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A novel feature extraction method of eddy current testing for defect detection based on machine learning

机译:基于机器学习的涡流探伤缺陷检测新特征提取方法

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摘要

In eddy current testing, the trajectory of the impedance data due to a defect is presented as a Lissajous curve (LC) in the complex plane. This paper proposes a novel analytical model for describing a LC. Further, a new feature extraction method is implemented which automatically computes four geometric features (amplitude, width, angle and symmetry) from Lissajous figures. In addition, six machine learning-based classifiers are used for automatic defect identification based on these features. High detection rates are achieved for both the simulated and experimental data, which demonstrates the flexibility of the analytical model and the validity of the methodology.
机译:在涡流测试中,由于缺陷而导致的阻抗数据的轨迹在复杂平面中表示为李萨如曲线(LC)。本文提出了一种用于描述液相色谱的新型分析模型。此外,实现了一种新的特征提取方法,该方法可以自动从利萨如图形中计算出四个几何特征(幅度,宽度,角度和对称性)。此外,基于这些功能,六个基于机器学习的分类器用于自动缺陷识别。模拟和实验数据均实现了较高的检测率,这证明了分析模型的灵活性和方法的有效性。

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