Bearing fault detection by a novel condition-monitoring scheme based on statistical-time features and neural networks

  • Miguel Delgado Prieto*
  • , Giansalvo Cirrincione
  • , Antonio Garcia Espinosa
  • , Juan Antonio Ortega
  • , Humberto Henao
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

434 Citations (Scopus)

Abstract

Bearing degradation is the most common source of faults in electrical machines. In this context, this work presents a novel monitoring scheme applied to diagnose bearing faults. Apart from detecting local defects, i.e., single-point ball and raceway faults, it takes also into account the detection of distributed defects, such as roughness. The development of diagnosis methodologies considering both kinds of bearing faults is, nowadays, subject of concern in fault diagnosis of electrical machines. First, the method analyzes the most significant statistical-time features calculated from vibration signal. Then, it uses a variant of the curvilinear component analysis, a nonlinear manifold learning technique, for compression and visualization of the feature behavior. It allows interpreting the underlying physical phenomenon. This technique has demonstrated to be a very powerful and promising tool in the diagnosis area. Finally, a hierarchical neural network structure is used to perform the classification stage. The effectiveness of this condition-monitoring scheme has been verified by experimental results obtained from different operating conditions.

Original languageEnglish
Article number6307844
Pages (from-to)3398-3407
Number of pages10
JournalIEEE Transactions on Industrial Electronics
Volume60
Issue number8
DOIs
Publication statusPublished - 2013
Externally publishedYes

Keywords

  • Ball bearings
  • classification algorithms
  • condition monitoring
  • fault diagnosis
  • feature extraction
  • induction motors
  • neural networks
  • vibrations

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