Summary

In order to guarantee the operational reliability of high voltage direct current equipment, the partial discharge measurement plays an important role. For AC systems, numerous works on partial discharge interpretation have been carried out for several decades. However, these methods for AC systems cannot be applied directly to DC systems. In this work, partial discharge data for typical defects in gas-insulated systems were accumulated and several identification methods on partial discharges at DC voltage were compared. As for the experiment, specially designed test cells were used, including three kinds of typical defects: floating electrode, protrusion on a high voltage electrode and free metallic particle. The experiments were performed in SF6 gas at DC voltages with both positive and negative polarity. The experimental results showed that even in the same category of the defect, such as the floating electrode, the partial discharge patterns greatly varied depending on test conditions or the shape of the defect. As for the partial discharge identification, three kinds of input data (statistical features, raw partial discharge data and the pixel data of the NoDi* Pattern mappings) and two kinds of identification algorithms (the artificial neural network and the decision tree) were combined. The performances of all these methods were compared. Using the statistical features or the pixel data of NoDi* Pattern mappings as the input data showed good performances and were able to correctly identify PD defects with more than 95 %.

Additional informations

Publication type ISH Collection
Reference ISH2017_528
Publication year
Publisher ISH
File size 680 KB
Pages number 6
Price for non member Free
Price for member Free

Authors

RIVERA ROSAS, GUIMOND

Keywords

GIS, SF6 gas, HVDC, Partial discharge identification, Neural network

Identification of partial discharges at DC voltage using machine learning methods
Identification of partial discharges at DC voltage using machine learning methods