Clubs-based Particle Swarm Optimization

This paper introduces a new dynamic neighborhood network for particle swarm optimization. In the proposed clubs-based particle swarm optimization (C-PSO) algorithm, each particle initially joins a default number of what we call 'clubs'. Each particle is affected by its own experience and t...

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Published in2007 IEEE Swarm Intelligence Symposium : Honolulu, HI, 1-5 April 2007 pp. 289 - 296
Main Authors Elshamy, W., Emara, H.M., Bahgat, A.
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.04.2007
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ISBN9781424407088
1424407087
DOI10.1109/SIS.2007.367950

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Summary:This paper introduces a new dynamic neighborhood network for particle swarm optimization. In the proposed clubs-based particle swarm optimization (C-PSO) algorithm, each particle initially joins a default number of what we call 'clubs'. Each particle is affected by its own experience and the experience of the best performing member of the clubs it is a member of. Clubs membership is dynamic, where the worst performing particles socialize more by joining more clubs to learn from other particles and the best performing particles are made to socialize less by leaving clubs to reduce their strong influence on other members. Particles return gradually to default membership level when they stop showing extreme performance. Inertia weights of swarm members are made random within a predefined range. This proposed dynamic neighborhood algorithm is compared with other two algorithms having static neighborhood topologies on a set of classic benchmark problems. The results showed superior performance for C-PSO regarding escaping local optima and convergence speed
ISBN:9781424407088
1424407087
DOI:10.1109/SIS.2007.367950