基于混合遗传算法求解旅行商问题的性能增强

Devinder Kaur, M. M. Murugappan
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引用次数: 47

摘要

提出了一种基于最近邻启发式算法和纯遗传算法的求解旅行商问题的混合遗传算法。对于旅行商问题(TSP)等复杂组合优化问题,混合遗传算法比纯遗传算法在相对较短的时间内指数级地获得更高质量的解。该混合算法优于单独采用的神经网络算法和纯遗传算法。在纯遗传算法的基础上设计并实验了混合遗传算法,在90个城市中,收敛速度提高了200%以上,搜索距离提高了17.4%。这些结果表明,混合方法是有前途的,它可以用于各种其他优化问题。该算法与起始城市无关,而神经网络算法的结果是基于起始城市的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance enhancement in solving Traveling Salesman Problem using hybrid genetic algorithm
In this paper, a novel hybrid genetic algorithm for solving Traveling Salesman Problem (TSP) is presented based on the Nearest Neighbor heuristics and pure Genetic Algorithm (GA). The hybrid genetic algorithm exponentially derives higher quality solutions in relatively shorter time for hard combinatorial real world optimization problems such as Traveling Salesman Problem (TSP) than the pure GA. The hybrid algorithm outperformed the NN algorithm and the pure Genetic Algorithm taken separately. The hybrid genetic algorithm is designed and experimented against the pure GA and the convergence rate improved by more than 200% and the tour distance improved by 17.4% for 90 cities. These results indicate that the hybrid approach is promising and it can be used for various other optimization problems. This algorithm is also independent of the start city of travel whereas the result of NN algorithm are based on start city.
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