Detection and Classification of Surface Cracks Using Deep Learning Based Autoencoders in Eddy Current Testing

IF 1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Barrarat Fatima, Helifa Bachir, Bensaid Samir, Rayane Karim, Lefkaier IbnKhaldoun
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引用次数: 0

Abstract

Industrial equipment subjected to rigorous conditions of high speed and pressure leads to the development of cracks on metal surfaces. These cracks reduce the service life and threaten the safety of parts, and the deeper the crack, the greater the resulting damage. Crack detection and crack depth evaluation continue to take center stage in quantitative non-destructive testing and evaluation (NDT&E 4.0). The accuracy of the rotating uniform eddy current (RUEC) probe in achieving fast and efficient detection of surface cracks is corroborated by a comparison with previous experimental results. Next, accurate crack depth classification is achieved by building deep learning model based on a sparse autoencoder (SAE) and a multi-layer perceptron (MLP) model. These classifiers are combined with eddy current testing (ECT) data, including the normal magnetic component Bz. As a result, evaluation metrics such as accuracy increased by up to 100% with both precision and recall scores of 1 for the deep sparse autoencoder classifier compared to MLP performance. The originality of our approach is evident in the application of deep SAE, which achieves high classification accuracy. Furthermore, the integration of our high-resolution NDT&E RUEC probe with advanced machine learning models for depth classification is both novel and impactful. This unique combination offers a comprehensive framework for crack analysis, from precise detection to detailed characterization. © 2024 Institute of Electrical Engineers of Japan and Wiley Periodicals LLC.

涡流检测中基于深度学习自编码器的表面裂纹检测与分类
工业设备在高速和高压的苛刻条件下会导致金属表面出现裂纹。这些裂纹降低了零件的使用寿命,威胁到零件的安全,而且裂纹越深,造成的损伤越大。裂纹检测和裂纹深度评价在定量无损检测和评价中继续占据中心位置(ndt&&e 4.0)。通过与以往实验结果的对比,验证了旋转均匀涡流(RUEC)探头快速有效检测表面裂纹的准确性。其次,通过建立基于稀疏自编码器(SAE)和多层感知器(MLP)模型的深度学习模型,实现准确的裂纹深度分类。这些分类器与涡流测试(ECT)数据相结合,包括正常的磁性成分Bz。结果,与MLP性能相比,深度稀疏自编码器分类器的准确率和召回率得分均为1,准确率等评估指标提高了100%。该方法的独创性在深度SAE的应用中得到了体现,实现了较高的分类精度。此外,我们的高分辨率ndt&e RUEC探针与用于深度分类的先进机器学习模型的集成既新颖又有影响力。这种独特的组合为裂纹分析提供了一个全面的框架,从精确的检测到详细的表征。©2024日本电气工程师协会和Wiley期刊有限责任公司。
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来源期刊
IEEJ Transactions on Electrical and Electronic Engineering
IEEJ Transactions on Electrical and Electronic Engineering 工程技术-工程:电子与电气
CiteScore
2.70
自引率
10.00%
发文量
199
审稿时长
4.3 months
期刊介绍: IEEJ Transactions on Electrical and Electronic Engineering (hereinafter called TEEE ) publishes 6 times per year as an official journal of the Institute of Electrical Engineers of Japan (hereinafter "IEEJ"). This peer-reviewed journal contains original research papers and review articles on the most important and latest technological advances in core areas of Electrical and Electronic Engineering and in related disciplines. The journal also publishes short communications reporting on the results of the latest research activities TEEE ) aims to provide a new forum for IEEJ members in Japan as well as fellow researchers in Electrical and Electronic Engineering from around the world to exchange ideas and research findings.
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