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      Enhanced Comprehensive Learning Particle Swarm Optimization with Dimensional Independent and Adaptive Parameters

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      1 , , 2
      Computational Intelligence and Neuroscience
      Hindawi

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          Abstract

          Comprehensive learning particle swarm optimization (CLPSO) and enhanced CLPSO (ECLPSO) are two literature metaheuristics for global optimization. ECLPSO significantly improves the exploitation and convergence performance of CLPSO by perturbation-based exploitation and adaptive learning probabilities. However, ECLPSO still cannot locate the global optimum or find a near-optimum solution for a number of problems. In this paper, we study further bettering the exploration performance of ECLPSO. We propose to assign an independent inertia weight and an independent acceleration coefficient corresponding to each dimension of the search space, as well as an independent learning probability for each particle on each dimension. Like ECLPSO, a normative interval bounded by the minimum and maximum personal best positions is determined with respect to each dimension in each generation. The dimensional independent maximum velocities, inertia weights, acceleration coefficients, and learning probabilities are proposed to be adaptively updated based on the dimensional normative intervals in order to facilitate exploration, exploitation, and convergence, particularly exploration. Our proposed metaheuristic, called adaptive CLPSO (ACLPSO), is evaluated on various benchmark functions. Experimental results demonstrate that the dimensional independent and adaptive maximum velocities, inertia weights, acceleration coefficients, and learning probabilities help to significantly mend ECLPSO's exploration performance, and ACLPSO is able to derive the global optimum or a near-optimum solution on all the benchmark functions for all the runs with parameters appropriately set.

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          Most cited references51

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          Comprehensive learning particle swarm optimizer for global optimization of multimodal functions

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            Multiobjective Optimization Problems With Complicated Pareto Sets, MOEA/D and NSGA-II

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              Adaptive particle swarm optimization.

              An adaptive particle swarm optimization (APSO) that features better search efficiency than classical particle swarm optimization (PSO) is presented. More importantly, it can perform a global search over the entire search space with faster convergence speed. The APSO consists of two main steps. First, by evaluating the population distribution and particle fitness, a real-time evolutionary state estimation procedure is performed to identify one of the following four defined evolutionary states, including exploration, exploitation, convergence, and jumping out in each generation. It enables the automatic control of inertia weight, acceleration coefficients, and other algorithmic parameters at run time to improve the search efficiency and convergence speed. Then, an elitist learning strategy is performed when the evolutionary state is classified as convergence state. The strategy will act on the globally best particle to jump out of the likely local optima. The APSO has comprehensively been evaluated on 12 unimodal and multimodal benchmark functions. The effects of parameter adaptation and elitist learning will be studied. Results show that APSO substantially enhances the performance of the PSO paradigm in terms of convergence speed, global optimality, solution accuracy, and algorithm reliability. As APSO introduces two new parameters to the PSO paradigm only, it does not introduce an additional design or implementation complexity.
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                Author and article information

                Contributors
                Journal
                Comput Intell Neurosci
                Comput Intell Neurosci
                cin
                Computational Intelligence and Neuroscience
                Hindawi
                1687-5265
                1687-5273
                2021
                5 February 2021
                : 2021
                : 6628564
                Affiliations
                1Provincial Key Laboratory for Water Information Cooperative Sensing and Intelligent Processing, Nanchang Institute of Technology, Nanchang, Jiangxi 330099, China
                2School of Mathematics and Information Science, Shaanxi Normal University, Xi'an, Shaanxi 710119, China
                Author notes

                Academic Editor: Raşit Köker

                Author information
                https://orcid.org/0000-0001-5591-3526
                Article
                10.1155/2021/6628564
                7880717
                5df7f5e8-7aae-4254-b42f-03f43c19d332
                Copyright © 2021 Xiang Yu and Yu Qiao.

                This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

                History
                : 6 October 2020
                : 3 January 2021
                : 25 January 2021
                Funding
                Funded by: National Natural Science Foundation of China
                Award ID: 61703199
                Funded by: Natural Science Foundation of Jiangxi Province
                Award ID: 2018ACB21029
                Funded by: Natural Science Foundation of Shaanxi Province
                Award ID: 2020JM-278
                Funded by: Central Universities Fundamental Research Foundation Project
                Award ID: GK202003006
                Categories
                Research Article

                Neurosciences
                Neurosciences

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