An Ant Colony Optimization Memorizing Better Solutions (ACO-MBS) for Traveling Salesman Problem

D. Ekmekci
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引用次数: 2

Abstract

Ant Colony Optimization (ACO) is a population-based meta-heuristic method that mimics the foraging behavior of the ant colony in real life. The pheromone approach as the highlight method of the algorithm is the most effective factor in determining the moving of ants. Therefore, the problem of tuning the pheromone trail is an important topic for ACO that deserves attention. In this paper, a novel method which memorizes the solution costs and updates the pheromone trail according to the memorized costs is introduced for updating the pheromone trail in ACO. The performance of the proposed method was simulated on the Travelling Salesman Problem (TSP) and compared with the versions of ACO algorithm.
旅行商问题的蚁群优化记忆优化算法
蚁群优化(Ant Colony Optimization, ACO)是一种基于群体的元启发式算法,它模拟了现实生活中蚁群的觅食行为。信息素法作为算法的亮点方法,是确定蚂蚁移动的最有效因素。因此,信息素轨迹的调整问题是蚁群算法中一个值得关注的重要课题。针对蚁群算法中信息素轨迹的更新问题,提出了一种记忆求解成本并根据记忆成本更新信息素轨迹的新方法。对旅行商问题(TSP)进行了仿真,并与不同版本的蚁群算法进行了比较。
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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