A novel end-to-end deep learning model for predicting the full stress field of tensioned membrane structures

To overcome the constraints of conventional finite element analysis, particularly its inefficiency in handling real-time feedback due to repetitive modeling and calculations. A deep learning model consisting of two essential modules was presented. The stress encoding-decoding module employs convolut...

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Vydané v:KSCE Journal of Civil Engineering Ročník 29; číslo 4; s. 100073 - 12
Hlavní autori: Xu, Junhao, Sheng, LingYu, Zhang, Yingying, Fei, Shuhuan, Zhao, Ziang
Médium: Journal Article
Jazyk:English
Vydavateľské údaje: 대한토목학회 01.04.2025
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ISSN:1226-7988, 1976-3808
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Shrnutí:To overcome the constraints of conventional finite element analysis, particularly its inefficiency in handling real-time feedback due to repetitive modeling and calculations. A deep learning model consisting of two essential modules was presented. The stress encoding-decoding module employs convolutional autoencoders (CAE) to compress high-dimensional stress tensors into a set of scalar data known as stress codes. The nonlinear mapping module utilizes a deep neural network (DNN) to map the boundary conditions to the stress code, thereby facilitating the prediction of the full stress field in the tensioned membrane structure. The results show that the maximum structure similarity index measure (SSIM) between original stress images and reconstructed stress images is 0.905 and the minimum is 0.879. The determination coefficient of the nonlinear mapping module is as high as 0.991 after 5-fold cross-verification. The trained CAE-DNN model can generate stress tensor based on tensile load and displacement within 1 second and the mean values of normalized mean absolute error (NMAE) and normalized absolute error (NAE) for all testing data were 9.58 % and 10.43 % respectively. The novel end-to-end deep learning model is an efficient and accurate prestress analysis tool for the field of membrane structure, solving the problem of real-time calculation and repeated calculation of structure, and providing technical innovation for perceiving the overall mechanical state of membrane structure in real-time digital twin model. KCI Citation Count: 0
Bibliografia:https://doi.org/10.1016/j.kscej.2024.100073
ISSN:1226-7988
1976-3808
DOI:10.1016/j.kscej.2024.100073