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Evolving cognitive and social experience in Particle Swarm Optimization through Differential Evolution: A hybrid approach

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Autor
Epitropakis, M. G.; Plagianakos, V. P.; Vrahatis, M. N.
Fecha
2012
DOI
10.1016/j.ins.2012.05.017
Materia
Global Optimization
Particle Swarm Optimization
Differential
Evolution
Hybrid approach
Social and cognitive experience
Swarm
intelligence
CONTROL PARAMETERS
GLOBAL OPTIMIZATION
ALGORITHM
ADAPTATION
SEARCH
INTELLIGENCE
CONVERGENCE
SCALABILITY
PERFORMANCE
COMPUTATION
Computer Science, Information Systems
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Resumen
In recent years, the Particle Swarm Optimization has rapidly gained increasing popularity and many variants and hybrid approaches have been proposed to improve it. In this paper, motivated by the behavior and the spatial characteristics of the social and cognitive experience of each particle in the swarm, we develop a hybrid framework 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 particles 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 or memory of the particles with the Differential Evolution algorithm, without destroying the search capabilities of the algorithm. The proposed framework can be applied to any Particle Swarm Optimization algorithm with minimal effort. To evaluate the performance and highlight the different aspects of the proposed framework, we initially incorporate six classic Differential Evolution mutation strategies in the canonical Particle Swarm Optimization, while afterwards we employ five state-of-the-art Particle Swarm Optimization variants and four popular Differential Evolution algorithms. Extensive experimental results on 25 high dimensional multimodal benchmark functions along with the corresponding statistical analysis, suggest that the hybrid variants are very promising and significantly improve the original algorithms in the majority of the studied cases. (C) 2012 Elsevier Inc. All rights reserved.
URI
http://hdl.handle.net/11615/27371
Colecciones
  • Δημοσιεύσεις σε περιοδικά, συνέδρια, κεφάλαια βιβλίων κλπ. [19735]
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