通过基于自动编码器的无监督学习提高脉冲涡流测试系统的腐蚀检测能力

IF 4.1 2区 材料科学 Q1 MATERIALS SCIENCE, CHARACTERIZATION & TESTING Ndt & E International Pub Date : 2024-07-02 DOI:10.1016/j.ndteint.2024.103175
Minhhuy Le , Phuong Huy Pham , Le Quang Trung , Sy Phuong Hoang , Duc Minh Le , Quang Vuong Pham , Van Su Luong
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引用次数: 0

摘要

脉冲涡流检测(PECT)是一种先进的无损检测方法,与传统的 ECT 技术相比,它具有广泛的频谱特性,因此特别适用于识别腐蚀。然而,由于 PECT 信号的瞬时性和传感器升离效应的影响,分析这些信号以进行腐蚀检测是一项挑战。因此,传统方法在处理质量较差的腐蚀信号时面临障碍。本研究利用自动编码器神经网络的无监督学习方法解决了这一难题。该自动编码器集成了长短期记忆和一维卷积层,可获取非腐蚀区域正常 PECT 信号的基本特征。值得注意的是,该模型完全是在正常数据的基础上进行训练的,因此无需预先存在腐蚀信息。通过学习正常信号的固有结构,该模型可以检测出未见数据中的异常情况,从而发现潜在的腐蚀迹象。无监督框架具有多种优势,如减少对先前腐蚀知识的依赖、减轻固有噪声以及解决传感器的脱离效应。实验结果与传统方法(如交叉点脱离和脱离补偿方法)进行了比较。这种方法显著提高了信噪比(SNR),从 100% 到 200%,从而促进了采用无监督学习技术的智能 PECT 传感器的更稳健的无损检测应用。
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Enhancing corrosion detection in pulsed eddy current testing systems through autoencoder-based unsupervised learning

Pulsed Eddy Current Testing (PECT) stands out as an advanced method in Non-Destructive Testing due to its extensive spectrum characteristics in comparison to traditional ECT techniques, making it exceptionally suitable for identifying corrosion. Nonetheless, the analysis of PECT signals for corrosion detection poses a challenge due to the transient nature of these signals and the impact of sensor lift-off effects. As a result, conventional methods are facing hurdles in dealing with corrosion signals of poor quality. In this study, the challenge is addressed by employing unsupervised learning methods utilizing an autoencoder neural network. This autoencoder integrates Long Short-Term Memory and 1D convolutional layers, acquiring the underlying features of normal PECT signals from non-corrosive regions. Significantly, the model is trained exclusively on this normal data, thereby obviating the necessity for pre-existing corrosion information. Through learning the inherent structure of normal signals, the model can detect anomalies in unseen data, potentially indicating corrosion. The unsupervised framework presents several advantages, such as reducing reliance on prior corrosion knowledge, mitigating inherent noise, and addressing sensor lift-off effects. Experimental results were conducted to compare with traditional methods like the lift-off of intersection and lift-off compensation methods. This approach resulted in a significant improvement in SNR, ranging from 100 % to 200 %, thus facilitating more robust NDT applications employing smart PECT sensors empowered by unsupervised learning techniques.

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来源期刊
Ndt & E International
Ndt & E International 工程技术-材料科学:表征与测试
CiteScore
7.20
自引率
9.50%
发文量
121
审稿时长
55 days
期刊介绍: NDT&E international publishes peer-reviewed results of original research and development in all categories of the fields of nondestructive testing and evaluation including ultrasonics, electromagnetics, radiography, optical and thermal methods. In addition to traditional NDE topics, the emerging technology area of inspection of civil structures and materials is also emphasized. The journal publishes original papers on research and development of new inspection techniques and methods, as well as on novel and innovative applications of established methods. Papers on NDE sensors and their applications both for inspection and process control, as well as papers describing novel NDE systems for structural health monitoring and their performance in industrial settings are also considered. Other regular features include international news, new equipment and a calendar of forthcoming worldwide meetings. This journal is listed in Current Contents.
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