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An Effective Hybrid Ant Colony Algorithm for Solving the Traveling Salesman Problem

机译:解决旅行商问题的有效混合蚁群算法

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Ant colony optimization (ACO) is a relatively new random heuristic algorithm inspired by the behavior of real ant colony. It has been applied in many combinatorial optimization problems and the traveling salesman problem (TSP) is the basic problem to which it has been applied. In this paper, we propose a hybrid ACO algorithm for the TSP to overcome some shortcomings of the prior ACO .It is an evolutionary ACO based on the minimum spanning tree (MST).The intuition of the proposed algorithm is that the edges in the MST will probably appear in the optimal path of TSP. it takes advantage of the relationship between the MST and the optimal path to limit the search range of the ant in each city. This hybrid algorithm can evolve the optimization strategy and improve the computing speed. Computer simulation results show that the proposed method attains better result and higher efficiency than the previous ant colony algorithms.
机译:蚁群优化(ACO)是一种受实际蚁群行为启发的相对较新的随机启发式算法。它已被应用在许多组合优化问题中,而旅行商问题(TSP)是已被应用的基本问题。本文针对TSP提出了一种混合ACO算法,克服了现有ACO的一些不足,它是一种基于最小生成树(MST)的进化ACO。可能会出现在TSP的最佳路径中。它利用MST和最佳路径之间的关系来限制每个城市中蚂蚁的搜索范围。该混合算法可以发展优化策略并提高计算速度。计算机仿真结果表明,所提出的方法比以前的蚁群算法具有更好的效果和更高的效率。

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