Perspectives and experiments of hybrid particle swarm optimization and genetic algorithms to solve optimization problems
Book chapter abstract
Authors/Editors
Strategic Research Themes
No matching items found.
Publication Details
Author list: Sombat A., Saleewong T., Kumam P.
Publisher: Springer Verlag
Publication year: 2018
Volume number: 760
Start page: 290
End page: 297
Number of pages: 8
ISBN: 978-3-319-73149-0
ISSN: 1860-949X
eISSN: 1860-949X
Languages: English-Great Britain (EN-GB)
View in Web of Science | View on publisher site | View citing articles in Web of Science
Abstract
Nowadays, there are many tools to solve the optimization problem. One of the popular tool is the population-based metaheuristics can be viewed as an iterative improvement in a population of solutions. Algorithms such as Particle swarm optimization (PSO) is the swarm intelligent that find the answer by global and local search with the velocity and genetic algorithm (GA) is the stochastic search procedure based on the mechanics of natural selections. Both of them belong to this class of metaheuristics. In this paper is to present the perspective and experiments of the hybrid algorithm of genetic algorithm and particle swarm optimization to solve the optimization problems. ฉ 2018, Springer International Publishing AG.
Keywords
Hybrid PSO-GA