求解最短路径问题的遗传算法

Mitsuo Gen, R. Cheng, Dingwei Wang
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引用次数: 177

摘要

在这项研究中,我们探讨了使用遗传算法来解决最短路径问题的可能性。对于这个问题,开发遗传算法最棘手和关键的任务是如何将图中的路径编码到染色体中。提出了一种基于优先级的编码方法,可以潜在地表示图中所有可能的路径。由于识别最短路径可以精确或近似地解决各种网络优化问题,因此本研究将为构建基于最短路径的网络优化问题的有效求解程序提供基础。在6 ~ 70个节点、10 ~ 211条边的3个随机生成的问题上进行了测试。实验结果令人鼓舞:它能以很高的概率快速找到已知的最优解。可以相信,遗传算法有望成为解决这类难题的一种新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic algorithms for solving shortest path problems
In this study, we investigated the possibility of using genetic algorithms to solve shortest path problems. The most thorny and critical task for developing a genetic algorithm to this problem is how to encode a path in a graph into a chromosome. A priority-based encoding method is proposed which can potentially represent all possible paths in a graph. Because a variety of network optimization problems may be solved, either exactly or approximately, by identifying shortest path, this studies will provide a base for constructing efficient solution procedures for shortest path-based network optimization problems. The proposed approach has been tested on three randomly generated problems with different size from 6 nodes to 70 nodes and from 10 edges to 211 edges. The experiment results are very encouraging: it can find the known optimum very rapidly with very high probability. It can be believed that genetic algorithms may hopefully be a new approach for such kinds of difficult-to-solve problems.
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