Shock and Vibration (Jan 2014)

Bearing Degradation Process Prediction Based on the Support Vector Machine and Markov Model

  • Shaojiang Dong,
  • Shirong Yin,
  • Baoping Tang,
  • Lili Chen,
  • Tianhong Luo

DOI
https://doi.org/10.1155/2014/717465
Journal volume & issue
Vol. 2014

Abstract

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Predicting the degradation process of bearings before they reach the failure threshold is extremely important in industry. This paper proposed a novel method based on the support vector machine (SVM) and the Markov model to achieve this goal. Firstly, the features are extracted by time and time-frequency domain methods. However, the extracted original features are still with high dimensional and include superfluous information, and the nonlinear multifeatures fusion technique LTSA is used to merge the features and reduces the dimension. Then, based on the extracted features, the SVM model is used to predict the bearings degradation process, and the CAO method is used to determine the embedding dimension of the SVM model. After the bearing degradation process is predicted by SVM model, the Markov model is used to improve the prediction accuracy. The proposed method was validated by two bearing run-to-failure experiments, and the results proved the effectiveness of the methodology.