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中文核心期刊
Jiang Shouyan, Wan Chen, Sun Liguo, Du Chengbin. Crack-like defect inversion model based on SBFEM and deep learning. Chinese Journal of Theoretical and Applied Mechanics, 2021, 53(10): 2724-2735. DOI: 10.6052/0459-1879-21-360
Citation: Jiang Shouyan, Wan Chen, Sun Liguo, Du Chengbin. Crack-like defect inversion model based on SBFEM and deep learning. Chinese Journal of Theoretical and Applied Mechanics, 2021, 53(10): 2724-2735. DOI: 10.6052/0459-1879-21-360

CRACK-LIKE DEFECT INVERSION MODEL BASED ON SBFEM AND DEEP LEARNING

  • The identification of structural internal defects is an important research content of structural health monitoring. At present, the structural safety inspection based on non-destructive testing mainly focuses on qualitative analysis, so it is difficult to identify the scale of defects quantitatively. In this paper, an inversion model is proposed by combing the scaled boundary finite element methods (SBFEM) and deep learning. The identification of crack-like defects can be performed in structures based on the feedback signal of Lamb wave propagation. By randomly generating defect information, i.e. position and size, the SBFEM can be used to simulate the signal propagation process of Lamb wave in structures with defects. The SBFEM only needs to discretize the structure boundary, which can minimize the re-meshing process and greatly improve the computational efficiency. When Lamb wave propagates in a cracked structure, the feedback signal of the observation point can reflect crack information. Based on this characteristic, enough training data reflecting the characteristics of the problem can be provided for the deep learning model. The proposed defect inversion model avoids the iterative process of minimizing the objective function of the traditional inverse problems, and greatly reduces the computational cost on the premise of ensuring accuracy. Numerical examples of plates with single and multiple cracks are analyzed. The results show that the defect identification model can accurately quantify the defects in the structure. It also has a good identification effect for shallow cracks. The model also shows robustness to the noisy signal model.
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