4.7 Article

An expanded particle swarm optimization based on multi-exemplar and forgetting ability

Journal

INFORMATION SCIENCES
Volume 508, Issue -, Pages 105-120

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2019.08.065

Keywords

Particle swarm optimization; Global optimization; Multi-exemplar; Forgetting ability; Adaptive adjustment

Funding

  1. National Natural Science Foundation of China [61663009, 61602174, 61762036, 61806204, 61876136]
  2. National Natural Science Foundation of Jiangxi Province [20171BAB202012, 20171BAB202019]
  3. Foundation of Fujian Province Great Teaching Reform [FBJG 20180015]
  4. Research Project of Jiangxi Provincial Department of Communication and Transportation [2017D0038]

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There are two phenomena in human society and biological systems. One is that people prefer to extract knowledge from multiple exemplars to obtain better learning ability. The other one is the forgetting ability that helps the encoding and consolidation of new information by removing unused or unwanted memories. Inspired by these phenomena, this paper transplants the multi-exemplar and forgetting ability to particle swarm optimization (PSO), and proposes an eXpanded PSO, called XPSO. Firstly, XPSO expands the social-learning part of each particle from one exemplar to two exemplars, learning from both the locally and the globally best exemplars. Secondly, XPSO assigns different forgetting abilities to different particles, simulating the forgetting phenomenon in the human society. Under the multi-exemplar learning model with forgetting ability, XPSO further adopts an adaptive scheme to update the acceleration coefficients and selects a reselection mechanism to update the population topology. The effectiveness of these additional proposed strategies is verified by extensive experiments. Moreover, comparison results among XPSO and other 9 popular PSO as well as 3 non-PSO algorithms on CEC'13 test suite suggest that XPSO attains a very promising performance for solving different types of functions, contributing to both higher solution accuracy and faster convergence speed. (C) 2019 Published by Elsevier Inc.

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