Reliable bearing fault diagnosis using Bayesian inference-based multi-class support vector machines.

Journal: The Journal of the Acoustical Society of America
Published Date:

Abstract

This letter presents a multi-fault diagnosis scheme for bearings using hybrid features extracted from their acoustic emissions and a Bayesian inference-based one-against-all support vector machine (Bayesian OAASVM) for multi-class classification. The Bayesian OAASVM, which is a standard multi-class extension of the binary support vector machine, results in ambiguously labeled regions in the input space that degrade its classification performance. The proposed Bayesian OAASVM formulates the feature space as an appropriate Gaussian process prior, interprets the decision value of the Bayesian OAASVM as a maximum a posteriori evidence function, and uses Bayesian inference to label unknown samples.

Authors

  • M M Manjurul Islam
    School of Electrical, Electronics, and Computer Engineering, University of Ulsan, Ulsan, South Korea m.m.manjurul@gmail.com, kjy7079@gmail.com, sherazalik@gmail.com, jongmyon.kim@gmail.com.
  • Jaeyoung Kim
    School of Electrical, Electronics, and Computer Engineering, University of Ulsan, Ulsan, South Korea m.m.manjurul@gmail.com, kjy7079@gmail.com, sherazalik@gmail.com, jongmyon.kim@gmail.com.
  • Sheraz A Khan
    School of Electrical, Electronics, and Computer Engineering, University of Ulsan, Ulsan, South Korea m.m.manjurul@gmail.com, kjy7079@gmail.com, sherazalik@gmail.com, jongmyon.kim@gmail.com.
  • Jong-Myon Kim
    School of Electrical, Electronics, and Computer Engineering, University of Ulsan, Ulsan, South Korea m.m.manjurul@gmail.com, kjy7079@gmail.com, sherazalik@gmail.com, jongmyon.kim@gmail.com.