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Interactive and non-interactive hybrid immigrants schemes for ant algorithms in dynamic environments

机译:动态环境中的Ant算法的互动和非交互式混合移民移民

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Dynamic optimization problems (DOPs) have been a major challenge for ant colony optimization (ACO) algorithms. The integration of ACO algorithms with immigrants schemes showed promising results on different DOPs. Each type of immigrants scheme aims to address a DOP with specific characteristics. For example, random and elitism-based immigrants perform well on severely and slightly changing environments, respectively. In this paper, two hybrid immigrants, i.e., non-interactive and interactive, schemes are proposed to combine the merits of the aforementioned immigrants schemes. The experiments on a series of dynamic travelling salesman problems showed that the hybridization of immigrants further improves the performance of ACO algorithms.
机译:动态优化问题(DOP)是蚁群优化(ACO)算法的主要挑战。 ACO算法与移民方案的集成显示出不同的DOPS结果。每种类型的移民方案旨在解决具有特定特征的DOP。例如,基于随机和精英的移民分别在严重且略微不变的环境中表现出良好的。本文提出了两个混合移民,即非互动和互动计划,以结合上述移民计划的优点。关于一系列动态旅行推销员问题的实验表明,移民的杂交进一步提高了ACO算法的性能。

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