Particle Swarm Optimisation

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A01=Choi-Hong Lai
A01=Jun Sun
A01=Xiao-Jun Wu
Adaptive Inertia Weight
advanced optimization algorithms for engineering
algorithm
Author_Choi-Hong Lai
Author_Jun Sun
Author_Xiao-Jun Wu
benchmark
Benchmark Functions
Category=UB
Category=UMB
Category=UY
Category=UYQ
Chen System
computational intelligence
Dielectric Resonator Antennas
digital filter design
economic dispatch modeling
ED Problem
eq_bestseller
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
functions
Gbest Position
global convergence analysis
HMM Training
Hybrid PSO
Inertia Weight
intelligence
Log Odds Scores
metaheuristic optimization
method
MSA Problem
original
Original PSO
Position Update Equation
pso
PSO Algorithm
PSO Method
QPSO
QPSO Algorithm
random
Random Search Method
Rastrigin Function
Rosenbrock Function
Schwefel Function
Schwefel's Problem
Schwefel’s Problem
search
Solve ED Problem
SVM Model
swarm intelligence methods
tabu
Time Complexity

Product details

  • ISBN 9781439835760
  • Weight: 725g
  • Dimensions: 156 x 234mm
  • Publication Date: 19 Dec 2011
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Although the particle swarm optimisation (PSO) algorithm requires relatively few parameters and is computationally simple and easy to implement, it is not a globally convergent algorithm. In Particle Swarm Optimisation: Classical and Quantum Perspectives, the authors introduce their concept of quantum-behaved particles inspired by quantum mechanics, which leads to the quantum-behaved particle swarm optimisation (QPSO) algorithm. This globally convergent algorithm has fewer parameters, a faster convergence rate, and stronger searchability for complex problems.

The book presents the concepts of optimisation problems as well as random search methods for optimisation before discussing the principles of the PSO algorithm. Examples illustrate how the PSO algorithm solves optimisation problems. The authors also analyse the reasons behind the shortcomings of the PSO algorithm.

Moving on to the QPSO algorithm, the authors give a thorough overview of the literature on QPSO, describe the fundamental model for the QPSO algorithm, and explore applications of the algorithm to solve typical optimisation problems. They also discuss some advanced theoretical topics, including the behaviour of individual particles, global convergence, computational complexity, convergence rate, and parameter selection. The text closes with coverage of several real-world applications, including inverse problems, optimal design of digital filters, economic dispatch problems, biological multiple sequence alignment, and image processing. MATLAB®, Fortran, and C++ source codes for the main algorithms are provided on an accompanying downloadable resources.

Helping you numerically solve optimisation problems, this book focuses on the fundamental principles and applications of PSO and QPSO algorithms. It not only explains how to use the algorithms, but also covers advanced topics that establish the groundwork for understanding.

Jun Sun is an associate professor in the Department of Computer Science and Technology at Jiangnan University. He is also a researcher at the Key Laboratory of Advanced Process Control for Light Industry in China. He has a Ph.D. in control theory and control engineering. His research interests include computational intelligence, numerical optimisation, and machine learning.

Choi-Hong Lai is a professor of numerical mathematics in the Department of Mathematical Sciences at the University of Greenwich. He has a Ph.D. in computational aerodynamics and PDEs. His research interests include numerical PDEs, numerical algorithms, and parallel algorithms for industrial applications, such as aeroacoustics, inverse problems, computational finance, and image processing.

Xiao-Jun Wu is a professor at Jiangnan University. He has a Ph.D. in pattern recognition and intelligent systems. He has published more than 150 papers on pattern recognition, computer vision, fuzzy systems, neural networks, and intelligent systems.

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