遗传算法中分区搜索空间的搜索管理

Farhad Nadi, Ahamad Tajudin Khader
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引用次数: 2

摘要

遗传算法收敛到次优解会使搜索无法达到全局最优。搜索空间可能有多个次优解,但只有一个最优解。由于次优解在搜索空间内,划分搜索空间会将它们划分为不同的分区。因此,在每个分区中单独搜索将增加达到全局最优的概率。换句话说,最优解在其中一个除法中有界然后搜索这个除法就能找到最优解。虽然次优解可能和最优解在同一个除法中但在这种情况下找到最优解的机会比没有除法的情况要大。提出的方法将搜索空间划分为称为区域的分区。个人将被分配到每个区域。搜索继续进行,而每组人都专注于搜索一个区域。初步结果表明,与遗传算法相比,该算法在性能和效率上都有较大的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Managing search in a partitioned Search space in GA
Converging to suboptimal solutions in genetic algorithms prevents the search from reaching the global optima. Search space could have several suboptimal but one optimal solution. As the suboptimal solutions are within the search space, dividing the search space would bound them in different divisions. Thus, searching in each division separately would increase the probability of reaching the global optima. In other words, the optimal solution would be bounded in one of the divisions and then searching that division would result in finding the optimal solution. Although, the suboptimal solutions could be in the same division as optimal solution but the chance of finding the optimal solution in this case would be more compared to the cases that have no division. The proposed methodology divide the search space into partitions called regions. Individuals will be assigned to each region. The search continues while each set of individuals are focused in searching a region. Preliminary results shows a fair improvement in the performance and efficiency compared to genetic algorithm.
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