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International Journal of Supply and Operations Management
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Journal Archive
Volume Volume 3 (2016)
Volume Volume 2 (2015)
Issue Issue 4
Issue Issue 3
Issue Issue 2
Issue Issue 1
Volume Volume 1 (2014)

An Expert System for Intelligent Selection of Proper Particle Swarm Optimization Variants

Article 3, Volume 2, Issue 1, Spring 2015, Page 569-594  XML PDF (1126 K)
Document Type: Research Paper
Authors
1 Ellips Masehian ; 2 Vahid Eghbal Akhlaghi; 1 Hossein Akbaripour; 3 Davoud Sedighizadeh
1Tarbiat Modares University, Teahran, Iran
2Middle East Technical University, Ankara, Turkey
3Islamic Azad University, Saveh branch, saveh, Iran
Abstract
Regarding the large number of developed Particle Swarm Optimization (PSO) algorithms and the various applications for which PSO has been used, selecting the most suitable variant of PSO for solving a particular optimization problem is a challenge for most researchers. In this paper, using a comprehensive survey and taxonomy on different types of PSO, an Expert System (ES) is designed to identify the most proper PSO for solving different optimization problems. Algorithms are classified according to aspects like particle, variable, process, and swarm. After integrating different acquirable information and forming the knowledge base of the ES consisting 100 rules, the system is able to logically evaluate all the algorithms and report the most appropriate PSO-based approach based on interactions with users, referral to knowledge base and necessary inferences via user interface. In order to examine the validity and efficiency of the system, a comparison is made between the system outputs against the algorithms proposed by newly published articles. The result of this comparison showed that the proposed ES can be considered as a proper tool for finding an appropriate PSO variant that matches the application under consideration.
Keywords
Particle swarm optimization; Taxonomy; PSO variants; Expert system; Knowledge base
Main Subjects
artificial intelligence & expert system
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