Ant colony optimization with direct communication for the traveling salesman problem

Michalis Mavrovouniotis, Shengxiang Yang
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引用次数: 7

Abstract

Ants in conventional ant colony optimization (ACO) algorithms use pheromone to communicate. Usually, this indirect communication leads the algorithm to a stagnation behaviour, where the ants follow the same path from early stages. This occurs because high levels of pheromone are developed, which force the ants to follow the same corresponding trails. As a result, the population gets trapped into a local optimum solution which is difficult to escape from it. In this paper, a direct communication (DC) scheme is proposed where ants are able to exchange cities with other ants that belong to their communication range. Experiments show that the DC scheme delays convergence and improves the solution quality of conventional ACO algorithms regarding the traveling salesman problem, since it guides the population towards the global optimum solution. The ACO algorithm with the proposed DC scheme has better performance, especially on large problem instances, even though it increases the computational time in comparison with a conventional ACO algorithm.
旅行商问题的直接通信蚁群优化
传统蚁群优化算法中的蚂蚁利用信息素进行通信。通常,这种间接交流会导致算法出现停滞行为,即蚂蚁从早期阶段开始就遵循相同的路径。这是因为蚂蚁体内分泌了大量的信息素,迫使它们沿着相同的路径走。结果,种群陷入了难以摆脱的局部最优解。本文提出了一种蚂蚁直接通信(DC)方案,使蚂蚁能够与属于其通信范围的其他蚂蚁交换城市。实验表明,对于旅行商问题,DC方案可以将种群引导到全局最优解,从而延迟了收敛速度,提高了传统蚁群算法的求解质量。尽管与传统的蚁群算法相比,该算法的计算时间增加了,但具有更好的性能,特别是在大型问题实例上。
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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