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Novel Rotating Machinery Structural Faults Signal Adaptive Multiband Filtering and Automatic Diagnosis

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  • Song Xuewei
  • Liao Zhiqiang
  • Wang Hongfeng
  • Song Weiwei
  • Chen Peng

Abstract

To realize an automatic diagnosis of rotating machinery structure faults, this paper presents a novel fault diagnosis model based on adaptive multiband filter and stacked autoencoders (SAEs). First, to solve the problem where the actual rotating frequency and its harmonics cannot be accurately extracted in engineering applications, an improved adaptive multiband filtering method is designed. This method takes the theoretical rotating frequency as the search center, extracts the maximum within the positive and negative deviation as the actual rotating frequency, and sets a threshold according to the actual value to realize multiband filtering. This method can effectively remove background noise and accurately extract the actual rotating frequency and its harmonics. Second, an unsupervised SAE multiclassification model is established to realize an automatic diagnosis of fault types. This model can automatically extract the in-depth features of the filtered signal and improve the fault classification accuracy. Third, engineering and comparative experiments were carried out to verify the effectiveness and superiority of this model. Results show that the proposed automatic diagnosis model can extract the characteristic components abundantly and accurately recognize rotating machinery structural faults.

Suggested Citation

  • Song Xuewei & Liao Zhiqiang & Wang Hongfeng & Song Weiwei & Chen Peng, 2021. "Novel Rotating Machinery Structural Faults Signal Adaptive Multiband Filtering and Automatic Diagnosis," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-15, December.
  • Handle: RePEc:hin:jnlmpe:1497964
    DOI: 10.1155/2021/1497964
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