Enhancing particle swarm optimization using generalized opposition-based learning

H Wang, Z Wu, S Rahnamayan, Y Liu, M Ventresca - Information sciences, 2011 - Elsevier
Information sciences, 2011Elsevier
Particle swarm optimization (PSO) has been shown to yield good performance for solving
various optimization problems. However, it tends to suffer from premature convergence
when solving complex problems. This paper presents an enhanced PSO algorithm called
GOPSO, which employs generalized opposition-based learning (GOBL) and Cauchy
mutation to overcome this problem. GOBL can provide a faster convergence, and the
Cauchy mutation with a long tail helps trapped particles escape from local optima. The …
Particle swarm optimization (PSO) has been shown to yield good performance for solving various optimization problems. However, it tends to suffer from premature convergence when solving complex problems. This paper presents an enhanced PSO algorithm called GOPSO, which employs generalized opposition-based learning (GOBL) and Cauchy mutation to overcome this problem. GOBL can provide a faster convergence, and the Cauchy mutation with a long tail helps trapped particles escape from local optima. The proposed approach uses a similar scheme as opposition-based differential evolution (ODE) with opposition-based population initialization and generation jumping using GOBL. Experiments are conducted on a comprehensive set of benchmark functions, including rotated multimodal problems and shifted large-scale problems. The results show that GOPSO obtains promising performance on a majority of the test problems.
Elsevier
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