A smart partial discharge classification SOM with optimized statistical transformation feature
Condition-based monitoring (CBM) has been a vital engineering method to assess high voltage (HV) equipment and power cables conditions or health levels. One of the effective CBM methods is partial discharge (PD) measurement or detection. PD event is the phenomenon that always associated with insulat...
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Institute of Advanced Engineering and Science
2021
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my.utem.eprints.258062023-07-21T15:28:22Z http://eprints.utem.edu.my/id/eprint/25806/ A smart partial discharge classification SOM with optimized statistical transformation feature Bohari, Zul Hasrizal Isa, Muzamir Abdullah, Ahmad Zaidi Soh, Ping Jack Sulaima, Mohamad Fani Condition-based monitoring (CBM) has been a vital engineering method to assess high voltage (HV) equipment and power cables conditions or health levels. One of the effective CBM methods is partial discharge (PD) measurement or detection. PD event is the phenomenon that always associated with insulation healthiness. PD has been measured and evaluated in this paper to discriminate PD signals from a good signal. A mixed-signal being fed at an AI technique with statistical modified input data to do fast classification (less than five seconds) with nearly zero error. In this paper, an unsupervised neural network is applied for PD classification. The methods combine the self-organizing maps (SOMs) and feature statistical transformation. By the combination of these methods, the ‘range’ normalization method produced the best classification outcomes. This development decided that PD information was effectively correlated and grouped by means of MATLAB’s SOM Toolbox and transformation device to discriminate the normal signal from the PD signal. Institute of Advanced Engineering and Science 2021-04 Article PeerReviewed text en http://eprints.utem.edu.my/id/eprint/25806/2/1.%20BEEI_A%20SMART%20PARTIAL%20DISCHARGE%20CLASSIFICATION%20SOM%20WITH%20OPTIMIZED%20STATISTICAL%20TRANSFORMATION%20FEATURE.PDF Bohari, Zul Hasrizal and Isa, Muzamir and Abdullah, Ahmad Zaidi and Soh, Ping Jack and Sulaima, Mohamad Fani (2021) A smart partial discharge classification SOM with optimized statistical transformation feature. Bulletin of Electrical Engineering and Informatics, 10 (2). pp. 1054-1062. ISSN 2089-3191 https://beei.org/index.php/EEI/article/view/2751/2145 10.11591/eei.v10i2.2751 |
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Condition-based monitoring (CBM) has been a vital engineering method to assess high voltage (HV) equipment and power cables conditions or health levels. One of the effective CBM methods is partial discharge (PD) measurement or detection. PD event is the phenomenon that always associated with insulation healthiness. PD has been measured and evaluated in this paper to discriminate PD signals from a good signal. A mixed-signal being fed at an AI technique with statistical modified input data to do fast classification (less than five seconds) with nearly zero error. In this paper, an unsupervised neural network is applied for PD classification. The methods combine the self-organizing maps (SOMs) and feature statistical transformation. By the combination of these methods, the ‘range’ normalization method produced the best classification outcomes. This development decided that PD information was effectively correlated and grouped by means of MATLAB’s SOM Toolbox and transformation device to discriminate the normal signal from the PD signal. |
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Bohari, Zul Hasrizal Isa, Muzamir Abdullah, Ahmad Zaidi Soh, Ping Jack Sulaima, Mohamad Fani |
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Bohari, Zul Hasrizal Isa, Muzamir Abdullah, Ahmad Zaidi Soh, Ping Jack Sulaima, Mohamad Fani A smart partial discharge classification SOM with optimized statistical transformation feature |
author_facet |
Bohari, Zul Hasrizal Isa, Muzamir Abdullah, Ahmad Zaidi Soh, Ping Jack Sulaima, Mohamad Fani |
author_sort |
Bohari, Zul Hasrizal |
title |
A smart partial discharge classification SOM with optimized statistical transformation feature |
title_short |
A smart partial discharge classification SOM with optimized statistical transformation feature |
title_full |
A smart partial discharge classification SOM with optimized statistical transformation feature |
title_fullStr |
A smart partial discharge classification SOM with optimized statistical transformation feature |
title_full_unstemmed |
A smart partial discharge classification SOM with optimized statistical transformation feature |
title_sort |
smart partial discharge classification som with optimized statistical transformation feature |
publisher |
Institute of Advanced Engineering and Science |
publishDate |
2021 |
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http://eprints.utem.edu.my/id/eprint/25806/2/1.%20BEEI_A%20SMART%20PARTIAL%20DISCHARGE%20CLASSIFICATION%20SOM%20WITH%20OPTIMIZED%20STATISTICAL%20TRANSFORMATION%20FEATURE.PDF http://eprints.utem.edu.my/id/eprint/25806/ https://beei.org/index.php/EEI/article/view/2751/2145 |
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