孤岛模型遗传算法定位策略的性能分析

A. A. Gozali, S. Fujimura
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引用次数: 0

摘要

遗传算法(GA)是解决许多优化问题的标准方法之一。用于解决案例的遗传算法类型之一是孤岛模型遗传算法(IMGA)。本土化策略是IMGA为了更好地保持自身的多样性而采取的一项全新举措。在以往的研究中,本地化策略几乎可以完美地解决3SAT问题。在本研究中,所提出的特征旨在解决实参数单目标计算昂贵的优化问题。不同于以往研究中存在有先验知识和二进制的问题,该优化不存在任何先验知识和浮点型问题,计算量大。因此,本地化策略及其GA核心必须适应。本研究的主要目的是进一步分析本地化策略对IMGA性能的影响。实验表明,新特征被成功地修改以满足新的要求。IMGA的定位策略可以一致地解决所有计算量大的函数。此外,这一新的特征可以使IMGA在现有的其他求解器中达到0.47的领先率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance analysis of localization strategy for island model genetic algorithm
Genetic algorithm (GA) is one of the standard solutions to solve many optimization problems. One of a GA type used for solving a case is island model GA (IMGA). Localization strategy is a brand-new feature for IMGA to better preserves its diversity. In the previous research, localization strategy could carry out 3SAT problem almost perfectly. In this study, the proposed feature is aimed to solve real parameter single objective computationally expensive optimization problems. Differ with an issue in previous research which has a prior knowledge and binary, the computationally expensive optimization has not any prior knowledge and floating type problem. Therefore, the localization strategy and its GA cores must adapt. The primary goal of this research is to analyze further the localization strategy for IMGA's performance. The experiments show that the new feature is successfully modified to meet the new requirement. Localization strategy for IMGA can solve all computationally expensive functions consistently. Moreover, this new feature could make IMGA reaches leading ratio 0.47 among other current solvers.
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