Opposition-Based Hybrid Strategy for Particle Swarm Optimization in Noisy Environments
Document Type
Article
Publication Date
3-15-2018
Abstract
Particle swarm optimization (PSO) is a population-based algorithm designed to tackle various optimization problems. However, its performance deteriorates significantly when optimization problems are subjected to noise. PSO is strongly influenced by its previous best particles and global best one, which may lead to premature convergence and fall into local optima. This also holds true for various PSO variants dealing with optimization problems in noisy environments. Opposition-based learning (OBL) is well-known for its ability to increase population diversity. In this paper, we propose hybrid PSO algorithms that introduce OBL into PSO variants for improving the latter's performance. The proposed hybrid algorithms employ probabilistic OBL for a swarm. In contrast to other integrations of PSO and OBL, we select the top fittest particles from the current swarm and its opposite swarm to improve the entire swarm's fitness. Experiments on 20 benchmark functions subject to different levels of noise show that the proposed hybrid PSO algorithms outperform their counterpart PSO variants as well as composite differential evolution in most cases.
Identifier
85044063875 (Scopus)
Publication Title
IEEE Access
External Full Text Location
https://doi.org/10.1109/ACCESS.2018.2809457
e-ISSN
21693536
First Page
21888
Last Page
21900
Volume
6
Grant
51775385
Fund Ref
National Natural Science Foundation of China
Recommended Citation
Kang, Qi; Xiong, Caifei; Zhou, Mengchu; and Meng, Lingpeng, "Opposition-Based Hybrid Strategy for Particle Swarm Optimization in Noisy Environments" (2018). Faculty Publications. 8785.
https://digitalcommons.njit.edu/fac_pubs/8785
