高分辨率厚度映射与Deepfit和Lamb导波

Junkai Tong, Min Lin, Jian Li, Shili Chen, Yang Liu
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摘要

准确预测板、管、压力容器等金属结构的剩余壁厚对石油化工行业具有重要意义。然而,传统的超声探测技术需要对目标结构进行逐点扫描,这需要花费大量的时间和金钱。在本文中,我们提出了一种鲁棒的导波层析成像算法DeepFIT。该算法采用神经网络逼近快速反演层析成像(FIT)中下降方向矩阵的执行。为了实现鲁棒成像,将A0模式Lamb导波的信号分量和相应的相速度图输入DeepFIT进行训练。该技术保证了反演过程的显著加快,避免了全波形反演(FWI)中Hessian和Jacobian矩阵计算带来的巨大计算负担。该方法为快速、鲁棒的兰姆导波定量工业检测奠定了基础。
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High-Resolution Thickness Mapping with Deepfit and Lamb Guided Waves
Accurately predicting the remaining wall thickness of metal structures like plates, pipes and pressure vessels is of significant importance to the petrochemical industry. However, traditional ultrasonic probing techniques demand point by point scan of the target structures, which costs enormous time and money. In this paper, we present a robust guided wave tomography algorithm, DeepFIT. The algorithm adopts a neural network to approximate the execution of descent direction matrix in fast inversion tomography (FIT). To achieve robust imaging, signal components and corresponding phase velocity maps of A0 mode Lamb guided waves are input into DeepFIT for training. This technique guarantees that the inversion process can be significantly accelerated, circumventing the enormous computational burden caused by Hessian and Jacobian matrix calculation in full waveform inversion (FWI). The proposed method builds the foundation for fast and robust quantitative industrial inspection with Lamb guided waves.
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