Prediction of springback in local bending of hull plates using an optimized backpropagation neural network

Xu, Binjiang; Li, Lei; Wang, Zhao; Zhou, Honggen; Liu, Di

Springback is an inevitable problem in the local bending process of hull plates, which leads to low processing efficiency and affects the assembly accuracy. Therefore, the prediction of the springback effect, as a result of the local bending of hull plates, bears great significance. This paper proposes a springback prediction model based on a backpropagation neural network (BPNN), considering geometric and process parameters. Genetic algorithm (GA) and improved particle swarm optimization (PSO) algorithms are used to improve the global search capability of BPNN, which tends to fall into local optimal solutions, in order to find the global optimal solution. The result shows that the proposed springback prediction model, based on the BPNN optimized by genetic algorithm, is faster and offers smaller prediction error on the springback due to local bending.

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Xu, Binjiang / Li, Lei / Wang, Zhao / et al: Prediction of springback in local bending of hull plates using an optimized backpropagation neural network. 2021. Copernicus Publications.

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