混沌映射在旅行商问题自组织映射中的应用分析

Remo Ryter, Michael Stauffer, T. Hanne, Rolf Dornberger
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引用次数: 5

摘要

混沌映射是计算伪随机数的一种替代方法,近年来在研究随机搜索和优化算法的研究人员中引起了越来越大的兴趣。这种兴趣是基于与通常使用的标准伪随机数生成器相比,在结果质量和优化算法的运行时间方面有希望的结果。本文研究了九种不同混沌映射对自组织映射(SOM)求解旅行商问题(TSP)结果质量的影响。调查是基于问题实例的不同大小以及所有九个混沌映射与伪随机数生成进行比较的迭代次数。结果证明混沌映射在几种情况下明显更好。最后,对混沌映射相对于伪随机数生成优劣的可能原因进行了分析和讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of chaotic maps applied to self-organizing maps for the Traveling Salesman Problem
Chaotic maps are an alternative for calculating pseudorandom numbers which have created an increased interest among researchers dealing with stochastic search and optimization algorithms in the recent past. This interest is based on promising results with respect to both the quality of the results as well as the running time of the optimization algorithms compared to the usually used standard pseudorandom number generators. In this paper we investigate the influence of nine different chaotic maps on the quality of the results obtained by a self-organizing map (SOM) which has been used to solve the Traveling Salesman Problem (TSP). The investigation is based on various sizes of both the problem instances as well as the number of iterations where all nine chaotic maps are compared against the pseudorandom number generation. As a result it is proven that chaotic maps are significantly better in several cases. Finally, possible reasons for both the superiority and inferiority of chaotic maps compared to pseudorandom number generation are analyzed and discussed.
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