Publication: Manta ray foraging optimization algorithm and hybrid Taguchi salp swarm-Nelder-Mead algorithm for the structural design of engineering components
Date
Authors
Authors
Yıldız, Ali Rıza
Mehta, Pranav
Advisor
Language
Type
Publisher:
Gmbh
Journal Title
Journal ISSN
Volume Title
Abstract
The adaptability of metaheuristics is proliferating rapidly for optimizing engineering designs and structures. The imperative need for the fuel-efficient design of vehicles with lightweight structures is also a soaring demand raised by the different industries. This research contributes to both areas by using both the hybrid Taguchi salp swarm algorithm-Nelder-Mead (HTSSA-NM) and the manta ray foraging optimization (MRFO) algorithm to optimize the structure and shape of the automobile brake pedal. The results of HTSSA-NM and MRFO are compared with some well-established metaheuristics such as horse herd optimization algorithm, black widow optimization algorithm, squirrel search algorithm, and Harris Hawks optimization algorithm to verify its performance. It is observed that HTSSA-NM is robust and superior in terms of optimizing shape with the least mass of the engineering structures. Also, HTSSA-NM realize the best value for the present problem compared to the rest of the optimizer.
Description
Source:
Keywords:
Keywords
Nature-inspired algorithm, Gradient-based optimizer, Heat-transfer search, Performance, Hybrid salp swarm algorithm, Manta ray foraging optimizer, Nelder-mead, Structural optimization, Taguchi, Weight reduction, Science & technology, Technology, Materials science, characterization & testing, Materials science