ICIC 2014: Intelligent Computing Theory pp 684-692 | Cite as

The Research of the Transient Feature Extraction by Resonance-Based Method Using Double-TQWT

  • Weiwei Xiang
  • Gaigai Cai
  • Wei Fan
  • Weiguo Huang
  • Li Shang
  • Zhongkui Zhu
Part of the Lecture Notes in Computer Science book series (LNCS, volume 8588)

Abstract

Signal processing aims to extract useful features from signals. However, the useful features are usually so weak, and corrupted by strong background noise, so it is difficult to extract by traditional linear methods. In this paper, a resonance-based method using double tunable Q-factor wavelet transform (TQWT) is applied for transient feature extraction. With the double-TQWT, the non-stationary signal is represented as the mixture of high resonance components and low resonance components based on the different resonance. The transient feature has a low Q-factor and belongs to low resonance components. Results of applications in transient feature extraction for simulation signal and bearing fault signal show the new method outperforms the average filtering method and the wavelet threshold algorithm, which further confirms the validity and superiority of this method for transient feature extraction.

Keywords

transient feature extraction double-TQWT resonance 

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Copyright information

© Springer International Publishing Switzerland 2014

Authors and Affiliations

  • Weiwei Xiang
    • 1
  • Gaigai Cai
    • 1
  • Wei Fan
    • 1
  • Weiguo Huang
    • 1
  • Li Shang
    • 2
  • Zhongkui Zhu
    • 1
  1. 1.School of Urban Rail TransportationSoochow UniversitySuzhouChina
  2. 2.Department of Electronic Information EngineeringSuzhou Vocational UniversitySuzhouChina

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