Fuzzy system identification for composite operation and fuzzy relation by genetic algorithms

S. Ohtani, H. Kikuchi, R. Yager, S. Nakanishi
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引用次数: 2

Abstract

Genetic Algorithms (GA) are a useful and convenient tool to find the solution in combinatorial optimal problems, and widely used in the various engineering fields. Here we apply GA to identify both of the composite operations and fuzzy relations under that operation at the same time from the given input-output system data. There exist many composite operations and associated fuzzy relations, which satisfy the same input-output system data. Then, it is supposed that many composite operations and fuzzy relations, which satisfy the original data, are generated when we apply GA to this problems. Tne authors propose a method to identify the fuzzy system from these composite operations and fuzzy relations, generated by GA, by an unweighted pair-group method using arithmetic average (UPGMA) which was developed to make a taxonomic tree of the expression in molecular biology.
基于遗传算法的复合操作和模糊关系模糊系统辨识
遗传算法是求解组合优化问题的一种方便有效的工具,在各种工程领域得到了广泛的应用。本文应用遗传算法从给定的输入输出系统数据中同时识别复合操作和该操作下的模糊关系。存在许多复合运算和相关模糊关系,满足相同的输入输出系统数据。然后,假设将遗传算法应用于该问题时,产生了许多满足原始数据的复合运算和模糊关系。本文提出了一种从遗传算法生成的这些复合运算和模糊关系中识别模糊系统的方法,即基于算术平均的非加权对群法(UPGMA)。UPGMA是分子生物学中用于构建表达分类树的方法。
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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