Boosting aquila optimizer by marine predators algorithm for combinatorial optimization

Author:

Wang Shuang123ORCID,Jia Heming3,Hussien Abdelazim G45ORCID,Abualigah Laith67891011,Lin Guanjun3,Wei Hongwei3,Lin Zhenheng12,Dhal Krishna Gopal12

Affiliation:

1. New Engineering Industry College, Putian University , Putian 351100, Fujian , China

2. Engineering Research Center of Big Data Application in Private Health Medicine, Fujian Province University , Putian 351100, Fujian , China

3. College of Information Engineering, Sanming University , Sanming 365004, Fujian , China

4. Faculty of Science, Fayoum University , Fayoum 63514 , Egypt

5. Department of Computer and Information Science, Linköping University , SE-58183 Linköping , Sweden

6. Artificial Intelligence and Sensing Technologies (AIST) Research Center, University of Tabuk , Tabuk 71491 , Saudi Arabia

7. Department of Electrical and Computer Engineering, Lebanese American University , Byblos 13-5053 , Lebanon

8. Hourani Center for Applied Scientific Research, Al-Ahliyya Amman University , Amman 19328 , Jordan

9. MEU Research Unit, Middle East University , Amman 11831 , Jordan

10. College of Engineering, Yuan Ze University , Taoyuan 32003 , Taiwan

11. Applied science research center, Applied science private university , Amman 11931 , Jordan

12. Department of Computer Science and Application, Midnapore College (Autonomous) , Paschim Medinipur, West Bengal , India

Abstract

Abstract In this study, an improved version of aquila optimizer (AO) known as EHAOMPA has been developed by using the marine predators algorithm (MPA). MPA is a recent and well-behaved optimizer with a unique memory saving and fish aggregating devices mechanism. At the same time, it suffers from various defects such as inadequate global search, sluggish convergence, and stagnation of local optima. However, AO has contented robust global exploration capability, fast convergence speed, and high search efficiency. Thus, the proposed EHAOMPA aims to complement the shortcomings of AO and MPA while bringing new features. Specifically, the representative-based hunting technique is incorporated into the exploration stage to enhance population diversity. At the same time, random opposition-based learning is introduced into the exploitation stage to prevent the optimizer from sticking to local optima. This study tests the performance of EHAOMPA’s on 23 standard mathematical benchmark functions, 29 complex test functions from the CEC2017 test suite, six constrained industrial engineering design problems, and a convolutional neural network hyperparameter (CNN-hyperparameter) optimization for Corona Virus Disease 19 (COVID-19) computed tomography-image detection problem. EHAOMPA is compared with four existing optimization algorithm types, achieving the best performance on both numerical and practical issues. Compared with other methods, the test function results demonstrate that EHAOMPA exhibits a more potent global search capability, a higher convergence rate, increased accuracy, and an improved ability to avoid local optima. The excellent experimental results in practical problems indicate that the developed EHAOMPA has great potential in solving real-world optimization problems. The combination of multiple strategies can effectively improve the performance of the algorithm. The source code of the EHAOMPA is publicly available at https://github.com/WangShuang92/EHAOMPA.

Funder

Putian University

Putian Science and Technology Bureau

Publisher

Oxford University Press (OUP)

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