DocumentCode
1049535
Title
Analyzing Harmonic Monitoring Data Using Supervised and Unsupervised Learning
Author
Asheibi, A. ; Stirling, David ; Sutanto, Danny
Author_Institution
Sch. of Electr. Eng., Univ. of Wollongong, Wollongong, NSW
Volume
24
Issue
1
fYear
2009
Firstpage
293
Lastpage
301
Abstract
Harmonic monitoring has become an important tool for harmonic management in distribution system. A comprehensive harmonic monitoring program has been designed and implemented on a typical electrical medium-voltage distribution system in Australia. The monitoring program involved measurements of the three-phase harmonic currents and voltages from the residential, commercial, and industrial load sectors. Data over a three year period have been downloaded and available for analysis. The large amount of acquired data makes it difficult to identify operational events that significantly impact the harmonics generated on the system. More sophisticated analysis methods are required to automatically determine which part of the measurement data are of importance. Based on this information, a closer inspection of smaller data sets can then be carried out to determine the reasons for its detection. In this paper, we classify the measurement data using unsupervised learning based on clustering techniques using the minimum message length technique, which can provide the engineers with a rapid, visually oriented method of evaluating the underlying operational information contained within the clusters. Supervised learning is then used to describe the generated clusters and to predict the occurrences of unusual clusters in future measurement data.
Keywords
distribution networks; electric current measurement; harmonic generation; pattern clustering; power system analysis computing; power system harmonics; power system management; power system measurement; unsupervised learning; voltage measurement; Australia; clustering techniques; electrical medium-voltage distribution system management; harmonic generation; harmonic monitoring data analysis; measurement data classification; minimum message length technique; supervised learning; three-phase harmonic current measurement; unsupervised learning; voltage measurement; Australia; Current measurement; Data analysis; Data engineering; Harmonic analysis; Inspection; Length measurement; Medium voltage; Monitoring; Unsupervised learning; Classification; clustering; data mining; harmonics; monitoring system; power quality (PQ); segmentation;
fLanguage
English
Journal_Title
Power Delivery, IEEE Transactions on
Publisher
ieee
ISSN
0885-8977
Type
jour
DOI
10.1109/TPWRD.2008.2002654
Filename
4729797
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