An efficient double adaptive random spare reinforced whale optimization algorithm

•This paper proposes an enhanced whale optimizer (WOA) for global search.•Strategy of random replacement is created to enhance the convergence speed of WOA.•Strategy of double adaptive weight is introduced to improve the ability of global search of WOA.•The excellent performance is validated on benc...

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Veröffentlicht in:Expert systems with applications 2020-09, Vol.154, p.113018, Article 113018
Hauptverfasser: Chen, Huiling, Yang, Chenjun, Heidari, Ali Asghar, Zhao, Xuehua
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Yang, Chenjun
Heidari, Ali Asghar
Zhao, Xuehua
description •This paper proposes an enhanced whale optimizer (WOA) for global search.•Strategy of random replacement is created to enhance the convergence speed of WOA.•Strategy of double adaptive weight is introduced to improve the ability of global search of WOA.•The excellent performance is validated on benchmark problems and engineering problems. Whale optimization algorithm (WOA) is a newly developed meta-heuristic algorithm, which is mainly based on the predation behavior of humpback whales in the ocean. In this paper, a reinforced variant called RDWOA is proposed to alleviate the central shortcomings of the original method that converges slowly, and it is easy to fall into local optimum when dealing with multi-dimensional problems. Two strategies are introduced into the original WOA. One is the strategy of random spare or random replacement to enhance the convergence speed of this algorithm. The other method is the strategy of double adaptive weight, which is introduced to improve the exploratory searching trends during the early stages and exploitative behaviors in the later stages. The combination of the two strategies significantly improves the convergence speed and the overall search ability of the algorithm. The advantages of the proposed RDWOA are deeply analyzed and studied by using typical benchmark examples such as unimodal, multi-modal, and fixed multi-modal functions, and three famous engineering design problems. The experimental results show that the exploratory and exploitative tendencies of WOA and its convergence mode have been significantly improved. The RDWOA developed in this paper is a promising improved WOA variant, and it has better efficacy compared to other state-of-the-art algorithms.
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Whale optimization algorithm (WOA) is a newly developed meta-heuristic algorithm, which is mainly based on the predation behavior of humpback whales in the ocean. In this paper, a reinforced variant called RDWOA is proposed to alleviate the central shortcomings of the original method that converges slowly, and it is easy to fall into local optimum when dealing with multi-dimensional problems. Two strategies are introduced into the original WOA. One is the strategy of random spare or random replacement to enhance the convergence speed of this algorithm. The other method is the strategy of double adaptive weight, which is introduced to improve the exploratory searching trends during the early stages and exploitative behaviors in the later stages. The combination of the two strategies significantly improves the convergence speed and the overall search ability of the algorithm. The advantages of the proposed RDWOA are deeply analyzed and studied by using typical benchmark examples such as unimodal, multi-modal, and fixed multi-modal functions, and three famous engineering design problems. The experimental results show that the exploratory and exploitative tendencies of WOA and its convergence mode have been significantly improved. 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Whale optimization algorithm (WOA) is a newly developed meta-heuristic algorithm, which is mainly based on the predation behavior of humpback whales in the ocean. In this paper, a reinforced variant called RDWOA is proposed to alleviate the central shortcomings of the original method that converges slowly, and it is easy to fall into local optimum when dealing with multi-dimensional problems. Two strategies are introduced into the original WOA. One is the strategy of random spare or random replacement to enhance the convergence speed of this algorithm. The other method is the strategy of double adaptive weight, which is introduced to improve the exploratory searching trends during the early stages and exploitative behaviors in the later stages. The combination of the two strategies significantly improves the convergence speed and the overall search ability of the algorithm. 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subjects Adaptive algorithms
Convergence
Design engineering
Engineering design
Global optimization
Heuristic methods
Nature-inspired computing
Optimization
Optimization algorithms
Swarm-intelligence
Whale optimization
title An efficient double adaptive random spare reinforced whale optimization algorithm
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