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基于超声导波解码的焊接结构深度学习式结构健康监测与损伤诊断

Deep Learning Empowered Structural Health Monitoring and Damage Diagnostics for Structures with Weldment via Decoding Ultrasonic Guided Wave.

机构信息

Department of Civil, Construction and Environmental Engineering, North Dakota State University, Fargo, ND 58018, USA.

出版信息

Sensors (Basel). 2022 Jul 19;22(14):5390. doi: 10.3390/s22145390.

Abstract

Welding is widely used in the connection of metallic structures, including welded joints in oil/gas metallic pipelines and other structures. The welding process is vulnerable to the inclusion of different types of welding defects, such as lack of penetration and undercut. These defects often initialize early-age cracking and induced corrosion. Moreover, welding-induced defects often accompany other types of mechanical damage, thereby leading to more challenges in damage detection. As such, identification of weldment defects and interaction with other mechanical damages at their early stage is crucial to ensure structural integrity and avoid potential premature failure. The current strategies of damage identification are achieved using ultrasonic guided wave approaches that rely on a change in physical parameters of propagating waves to discriminate as to whether there exist damaged states or not. However, the inherently complex nature of weldment, the complication of damages interactions, and large-scale/long span structural components integrated with structure uncertainties pose great challenges in data interpretation and making an informed decision. Artificial intelligence and machine learning have recently become emerging methods for data fusion, with great potential for structural signal processing through decoding ultrasonic guided waves. Therefore, this study aimed to employ the deep learning method, convolutional neural network (CNN), for better characterization of damage features in terms of welding defect type, severity, locations, and interaction with other damage types. The architecture of the CNN was set up to provide an effective classifier for data representation and data fusion. A total of 16 damage states were designed for training and calibrating the accuracy of the proposed method. The results revealed that the deep learning method enables effectively and automatically extracting features of ultrasonic guided waves and yielding high precise prediction for damage detection of structures with welding defects in complex situations. In addition, the effectiveness and robustness of the proposed methods for structure uncertainties using different embedding materials, and data under noise interference, was also validated and findings demonstrated that the proposed deep learning methods still exhibited a high accuracy at high noise levels.

摘要

焊接广泛应用于金属结构的连接,包括石油/天然气金属管道和其他结构的焊接接头。焊接过程容易产生各种类型的焊接缺陷,例如未熔透和咬边。这些缺陷通常会导致早期裂纹和诱导腐蚀。此外,焊接引起的缺陷通常伴随着其他类型的机械损伤,从而在损伤检测方面带来更多挑战。因此,早期识别焊接件缺陷并与其他机械损伤相互作用对于确保结构完整性和避免潜在的过早失效至关重要。目前的损伤识别策略是使用超声导波方法实现的,该方法依赖于传播波的物理参数变化来区分是否存在损伤状态。然而,焊接件的固有复杂性、损伤相互作用的复杂性以及与结构不确定性集成的大规模/长跨度结构组件在数据解释和做出明智决策方面带来了巨大挑战。人工智能和机器学习最近已成为数据融合的新兴方法,通过对超声导波进行解码,在结构信号处理方面具有很大的潜力。因此,本研究旨在采用深度学习方法,即卷积神经网络(CNN),更好地描述焊接缺陷类型、严重程度、位置以及与其他损伤类型相互作用的损伤特征。该 CNN 架构被设置为提供有效的分类器,用于数据表示和数据融合。总共设计了 16 种损伤状态来训练和校准所提出方法的准确性。结果表明,深度学习方法能够有效地自动提取超声导波的特征,并对具有焊接缺陷的结构的损伤检测进行高精度预测,即使在复杂情况下也是如此。此外,还验证并发现了所提出的方法对使用不同嵌入材料和受噪声干扰的数据的结构不确定性的有效性和鲁棒性,结果表明,即使在高噪声水平下,所提出的深度学习方法仍表现出很高的准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/666f/9324916/2f903664be9c/sensors-22-05390-g001.jpg

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