4.6 Article

Fault Diagnosis of Rolling Bearing Based on Shift Invariant Sparse Feature and Optimized Support Vector Machine

Journal

MACHINES
Volume 9, Issue 5, Pages -

Publisher

MDPI
DOI: 10.3390/machines9050098

Keywords

shift invariant K-SVD; support vector machine; dictionary learning; fault diagnosis; rolling bearing

Funding

  1. Fundamental Research Funds for the Central Universities [2232019D3-61]
  2. initial research fund for the young teachers of Donghua University

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A novel fault diagnosis method for rolling bearings using shift invariant sparse feature and optimized SVM is proposed in this study. The learned over-complete dictionary and sparse coding can effectively extract fault features of rotating machinery, while the optimized SVM significantly improves diagnosis accuracy.
The vibration signal of rotating machinery fault is a periodic impact signal and the fault characteristics appear periodically. The shift invariant K-SVD algorithm can solve this problem effectively and is thus suitable for fault feature extraction of rotating machinery. With the over-complete dictionary learned by the training samples, including thedifferent classes, shift invariant sparse feature for the training as well as test samples can be formed through sparse codes and employed as the input of classifier. A support vector machine (SVM) with optimized parameters has been extensively used in intelligent diagnosis of machinery fault. Hence, in this study, a novel fault diagnosis method of rolling bearings using shift invariant sparse feature and optimized SVM is proposed. Firstly, dictionary learning by shift invariant K-SVD algorithm is conducted. Then, shift invariant sparse feature is constructed with the learned over-complete dictionary. Finally, optimized SVM is employed for classification of the shift invariant sparse feature corresponding to different classes, hence, bearing fault diagnosis is achieved. With regard to the optimized SVM, three methods including grid search, generic algorithm (GA), and particle swarm optimization (PSO) are respectively carried out. The experiment results show that the shift invariant sparse feature using shift invariant K-SVD can effectively distinguish the bearing vibration signals corresponding to different running states. Moreover, optimized SVM can significantly improve the diagnosis precision.

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