Title :
Neural network based classification of partial discharge in HV motors
Author :
Asiri, Yahya ; Vouk, Alfred ; Renforth, Lee ; Clark, David ; NeuralWare, J.C.
Author_Institution :
Electr. Syst. Div., Saudi Aramco, Dhahran, Saudi Arabia
Abstract :
This paper discusses the general application of using Neural Networks (NN) to classify six different types of Partial Discharge (PD). Stator winding failures contribute about 30-40% of the total motor failures according to IEEE and EPRI. Ninety percent (90%) of electrical failures on High-Voltage (HV) equipment are related to insulation deterioration. Large datasets were collected for motors with PD defects as well as PD-free machines. The datasets of PD were pre-processed and prepared for use with a NN using statistical means. It was possible to utilise the advantages offered by multiple NN models to classify the PD defects with a maximum recognition rate of 94.5% achieved, whereas previous research work did not exceed a classification accuracy of 79%.
Keywords :
electric motors; insulation; neural nets; partial discharges; power engineering computing; stators; EPRI; IEEE; electrical failures; high-voltage equipment; high-voltage motors; insulation deterioration; motor failures; neural network; partial discharge; stator winding failures; Capacitive sensors; Generators; Induction motors; Neural networks; Partial discharges; Synchronous motors; Multiple Defects; Neural Networks; Partial Discharge; Pre-processing;
Conference_Titel :
Electrical Insulation Conference (EIC), 2011
Conference_Location :
Annapolis, MD
Print_ISBN :
978-1-4577-0278-5
Electronic_ISBN :
pending
DOI :
10.1109/EIC.2011.5996173