Gaussian Quantum-Behaved Particle Swarm with Learning Automata-Adaptive Attractor and Local Search

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Author listSivakorn Sansawas; Tanathep Roongpipat; Saksorn Ruangtanusak; Jessada Chaikhet; Chukiat Worasucheep; Warin Wattanapornprom

Publication year2022

Start page1

End page4

Number of pages4

URLhttps://ieeexplore.ieee.org/document/9795535


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Abstract

This paper presents Gaussian Quantum-Behaved Particle Swarm Optimization (GQPSO) with a Learning Automata- Adaptive Attractor (LAAA) and a Probabilistic Local Search Mutation Operator (PLSMO). The LAAA allows the swarm to reinforce prior experience and adapt the behavior of the algorithm to a specific environment. The PLSMO was used as the supporting search to avoid premature convergence. The authors presented the numerical results of 16 benchmark functions to demonstrate that the proposed GQPSO-LALO outperforms the original QPSO and its variants in terms of global search and robustness.


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Last updated on 2023-02-10 at 07:37