A novel pheromone initialization strategy of ACO algorithms for solving TSP

Shupeng Gao, Jiaqi Zhong, Yali Cui, Chao Gao, Xianghua Li
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引用次数: 4

Abstract

Travelling salesman problem (TSP), as a famous combinational optimization problem, has promoted the generation of a large number of algorithms. However, the existing algorithms, such as ant colony optimization (ACO) algorithms, still need to be enhanced further in terms of their robustness and the quality of the solution. In this paper, a novel pheromone initialization (NPI) strategy of ACO algorithms has been proposed for solving TSP, which shows a better efficiency in both robustness and the quality of the solution. Combining NPI strategy with a typical ACO algorithm like ant colony system (ACS) algorithm, a novel algorithm, called NPI-ACS algorithm, is put forward to strengthen the efficiency of ACS. Meanwhile, seven different scale datasets related to TSP are used to estimate the performance of NPI strategy. Afterwards, the experimental results show that there is a remarkable improvement in terms of robustness and the quality of the solution. Moreover, the proposed NPI strategy is flexible enough to be combined with multifarious ACO algorithms for solving TSP because of its independence in operation details.
求解TSP的蚁群算法中一种新的信息素初始化策略
旅行商问题(TSP)作为一个著名的组合优化问题,促进了大量算法的产生。然而,现有的算法,如蚁群优化算法,在鲁棒性和解的质量方面还有待进一步提高。本文提出了一种新的蚁群算法的信息素初始化(NPI)策略,该策略在鲁棒性和解质量方面都具有较好的效率。将NPI策略与蚁群系统(ACS)算法等典型蚁群算法相结合,提出了一种新的算法NPI-ACS算法,以增强ACS算法的效率。同时,利用与TSP相关的7个不同尺度的数据集来评估NPI策略的性能。之后的实验结果表明,该方法在鲁棒性和解的质量方面都有了显著的提高。此外,由于NPI策略在操作细节上的独立性,该策略具有足够的灵活性,可以与多种蚁群算法相结合来求解TSP。
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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