Metaheuristic optimization algorithms are critical for solving complex, high-dimensional problems, however, their performance is frequently hindered by premature convergence, limited exploration capabilities, and an imbalance between search phases. While the grey wolf optimizer (GWO) has demonstrated considerable potential, its rigid linear control parameters and susceptibility to elite stagnation limit its scalability in highly deceptive landscapes. To overcome these critical drawbacks, this paper proposes the adaptive oppositional grey wolf optimizer (AOGWO), a robust and dynamically adaptive optimization framework. The proposed approach makes three primary contributions: (1) integrating a hybrid opposition-based learning (OBL) initialization framework to guarantee maximum initial spatial diversity, (2) implementing an adaptive cosine control strategy paired with a decaying Jumping Rate and Lévy flight perturbations to dynamically balance exploration and exploitation, and (3) proposing a highly targeted selective leading opposition (SLO) mechanism applied exclusively to the Alpha leader to prevent elite traps without incurring excessive computational overhead. The performance of AOGWO is evaluated using an extensive suite of 41 benchmark test functions (comprising the IEEE CEC2017 and CEC2022 suites) and seven challenging real-world engineering design problems. Comprehensive empirical results provide concrete data demonstrating AOGWO’s competitive performance. Quantitatively, AOGWO achieved the best mean performance on 24 out of 29 CEC2017 functions and all 12 CEC2022 functions. The Wilcoxon signed-rank test further showed statistically significant improvements over most competing algorithms at p < 0.05, while the Friedman test ranked AOGWO first overall across the evaluated benchmark suites. In constrained engineering design problems, AOGWO also produced competitive optimal solutions while satisfying the prescribed constraints. These findings suggest that AOGWO is a promising process innovation to advance practical optimization tasks, promote economic productivity, and improve resource efficiency.
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Khalid et al. (Mon,) studied this question.
synapsesocial.com/papers/6a28fe716f82f25be989bb45 — DOI: https://doi.org/10.1038/s41598-026-53090-6
Othman Waleed Khalid
Universiti Sains Malaysia
Nor Ashidi Mat Isa
Universiti Sains Malaysia
Karrar Mohsin Alwan
Middle Technical University
Scientific Reports
Universiti Sains Malaysia
Multimedia University
UCSI University
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