多地理隔离种群和不同适应度景观的特征扩增遗传算法

Srinivasa K.G., S. P., A. Bhat, Venugopal K.R., L. Patnaik
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引用次数: 21

摘要

本文提出了一种新的方法,其中多个种群在不同的景观上进化。问题的表述被分解,以描述离散的特性。每一种景观都被其适应度景观所描述,用于优化或放大某一特征或一组特征。这些种群的个体在地理上彼此隔离。每个种群都是单独进化的。在预定的进化次数之后,根据归一化适应度函数对种群系统进行分析。根据这个分数和一个预定义的合并方案,种群被合并,一次一个,同时继续进化。继续合并,直到只剩下最后一个种群。然后进化这个种群,随后的结果种群将包含最优解。最终得到的种群将包含针对问题陈述所要求的所有特征进行优化的个体。每个个体种群都针对局部最大值进行优化。因此,当种群合并时,其效果是产生一个更接近全局最大值的新种群。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic Algorithm with Characteristic Amplification through Multiple Geographically Isolated Populations and Varied Fitness Landscapes
This paper proposes a new approach, wherein multiple populations are evolved on different landscapes. The prob- lem statement is broken down, to describe discrete charac- teristics. Each landscape, described by its fitness landscape is used to optimize or amplify a certain characteristic or set of characteristics. Individuals from each of these pop- ulations are kept geographically isolated from each other. Each population is evolved individually. After a predeter- mined number of evolutions, the system of populations is analysed against a normalized fitness function. Depending on this score and a predefined merging scheme, the popula- tions are merged, one at a time, while continuing evolution. Merging continues until only one final population remains. This population is then evolved, following which the result- ing population will contain the optimal solution. The fi- nal resulting population will contain individuals which have been optimized against all characteristics as desired by the problem statement. Each individual population is optimized for a local maxima. Thus when populations are merged, the effect is to produce a new population which is closer to the global maxima.
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