TY - JOUR
T1 - Deep learning and integrated approach to reconstrcut meshes from tomograms of 3D braided composites
AU - Liu, Xiaodong
AU - Liu, Chen
AU - Ge, Jingran
AU - Zhang, Diantang
AU - Liang, Jun
N1 - Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2024/8/18
Y1 - 2024/8/18
N2 - The meticulous reconstruction of three-dimensional (3D) braided composite materials serves as a crucial foundation for achieving high-fidelity simulations. Nonetheless, the transition from tomographic images to a 3D mesh entails a laborious and time-intensive process. To address this, an integrated procedure based on artificial intelligence is proposed for reconstructing meshes from tomograms. The initial stage of the process involves employing artificial intelligence techniques to segment complex contours and optimize high-dimensional contours. This facilitates the input of high-quality images needed to reconstruct accurate digital twins with strong convergence. The subsequent reconstruction phase integrates various calculations, including shape interpolation, contour extraction, 3D surface reconstruction, 3D mesh reconstruction, and element data interpolation. During this process, optimization objectives are set to minimize the deviation between the digital twin's surface and the actual surface, as well as to optimize the aspect ratio of the element mesh. Upon completion of the aforementioned steps, high-quality input files suitable for finite element calculations are directly generated. Ultimately, the proposed method utilizes the reconstructed finite element model for mechanical analysis, and the results are found to be in good agreement with experimental tests. This method offers an efficient and rapid way to achieve high-quality reconstruction of complex digital twins.
AB - The meticulous reconstruction of three-dimensional (3D) braided composite materials serves as a crucial foundation for achieving high-fidelity simulations. Nonetheless, the transition from tomographic images to a 3D mesh entails a laborious and time-intensive process. To address this, an integrated procedure based on artificial intelligence is proposed for reconstructing meshes from tomograms. The initial stage of the process involves employing artificial intelligence techniques to segment complex contours and optimize high-dimensional contours. This facilitates the input of high-quality images needed to reconstruct accurate digital twins with strong convergence. The subsequent reconstruction phase integrates various calculations, including shape interpolation, contour extraction, 3D surface reconstruction, 3D mesh reconstruction, and element data interpolation. During this process, optimization objectives are set to minimize the deviation between the digital twin's surface and the actual surface, as well as to optimize the aspect ratio of the element mesh. Upon completion of the aforementioned steps, high-quality input files suitable for finite element calculations are directly generated. Ultimately, the proposed method utilizes the reconstructed finite element model for mechanical analysis, and the results are found to be in good agreement with experimental tests. This method offers an efficient and rapid way to achieve high-quality reconstruction of complex digital twins.
KW - A: textile composites
KW - B: mechanical properties
KW - C: finite element analysis (FEA)
KW - D: X-ray computed tomography
KW - Reconstruction
UR - http://www.scopus.com/inward/record.url?scp=85197373001&partnerID=8YFLogxK
U2 - 10.1016/j.compscitech.2024.110737
DO - 10.1016/j.compscitech.2024.110737
M3 - Article
AN - SCOPUS:85197373001
SN - 0266-3538
VL - 255
JO - Composites Science and Technology
JF - Composites Science and Technology
M1 - 110737
ER -