Denoising of Radio Frequency Partial Discharge Signals Using Artificial Neural Network

One of the most promising techniques for condition monitoring of high voltage equipment insulation is partial discharge (PD) measurement using radio frequency (RF) antenna. Nevertheless, the accuracy of monitoring, classification, localization, or lifetime estimation could be negatively affected due to the interferences and noises measured simultaneously and contaminate the RF signals. Therefore, to achieve high accuracy of PD assessment, exploiting the denoising algorithms is inevitable. Hence, this paper seeks to introduce a new technique to suppress white noise, the most prevalent type of noise, especially for RF signals. In the proposed method, the ability of artificial neural network (ANN) in curve fitting is applied to denoising of different types of measured RF signals emitted from PD sources including ‘crack’, ‘internal void’, in the insulator discs and ‘sharp points’ from external hardware. The processes of denoising for named signals with the proposed method are carried out, and the obtained results are compared with the outputs of a wavelet transform-based method named energy conversation-based thresholding. In all tested signals, the proposed technique showed superior denoising capability.

[1]  A. Beroual,et al.  Utilization of artificial neural network for the estimation of size and position of metallic particle adhering to spacer in GIS , 2013, IEEE Transactions on Dielectrics and Electrical Insulation.

[2]  Tao Jin,et al.  A Novel Adaptive EEMD Method for Switchgear Partial Discharge Signal Denoising , 2019, IEEE Access.

[3]  A. El-Hag,et al.  Detection and classification of defects in ceramic insulators using RF antenna , 2017, IEEE Transactions on Dielectrics and Electrical Insulation.

[4]  Ramy Hussein,et al.  Energy conservation-based thresholding for effective wavelet denoising of partial discharge signals , 2016 .

[5]  Khaled Bashir Shaban,et al.  Denoising different types of acoustic partial discharge signals using power spectral subtraction , 2017 .

[6]  M. R. Petraglia,et al.  Identification of partial discharges immersed in noise in large hydro-generators based on improved wavelet selection methods , 2015 .

[7]  U. Kopf,et al.  Rejection of narrow-band noise and repetitive pulses in on-site PD measurements [corrected version] , 1995 .

[8]  G. B. Gharehpetian,et al.  A New Partial Discharge Signal Denoising Algorithm Based on Adaptive Dual-Tree Complex Wavelet Transform , 2018, IEEE Transactions on Instrumentation and Measurement.

[9]  Norden E. Huang,et al.  Ensemble Empirical Mode Decomposition: a Noise-Assisted Data Analysis Method , 2009, Adv. Data Sci. Adapt. Anal..

[10]  Abbas Najafipour,et al.  Comparing the trustworthiness of signal-to-noise ratio and peak signal-to-noise ratio in processing noisy partial discharge signals , 2013 .

[11]  Jian Li,et al.  Scale dependent wavelet selection for de-noising of partial discharge detection , 2010, IEEE Transactions on Dielectrics and Electrical Insulation.

[12]  S. Sriram,et al.  Signal denoising techniques for partial discharge measurements , 2005, IEEE Transactions on Dielectrics and Electrical Insulation.

[13]  S. M. Shahrtash,et al.  Feature-oriented de-noising of partial discharge signals employing mathematical morphology filters , 2012, IEEE Transactions on Dielectrics and Electrical Insulation.