Elephant herding optimization: Variants, hybrids, and applications

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Abstract

Elephant herding optimization (EHO) is a nature-inspired metaheuristic optimization algorithm based on the herding behavior of elephants. EHO uses a clan operator to update the distance of the elephants in each clan with respect to the position of a matriarch elephant. The superiority of the EHO method to several state-of-the-art metaheuristic algorithms has been demonstrated for many benchmark problems and in various application areas. A comprehensive review for the EHO-based algorithms and their applications are presented in this paper. Various aspects of the EHO variants for continuous optimization, combinatorial optimization, constrained optimization, and multi-objective optimization are reviewed. Future directions for research in the area of EHO are further discussed.

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Li, J., Lei, H., Alavi, A. H., & Wang, G. G. (2020). Elephant herding optimization: Variants, hybrids, and applications. Mathematics, 8(9). https://doi.org/10.3390/MATH8091415

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