In this paper, a novel Static Learning (SL) strategy to adaptively vary swarm size has been proposed and integrated with Particle Swarm Optimization algorithm. Besides, the whole population has been divided into two sub swarms, where particles of different sub swarms interact within their neighbourhood and the existence of better particle is determined by evaluating its survival probability. Proper resource based particle replacement scheme and a linear chaotic term has also been included to ensure preservation of diversity of the swarm. In addition, the PSO algorithm is divided into two phases, with relevant algorithmic modification for each phase. The first phase is assigned to focus solely on better exploration of the search space. The...
Traditional particle swarm optimization (PSO) suffers from the premature convergence problem, which ...
Numerous particle swarm optimization (PSO) algorithms have been developed for solving numerical opti...
In order to solve the problems of low population diversity and easy to fall into local optimization ...
Copyright @ 2011 IEEE. All Rights Reserved. This article was made available through the Brunel Open ...
In this paper, a new variant of particle swarm optimisation (PSO) called PSO with improved learning...
This article is posted here with permission of the IEEE - Copyright @ 2009 IEEETraditional particle ...
Abstract-As a representative method of swarm intelligence, Particle Swarm Optimization (PSO) is an a...
The concept of particle swarms originated from the simulation of the social behavior commonly observ...
Inspired by social behavior of bird flocking or fish schooling, Eber-hart and Kennedy first develope...
Conventional optimization methods are not efficient enough to solve many of the naturally complicate...
AbstractThe particle swarm optimization (PSO) technique is a powerful stochastic evolutionary algori...
This paper proposes adaptive versions of the particle swarm optimization algorithm (PSO). These new ...
Many optimization problems can be found in scientific and engineering fields. It is a challenge for ...
Particle swarm optimization (PSO) is a popular method widely used in solving different optimization ...
Copyright @ 2010 IEEE.This paper presents an updated version of the adaptive learning particle swarm...
Traditional particle swarm optimization (PSO) suffers from the premature convergence problem, which ...
Numerous particle swarm optimization (PSO) algorithms have been developed for solving numerical opti...
In order to solve the problems of low population diversity and easy to fall into local optimization ...
Copyright @ 2011 IEEE. All Rights Reserved. This article was made available through the Brunel Open ...
In this paper, a new variant of particle swarm optimisation (PSO) called PSO with improved learning...
This article is posted here with permission of the IEEE - Copyright @ 2009 IEEETraditional particle ...
Abstract-As a representative method of swarm intelligence, Particle Swarm Optimization (PSO) is an a...
The concept of particle swarms originated from the simulation of the social behavior commonly observ...
Inspired by social behavior of bird flocking or fish schooling, Eber-hart and Kennedy first develope...
Conventional optimization methods are not efficient enough to solve many of the naturally complicate...
AbstractThe particle swarm optimization (PSO) technique is a powerful stochastic evolutionary algori...
This paper proposes adaptive versions of the particle swarm optimization algorithm (PSO). These new ...
Many optimization problems can be found in scientific and engineering fields. It is a challenge for ...
Particle swarm optimization (PSO) is a popular method widely used in solving different optimization ...
Copyright @ 2010 IEEE.This paper presents an updated version of the adaptive learning particle swarm...
Traditional particle swarm optimization (PSO) suffers from the premature convergence problem, which ...
Numerous particle swarm optimization (PSO) algorithms have been developed for solving numerical opti...
In order to solve the problems of low population diversity and easy to fall into local optimization ...