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International Journal of Intelligent Systems and Applications(IJISA)

ISSN: 2074-904X (Print), ISSN: 2074-9058 (Online)

Published By: MECS Press

IJISA Vol.7, No.1, Dec. 2014

Adaptive Random Link PSO with Link Change Variations and Confinement Handling

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Author(s)

Snehal Mohan Kamalapur, Varsha Hemant Patil

Index Terms

Adaptive Random Link, Confinement, Inertia Weight, Neighborhood, SPSO

Abstract

Particle Swarm Optimization is swarm based optimization technique. Swarm consists of particles and the particles fly through the problem space in Particle Swarm Optimization (PSO). Confinement methods and parameters such as Inertia Weight, Neighborhood of the particle have major impact on PSO performance. The paper presents variations of the PSO with adaptive random link neighborhood. The work carried out considers linearly decreasing inertia weight and different confinement methods. The performance of adaptive random link PSO by geometrical updation of velocity with confinement methods is tested here.

Cite This Paper

Snehal Mohan Kamalapur, Varsha Hemant Patil,"Adaptive Random Link PSO with Link Change Variations and Confinement Handling", International Journal of Intelligent Systems and Applications(IJISA), vol.7, no.1, pp.62-72, 2015. DOI: 10.5815/ijisa.2015.01.06

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