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Advanced structural design of engineering components utilizing an artificial neural network and gndo algorithm

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Walter De Gruyter Gmbh

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In today's competitive environment, the lightweighting of vehicle components is under intense study. While some of these studies focus on material modification, a very important part of these studies focuses on lightweighting the same material. The most widely used techniques in light-weight studies are topology, topography, size, shape optimization, and metaheuristic algorithms. This work introduces a novel hybrid generalized normal distribution optimization (GNDO) simulated annealing algorithm (GNDO-SA) adapted to optimize a vehicle component made of aluminum material. The focus is on shape optimization, which aims to minimize the weight of the vehicle component while ensuring that stress constraints are met. A combination of latin hypercube sampling (LHS) and artificial neural network is used to generate the mathematical equations governing mathematical equations for the objective/constraint used in the optimization. These findings highlight the effectiveness and superiority of the GNDO-SA method for optimization problems.

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Arithmetic optimization algorithm, Optimal machining parameters, Salp swarm algorithm, Optimum design, Differential evolution, Gravitational search, Vehicle, Crashworthiness, Vehicle component, Aluminum, Gndo algorithm, Finite element, Simulated annealing, Science & technology, Technology, Materials science, characterization & testing, Materials science

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