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Recent Advances in Computer Science and Communications

Editor-in-Chief

ISSN (Print): 2666-2558
ISSN (Online): 2666-2566

Research Article

Hyperbolic Spider Monkey Optimization Algorithm

Author(s): Sandeep Kumar, Anand Nayyar, Nhu Gia Nguyen and Rajani Kumari*

Volume 13, Issue 1, 2020

Page: [35 - 42] Pages: 8

DOI: 10.2174/2213275912666181207155334

Price: $65

Abstract

Background: Spider monkey optimization algorithm is recently developed natureinspired algorithm. It is based on fission-fusion social structure of spider monkeys. Perturbation rate is one of the important parameter of spider monkey optimization algorithm, which affects the convergence behavior of spider monkey optimization algorithm. Generally, perturbation rate is a linearly increasing function. However, due to the availability of non-linearity in different applications, a non-linear function may affect the performance of spider monkey optimization algorithm.

Objective: This paper provides a detailed study on various perturbation techniques used in spider monkey optimization algorithm and recommends a novel alternative of hyperbolic spider monkey optimization algorithm. The new approach is named as hyperbolic Spider Monkey Optimization algorithm as the perturbation strategy inspired by hyperbolic growth function.

Methods: The proposed algorithm is tested over a set of 23 CEC 2005 benchmark problems.

Results: The experimental outcomes illustrate that the hyperbolic spider monkey optimization algorithm effectively increase the reliability of spider monkey optimization algorithm in comparison to the considered approaches.

Conclusion: The hyperbolic spider monkey optimization algorithm provides improved perturbation rate, desirable convergence precision, rapid convergence rate, and improved global search capability.

Keywords: Fission-fusion social structure, swarm intelligence, nature inspired algorithm, optimization, hyperbolic growth, unconstrained optimization.

Graphical Abstract

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