TY - JOUR
T1 - Material twins generation of woven polymer composites based on ResL-U-Net convolutional neural networks
AU - Song, Yingying
AU - Qu, Zhaoliang
AU - Liao, Haitao
AU - Ai, Shigang
N1 - Publisher Copyright:
© 2023 Elsevier Ltd
PY - 2023/3/1
Y1 - 2023/3/1
N2 - Using digital material twins reveals the fabric architectures of woven composites and details the morphological features of fiber tows and defects, which makes a unique approach to accessing the mechanical performance of woven composites, especially the damage and failure behaviors. However, the current major challenges are accurately and efficiently segmenting low-contrast digital images, such as μCT images or MRI images, and reconstructing 3D braided structures. In this paper, a ResL-U-Net convolutional neural network is proposed, in which we use the leaky-ReLU activation function to improve efficiency. We use the residual structure to prevent network degradation and obtain excellent robustness and accuracy. The initial manufacturing defects are implanted into the finite element model by three-dimensional spatial mapping, which ensures the authenticity of defects on the one hand and high-quality mesh on the other. The damage evolution and fracture features of the GFRP material are investigated based on digital material twins; simultaneously, an in-situ CT tensile experiment is tailored to verify the simulations. It is shown that the simulations by the material twins demonstrated the mechanical performances of the GFRP very well, especially on the damage locations and material failure patterns.
AB - Using digital material twins reveals the fabric architectures of woven composites and details the morphological features of fiber tows and defects, which makes a unique approach to accessing the mechanical performance of woven composites, especially the damage and failure behaviors. However, the current major challenges are accurately and efficiently segmenting low-contrast digital images, such as μCT images or MRI images, and reconstructing 3D braided structures. In this paper, a ResL-U-Net convolutional neural network is proposed, in which we use the leaky-ReLU activation function to improve efficiency. We use the residual structure to prevent network degradation and obtain excellent robustness and accuracy. The initial manufacturing defects are implanted into the finite element model by three-dimensional spatial mapping, which ensures the authenticity of defects on the one hand and high-quality mesh on the other. The damage evolution and fracture features of the GFRP material are investigated based on digital material twins; simultaneously, an in-situ CT tensile experiment is tailored to verify the simulations. It is shown that the simulations by the material twins demonstrated the mechanical performances of the GFRP very well, especially on the damage locations and material failure patterns.
KW - CT image segmentation
KW - Deep learning
KW - Digital material twins
KW - Finite element analysis (FEA)
KW - Polymer-matrix composites (PMCs)
UR - http://www.scopus.com/inward/record.url?scp=85146053963&partnerID=8YFLogxK
U2 - 10.1016/j.compstruct.2023.116672
DO - 10.1016/j.compstruct.2023.116672
M3 - Article
AN - SCOPUS:85146053963
SN - 0263-8223
VL - 307
JO - Composite Structures
JF - Composite Structures
M1 - 116672
ER -