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Phase Resolved Partial Discharge Identification using a Support Vector Machine

Phase Resolved Partial Discharge Identification using a Support Vector Machine
Phase Resolved Partial Discharge Identification using a Support Vector Machine
Partial discharge (PD) has a significant effect on the insulation performance of power apparatus in both transmission and distribution networks of power systems. Insulation performance and properties can be influenced by different types of PD activity. Therefore, PD source identification and diagnosis is of interest to both power equipment Manufacturers and utilities. With developments in measurement techniques, sensors and signal processing techniques, interpretation of the measured PD data and PD source identification are gaining more interest. Over the last two decades, research into computer-aided automatic PD source discrimination has attracted great attention. A number of papers have been published based on the use of artificial intelligence algorithms such as artificial neural networks, genetic algorithms and fuzzy logic. This paper investigates the application of a machine learning technique, namely the support vector machine (SVM) on PD source identification using phase resolved discharge distribution information (' – average q). PD data obtained from a conventional PD detector and a non-conventional radio frequency current transducer were used to assess the performance of the use of a phase resolved parameter for identification.
386-391
Hao, L
e6006548-3fc1-4a7e-9df4-a4e9a9a05c45
Lewin, P L
78b4fc49-1cb3-4db9-ba90-3ae70c0f639e
Hao, L
e6006548-3fc1-4a7e-9df4-a4e9a9a05c45
Lewin, P L
78b4fc49-1cb3-4db9-ba90-3ae70c0f639e

Hao, L and Lewin, P L (2008) Phase Resolved Partial Discharge Identification using a Support Vector Machine. 23rd IAR Workshop on Advanced Control and Diagnosis, Coventry, United Kingdom. 27 - 28 Nov 2008. pp. 386-391 .

Record type: Conference or Workshop Item (Paper)

Abstract

Partial discharge (PD) has a significant effect on the insulation performance of power apparatus in both transmission and distribution networks of power systems. Insulation performance and properties can be influenced by different types of PD activity. Therefore, PD source identification and diagnosis is of interest to both power equipment Manufacturers and utilities. With developments in measurement techniques, sensors and signal processing techniques, interpretation of the measured PD data and PD source identification are gaining more interest. Over the last two decades, research into computer-aided automatic PD source discrimination has attracted great attention. A number of papers have been published based on the use of artificial intelligence algorithms such as artificial neural networks, genetic algorithms and fuzzy logic. This paper investigates the application of a machine learning technique, namely the support vector machine (SVM) on PD source identification using phase resolved discharge distribution information (' – average q). PD data obtained from a conventional PD detector and a non-conventional radio frequency current transducer were used to assess the performance of the use of a phase resolved parameter for identification.

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More information

Published date: 27 November 2008
Additional Information: Event Dates: 27-28 November 2008
Venue - Dates: 23rd IAR Workshop on Advanced Control and Diagnosis, Coventry, United Kingdom, 2008-11-27 - 2008-11-28
Organisations: Electronics & Computer Science, EEE

Identifiers

Local EPrints ID: 266971
URI: http://eprints.soton.ac.uk/id/eprint/266971
PURE UUID: ce381fa7-2dc6-4368-beba-66f5003ef77b
ORCID for P L Lewin: ORCID iD orcid.org/0000-0002-3299-2556

Catalogue record

Date deposited: 08 Dec 2008 18:46
Last modified: 15 Mar 2024 02:43

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Contributors

Author: L Hao
Author: P L Lewin ORCID iD

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