A tuning method for fuzzy inference with fuzzy input and fuzzy output

T. Oyama, S. Tano, T. Arnould
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引用次数: 11

Abstract

Most studies on tuning of fuzzy inference are concerned with numerical inputs and outputs only, and very few research has been done on tuning of fuzzy inference with fuzzy inputs and outputs. Moreover, in many cases the object of tuning are fuzzy predicates only, apart from the other factors intervening in fuzzy inference. In this paper the authors propose a method to tune the fuzzy inference when inputs and outputs are given as fuzzy sets. This method is similar to backpropagation and tunes the parameters of aggregation operators, implication functions and combination functions as well as the fuzzy predicates which appear in the nodes of the network representing the calculation process of the fuzzy inference. Some results of tuning simulation are also shown.<>
一种具有模糊输入和模糊输出的模糊推理调谐方法
大多数模糊推理的整定研究只涉及数值输入和输出,对具有模糊输入和输出的模糊推理的整定研究很少。此外,在许多情况下,除了干预模糊推理的其他因素外,调优的对象仅是模糊谓词。本文提出了一种在输入和输出均为模糊集的情况下对模糊推理进行调整的方法。该方法与反向传播类似,对网络节点中出现的代表模糊推理计算过程的聚合算子、隐含函数和组合函数的参数以及模糊谓词进行调整。最后给出了调优仿真的一些结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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