To read this content please select one of the options below:

An exploration-enhanced elephant herding optimization

Islam A. ElShaarawy (Department of Electrical Engineering, Faculty of Engineering (Shoubra), Benha University, Cairo, Egypt)
Essam H. Houssein (Department of Computer Science, Faculty of Computers and Information, Minia University, Minia, Egypt)
Fatma Helmy Ismail (Department of Computer Science, Faculty of Computer Science, Misr International University, Cairo, Egypt)
Aboul Ella Hassanien (Department of Information Technology, Faculty of Computers and Information, Cairo University, Cairo, Egypt)

Engineering Computations

ISSN: 0264-4401

Article publication date: 19 July 2019

Issue publication date: 19 November 2019

210

Abstract

Purpose

The purpose of this paper is to propose an enhanced elephant herding optimization (EEHO) algorithm by improving the exploration phase to overcome the fast-unjustified convergence toward the origin of the native EHO. The exploration and exploitation of the proposed EEHO are achieved by updating both clan and separation operators.

Design/methodology/approach

The original EHO shows fast unjustified convergence toward the origin specifically, a constant function is used as a benchmark for inspecting the biased convergence of evolutionary algorithms. Furthermore, the star discrepancy measure is adopted to quantify the quality of the exploration phase of evolutionary algorithms in general.

Findings

In experiments, EEHO has shown a better performance of convergence rate compared with the original EHO. Reasons behind this performance are: EEHO proposes a more exploitative search method than the one used in EHO and the balanced control of exploration and exploitation based on fixing clan updating operator and separating operator. Operator γ is added to EEHO assists to escape from local optima, which commonly exist in the search space. The proposed EEHO controls the convergence rate and the random walk independently. Eventually, the quantitative and qualitative results revealed that the proposed EEHO outperforms the original EHO.

Research limitations/implications

Therefore, the pros and cons are reported as follows: pros of EEHO compared to EHO – 1) unbiased exploration of the whole search space thanks to the proposed update operator that fixed the unjustified convergence of the EHO toward the origin and the proposed separating operator that fixed the tendency of EHO to introduce new elephants at the boundary of the search space; and 2) the ability to control exploration–exploitation trade-off by independently controverting the convergence rate and the random walk using different parameters – cons EEHO compared to EHO: 1) suitable values for three parameters (rather than two only) have to be found to use EEHO.

Originality/value

As the original EHO shows fast unjustified convergence toward the origin specifically, the search method adopted in EEHO is more exploitative than the one used in EHO because of the balanced control of exploration and exploitation based on fixing clan updating operator and separating operator. Further, the star discrepancy measure is adopted to quantify the quality of exploration phase of evolutionary algorithms in general. Operator γ that added EEHO allows the successive local and global searching (exploration and exploitation) and helps escaping from local minima that commonly exist in the search space.

Keywords

Citation

ElShaarawy, I.A., Houssein, E.H., Ismail, F.H. and Hassanien, A.E. (2019), "An exploration-enhanced elephant herding optimization", Engineering Computations, Vol. 36 No. 9, pp. 3029-3046. https://doi.org/10.1108/EC-09-2018-0424

Publisher

:

Emerald Publishing Limited

Copyright © 2019, Emerald Publishing Limited

Related articles