Separation of partial discharges from pulse-shaped noise signals with the help of neural networks

authored by
H. Borsi, Ernst Gockenbach, D. Wenzel
Abstract

A method to separate partial discharges (PD) from pulse-shaped noise signals using a neural network is described. The structure of neural networks and their ability for pattern recognition is presented. The adaptive resonance theory (ART) architectures, which are suitable for PD measurement, and the fast simulating algorithm ART 2-A, are explained. It is shown that the ART 2-A network is able to classify pulses in accordance with their origin for the distribution transformer. An examination of the signals measured on a power transformer under high voltage on-site is presented.

Organisation(s)
High Voltage Engineering and Asset Management Section (Schering Institute)
Type
Article
Journal
IEE Proceedings: Science, Measurement and Technology
Volume
142
Pages
69-74
No. of pages
6
ISSN
1350-2344
Publication date
01.1995
Publication status
Published
Peer reviewed
Yes
ASJC Scopus subject areas
Electrical and Electronic Engineering
Electronic version(s)
https://doi.org/10.1049/ip-smt:19951565 (Access: Closed)