Empirically characteristic analysis of chaotic PID controlling particle swarm optimization.

Since chaos systems generally have the intrinsic properties of sensitivity to initial conditions, topological mixing and density of periodic orbits, they may tactfully use the chaotic ergodic orbits to achieve the global optimum or their better approximation to given cost functions with high probabi...

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Main Authors: Danping Yan, Yongzhong Lu, Min Zhou, Shiping Chen, David Levy
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5417442?pdf=render
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spelling doaj-18d144af587b4c738bafcaf4a97968522020-11-25T02:02:56ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01125e017635910.1371/journal.pone.0176359Empirically characteristic analysis of chaotic PID controlling particle swarm optimization.Danping YanYongzhong LuMin ZhouShiping ChenDavid LevySince chaos systems generally have the intrinsic properties of sensitivity to initial conditions, topological mixing and density of periodic orbits, they may tactfully use the chaotic ergodic orbits to achieve the global optimum or their better approximation to given cost functions with high probability. During the past decade, they have increasingly received much attention from academic community and industry society throughout the world. To improve the performance of particle swarm optimization (PSO), we herein propose a chaotic proportional integral derivative (PID) controlling PSO algorithm by the hybridization of chaotic logistic dynamics and hierarchical inertia weight. The hierarchical inertia weight coefficients are determined in accordance with the present fitness values of the local best positions so as to adaptively expand the particles' search space. Moreover, the chaotic logistic map is not only used in the substitution of the two random parameters affecting the convergence behavior, but also used in the chaotic local search for the global best position so as to easily avoid the particles' premature behaviors via the whole search space. Thereafter, the convergent analysis of chaotic PID controlling PSO is under deep investigation. Empirical simulation results demonstrate that compared with other several chaotic PSO algorithms like chaotic PSO with the logistic map, chaotic PSO with the tent map and chaotic catfish PSO with the logistic map, chaotic PID controlling PSO exhibits much better search efficiency and quality when solving the optimization problems. Additionally, the parameter estimation of a nonlinear dynamic system also further clarifies its superiority to chaotic catfish PSO, genetic algorithm (GA) and PSO.http://europepmc.org/articles/PMC5417442?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Danping Yan
Yongzhong Lu
Min Zhou
Shiping Chen
David Levy
spellingShingle Danping Yan
Yongzhong Lu
Min Zhou
Shiping Chen
David Levy
Empirically characteristic analysis of chaotic PID controlling particle swarm optimization.
PLoS ONE
author_facet Danping Yan
Yongzhong Lu
Min Zhou
Shiping Chen
David Levy
author_sort Danping Yan
title Empirically characteristic analysis of chaotic PID controlling particle swarm optimization.
title_short Empirically characteristic analysis of chaotic PID controlling particle swarm optimization.
title_full Empirically characteristic analysis of chaotic PID controlling particle swarm optimization.
title_fullStr Empirically characteristic analysis of chaotic PID controlling particle swarm optimization.
title_full_unstemmed Empirically characteristic analysis of chaotic PID controlling particle swarm optimization.
title_sort empirically characteristic analysis of chaotic pid controlling particle swarm optimization.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Since chaos systems generally have the intrinsic properties of sensitivity to initial conditions, topological mixing and density of periodic orbits, they may tactfully use the chaotic ergodic orbits to achieve the global optimum or their better approximation to given cost functions with high probability. During the past decade, they have increasingly received much attention from academic community and industry society throughout the world. To improve the performance of particle swarm optimization (PSO), we herein propose a chaotic proportional integral derivative (PID) controlling PSO algorithm by the hybridization of chaotic logistic dynamics and hierarchical inertia weight. The hierarchical inertia weight coefficients are determined in accordance with the present fitness values of the local best positions so as to adaptively expand the particles' search space. Moreover, the chaotic logistic map is not only used in the substitution of the two random parameters affecting the convergence behavior, but also used in the chaotic local search for the global best position so as to easily avoid the particles' premature behaviors via the whole search space. Thereafter, the convergent analysis of chaotic PID controlling PSO is under deep investigation. Empirical simulation results demonstrate that compared with other several chaotic PSO algorithms like chaotic PSO with the logistic map, chaotic PSO with the tent map and chaotic catfish PSO with the logistic map, chaotic PID controlling PSO exhibits much better search efficiency and quality when solving the optimization problems. Additionally, the parameter estimation of a nonlinear dynamic system also further clarifies its superiority to chaotic catfish PSO, genetic algorithm (GA) and PSO.
url http://europepmc.org/articles/PMC5417442?pdf=render
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