Journal of Electrical Engineering ›› 2017, Vol. 12 ›› Issue (11): 41-45.doi: 10.11985/2017.11.007

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Research on Improving the Recognition Rate of GIS Ultrasonic Discharge Signal by Wavelet Denoising

Zhang Bo,Liu Chengguo,Xu Zhong,Lin Tao   

  1. Beijing Electric Power Corporation of SGCC Beijing 100031 China
  • Received:2017-06-29 Online:2017-11-25 Published:2017-11-25

Abstract:

Needle-plate, suspended metal particles and metal particles fixed on insulator surface were placed separately in GIS entity model. The discharge waveforms were detected by using ultrasonic sensor under the same voltage. In order to be consistent with the field noise, we added the noise which was detected from the field equipment to the discharge waveforms. The waveforms were processed by wavelet de-noising. Then Aiming at the waveforms’ chara- cteristics, seven characteristic parameters were chosen. The characteristic parameters before and after de-noising were used separately to train and test BP_Adaboost classifier. The results showed that by using characteristic vectors grasped from waveforms after de-noising, the recognition result is higher.

Key words: GIS, ultrasonic sensor, wavelet de-noising, BP_Adaboost classifier, recognition of discharge types

CLC Number: