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Coevolutionary genetic fuzzy systems: a hierarchical collaborative approach

机译:协同进化遗传模糊系统:一种分层协作方法

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摘要

In this paper a coevolutionary genetic approach is devised to support hierarchical, collaborative relations between individuals representing different parameters of Takagi-Sugeno fuzzy models. The coevolutionary approach assumes species to mean partial solutions of fuzzy modeling problems organized into four hierarchical levels. Individuals at each hierarchical level encode membership functions, individual rules, rule-bases and fuzzy systems, respectively. A shared fitness evaluation scheme is used to measure the performance of each individual. Constraints are observed and particular targets are defined throughout the hierarchical levels, with the purpose of promoting the occurrence of valid individuals and inducing rule compactness, rule base consistency, and partition set visibility. The performance of the approach is evaluated via an example of function approximation with noisy data, and a nonlinearly separable classification problem.
机译:在本文中,设计了一种协同进化遗传方法来支持代表Takagi-Sugeno模糊模型的不同参数的个人之间的分层协作关系。协同进化方法假设物种意味着将模糊建模问题的部分解决方案分为四个层次。每个层次级别的个人分别编码隶属函数,个人规则,规则库和模糊系统。共享的适合度评估方案用于衡量每个人的表现。观察约束并在整个层次结构级别中定义特定的目标,目的是促进有效个人的出现并引发规则的紧凑性,规则库的一致性和分区集的可见性。该方法的性能通过带有噪声数据的函数逼近示例以及非线性可分离的分类问题进行评估。

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