Home /Research /A Survey of Algorithms, Applications and Trends for Particle Swarm Optimization
SWARM

A Survey of Algorithms, Applications and Trends for Particle Swarm Optimization

Jingzhong Fang, Weibo Liu, Linwei Chen, Stanislao Lauria, Alina Miron, Xiaohui Liu

Year
2023
Citations
107
Access
Open access

Abstract

Particle swarm optimization (PSO) is a popular heuristic method, which is capable of effectively dealing with various optimization problems. A detailed overview of the original PSO and some PSO variant algorithms is presented in this paper. An up-to-date review is provided on the development of PSO variants, which include four types i.e., the adjustment of control parameters, the newly-designed updating strategies, the topological structures, and the hybridization with other optimization algorithms. A general overview of some selected applications (e.g., robotics, energy systems, power systems, and data analytics) of the PSO algorithms is also given. In this paper, some possible future research topics of the PSO algorithms are also introduced.

Keywords

Particle swarm optimizationHeuristicComputer scienceAlgorithmArtificial intelligenceAnalyticsMulti-swarm optimizationData mining

Related papers

Browse all SWARM papers