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Partial discharge signal self-adaptive sparse decomposition noise abatement based on spectral kurtosis and S-transform

  • Anan Zhang [1] ; Cong He [1] ; Maoyi Sun [2] ; Qian Li [1] ; Hong Wei Li [1] ; Lin Yang [1]
    1. [1] Southwest Petroleum University

      Southwest Petroleum University

      China

    2. [2] National Institute of Measurement and Testing Technology

      National Institute of Measurement and Testing Technology

      China

  • Localización: Compel: International journal for computation and mathematics in electrical and electronic engineering, ISSN 0332-1649, Vol. 37, Nº 1, 2018, págs. 293-306
  • Idioma: inglés
  • Enlaces
  • Resumen
    • Purpose Noise abatement is one of the key techniques for Partial Discharge (PD) on-line measurement and monitoring. However, how to enhance the efficiency of PD signal noise suppression is a challenging work. Hence, this study aims to improve the efficiency of PD signal noise abatement.

      Design/methodology/approach In this approach, the time–frequency characteristics of PD signal had been obtained based on fast kurtogram and S-transform time–frequency spectrum, and these characteristics were used to optimize the parameters for the signal matching over-complete dictionary. Subsequently, a self-adaptive selection of matching atoms was realized when using Matching Pursuit (MP) to analyze PD signals, which leading to seldom noise signal element was represented in sparse decomposition.

      Findings The de-noising of PD signals was achieved efficiently. Simulation and experimental results show that the proposed method has good adaptability and significant noise abatement effect compared with Empirical Mode Decomposition, Wavelet Threshold and global signal sparse decomposition of MP.

      Originality/value A self-adaptive noise abatement method was proposed to improve the efficiency of PD signal noise suppression based on the signal sparse representation and its MP algorithm, which is significant to on-line PD measurement.


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