遗传算法中突变对无线网状网络中网状路由器放置问题的影响研究

Admir Barolli, F. Xhafa, C. Sánchez, M. Takizawa
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引用次数: 9

摘要

随着无线网络范式的出现,无线网络中出现了一些优化问题。这些问题涉及到网络连通性、覆盖和稳定性的优化。这些问题的解决对于优化网络性能至关重要。在无线网状网络的情况下,这些问题包括计算网状路由器节点的位置,以便优化网络性能。然而,由于这些优化问题在计算上难以解决,遗传算法(GAs)最近被研究作为有效的解决方法。变异算子是遗传算法的一种成分。与实现遗传信息从亲本传递到子代的交叉算子不同,突变算子通常对个体进行一些小的局部扰动,因此对个体的影响较小。此外,交叉算子是遗传算法中的€œa必须的算子,通常应用概率大,而突变算子在实现时应用概率小。因此,突变算子通常被认为是次要算子。然而,许多文献研究表明,当突变与选择算子有效结合时,可以提高遗传算法的性能。在这项工作中,我们提出了一项实验研究的结果,变异和选择算子在遗传算法对网状路由器节点放置问题的影响。该研究旨在确定对不同特征的实例最有效的突变和选择类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Study on the Effect of Mutation in Genetic Algorithms for Mesh Router Placement Problem in Wireless Mesh Networks
With the emergence of wireless networking paradigm, several optimization problems are appearing in such networks. Such problem are related to optimizing network connectivity, coverage and stability. The resolution of these problems turns out to be crucial for optimized network performance. In the case of Wireless Mesh Networks, such problems include computing placement of mesh router nodes so that network performance is optimized. However, as these optimization problems are known to be computationally hard to solve, Genetic Algorithms (GAs) have been recently investigated as effective resolution methods. Mutation operator is one of the GA ingredients. Unlike crossover operators, which achieve to transmit genetic information from parents to off springs, mutation operators usually make some small local perturbation of the individuals, having thus less impact on individuals. Moreover, crossover is “a must” operator in GA and is usually applied with high probability, while mutation operators when implemented, are applied with small probability. Due to this, mutation operator is usually considered as a secondary operator. However, many studies in the literature have shown that mutation when effectively combined with selection operators can improve the performance of GAs. In this work we present the results of an experimental study on the effect of mutation and selection operators in GA for mesh router nodes placement problem. The study aims to identify the mutation and selection types that work best for instances of different characteristics.
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