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Defects identification using the improved ultrasonic measurement model and support vector machines

机译:使用改进的超声波测量模型和支持向量机进行缺陷识别

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摘要

With a combination of the improved ultrasonic measurement model (IUMM) and support vector machines (SVM), a novel method to identify inclusions and cavities in metallic materials using scanning acoustic microscopy is proposed. In the IUMM, a hybrid model of Born approximation and Kirchhoff approximation is developed to calculate the far-field scattering amplitude of cavities, which improves the accuracy in phase and amplitude of the predicted pulse-echo signals of defects. The SVM classifier, with the amplitude and peak frequency of the predicted echo signals as major features, is applied to distinguish inclusions and cavities. The experimental result shows that the echo signals predicted by the proposed IUMM are more accurate than conventional UMM in amplitude and frequency. The SVM classifier, with the predicted signals as the training set, enables the identification of inclusions and cavities in metallic materials successfully. This work improves the performance of SAM in the identification of internal defects in metallic materials and realizes the intelligent analysis of ultrasonic signals.
机译:结合改进的超声测量模型(IUMM)和支持向量机(SVM),提出了一种使用扫描声学显微镜识别金属材料中夹杂物和空腔的新方法。在IUMM中,开发了Born近似和Kirchhoff近似的混合模型来计算腔的远场散射幅度,从而提高了预测的缺陷脉冲回波信号的相位和幅度的准确性。 SVM分类器以预测回波信号的幅度和峰值频率为主要特征,用于区分夹杂物和空腔。实验结果表明,所提出的IUMM所预测的回波信号在幅度和频率上均比常规UMM更为准确。 SVM分类器将预测信号作为训练集,可成功识别金属材料中的夹杂物和空洞。这项工作提高了SAM在识别金属材料内部缺陷方面的性能,并实现了超声波信号的智能分析。

著录项

  • 来源
    《NDT & E international》 |2020年第4期|102223.1-102223.9|共9页
  • 作者单位

    School of Mechanical Engineering University of Science and Technology Beijing Beijing 100083 China;

    Shenzhen Key Laboratory of Smart Sensing and Intelligent Systems Shenzhen Institutes of Advanced Technology Chinese Academy of Sciences Shenzhen 518055 China Guangdong Provincial Key Laboratory of Robotics and Intelligent System Shenzhen Institutes of Advanced Technology Chinese Academy of Sciences Shenzhen 518055 China CAS Key Laboratory of Human-Machine Intelligence-Synergy Systems Shenzhen Institutes of Advanced Technology Shenzhen 518055 China;

    Collaborative Innovation Center of Steel Technology University of Science and Technology Beijing Beijing 100083 China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Defects identification; Scanning acoustic microscopy; Ultrasonic measurement model; Born approximation; Kirchhoff approximation; Support vector machines;

    机译:缺陷识别;扫描声显微镜超声波测量模型;天生近似基尔霍夫近似;支持向量机;

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