动态环境下的粒子群优化算法:自适应惯性权值和粒子聚类

Iman Rezazadeh, M. Meybodi, A. Naebi
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引用次数: 11

摘要

本文提出了一种新的动态环境下的粒子群优化算法。该算法自适应调整惯性权值以加快收敛速度,并利用最优群的局部搜索来优化得到的响应。为了提高搜索性能,当两个群体的搜索区域重叠时,将较差的群体去除。此外,为了快速跟踪环境的变化,当周围环境的变化被发现时,它会使群体分成两个主要部分,第一部分是粒子在整个空间中随机分布,然后聚类重组。在第二组中,群中的所有粒子都转化为量子粒子。在GDBG基准模拟的不同动态环境下的实验结果表明,该算法在大多数环境下都优于其他粒子群算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle Swarm Optimization Algorithm in Dynamic Environments: Adapting Inertia Weight and Clustering Particles
In this paper, we propose a new particle swarm optimization algorithm for dynamic environments. The proposed algorithm adjusts inertia weight adaptively to accelerate convergence and utilizes a local search on best swarm to refine obtained responses. To improve the search performance, when the search areas of two swarms are overlapped, the worse swarm will be removed. Moreover, in order to quickly track the changes in the environment, When a changes is revealed in surrounding environment, it causes swarms to be divided into two main parts, the first one is the particles in which are spread up randomly in whole space and then will be clustered to regroup. In the second group, all particles in the swarms convert to quantum particles. Experimental results on different dynamic environments modeled by GDBG benchmark show that the proposed algorithm outperforms other PSO algorithms, for most of environments.
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