Fast and Robust Damage Imaging With a Cascaded Deep Learning Technique

Junkai Tong, Min Lin, Jian Li, Xiaocen Wang, Guoan Chu, Yang Liu
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Abstract

Quantitatively measuring the health status of mechanical structures is a long-standing challenge in industrial fields. For plate structure inspection in tank and pressure vessels, traditional techniques using point by point scan with probes are tedious and time-consuming. Although algorithms like full waveform inversion (FWI) and diffraction tomography (DT) provide solutions to the problems, those methods are slow and suffer from convergence problems. In this article, we provided an effective damage imaging technique using dispersive A0 mode Lamb guided wave and an inversion algorithm called DLIS. The proposed algorithm adopts convolutional neural network (CNN) as first iteration to provide a fast and low-resolution background, and further optimizes the inversion results with descent direction matrix. In this way, the nonlinearity of the problem is effectively decomposed and yields better results. To test the robustness of the proposed method, we generated 1000 samples consists of corrosion defects with various sizes and shapes using 2D acoustic wave modeling. The inversion results prove the feasibility of our approach in plate heath monitoring and inspections. Note that this method also has full potential to be applied in the fast inspection of plates made of composite materials, pipes, geophysical prospecting and medical imaging because all these inverse problems share similar physics.
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基于级联深度学习技术的快速鲁棒损伤成像
机械结构健康状况的定量测量是工业领域长期存在的难题。对于储罐和压力容器的板结构检测,传统的探针逐点扫描技术既繁琐又耗时。虽然全波形反演(FWI)和衍射层析成像(DT)等算法提供了解决问题的方法,但这些方法速度慢且存在收敛问题。在本文中,我们提供了一种有效的损伤成像技术,使用色散A0模式Lamb导波和一种称为DLIS的反演算法。该算法采用卷积神经网络(CNN)作为第一次迭代,提供快速、低分辨率的背景,并利用下降方向矩阵进一步优化反演结果。这样可以有效地分解问题的非线性,得到较好的结果。为了测试所提出方法的鲁棒性,我们使用二维声波建模生成了1000个由不同尺寸和形状的腐蚀缺陷组成的样本。反演结果证明了该方法在钢板健康监测检测中的可行性。请注意,由于所有这些逆问题具有相似的物理性质,因此该方法在复合材料板、管道、地球物理勘探和医学成像的快速检测中也具有充分的应用潜力。
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