A Dynamic Multistage Hybrid Swarm Intelligence Optimization Algorithm for Function Optimization

A novel dynamic multistage hybrid swarm intelligence optimization algorithm is introduced, which is abbreviated as DM-PSO-ABC. The DM-PSO-ABC combined the exploration capabilities of the dynamic multiswarm particle swarm optimizer (PSO) and the stochastic exploitation of the cooperative artificial b...

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Main Authors: Daqing Wu, Jianguo Zheng
Format: Article
Language:English
Published: Hindawi Limited 2012-01-01
Series:Discrete Dynamics in Nature and Society
Online Access:http://dx.doi.org/10.1155/2012/578064
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spelling doaj-195c35f40c4546359a44085e981630cb2020-11-25T00:00:38ZengHindawi LimitedDiscrete Dynamics in Nature and Society1026-02261607-887X2012-01-01201210.1155/2012/578064578064A Dynamic Multistage Hybrid Swarm Intelligence Optimization Algorithm for Function OptimizationDaqing Wu0Jianguo Zheng1Glorious Sun School of Business and Management, DongHua University, Shanghai 200051, ChinaGlorious Sun School of Business and Management, DongHua University, Shanghai 200051, ChinaA novel dynamic multistage hybrid swarm intelligence optimization algorithm is introduced, which is abbreviated as DM-PSO-ABC. The DM-PSO-ABC combined the exploration capabilities of the dynamic multiswarm particle swarm optimizer (PSO) and the stochastic exploitation of the cooperative artificial bee colony algorithm (CABC) for solving the function optimization. In the proposed hybrid algorithm, the whole process is divided into three stages. In the first stage, a dynamic multiswarm PSO is constructed to maintain the population diversity. In the second stage, the parallel, positive feedback of CABC was implemented in each small swarm. In the third stage, we make use of the particle swarm optimization global model, which has a faster convergence speed to enhance the global convergence in solving the whole problem. To verify the effectiveness and efficiency of the proposed hybrid algorithm, various scale benchmark problems are tested to demonstrate the potential of the proposed multistage hybrid swarm intelligence optimization algorithm. The results show that DM-PSO-ABC is better in the search precision, and convergence property and has strong ability to escape from the local suboptima when compared with several other peer algorithms.http://dx.doi.org/10.1155/2012/578064
collection DOAJ
language English
format Article
sources DOAJ
author Daqing Wu
Jianguo Zheng
spellingShingle Daqing Wu
Jianguo Zheng
A Dynamic Multistage Hybrid Swarm Intelligence Optimization Algorithm for Function Optimization
Discrete Dynamics in Nature and Society
author_facet Daqing Wu
Jianguo Zheng
author_sort Daqing Wu
title A Dynamic Multistage Hybrid Swarm Intelligence Optimization Algorithm for Function Optimization
title_short A Dynamic Multistage Hybrid Swarm Intelligence Optimization Algorithm for Function Optimization
title_full A Dynamic Multistage Hybrid Swarm Intelligence Optimization Algorithm for Function Optimization
title_fullStr A Dynamic Multistage Hybrid Swarm Intelligence Optimization Algorithm for Function Optimization
title_full_unstemmed A Dynamic Multistage Hybrid Swarm Intelligence Optimization Algorithm for Function Optimization
title_sort dynamic multistage hybrid swarm intelligence optimization algorithm for function optimization
publisher Hindawi Limited
series Discrete Dynamics in Nature and Society
issn 1026-0226
1607-887X
publishDate 2012-01-01
description A novel dynamic multistage hybrid swarm intelligence optimization algorithm is introduced, which is abbreviated as DM-PSO-ABC. The DM-PSO-ABC combined the exploration capabilities of the dynamic multiswarm particle swarm optimizer (PSO) and the stochastic exploitation of the cooperative artificial bee colony algorithm (CABC) for solving the function optimization. In the proposed hybrid algorithm, the whole process is divided into three stages. In the first stage, a dynamic multiswarm PSO is constructed to maintain the population diversity. In the second stage, the parallel, positive feedback of CABC was implemented in each small swarm. In the third stage, we make use of the particle swarm optimization global model, which has a faster convergence speed to enhance the global convergence in solving the whole problem. To verify the effectiveness and efficiency of the proposed hybrid algorithm, various scale benchmark problems are tested to demonstrate the potential of the proposed multistage hybrid swarm intelligence optimization algorithm. The results show that DM-PSO-ABC is better in the search precision, and convergence property and has strong ability to escape from the local suboptima when compared with several other peer algorithms.
url http://dx.doi.org/10.1155/2012/578064
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