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Neural Network with Confidence Kernel for Robust Vibration Frequency Prediction

机译:具有富有振动频率预测的主节内核神经网络

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摘要

Image-based measurement has received increasing attention as it can substantially reduce the cost of labor, measurement equipment, and installation process. Instead of using optical flow, pattern, or marker tracking to extract a displacement signal, in this study, a novel noncontact machine learning-based system was proposed to directly predict vibration frequency with high accuracy and good reliability by using image sequences acquired from a single camera. The performance of the proposed method was demonstrated through experiments conducted in a laboratory and under real-field conditions and compared with those obtained using a contacted sensor. The vibration frequency prediction results of the proposed method are compared with industry-level vibration sensor results in the frequency domain, demonstrating that the proposed method could predict the target-object-vibration frequency as accurately as an industry-level vibration sensor, even under uncontrollable real-field conditions with no additional enhancement or extra signal processing techniques. However, only the principal vibration frequency of a measurement target is predicted, and the measurement range is limited by the trained model. Nonetheless, if these limitations are resolved, this method can potentially be used in real engineering applications in mechanical or civil structural health monitoring thanks to the simple deployment and concise pipeline of this method.
机译:基于图像的测量已收到越来越长的关注,因为它可以大大降低劳动力,测量设备和安装过程的成本。在本研究中,提出了一种基于光学流量的光流量,图案或标记跟踪来提取位移信号,通过使用从单个图像获取的图像序列直接预测高精度和良好可靠性的新型非接触式机器学习系统。相机。通过在实验室和实际条件下进行的实验证明了所提出的方法的性能,并与使用接触传感器获得的实验进行了说明。将所提出的方法的振动频率预测结果与工业级振动传感器进行比较导致频域,表明所提出的方法可以将目标对象 - 振动频率预测为作为行业级振动传感器,即使在无法控制的情况下也可以准确地实际条件无额外的增强或额外的信号处理技术。然而,预测测量目标的主要振动频率,测量范围受到训练模型的限制。尽管如此,如果解决了这些限制,则由于这种方法的简单部署和简明的管道,这种方法可能用于机械或民间结构健康监测中的实际工程应用中。

著录项

  • 来源
    《Journal of Sensors》 |2019年第1期|共12页
  • 作者单位

    School of Mechanical Engineering and Automation Fuzhou University;

    School of Mechanical Engineering and Automation Fuzhou University;

    School of Mechanical Engineering and Automation Fuzhou University;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP212;
  • 关键词

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