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The accumulated experience ant colony for the traveling salesman problem

机译:解决旅行商问题的累积经验蚁群

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Ant colony optimization techniques are usually guided by pheromone and heuristic cost information when choosing the next element to add to a solution. However, while an individual element may be attractive, usually its long term consequences are neither known nor considered. For instance, a short link in a traveling salesman problem may be incorporated into an ant's solution, yet, as a consequence of this link, the rest of the path may be longer than if another link was chosen. The Accumulated Experience Ant Colony uses the previous experiences of the colony to guide in the choice of elements. This is in addition to the normal pheromone and heuristic costs. Two versions of the algorithm are presented, the original and an improved AEAC that makes greater use of accumulated experience. The results indicate that the original algorithm finds improved solutions on problems with less than 100 cities, while the improved algorithm finds better solutions on larger problems.
机译:选择下一个要添加到解决方案中的元素时,蚁群优化技术通常以信息素和启发式成本信息为指导。但是,尽管单个元素可能具有吸引力,但通常其长期后果既未知,也未考虑。例如,旅行商问题中的短链接可以合并到蚂蚁的解决方案中,但是,由于此链接的影响,路径的其余部分可能比选择其他链接时更长。积累的经验蚂蚁殖民地利用殖民地以前的经验来指导元素的选择。这是正常信息素和启发式成本之外的。介绍了该算法的两个版本,原始版本和改进版本的AEAC,它们更多地利用了积累的经验。结果表明,原始算法为少于100个城市的问题找到了改进的解决方案,而改进的算法为较大的问题找到了更好的解决方案。

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