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LSTM Based Bearing Fault Diagnosis of Electrical Machines using Motor Current Signal

机译:基于LSTM的使用电机电流信号的电机轴承故障诊断

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Rolling element bearings are one of the most critical components of rotating machinery, with bearing faults amounting up to 50% of the faults in electrical machines. Therefore, the bearing fault diagnosis has attracted attention of many researchers. Typically, the bearing fault diagnosis is performed using vibration signals from the machine. In addition, by using deep learning algorithms on the vibration signals, the fault detection accuracy close to 100% can be achieved. However, measurement of vibration signals requires an additional sensor, which is not present in majority of the machines. Nevertheless, with an alternative approach, the stator current can be used for diagnosis. Therefore, the paper emphasizes on the diagnosis of bearing faults using the stator current. The diagnosis requires signal processing for the fault signature extraction that is buried underneath the noise in the current signal. The paper uses the Paderborn University damaged bearing dataset, which contains stator current data from healthy, real damaged inner raceway and real damaged outer raceway bearings with different fault severity. For fault signature extraction from the current signals, the redundant frequencies in the signals are filtered, then from the filtered signals eight features are extracted from the time and time-frequency domain by using the wavelet packet decomposition (WPD). Then, using these features and the well known deep learning algorithm Long Short-Term Memory (LSTM), bearing fault classification is made. The deep learning LSTM algorithm is mostly used in speech recognition due to its time coherence, but in this paper, the ability of LSTM is also demonstrated with the fault classification accuracy of 96%, which outperforms most of the present algorithms that perform bearing fault diagnosis using stator current. The method developed is independent of the speed and the loading conditions.
机译:滚动轴承是旋转机械最关键的部件之一,轴承故障占电机故障的50%。因此,轴承故障诊断引起了许多研究者的关注。通常,使用来自机器的振动信号执行轴承故障诊断。此外,通过对振动信号使用深度学习算法,可以实现接近100%的故障检测精度。但是,振动信号的测量需要附加的传感器,这在大多数机器中都不存在。但是,通过一种替代方法,可以将定子电流用于诊断。因此,本文着重于利用定子电流对轴承故障进行诊断。诊断需要对信号进行提取以进行故障特征提取的信号处理,该信号被掩埋在当前信号中的噪声之下。本文使用帕德博恩大学损坏的轴承数据集,该数据集包含来自具有正常,实际损坏的内部滚道和实际损坏的外部滚道轴承的定子电流数据,这些故障严重程度不同。为了从当前信号中提取故障特征,对信号中的冗余频率进行了滤波,然后使用小波包分解(WPD)从时域和时频域中提取了八个特征。然后,利用这些功能和众所周知的深度学习算法长短期记忆(LSTM),进行轴承故障分类。深度学习LSTM算法由于其时间一致性而被广泛用于语音识别中,但是在本文中,LSTM的能力也得到了证明,其故障分类精度为96%,优于目前大多数进行轴承故障诊断的算法使用定子电流。开发的方法与速度和加载条件无关。

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