Effects of Parameters of an Island Model Parallel Genetic Algorithm for the Quadratic Assignment Problem

Alper Kizil, Korhan Karabulut
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Abstract

Quadratic Assignment Problem (QAP) is one of the most difficult combinatorial problems in the literature and has a diverse field of applications. This paper presents the results of experiments on the impact of parallelization of a sequential GA using island model. Both of the genetic algorithms are applied to the QAP. For the island model parallel GA, we systematically change the number of islands and investigate the effects of dividing the same global population into a number of subpopulations. The number of islands is gradually increased to observe the effects on solution quality and speedup in total execution time using different problem instances. The results clearly indicate that, while parallelized version outperforms sequential counterpart in both solution quality and total execution time, an increasing number of subpopulations also positively effects the results until a critical point where every subpopulation has a certain number of individuals to be able to evolve independently. Beyond that point, the performance of the algorithm begins to decrease.
岛型并行遗传算法参数对二次分配问题的影响
二次分配问题(QAP)是文献中最难的组合问题之一,有着广泛的应用领域。本文给出了用孤岛模型对序列遗传算法进行并行化影响的实验结果。这两种遗传算法都应用于QAP。对于岛屿模型并行遗传算法,我们系统地改变了岛屿的数量,并研究了将相同的全球种群划分为多个亚种群的效果。逐渐增加孤岛的数量,以观察使用不同问题实例对解决方案质量和总执行时间加速的影响。结果清楚地表明,虽然并行版本在解决方案质量和总执行时间上优于顺序版本,但增加子种群数量也会对结果产生积极影响,直到每个子种群具有一定数量的个体能够独立进化的临界点。超过这个点,算法的性能就开始下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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