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A novel hybrid flow direction optimizer-dynamic oppositional based learning algorithm for solving complex constrained mechanical design problems

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2023-01-27

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Walter de Gruyter Gmbh

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Abstract

In this present work, mechanical engineering optimization problems are solved by employing a novel optimizer (HFDO-DOBL) based on a physics-based flow direction optimizer (FDO) and dynamic oppositional-based learning. Five real-world engineering problems, viz. planetary gear train, hydrostatic thrust bearing, robot gripper, rolling bearing, and multiple disc clutch brake, are considered. The computational results obtained by HFDO-DOBL are compared with several newly proposed algorithms. The statistical analysis demonstrates the HFDO-DOBL dominance in finding optimal solutions relatively and competitiveness in solving constraint design optimization problems.

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Engineering optimization, Crashworthiness, Dynamic oppositional based learning, Flow direction algorithm, Hydrostatic thrust bearing, Mechanical design, Planetary gear train, Robot gripper, Science & technology, Technology, Materials science, characterization & testing, Materials science

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