Quantification of Defects with Point-Focusing Shear Horizontal Guided Wave EMAT Using Deep Residual Network

Hongyu Sun, Songling Huang, Shen Wang, Wei Zhao, Lisha Peng
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引用次数: 1

Abstract

In this work, a deep residual network named GFresNet-2D is proposed for a point-focusing shear horizontal guided wave electromagnetic acoustic transducer, which can be used to quantify different types of defects, such as pinholes, cracks, and corrosion, in materials. As the traditional feature extraction and statistical machine learning methods are too complex and rely on artificial recognition, an automatic feature extraction model based on deep learning is applied for defect detection and quantification. Owing to their similarity with the ultrasonic guided wave signals, the measured 1D signals from the experiments cannot be directly applied to train neural networks. Therefore, we used the normalization, minimum suppression, and continuous wavelet transform methods to convert the initial measured 1D signals into processed 2D images, and constructed a data set containing 1,440,000,000 signal/image data. The performance of the proposed GFresNet-2D model for this new data set was also compared with those of traditional models, and sensitivity analyses were performed for some of the representative parameters. The results confirm that the proposed method can contribute to the development of deep-learning-based defect quantification using the ultrasonic guided wave focusing method.
基于深度残差网络的点聚焦剪切水平导波EMAT缺陷量化
在这项工作中,提出了一个名为GFresNet-2D的深度残余网络,用于点聚焦剪切水平导波电磁声换能器,可用于量化材料中不同类型的缺陷,如针孔,裂纹和腐蚀。针对传统的特征提取和统计机器学习方法过于复杂且依赖人工识别的缺点,采用基于深度学习的自动特征提取模型进行缺陷检测和量化。由于与超声导波信号的相似性,实验测得的一维信号不能直接用于神经网络的训练。因此,我们采用归一化、最小抑制和连续小波变换方法,将初始测量的一维信号转换为处理后的二维图像,构建了包含1440,000,000个信号/图像数据的数据集。并将所提出的GFresNet-2D模型与传统模型的性能进行了比较,并对一些代表性参数进行了敏感性分析。结果表明,该方法有助于基于深度学习的超声导波聚焦缺陷量化的发展。
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