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Journal Bearing Fault Detection Based on Daubechies Wavelet

机译:基于Daubechies小波的滑动轴承故障检测。

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Journal bearings are widely used to support the shafts in industrial machinery involving heavy loads, such as compressors, turbines and centrifugal pumps. The major problem that could arise in journal bearings is catastrophic failure due to corrosion or erosion and fatigue, which results in economic loss and creates major safety risks. Thus, it is necessary to provide suitable condition monitoring technique to detect and diagnose failures, and achieve cost savings to the industry. Therefore, this paper focuses on fault diagnosis on journal bearing using Debauchies Wavelet-02 (DB-02). Nowadays, wavelet transformation is one of the most popular technique of the time-frequency-transformations. An experimental setup was used to diagnose the faults in the journal bearing. The accelerometer is used to collect vibration data, from the journal bearing in the form of time domain. This was then used as input for a MATLAB code that could plot the time domain signal. This signal was then decomposed based on the wavelet transform. The fast Fourier transform is then used to obtain the frequency domain, which gives us the frequency having the highest amplitude. To diagnose the faults various operating conditions are used in the journal bearing such as Full oil, half loose, half oil, fault 1, fault 2, fault 3 and full loose. Then the Artificial Neural Networks (ANN) is used to classify faults. The network is trained based on data already collected and then it is tested based on random data points. ANN was able to classify the faults with the classification rate of 85.7%. Thus, the test process for unseen vibration data of the trained ANN combined with ideal output target values indicates high success rate for automated bearing fault detection.
机译:滑动轴承广泛用于支撑工业机械中涉及重负荷的轴,例如压缩机,涡轮机和离心泵。轴颈轴承中可能出现的主要问题是由于腐蚀,腐蚀和疲劳引起的灾难性故障,这会导致经济损失并带来重大的安全风险。因此,有必要提供合适的状态监视技术以检测和诊断故障,并为工业节省成本。因此,本文着重于使用Debauchies Wavelet-02(DB-02)对轴颈轴承进行故障诊断。如今,小波变换是时频变换中最流行的技术之一。实验装置用于诊断轴颈轴承中的故障。加速度计用于以时域形式从轴颈轴承收集振动数据。然后将其用作可以绘制时域信号的MATLAB代码的输入。然后,基于小波变换对该信号进行分解。然后,使用快速傅立叶变换获得频域,从而为我们提供具有最高幅度的频率。为了诊断故障,在轴颈轴承中使用了各种工况,例如,满油,半松动,半油,故障1,故障2,故障3和完全松动。然后使用人工神经网络(ANN)对故障进行分类。根据已经收集的数据对网络进行训练,然后根据随机数据点对其进行测试。人工神经网络能够对故障进行分类,分类率为85.7%。因此,针对训练后的人工神经网络看不见的振动数据与理想的输出目标值相结合的测试过程表明,自动轴承故障检测的成功率很高。

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