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Artificial neural network infused quasi oppositional learning partial reinforcement algorithm for structural design optimization of vehicle suspension components

Authors :
Sait, Sadiq M.
Mehta, Pranav
Pholdee, Nantiwat
Yıldız, Betül Sultan
Yıldız, Ali Rıza
Source :
Materialpruefung. Materials Testing. Materiaux Essais et Recherches; November 2024, Vol. 66 Issue: 11 p1855-1863, 9p
Publication Year :
2024

Abstract

This paper introduces and investigates an enhanced Partial Reinforcement Optimization Algorithm (E-PROA), a novel evolutionary algorithm inspired by partial reinforcement theory to efficiently solve complex engineering optimization problems. The proposed algorithm combines the Partial Reinforcement Optimization Algorithm (PROA) with a quasi-oppositional learning approach to improve the performance of the pure PROA. The E-PROA was applied to five distinct engineering design components: speed reducer design, step-cone pulley weight optimization, economic optimization of cantilever beams, coupling with bolted rim optimization, and vehicle suspension arm optimization problems. An artificial neural network as a metamodeling approach is used to obtain equations for shape optimization. Comparative analyses with other benchmark algorithms, such as the ship rescue optimization algorithm, mountain gazelle optimizer, and cheetah optimization algorithm, demonstrated the superior performance of E-PROA in terms of convergence rate, solution quality, and computational efficiency. The results indicate that E-PROA holds excellent promise as a technique for addressing complex engineering optimization problems.

Details

Language :
English
ISSN :
00255300
Volume :
66
Issue :
11
Database :
Supplemental Index
Journal :
Materialpruefung. Materials Testing. Materiaux Essais et Recherches
Publication Type :
Periodical
Accession number :
ejs67901781
Full Text :
https://doi.org/10.1515/mt-2024-0186