Quantitative study on surface crack of 304 austenitic stainless steel under natural magnetic field

Ping Fu, Bo Hu, Jia-Lin Yu, X. Lan
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Abstract

Cracks are common defects in stainless steel which often lead to serious industrial accidents. In this paper, magnetic detection without external excitation was proposed. Quantitative defect identification was performed using multiclass classification support vector machine. The magnetic signals of 304 austenitic stainless steel were collected before and after annealing. The width, amplitude and area of magnetic signals were extracted as the input set of support vector machine model, and the prediction accuracy of cracks were compared and analyzed. The results showed that the prediction accuracy of length, width and depth of cracks are 80.70%, 92.71% and 65.63%, respectively. The width and depth of defects are increased by 5.89% and 33.34% respectively. This research provides a potential possibility for quantitative defect identification for nonferromagnetic materials under the natural magnetic field.
自然磁场作用下304奥氏体不锈钢表面裂纹的定量研究
裂纹是不锈钢常见的缺陷,经常导致严重的工业事故。本文提出了一种无外部激励的磁检测方法。采用多类分类支持向量机对缺陷进行定量识别。采集了304奥氏体不锈钢退火前后的磁性信号。提取磁信号的宽度、幅度和面积作为支持向量机模型的输入集,并对裂缝的预测精度进行了比较和分析。结果表明,该方法对裂缝长度、宽度和深度的预测精度分别为80.70%、92.71%和65.63%。缺陷宽度和深度分别增加了5.89%和33.34%。本研究为非铁磁性材料在自然磁场作用下的缺陷定量识别提供了可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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