Beam Element Model Optimization Applying Artificial Neural Networks on BIW Concept Design 2007-01-3712
Vehicle body-in-white crash models are important for crashworthiness analysis. Conventional finite element methods usually deal with a large sized computational model and thus hinder efficient design evaluation. The proposed beam element method, with a significant reduction of model size and computation time, is capable of extracting essential safety dynamic characteristics. An artificial neural network is employed and the recurrent back-propagation learning rule trains the network to obtain optimized beam element features. Our analysis shows that the optimized beam element model can accurately capture the frontal crash characteristics of the impacting structures, and predict the vehicle body-in-white crash performance in conceptual design stage.
Citation: Dai, Y. and Duan, C., "Beam Element Model Optimization Applying Artificial Neural Networks on BIW Concept Design," SAE Technical Paper 2007-01-3712, 2007, https://doi.org/10.4271/2007-01-3712. Download Citation
Author(s):
Yi Dai, Chengwu Duan
Pages: 9
Event:
Asia Pacific Automotive Engineering Conference
ISSN:
0148-7191
e-ISSN:
2688-3627
Related Topics:
Computer simulation
Neural networks
Frontal collisions
Optimization
Education and training
Crashworthiness
Railway vehicles and equipment
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