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Machine Fault Diagnosis Using Industrial Wireless Sensor Networks and On-Sensor Wavelet Transform

机译:使用工业无线传感器网络和传感器小波变换机器故障诊断

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This paper proposes a novel approach for machine fault diagnosis using industrial wireless sensor networks (IWSNs) and on-sensor calculation. In this paper, the induction motor and vibration signal are taken as an example of the monitored industrial equipment and signal due to their wide use. The discrete wavelet transform and wavelet energy-moment are used for on-sensor machine fault feature extraction, while a minimum distance classifier is adopted for on-sensor fault classification. The data from three motor operating conditions-motor normal operating condition, bearing fault from the motor drive, and bearing fault from the motor fan-are employed to evaluate the proposed system. Experimental results show that compared with raw data transmission, the proposed method can reduce the payload data by more than 99%, and deliver 100% fault diagnosis accuracy on two test sets.
机译:本文采用工业无线传感器网络(IWSN)和传感器计算提出了一种新颖的机器故障诊断方法。在本文中,引起的感应电动机和振动信号是由于广泛使用而被监控的工业设备和信号的示例。离散小波变换和小波能量模型用于传感器的机器故障特征提取,而采用最小距离分类器进行开启传感器故障分类。来自三个电机运行条件电动机正常运行条件,来自电机驱动器的轴承故障,以及来自电机风扇的轴承故障 - 用于评估所提出的系统。实验结果表明,与原始数据传输相比,所提出的方法可以将有效载荷数据减少超过99%,并在两个测试集中提供100%的故障诊断精度。

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