Skip to main content
Article

Quantum Chimp Optimization Algorithm: A Novel Integration of Quantum Mechanics Into the Chimp Optimization Framework for Enhanced Performance

Meng YuSchool of Artificial Intelligence , Anshan Normal University , Anshan , , ChinaMohammad KhisheApplied Science Research Center , Applied Science Private University , Amman , JordanLeren QianSchool of Computing and Augmented Intelligence , Arizona State University , Tempe 85281, AZ , USADiego R. MartínETSI Telecomunicación, Universidad Politécnica de Madrid , Av. Complutense 30 , Madrid , SpainLaith AbualigahCentre for Research Impact & Outcome , Chitkara University , Punjab , IndiaTaher M. GhazalCenter for Cyber Security, Faculty of Information Science and Technology , Universiti Kebangsaan Malaysia (UKM) , 43600 Bangi, Selangor , Malaysia
2024en
ABI

Abstract

Abstract This research introduces the Quantum Chimp Optimization Algorithm (QChOA), a pioneering methodology that integrates quantum mechanics principles into the Chimp Optimization Algorithm (ChOA). By incorporating non-linearity and uncertainty, the QChOA significantly improves the ChOA’s exploration and exploitation capabilities. A distinctive feature of the QChOA is its ability to displace a ’chimp,’ representing a potential solution, leading to heightened fitness levels compared to the current top search agent. Our comprehensive evaluation includes twenty- nine standard optimization test functions, thirty CEC-BC functions, the CEC06 test suite, ten real-world engineering challenges, and the IEEE CEC 2022 competition’s dynamic optimization problems. Comparative analyses involve four ChOA variants, three leading quantum-behaved algorithms, three state-ofthe-art algorithms, and eighteen benchmarks. Employing three non-parametric statistical tests (Wilcoxon rank-sum, Holm-Bonferroni, and Friedman average rank tests), results show that the QChOA outperforms counterparts in 51 out of 70 scenarios, exhibiting performance on par with SHADE and CMA-ES, and statistical equivalence to jDE100 and DISHchain1e+12. The study underscores the QChOA’s reliability and adaptability, positioning it as a valuable technique for diverse and intricate optimization challenges in the field.

Identifiers

Citations and references

Cited by 20 references