A Comparative Analysis of the Applicability of New Generation Metaheuristic Algorithms to Engineering Optimization Problems
Abstract
The quest to solve complex, multidimensional, and nonlinear optimization problems frequently encountered in engineering and scientific research has increased interest in heuristic and metaheuristic algorithms. In this study, six new-generation metaheuristic algorithms that have not been previously applied to engineering problems in the literature are introduced and tested on various engineering problems. The Hiking Optimization Algorithm (HOA) models route selection based on slope, simulating the paths followed by individuals during nature hikes. The Fungal Growth Optimization (FGO) algorithm is inspired by the growth and propagation mechanisms of fungi, while the Mirage Simulation Optimization (MSO) seeks solutions based on the exploration-exploitation balance of atmospheric mirages. The Stellar Oscillation Optimization (SOO) mimics the internal oscillations of stars and follows a strategy from global to local search. The mathematically grounded Adaptive Evolutionary Algorithm (AEA) offers an evolutionary learning approach by evaluating potential knowledge in unexplored regions. These algorithms were tested for the first time on six engineering design problems, including a cantilever beam, speed reducer, crashworthiness, multi-disc clutch-brake, gas transmission compressor, and industrial cooling system. The results revealed that the Stellar Oscillation Optimization (SOO) algorithm demonstrated superior performance in terms of average solution quality and convergence speed compared to the other algorithms.
Keywords
References
- K. Hussain, M. N. Mohd Salleh, S. Cheng, Y. Shi, Metaheuristic research: a comprehensive survey, Artificial intelligence review, 52 (2019), 2191–2233.
- M. W. Moreira, J. J. Rodrigues, V. Korotaev, J. Al-Muhtadi, N. Kumar, A comprehensive review on smart decision support systems for health care, IEEE Systems Journal, 13 (2019), 3536–3545.
- L. Abualigah, M. A. Elaziz, A. M. Khasawneh, M. Alshinwan, R. A. Ibrahim, M. A. Al-Qaness, et al., Meta-heuristic optimization algorithms for solving real-world mechanical engineering design problems: a comprehensive survey, applications, comparative analysis, and results, Neural Computing and Applications, 34 (2022), 4081–4110.
- M. Abdel-Basset, R. Mohamed, K. M. Sallam, R. K. Chakrabortty, Light spectrum optimizer: a novel physics-inspired metaheuristic optimization algorithm, Mathematics, 10 (2022), 3466.
- A. Yaqoob, N. K. Verma, R. M. Aziz, Metaheuristic algorithms and their applications in different fields: a comprehensive review, Metaheuristics for Machine Learning: Algorithms and Applications, (2024), 1–35.
- S. O. Oladejo, S. O. Ekwe, S. Mirjalili, The Hiking Optimization Algorithm: A novel human-based metaheuristic approach, Knowledge-Based Systems, 296 (2024), 111880.
- M. Abdel-Basset, R. Mohamed, M. Abouhawwash, Fungal growth optimizer: A novel nature-inspired metaheuristic algorithm for stochastic optimization, Computer Methods in Applied Mechanics and Engineering, 437 (2025), 117825.
- J. He, S. Zhao, J. Ding, Y. Wang, Mirage search optimization: Application to path planning and engineering design problems, Advances in Engineering Software, 203 (2025), 103883.
Details
Primary Language
English
Subjects
Artificial Intelligence (Other)
Journal Section
Research Article
Authors
Yusuf Elmas
0009-0004-9952-6551
Türkiye
Sibel Arslan
0000-0003-3626-553X
Türkiye
Emre Yalçın
0000-0003-3818-6712
Türkiye
Early Pub Date
June 18, 2026
Publication Date
June 30, 2026
Submission Date
August 6, 2025
Acceptance Date
April 10, 2026
Published in Issue
Year 2026 Volume: 9 Number: 3
