Title :
Partial discharge pattern classification of angled point-oil-pressboard degradation
Author :
Mas´ud, A. Abubakar ; Stewart, Brian G. ; McMeekin, Scott G. ; Nesbitt, A.
Author_Institution :
Sch. of Eng. & Built Environ., Glasgow Caledonian Univ., Glasgow, UK
Abstract :
This paper compares single network (SNN) and ensemble neural network (ENN) capabilities to recognize and distinguish surface discharges between two point-interface-pressboard arrangements with point angles of 100 and 450. The training fingerprints for both the SNN and ENN comprise statistical parameters from the measurement of the surface discharge patterns captured over a period of 15 hours. The results shows that there is minimal statistical variability for surface discharges from a 450 point-interface-pressboard angles in comparison to that of 100, which shows different behavior over a similar degradation period. In comparison to the widely applied SNN, the ENN also consistently provides improved recognition of PD patterns while the SNN actually shows improved discrimination potential between the two point-oil-pressboard degradation angle geometries.
Keywords :
insulating oils; neural nets; partial discharges; pattern classification; surface discharges; ENN; SNN; angle geometry; angled point-oil-pressboard degradation; degradation period; discrimination potential; ensemble neural network; partial discharge pattern classification; point angles; point-interface-pressboard arrangements; single network; statistical variability; surface discharge patterns; surface discharges; Degradation; Discharges (electric); Fingerprint recognition; Geometry; Partial discharges; Surface discharges; Training; ensemble neural network; single neural network; surface discharges;
Conference_Titel :
Electrical Insulation and Dielectric Phenomena (CEIDP), 2013 IEEE Conference on
Conference_Location :
Shenzhen
DOI :
10.1109/CEIDP.2013.6748222