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Robust principal component analysis and support vector machine for detection of microcracks with distributed optical fiber sensors

机译:具有分布式光纤传感器的微裂纹的鲁棒主成分分析和支持向量机

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摘要

Development of a method for distributed detection of microcracks on structural elements with very small crack opening displacements is described in this study. Robust principal component analysis (RPCA) and support vector machine (SVM) techniques were employed for denoising and classification of the signals. The objective was to detect microcracks in structural elements less than 30 μm in size. The viability of the method was accomplished by experiments involving a 15-meter steel beam with known microcracks. A distributed optical fiber sensor system based on the Brillouin scattering technology was employed for distributed measurement of strains along the length of the 15-m long beam. Distributed strain signals based on Brillouin based sensors possess inherent system noise and ambient perturbations which in turn reduce the signal-to-noise ratio of the measurements. Therefore, it is not possible to detect the smaller microcracks with small crack opening displacements. Smaller CODs are lost within the noisy distributed strain signal acquired by the Brillouin system. Undetected microcracks result in larger cracks, corrosion, and other anomalies with severe economical and safety ramifications. The method introduced for denoising and enhancement of the signal in the present study enables manifestation of the singularities on the distributed strain data and detection of microcracks. The significant component containing those singularities is effectively separated from the noise component by RPCA-based matrix decomposition. An SVM classifier with Gaussian kernel function was designed, through which the crack detections are realized by singular and nonsingular binary classification. The experimental results demonstrated that it was possible to detect microcracks with CODs as low as 23 μm without errors.
机译:在本研究中描述了一种在结构元件上分布式检测微裂纹的方法的研制。本研究描述了具有非常小的裂缝开口位移的微裂纹。采用强大的主成分分析(RPCA)和支持向量机(SVM)技术用于去噪和分类信号。目的是检测结构元素的微裂纹,尺寸小于30μm。该方法的可行性是通过涉及具有已知微裂纹15米的钢梁的实验完成的。基于Brillouin散射技术的分布式光纤传感器系统用于沿15-M长梁的长度的分布式测量菌株。基于布里渊基的传感器的分布式应变信号具有固有的系统噪声和环境扰动,反过来降低了测量的信噪比。因此,不可能检测具有小裂缝开口位移的较小微裂纹。较小的COD在布里渊系统获取的嘈杂分布式应变信号中丢失。未检测到的微裂纹导致较大的裂缝,腐蚀和其他异常,具有严重的经济性和安全性。引入的用于去噪和增强本研究中的信号的方法使得能够在分布式应变数据和微裂纹检测中表现出奇点。含有那些奇点的重要组分通过基于RPCA的矩阵分解有效地与噪声分量分离。设计了具有高斯内核功能的SVM分类器,通过奇异和非奇异二进制分类来实现裂缝检测。实验结果表明,在没有误差的情况下,可以检测具有低至23μm的鳕鱼的微裂纹。

著录项

  • 来源
    《Mechanical systems and signal processing》 |2021年第1期|107019.1-107019.14|共14页
  • 作者单位

    School of Information Engineering Chang'an University Nan Er Huan Zhang Duan Xi'an 710064 China Stace Key Laboratory of Bridge Engineering Structural Dynamics China Merchants Chongqing Communications Technology Research & Design Institute Co. Ltd. Chongqing 400067 China Department of Civil and Materials Engineering University of Illinois at Chicago 842 W. Taylor Street Chicago 1L 60607-7023 USA;

    School of Information Engineering Chang'an University Nan Er Huan Zhang Duan Xi'an 710064 China;

    Stace Key Laboratory of Bridge Engineering Structural Dynamics China Merchants Chongqing Communications Technology Research & Design Institute Co. Ltd. Chongqing 400067 China;

    Department of Civil and Materials Engineering University of Illinois at Chicago 842 W. Taylor Street Chicago 1L 60607-7023 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Structural health monitoring; Distributed optical fiber sensor; Microcracks detection; Crack opening displacements; Robust principal component analysis; Support vector machine;

    机译:结构健康监测;分布式光纤传感器;微裂纹检测;裂缝打开位移;强大的主要成分分析;支持矢量机器;

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