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Giant Armadillo Optimization: A New Bio-Inspired Metaheuristic Algorithm for Solving Optimization Problems

Omar AlsayyedDepartment of Mathematics, Faculty of Science, The Hashemite University, P.O. Box 330127, Zarqa 13133, JordanTareq HamadnehDepartment of Matematics, Al Zaytoonah University of Jordan, Amman 11733, JordanHassan Al-TarawnehDepartment of Data Sciences and Artificial Intelligence, Al-Ahliyya Amman University, Amman 11942, JordanMohammad AlqudahDepartment of Basic Sciences, German Jordanian University, Amman 11180, JordanSaikat GochhaitNeuroscience Research Institute, Samara State Medical University, 89 Chapaevskaya str., 443001 Samara, RussiaIrina LeonovaFaculty of Social Sciences, Lobachevsky University, 603950 Nizhny Novgorod, RussiaO.P. MalikDepartment of Electrical and Software Engineering, University of Calgary, Calgary, AB T2N 1N4, CanadaMohammad DehghaniDepartment of Electrical and Electronics Engineering, Shiraz University of Technology, Shiraz 7155713876, Iran
2023en
ABI

Аннотация

In this paper, a new bio-inspired metaheuristic algorithm called Giant Armadillo Optimization (GAO) is introduced, which imitates the natural behavior of giant armadillo in the wild. The fundamental inspiration in the design of GAO is derived from the hunting strategy of giant armadillos in moving towards prey positions and digging termite mounds. The theory of GAO is expressed and mathematically modeled in two phases: (i) exploration based on simulating the movement of giant armadillos towards termite mounds, and (ii) exploitation based on simulating giant armadillos' digging skills in order to prey on and rip open termite mounds. The performance of GAO in handling optimization tasks is evaluated in order to solve the CEC 2017 test suite for problem dimensions equal to 10, 30, 50, and 100. The optimization results show that GAO is able to achieve effective solutions for optimization problems by benefiting from its high abilities in exploration, exploitation, and balancing them during the search process. The quality of the results obtained from GAO is compared with the performance of twelve well-known metaheuristic algorithms. The simulation results show that GAO presents superior performance compared to competitor algorithms by providing better results for most of the benchmark functions. The statistical analysis of the Wilcoxon rank sum test confirms that GAO has a significant statistical superiority over competitor algorithms. The implementation of GAO on the CEC 2011 test suite and four engineering design problems show that the proposed approach has effective performance in dealing with real-world applications.

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