge acquisition and modification unit. The adaptive fuzzy inference module (AFIM) is based on generalized Takagi-Sugeno fuzzy "If-Then" rules, forms of which have fuzzy sets involved only in premise parts, while consequent parts (i.e. the output of each rule) are functions of input variables. The final output of the module is the weighted sum of all the rule's output. The basic idea of AFIM is to realize a process of fuzzy reasoning and to express parameters of fuzzy reasoning by connection weights of a neural network and by forms of 4-parameter membership functions of fuzzy sets. The system is constructed for the needs of an opto-computer system for diagnosis of surface imperfections of technological elements. Similar systems can be useful in other situations, for example in the case of experimental results in which the data are imprecise and a unique functional relation between inputs and outputs is not reachable by means of classical methods.
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带有自适应模糊推理模块的专家系统
将自适应模糊推理模块与神经网络相结合,并配备输入数据预处理、用户界面和知识获取与修改单元,构建了自适应模糊专家系统(AFES)。自适应模糊推理模块(AFIM)基于广义的Takagi-Sugeno模糊“If-Then”规则,其形式的模糊集只涉及前提部分,而结果部分(即每个规则的输出)是输入变量的函数。模块的最终输出是所有规则输出的加权和。AFIM的基本思想是通过神经网络的连接权和模糊集的四参数隶属函数的形式来实现一个模糊推理过程,并表示模糊推理的参数。该系统是根据光学计算机系统对工艺元件表面缺陷诊断的需要而构建的。类似的系统在其他情况下也很有用,例如,在实验结果中,数据不精确,输入和输出之间的唯一函数关系无法通过经典方法获得。
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