增强自适应组合蚁群算法

Zelin Yao, Can Liu, Yu Wei, Xinyu Lian, Zehua Yang
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引用次数: 0

摘要

针对蚁群算法迭代时间长、收敛速度慢、难以找到最优解的问题,提出了一种基于退火回火系数的蚁群算法(AHACO),提高了蚁群算法的收敛速度和寻优能力。根据路径的分布特点,引入了自适应状态转移概率(APACO),并给出了两种自适应系数。随后,引入自适应蒸发系数来优化收敛性(AEACO)。引入了增强型自适应组合蚁群算法,综合了上述优点。最后,设计并进行了参数选择和仿真实验。结果表明了EACACO的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Adaptive Combined Ant Colony Algorithm
To solve the problems that ant colony algorithm (ACO) has long iterations, slow convergence, and is difficult to find the optimum, an ACO based on the annealing tempering coefficient (AHACO) is proposed, which can speed up convergence and improve the ability to find optimum. According to the distribution characteristics of path, an adaptive state transition probability (APACO) is introduced, and two types of adaptive coefficient are given. Subsequently, an adaptive evaporation coefficient is introduced to optimize convergence (AEACO). enhanced adaptive combined ACO is introduced to combine all advantages. Finally, parameters selection and simulation experiments are designed and executed. The results indicate that the effectiveness of EACACO.
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