4.4 Article

Reptile search algorithm and kriging surrogate model for structural design optimization with natural frequency constraints

Journal

MATERIALS TESTING
Volume 64, Issue 10, Pages 1504-1511

Publisher

WALTER DE GRUYTER GMBH
DOI: 10.1515/mt-2022-0048

Keywords

battle royale optimization algorithm; brake pedal; engineering structures; mayfly optimization algorithm; multi-level cross-entropy optimizer; optimization; red fox optimization algorithm; reptile search algorithm

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This study is the first to apply the reptile search algorithm (RSA) to engineering design problems. The RSA is used to optimize the design of a bolted rim and a vehicle suspension arm, achieving a 13% weight reduction compared to the original structures. The study demonstrates that RSA is an efficient metaheuristic algorithm.
This study explores the use of a recent metaheuristic algorithm called a reptile search algorithm (RSA) to handle engineering design optimization problems. It is the first application of the RSA to engineering design problems in literature. The RSA optimizer is first applied to the design of a bolted rim, which is constrained optimization. The developed algorithm is then used to solve the optimization problem of a vehicle suspension arm, which aims to solve the weight reduction under natural frequency constraints. As function evaluations are achieved by finite element analysis, the Kriging surrogate model is integrated into the RSA algorithm. It is revealed that the optimum result gives a 13% weight reduction compared to the original structure. This study shows that RSA is an efficient metaheuristic as other metaheuristics such as the mayfly optimization algorithm, battle royale optimization algorithm, multi-level cross-entropy optimizer, and red fox optimization algorithm.

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