自适应蚁群优化算法

Guan Ping, Xiu Chun-bo, Cheng Yi, Luo Jing, Lian Yanqing
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引用次数: 31

摘要

针对蚁群算法存在的早熟收敛问题,提出了一种自适应蚁群算法。适应性蚁群由三组蚂蚁组成:普通蚂蚁、异常蚂蚁和随机蚂蚁。每只普通蚂蚁以高概率搜索高浓度信息素的路径,每只异常蚂蚁以低概率搜索高浓度信息素的路径,每只随机蚂蚁随机搜索与信息素浓度无关的路径。三组蚂蚁一起提供了良好的信息素初始状态。随着优化计算的进行,异常蚂蚁和随机蚂蚁的数量逐渐减少。在优化后期,所有蚂蚁都转化为普通蚂蚁,可以快速集中到最优路径上。仿真结果表明,该算法具有良好的优化性能,能够有效地解决旅行商问题。
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Adaptive ant colony optimization algorithm
An adaptive ant colony algorithm is proposed to overcome the premature convergence problem in the conventional ant colony algorithm. The adaptive ant colony is composed of three groups of ants: ordinary ants, abnormal ants and random ants. Each ordinary ant searches the path with the high concentration pheromone at the high probability, each abnormal ant searches the path with the high concentration pheromone at the low probability, and each random ant randomly searches the path regardless of the pheromone concentration. Three groups of ants provide a good initial state of pheromone trails together. As the optimization calculation goes on, the number of the abnormal ants and the random ants decreases gradually. In the late optimization stage, all of ants transform to the ordinary ants, which can rapidly concentrate to the optimal paths. Simulation results show that the algorithm has a good optimization performance, and can resolve traveling salesman problem effectively.
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