JOURNAL ARTICLE

Partial discharge pattern classification using frequency-domain statistical descriptors

Abstract

Internal partial discharges taking place inside an insulation has been identified as one of the major contributors of the high voltage equipment failures. Recently, with the rapid development of computer based signal processing, it is possible to identify the source of partial discharge (PD) signals originating from complex insulation structures under varied operating conditions. The research on PD pattern classification is mostly performed in the time-domain but there is also an increasing trend to undertake frequency-domain analysis. In this research work, an experiment has been carried out on an 11KV, single-core 240 mm/sup 2/ XLPE cable. The operating conditions are varied using two parameters which are the soil condition in terms of soil thermal resistivity and cable loading in terms of core temperature. The time-domain electrical PD signals obtained from a PD measurement system are transformed into frequency spectrum by short-time fast Fourier transform (STFFT) using Matlab toolbox. In order to carry out the PD pattern classification, nine frequency-domain statistical descriptors are identified for the present work. A database for the range of values of the nine descriptors have been developed using PD signals obtained from one of the soil thermal resistivity at normal full load working temperature that is identified as standard. The values of the descriptors obtained from signals corresponding to other operating conditions stated earlier are then compared against the standard database and the number of successes is measured in terms of the commonly used recognition rate. The analysis of the results has clearly indicated that the proposed methodology has the ability to classify PD patterns originating from the cable under varied operating conditions.

Keywords:
Partial discharge Frequency domain Time domain SIGNAL (programming language) Signal processing MATLAB Fourier transform Range (aeronautics) Toolbox Work (physics) Computer science Fast Fourier transform Voltage Pattern recognition (psychology) Artificial intelligence Mathematics Electrical engineering Engineering Telecommunications Mechanical engineering Algorithm Computer vision

Metrics

2
Cited By
0.00
FWCI (Field Weighted Citation Impact)
9
Refs
0.04
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

High voltage insulation and dielectric phenomena
Physical Sciences →  Materials Science →  Materials Chemistry
Power Transformer Diagnostics and Insulation
Physical Sciences →  Engineering →  Electrical and Electronic Engineering
Thermal Analysis in Power Transmission
Physical Sciences →  Engineering →  Control and Systems Engineering

Related Documents

JOURNAL ARTICLE

Classification of Partial Discharge Sources using Statistical Approach

Lifeng RenM. S. Abd RahmanAzrul Mohd Ariffin

Journal:   Indonesian Journal of Electrical Engineering and Computer Science Year: 2017 Vol: 6 (3)Pages: 537-537
JOURNAL ARTICLE

Partial discharge pattern classification using multilayer neural networks

L. SatishBharathi Gururaj

Journal:   IEE Proceedings A Science Measurement and Technology Year: 1993 Vol: 140 (4)Pages: 323-323
JOURNAL ARTICLE

Frequency domain pattern classification

Rony Saha

Journal:   Information Sciences Year: 1973 Vol: 6 Pages: 285-300
© 2026 ScienceGate Book Chapters — All rights reserved.