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An Improved Ant Colony Algorithm for Traveling Salesman Problem

机译:求解旅行商问题的改进蚁群算法

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In view of the disadvantages of the basic ant colony algorithm in solving non-deterministic polynomial problems, such as slow convergence rate and local optimal solution. In this paper, the updating rules of pheromone and the updating strategy of target city in ant colony algorithm are improved, and an improved ant colony algorithm (IACA) is proposed. In addition, it is applied to the shortest traversal path search of travel salesman problem. Taking 33 provincial capitals and berlin52 problems as test objects, this paper compares the search efficiency of the proposed algorithm with that of the basic ant colony algorithm. It can be seen from the simulation results that IACA has a faster convergence rate than the basic ant colony algorithm. IACA is obviously superior to the basic ant colony algorithm in terms of convergence and the quality of the optimal solution. It provides a new choice for solving similar optimization problems.
机译:鉴于基本蚁群算法在解决不确定性多项式问题上的缺点,例如收敛速度慢和局部最优解。本文对蚁群算法中信息素的更新规则和目标城市的更新策略进行了改进,提出了一种改进的蚁群算法。另外,它还应用于旅行商问题的最短遍历路径搜索。以33个省会城市和柏林52个问题为测试对象,比较了该算法和基本蚁群算法的搜索效率。从仿真结果可以看出,IACA具有比基本蚁群算法更快的收敛速度。在收敛性和最优解的质量方面,IACA明显优于基本蚁群算法。它为解决类似的优化问题提供了新的选择。

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