• CN:11-2187/TH
  • ISSN:0577-6686

机械工程学报 ›› 2019, Vol. 55 ›› Issue (18): 15-21.doi: 10.3901/JME.2019.18.015

• 仪器科学与技术 • 上一篇    

基于磁巴克豪森噪声的S136钢表面硬度定量预测模型对比

何存富, 蔡燕超, 刘秀成, 吴斌   

  1. 北京工业大学机械工程与应用电子技术学院 北京 100124
  • 收稿日期:2018-11-09 修回日期:2019-05-19 发布日期:2020-01-07
  • 通讯作者: 刘秀成(通信作者),男,1984年出生,教授。主要研究方向为力学性能的微磁无损检测方法、结构健康监测技术与仪器。E-mail:xiuchliu@bjut.edu.cn
  • 作者简介:何存富,男,1958年出生,教授,博士研究生导师。主要研究方向为无损检测新技术。E-mail:hecunfu@bjut.edu.cn;蔡燕超,男,1993年出生,硕士研究生。主要研究方向为微磁无损检测技术。E-mail:chaoyanc@sina.com
  • 基金资助:
    国家自然科学基金资助项目(11527801,11402008)。

Comparative of Models for Quantitative Prediction of Surface Hardness in S136 Steel Based on Magnetic Barkhausen Noise

HE Cunfu, CAI Yanchao, LIU Xiucheng, WU Bin   

  1. College of Mechanical Engineering and Applied Electronics Technology, Beijing University of Technology, Beijing 100124
  • Received:2018-11-09 Revised:2019-05-19 Published:2020-01-07

摘要: 表面硬度是铁磁性材料制造质量评价的重要指标,其无损定量检测是该领域的研究热点。为将磁巴克豪森噪声技术用于S136表面硬度的无损定量检测,利用实验室研制的磁巴克豪森噪声检测装置对60块具有不同表面硬度的S136试件进行重复性测试,统计测得多项磁参量的变异系数,结果表明检测装置具有良好的重复检测精度。为实现表面硬度的磁学定量表征,分析磁巴克豪森噪声和切向磁场强度检测信号的6项特征磁参量与硬度的关系,重点对比研究基于一元、多元线性回归和BP神经网络模型的表面硬度定量预测方法。研究结果显示:采用6项磁参量作为输入的BP神经网络模型对表面硬度的预测精度最高,对300个案例的平均预测误差仅为2.14%,最大误差约为11.74%,274个案例的预测误差小于5.00%。研究成果为实现钢板表面硬度的磁巴克豪森噪声无损定量检测提供了方法借鉴。

关键词: 巴克豪森噪声, 表面硬度, BP神经网络, 定量预测

Abstract: The surface hardness is important index for the manufacturing quality evaluation of ferromagnetic materials and the non-destructively quantitative testing of surface hardness is one of the hot topics in the field. Magnetic Barkhausen noise (MBN) measurement technique is applied for quantitative evaluation of surface hardness in S136 steel. A self-developed device is used to conduct MBN measurements in sixty specimens of different surface hardness. The coefficient of variation of the repeated measured magnetic parameters is analyzed to show that the device has good repeated accuracy for MBN measurements. To achieve quantitative characterization of the surface hardness using magnetic parameters, the dependency of the surface hardness on six parameters extracted from the measured MBN and tangential magnetic field signals is individually analyzed. More importantly, comparative study is performed among the simple linear regression model, multiple linear regression model and BP neural network model to evaluate their accuracy in surface hardness prediction. The results show that the BP neural network model employing six magnetic parameters as inputs has highest accuracy in surface hardness prediction. A total of 300 cases are investigated and it is found that the average prediction error is only around 2.14% and the maximum error is about 11.74%, and the prediction errors out of 274 of 300 cases are less than 5.00%. A reference is provided for realizing the nondestructive quantitative detection of steel plate surface hardness based on magnetic Buckhausen noise method.

Key words: Barkhausen noise, surface hardness, BP neural network, quantitative prediction

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