4.6 Article

Binary Spring Search Algorithm for Solving Various Optimization Problems

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 3, 页码 -

出版社

MDPI
DOI: 10.3390/app11031286

关键词

optimization; Hooke’ s law; binary; spring search algorithm; binary spring search algorithm

资金

  1. Tecnologico de Monterrey
  2. FEMSA Foundation

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Population-based optimization algorithms, inspired by nature, provide solutions to optimization problems by simulating natural phenomena and physical laws. The Binary Spring Search Algorithm (BSSA) has been validated in various functions, showing competitiveness against high-performance algorithms.
One of the most powerful tools for solving optimization problems is optimization algorithms (inspired by nature) based on populations. These algorithms provide a solution to a problem by randomly searching in the search space. The design's central idea is derived from various natural phenomena, the behavior and living conditions of living organisms, laws of physics, etc. A new population-based optimization algorithm called the Binary Spring Search Algorithm (BSSA) is introduced to solve optimization problems. BSSA is an algorithm based on a simulation of the famous Hooke's law (physics) for the traditional weights and springs system. In this proposal, the population comprises weights that are connected by unique springs. The mathematical modeling of the proposed algorithm is presented to be used to achieve solutions to optimization problems. The results were thoroughly validated in different unimodal and multimodal functions; additionally, the BSSA was compared with high-performance algorithms: binary grasshopper optimization algorithm, binary dragonfly algorithm, binary bat algorithm, binary gravitational search algorithm, binary particle swarm optimization, and binary genetic algorithm. The results show the superiority of the BSSA. The results of the Friedman test corroborate that the BSSA is more competitive.

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