4.6 Article

A New Method of Wheelset Bearing Fault Diagnosis

期刊

ENTROPY
卷 24, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/e24101381

关键词

rolling bearing; compound fault; Ramanujan subspace decomposition; fault feature extraction

资金

  1. National Natural Science Foundation of China [51975038]
  2. Nature Science Foundation of Beijing, China [19L00001]
  3. support plan for the construction of high-level teachers in Beijing municipal universities [CITTCD201904062]
  4. Beijing Natural Science Foundation [3214042]
  5. Open Research Fund Program of Beijing Engineering Research Center of Monitoring for Construction Safety [BJC2020K002]
  6. Pyramid Talent Training Project of Beijing University of Civil Engineering and Architecture [JDYC20220827]
  7. Beijing Natural Science Foundation (Key) Funding Project [KZ202010016025, L211008]

向作者/读者索取更多资源

This study proposes an adaptive technique for defect identification based on multipoint optimal minimum entropy deconvolution and Ramanujan subspace decomposition. The technique successfully addresses the issues of conventional signal decomposition and subspace decomposition methods when dealing with vibration signals under loud noise. Through simulation and experimentation, the technique is proven to work well in identifying bearing faults.
During the movement of rail trains, trains are often subjected to harsh operating conditions such as variable speed and heavy loads. It is therefore vital to find a solution for the issue of rolling bearing malfunction diagnostics in such circumstances. This study proposes an adaptive technique for defect identification based on multipoint optimal minimum entropy deconvolution adjusted (MOMEDA) and Ramanujan subspace decomposition. MOMEDA optimally filters the signal and enhances the shock component corresponding to the defect, after which the signal is automatically decomposed into a sequence of signal components using Ramanujan subspace decomposition. The method's benefit stems from the flawless integration of the two methods and the addition of the adaptable module. It addresses the issues that the conventional signal decomposition and subspace decomposition methods have with redundant parts and significant inaccuracies in fault feature extraction for the vibration signals under loud noise. Finally, it is evaluated through simulation and experimentation in comparison to the current widely used signal decomposition techniques. According to the findings of the envelope spectrum analysis, the novel technique can precisely extract the composite flaws that are present in the bearing, even when there is significant noise interference. Additionally, the signal-to-noise ratio (SNR) and fault defect index were introduced to quantitatively demonstrate the novel method's denoising and potent fault extraction capabilities, respectively. The approach works well for identifying bearing faults in train wheelsets.

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