Particle swarm optimization: Hybridization perspectives and experimental illustrations

Particle swarm optimization: Hybridization perspectives and experimental illustrations

0.00 Avg rating0 Votes
Article ID: iaor20113312
Volume: 217
Issue: 12
Start Page Number: 5208
End Page Number: 5226
Publication Date: Feb 2011
Journal: Applied Mathematics and Computation
Authors: , , ,
Keywords: heuristics: genetic algorithms
Abstract:

Metaheuristic optimization algorithms have become popular choice for solving complex and intricate problems which are otherwise difficult to solve by traditional methods. In the present study an attempt is made to review the hybrid optimization techniques in which one main algorithm is a well known metaheuristic; particle swarm optimization or PSO. Hybridization is a method of combining two (or more) techniques in a judicious manner such that the resulting algorithm contains the positive features of both (or all) the algorithms. Depending on the algorithm/s used we made three classifications as (i) Hybridization of PSO and genetic algorithms (ii) Hybridization of PSO with differential evolution and (iii) Hybridization of PSO with other techniques. Where, other techniques include various local and global search methods. Besides giving the review we also show a comparison of three hybrid PSO algorithms; hybrid differential evolution particle swarm optimization (DE‐PSO), adaptive mutation particle swarm optimization (AMPSO) and hybrid genetic algorithm particle swarm optimization (GA‐PSO) on a test suite of nine conventional benchmark problems.

Reviews

Required fields are marked *. Your email address will not be published.