AUTOMATION OF POWER TRANSFORMER MAINTENANCE THROUGH SUMMARIZATION OF SUBSPACE CLUSTERS

Power transformer is considered as critical equipment in power transmission/distribution systems and hence undergoes periodical maintenance for better performance and longer life. The operational condition of a power transformer is continuously monitored by sensing a large number of parameters, whic...

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Main Authors: B. JAYA LAKSHMI, M. SHASHI, K. B. MADHURI
Format: Article
Language:English
Published: Taylor's University 2018-11-01
Series:Journal of Engineering Science and Technology
Subjects:
Online Access:http://jestec.taylors.edu.my/Vol%2013%20issue%2011%20November%202018/13_11_12.pdf
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spelling doaj-f6e43e1c9a1748a4aba91ac542fe99142020-11-24T23:55:19ZengTaylor's UniversityJournal of Engineering Science and Technology1823-46902018-11-01131136103618AUTOMATION OF POWER TRANSFORMER MAINTENANCE THROUGH SUMMARIZATION OF SUBSPACE CLUSTERSB. JAYA LAKSHMI0M. SHASHI1K. B. MADHURI2Department of Information Technology, GVP College of Engineering (A), Madhurawada, Visakhapatnam, Andhra Pradesh, India 530048Department of Computer Science and Systems Engineering, Andhra University, Visakhapatnam, Andhra Pradesh, India 530003Department of Information Technology, GVP College of Engineering (A), Madhurawada, Visakhapatnam, Andhra Pradesh, India 530048Power transformer is considered as critical equipment in power transmission/distribution systems and hence undergoes periodical maintenance for better performance and longer life. The operational condition of a power transformer is continuously monitored by sensing a large number of parameters, which contain hidden patterns indicative of different faulty operational conditions. This paper presents a methodology for automatically identifying such patterns to predict a given faulty condition applying the state-of-art techniques of subspace clustering. The authors propose to summarize an enormously large number of patterns produced by conventional subspace clustering using Similarity connectedness-based Clustering on subspace Clusters (SCoC). The experimentation is done on a real dataset of transformer testing and maintenance records and it is observed that SCoC algorithm proposed by the authors is more effective and efficient in terms of purity and execution time compared to the SUBCLU and PCoC algorithms.http://jestec.taylors.edu.my/Vol%2013%20issue%2011%20November%202018/13_11_12.pdfOperational parametersPower transformer maintenancePreventive maintenanceSubspace clustering and summarization.
collection DOAJ
language English
format Article
sources DOAJ
author B. JAYA LAKSHMI
M. SHASHI
K. B. MADHURI
spellingShingle B. JAYA LAKSHMI
M. SHASHI
K. B. MADHURI
AUTOMATION OF POWER TRANSFORMER MAINTENANCE THROUGH SUMMARIZATION OF SUBSPACE CLUSTERS
Journal of Engineering Science and Technology
Operational parameters
Power transformer maintenance
Preventive maintenance
Subspace clustering and summarization.
author_facet B. JAYA LAKSHMI
M. SHASHI
K. B. MADHURI
author_sort B. JAYA LAKSHMI
title AUTOMATION OF POWER TRANSFORMER MAINTENANCE THROUGH SUMMARIZATION OF SUBSPACE CLUSTERS
title_short AUTOMATION OF POWER TRANSFORMER MAINTENANCE THROUGH SUMMARIZATION OF SUBSPACE CLUSTERS
title_full AUTOMATION OF POWER TRANSFORMER MAINTENANCE THROUGH SUMMARIZATION OF SUBSPACE CLUSTERS
title_fullStr AUTOMATION OF POWER TRANSFORMER MAINTENANCE THROUGH SUMMARIZATION OF SUBSPACE CLUSTERS
title_full_unstemmed AUTOMATION OF POWER TRANSFORMER MAINTENANCE THROUGH SUMMARIZATION OF SUBSPACE CLUSTERS
title_sort automation of power transformer maintenance through summarization of subspace clusters
publisher Taylor's University
series Journal of Engineering Science and Technology
issn 1823-4690
publishDate 2018-11-01
description Power transformer is considered as critical equipment in power transmission/distribution systems and hence undergoes periodical maintenance for better performance and longer life. The operational condition of a power transformer is continuously monitored by sensing a large number of parameters, which contain hidden patterns indicative of different faulty operational conditions. This paper presents a methodology for automatically identifying such patterns to predict a given faulty condition applying the state-of-art techniques of subspace clustering. The authors propose to summarize an enormously large number of patterns produced by conventional subspace clustering using Similarity connectedness-based Clustering on subspace Clusters (SCoC). The experimentation is done on a real dataset of transformer testing and maintenance records and it is observed that SCoC algorithm proposed by the authors is more effective and efficient in terms of purity and execution time compared to the SUBCLU and PCoC algorithms.
topic Operational parameters
Power transformer maintenance
Preventive maintenance
Subspace clustering and summarization.
url http://jestec.taylors.edu.my/Vol%2013%20issue%2011%20November%202018/13_11_12.pdf
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AT mshashi automationofpowertransformermaintenancethroughsummarizationofsubspaceclusters
AT kbmadhuri automationofpowertransformermaintenancethroughsummarizationofsubspaceclusters
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