CONVOLUTIONAL NEURAL NETWORKS FOR ULTRASONIC GUIDED WAVE-BASED STRUCTURAL DAMAGE DETECTION AND LOCALISATION

L. Lomazzi, M. Giglio, F. Cadini
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Abstract

Among the many methods proposed in the literature to perform structural health monitoring (SHM) of thin-walled structures, two of them appear to be particularly promising and complementary. On the one hand, integrating Machine Learning techniques into this field seems a remarkable solution, since these methods have been shown to be effective in recognising usually hard-to-detect recurring patterns in the measured signals related to the presence of damages in structures, thus improving the diagnostic performances of SHM frameworks. In particular, in the past years, Deep Learning algorithms have gained much importance in this field due to their capability of processing high-dimensional inputs (such as images), thus making it possible to automatically identify onsetting structural damages. On the other hand, ultrasonic guided wave-based approaches are commonly adopted to assess the structural integrity of plate-like structures and pipelines. These approaches, coupled with tomographic algorithms, typically allow performing damage detection and localisation with satisfactory results. However, such reconstruction algorithms are significantly sensors layout-dependent and, as such, they come with some still unsolved issues, leading, for example, to artifacts creation and unsatisfactory tomographic damage localisation performances in case of unevenly distributed network of sensors or when few sensors are installed on the structure. In this work, convolutional neural networks (CNNs) and ultrasonic guided waves are combined into a unique framework, which leverages on the advantages of the two methods to perform damage detection and localisation in platelike structures. Guided waves are excited and sensed by a network of sensors permanently installed on the structure. The information acquired is then converted into grayscale image as is, without performing any prior feature extraction procedure, which is further analysed by a set of CNNs. First, a classifier is employed to perform damage detection. In case damage is identified, the grayscale image is then analysed by two regression CNNs to localise the damage. The framework is tested using experimentally validated numerical simulations of guided waves propagating in a metallic plate available in the literature.
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基于卷积神经网络的超声导波结构损伤检测与定位
在文献中提出的对薄壁结构进行结构健康监测(SHM)的许多方法中,有两种方法显得特别有前途和互补。一方面,将机器学习技术集成到这一领域似乎是一个了不起的解决方案,因为这些方法已被证明在识别与结构中存在损伤相关的测量信号中通常难以检测的重复模式方面是有效的,从而提高了SHM框架的诊断性能。特别是,在过去的几年里,深度学习算法由于其处理高维输入(如图像)的能力而在这一领域获得了很大的重视,从而使自动识别初始结构损伤成为可能。另一方面,基于超声导波的方法通常用于评估板状结构和管道的结构完整性。这些方法与层析成像算法相结合,通常可以进行损伤检测和定位,并获得令人满意的结果。然而,这种重建算法明显依赖于传感器的布局,因此,它们带来了一些尚未解决的问题,例如,在传感器网络分布不均匀或结构上安装的传感器很少的情况下,会导致人工制品的产生和令人不满意的断层扫描损伤定位性能。在这项工作中,卷积神经网络(cnn)和超声导波结合成一个独特的框架,利用这两种方法的优点在类板结构中进行损伤检测和定位。导波由永久安装在结构上的传感器网络激发和感应。然后将获取的信息原样转换为灰度图像,不进行任何先前的特征提取过程,并通过一组cnn进行进一步分析。首先,使用分类器进行损伤检测。在识别出损伤的情况下,通过两个回归cnn对灰度图像进行分析以定位损伤。使用文献中可用的导波在金属板中传播的实验验证的数值模拟对框架进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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NONLINEAR BULK WAVE PROPAGATION IN A MATERIAL WITH RANDOMLY DISTRIBUTED SYMMETRIC AND ASYMMETRIC HYSTERETIC NONLINEARITY SPATIAL FILTERING TECHNIQUE-BASED ENHANCEMENT OF THE RECONSTRUCTION ALGORITHM FOR THE PROBABILISTIC INSPECTION OF DAMAGE (RAPID) KOOPMAN OPERATOR BASED FAULT DIAGNOSTIC METHODS FOR MECHANICAL SYSTEMS ON THE APPLICATION OF VARIATIONAL AUTO ENCODERS (VAE) FOR DAMAGE DETECTION IN ROLLING ELEMENT BEARINGS INTELLIGENT IDENTIFICATION OF RIVET CORROSION ON STEEL TRUSS BRIDGE BY SINGLE-STAGE DETECTION NETWORK
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