Friendship modeling for cooperative co-evolutionary fuzzy systems: a hybrid GA-GP algorithm

M. Akbarzadeh-T., I. Mosavat, S. Abbasi
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引用次数: 16

Abstract

A novel approach is proposed to combine the strengths of GA and GP to optimize rule sets and membership functions of fuzzy systems in a co-evolutionary strategy in order to avoid the problem of dual representation in fuzzy systems. The novelty of proposed algorithm is twofold. One is that GP is used for the structural part (Rule sets) and GA for the string part (Membership functions). The goal is to reduce/eliminate the problem of competing conventions by co-evolving pieces of the problem separately and then in combination. Second is exploiting the synergism between rules sets and membership functions by imitating the effect of "matching" and friendship in cooperating teams of humans, thereby significantly reducing the number of function evaluations necessary for evolution. The method is applied to a chaotic time series prediction problem and compared with the standard fuzzy table look-up scheme. demonstrate several significant improvements with the proposed approach; specifically, four times higher fitness and more steady fitness improvements as compared with epochal improvements observed in GP.
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合作协同进化模糊系统的友谊建模:一种混合GA-GP算法
为了避免模糊系统中的对偶表示问题,提出了一种结合遗传算法和遗传算法的优势,以协同进化策略优化模糊系统的规则集和隶属函数的新方法。该算法的新颖性体现在两个方面。一种是GP用于结构部分(规则集),GA用于字符串部分(隶属函数)。我们的目标是通过分别共同发展问题的各个部分,然后结合起来,减少/消除相互竞争的约定问题。二是通过模仿人类合作团队中的“匹配”和友谊效应,利用规则集和隶属函数之间的协同作用,从而显著减少进化所需的功能评估次数。将该方法应用于一个混沌时间序列预测问题,并与标准模糊查表方案进行了比较。展示拟议方法的几项重大改进;具体来说,与GP中观察到的划时代的改善相比,他们的健康水平提高了四倍,健康状况得到了更稳定的改善。
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