DocumentCode
804122
Title
Classification, Filtering, and Identification of Electrical Customer Load Patterns Through the Use of Self-Organizing Maps
Author
Verdú, Sergio Valero ; García, Mario Ortiz ; Senabre, Carolina ; Marin, Antonio Gabaldón ; Franco, Francisco J García
Author_Institution
Dept. of Electr. Eng., Univ. Miguel Herndndez, Elche
Volume
21
Issue
4
fYear
2006
Firstpage
1672
Lastpage
1682
Abstract
Different methodologies are available for clustering purposes. The objective of this paper is to review the capacity of some of them and specifically to test the ability of self-organizing maps (SOMs) to filter, classify, and extract patterns from distributor, commercializer, or customer electrical demand databases. These market participants can achieve an interesting benefit through the knowledge of these patterns, for example, to evaluate the potential for distributed generation, energy efficiency, and demand-side response policies (market analysis). For simplicity, customer classification techniques usually used the historic load curves of each user. The first step in the methodology presented in this paper is anomalous data filtering: holidays, maintenance, and wrong measurements must be removed from the database. Subsequently, two different treatments (frequency and time domain) of demand data were tested to feed SOM maps and evaluate the advantages of each approach. Finally, the ability of SOM to classify new customers in different clusters is also examined. Both steps have been performed through a well-known technique: SOM maps. The results clearly show the suitability of this approach to improve data management and to easily find coherent clusters between electrical users, accounting for relevant information about weekend demand patterns
Keywords
demand side management; distributed power generation; feature extraction; filtering theory; pattern classification; power engineering computing; power markets; self-organising feature maps; clustering purposes; customer classification techniques; customer electrical demand database; data management; demand-side response policy; distributed generation; electrical customer load patterns; market analysis; market participants; pattern extraction; self-organizing maps; Automatic testing; Commercialization; Databases; Distributed control; Energy efficiency; Feeds; Filtering; Filters; Pattern analysis; Self organizing feature maps; Data mining; demand management; electrical customer segmentation; load patterns; self-organizing maps (SOMs);
fLanguage
English
Journal_Title
Power Systems, IEEE Transactions on
Publisher
ieee
ISSN
0885-8950
Type
jour
DOI
10.1109/TPWRS.2006.881133
Filename
1717570
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