4.6 Article

Novel Bearing Fault Diagnosis Using Gaussian Mixture Model-Based Fault Band Selection

Journal

SENSORS
Volume 21, Issue 19, Pages -

Publisher

MDPI
DOI: 10.3390/s21196579

Keywords

bearing; electric motor; fault diagnosis; feature extraction; feature selection; gaussian window; machine learning; signal processing

Funding

  1. Technology development Program - Ministry of SMEs and Startups (MSS, Korea) [S3106236]
  2. Korea Technology & Information Promotion Agency for SMEs (TIPA) [S3106236] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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This paper proposes a Gaussian mixture model-based method for bearing fault band selection (GMM-WBBS) in signal processing, which achieves reliable feature extraction and interference elimination. Classification is done using the Weighted KNN algorithm. Experimental results demonstrate positive effects in filtering discriminative data and improving classification performance.
This paper proposes a Gaussian mixture model-based (GMM) bearing fault band selection (GMM-WBBS) method for signal processing. The proposed method benefits reliable feature extraction using fault frequency oriented Gaussian mixture model (GMM) window series. Selecting exclusively bearing fault frequency harmonics, it eliminates the interference of bearing normal vibrations in the lower frequencies, bearing natural frequencies, and the higher frequency contents that prove to be useful only for anomaly detection but do not provide any insight into the bearing fault location. The features are extracted from time- and frequency- domain signals that exclusively contain the bearing fault frequency harmonics. Classification is done using the Weighted KNN algorithm. The experiments performed with the data containing the vibrations recorded from artificially damaged bearings show the positive effect of utilizing the proposed GMM-WBBS signal processing to filter out the discriminative data of uncertain origin. All comparison methods retrofitted with the proposed method demonstrated classification performance improvements when provided with vibration data with suppressed bearing natural frequencies and higher frequency contents.

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