DocumentCode :
3143265
Title :
Identification of Load Power Quality Characteristics using Data Mining
Author :
Asheibi, Ali ; Stirling, David ; Robinson, Duane
Author_Institution :
Integral Energy Power Quality & Reliability Centre, Wollongong Univ., NSW
fYear :
2006
fDate :
38838
Firstpage :
157
Lastpage :
162
Abstract :
The rapid increase in computer technology and the availability of large scale power quality monitoring data should now motivate distribution network service providers to attempt to extract information that may otherwise remain hidden within the recorded data. Such information may be critical for identification and diagnoses of power quality disturbance problems, prediction of system abnormalities or failure, and alarming of critical system situations. Data mining tools are an obvious candidate for assisting in such analysis of large scale power quality monitoring data. This paper describes a method of applying unsupervised and supervised learning strategies of data mining in power quality data analysis. Firstly underlying classes in harmonic data from medium and low voltage (MV/LV) distribution systems were identified using clustering. Secondly the link analysis is used to merge the obtained clusters into supergroups. The characteristics of these super-groups are discovered using various algorithms for classification techniques. Finally the a priori algorithm of association rules is used to find the correlation between the harmonic currents and voltages at different sites (substation, residential, commercial and industrial) for the interconnected supergroups
Keywords :
data mining; pattern clustering; power distribution faults; power engineering computing; power supply quality; power system harmonics; unsupervised learning; association rule; data mining; distribution network service provider; load power quality identification; power quality monitoring; priori algorithm; supervised learning; unsupervised learning; Availability; Clustering algorithms; Computer networks; Computerized monitoring; Condition monitoring; Data mining; Distributed computing; Large-scale systems; Power quality; Supervised learning; data mining; harmonics; power quality;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Electrical and Computer Engineering, 2006. CCECE '06. Canadian Conference on
Conference_Location :
Ottawa, Ont.
Print_ISBN :
1-4244-0038-4
Electronic_ISBN :
1-4244-0038-4
Type :
conf
DOI :
10.1109/CCECE.2006.277720
Filename :
4054999
Link To Document :
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