Evolving cognitive and social experience in Particle Swarm Optimization through Differential Evolution

TitleEvolving cognitive and social experience in Particle Swarm Optimization through Differential Evolution
Publication TypeConference Paper
Year of Publication2010
AuthorsEpitropakis, MG, Plagianakos, VP, Vrahatis, MN
Conference NameIEEE Congress on Evolutionary Computation, 2010. CEC 2010. (IEEE World Congress on Computational Intelligence)
Date PublishedJuly
Conference LocationBarcelona, Spain
Keywordscognitive experience, convergence, differential evolution, evolutionary computation, particle swarm optimisation, particle swarm optimization, social experience
Abstract

In recent years, the Particle Swarm Optimization has rapidly gained increasing popularity and many variants and hybrid approaches have been proposed to improve it. Motivated by the behavior and the proximity characteristics of the social and cognitive experience of each particle in the swarm, we develop a hybrid approach that combines the Particle Swarm Optimization and the Differential Evolution algorithm. Particle Swarm Optimization has the tendency to distribute the best personal positions of the swarm near to the vicinity of problem’s optima. In an attempt to efficiently guide the evolution and enhance the convergence, we evolve the personal experience of the swarm with the Differential Evolution algorithm. Extensive experimental results on twelve high dimensional multimodal benchmark functions indicate that the hybrid variants are very promising and improve the original algorithm.

DOI10.1109/CEC.2010.5585967
AttachmentSize
PDF icon EpitropakisPV2010a.pdf1.19 MB

Scholarly Lite is a free theme, contributed to the Drupal Community by More than Themes.