Hybrid particle swarm optimization with spiral-shaped mechanism for solving high-dimension problems

Autores

  • Humberto Martins Mendonça Duarte Universidade Federal do Tocantins
  • Rafael Lima de Carvalho Universidade Federal do Tocantins

DOI:

https://doi.org/10.20873/uft.2675-3588.2020v1n1p1

Palavras-chave:

Particle swarm optimization, High-dimensional global optimization, Optimization

Resumo

Particle swarm optimization (PSO) is a well-known metaheuristic, whose performance for solving global optimization problems has been thoroughly explored. It has been established that without proper manipulation of the inertia weight parameter, the search for a global optima may fail. In order to handle this problem, we investigate the experimental performance of a PSO-based metaheuristic known as HPSO-SSM, which uses a logistic map sequence to control the inertia weight to enhance the diversity in the search process, and a spiral-shaped mechanism as a local search operator, as well as two dynamic correction factors to the position formula. Thus, we present an application of this variant for solving high-dimensional optimization problems, and evaluate its effectiveness against 24 benchmark functions. A comparison between both methods showed that the proposed variant can escape from local optima, and demonstrates faster convergence for almost every evaluated function.

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Publicado

2020-03-03

Como Citar

[1]
Mendonça Duarte, H.M. e Lima de Carvalho, R. 2020. Hybrid particle swarm optimization with spiral-shaped mechanism for solving high-dimension problems. Academic Journal on Computing, Engineering and Applied Mathematics. 1, 1 (mar. 2020), 1–6. DOI:https://doi.org/10.20873/uft.2675-3588.2020v1n1p1.

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