Data-driven quantitative defect reconstructions using ultrasonic guided waves has recently demonstrated great potential in the area of non-destructive testing. In this paper, we develop an efficient deep learning-based defect reconstruction framework, called NetInv, which recasts the inverse guided wave scattering problem as a data-driven supervised learning progress that realizes a mapping between reflection coefficients in wavenumber domain and defect profiles in the spatial domain. The superiorities of the proposed NetInv over conventional reconstruction methods for defect reconstruction have been demonstrated by several examples. Results show that NetInv has the ability to achieve the higher quality of defect profiles with remarkable efficiency and provides valuable insight into the development of effective data driven structural health monitoring and defect reconstruction using machine learning.
翻译:利用超声波引导波进行数据驱动的量化缺陷重建,最近在非破坏性测试领域显示出巨大的潜力。在本文件中,我们开发了一个高效的深层次基于学习的缺陷重建框架,称为NetInv。 NetInv将反向导波分散问题重新定位为由数据驱动的受监督的学习进展,在波数域反射系数和空间领域缺陷剖面之间绘制了地图。拟议的NetInv优于常规的缺陷重建方法,这在几个例子中得到了证明。结果显示,NetInv有能力以惊人的效率提高缺陷简介的质量,并提供了宝贵的洞察力,说明如何利用机器学习开发有效的以数据驱动的结构健康监测和缺陷重建。