4.6 Article

A Particle Swarm Algorithm Based on a Multi-Stage Search Strategy

期刊

ENTROPY
卷 23, 期 9, 页码 -

出版社

MDPI
DOI: 10.3390/e23091200

关键词

particle swarm optimization; entropy; strategy; exploration and exploitation; repulsion and attraction

资金

  1. National Natural Science Foundation of China [61663046, 61876166]
  2. Open Foundation of Key Laboratory of Software Engineering of Yunnan Province [2020SE308, 2020SE309]

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This paper proposed a multi-stage search strategy dominated by mutual repulsion and supplemented by attraction, effectively controlling the characteristics of the population and creating a more balanced search process, leading to satisfactory results.
Particle swarm optimization (PSO) has the disadvantages of easily getting trapped in local optima and a low search accuracy. Scores of approaches have been used to improve the diversity, search accuracy, and results of PSO, but the balance between exploration and exploitation remains sub-optimal. Many scholars have divided the population into multiple sub-populations with the aim of managing it in space. In this paper, a multi-stage search strategy that is dominated by mutual repulsion among particles and supplemented by attraction was proposed to control the traits of the population. From the angle of iteration time, the algorithm was able to adequately enhance the entropy of the population under the premise of satisfying the convergence, creating a more balanced search process. The study acquired satisfactory results from the CEC2017 test function by improving the standard PSO and improved PSO.

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