Title :
Chronological Categorization and Decomposition of Customer Loads
Author :
Nourbakhsh, Ghavameddin ; Eden, Gary ; McVeigh, Dylan ; Ghosh, Arindam
Author_Institution :
Queensland Univ. of Technol. (QUT), Brisbane, QLD, Australia
Abstract :
The majority of distribution utilities do not have accurate information on the constituents of their loads. This information is very useful in managing and planning the network, adequately and economically. Customer loads are normally categorized in three main sectors: 1) residential; 2) industrial; and 3) commercial. In this paper, penalized least-squares regression and Euclidean distance methods are developed for this application to identify and quantify the makeup of a feeder load with unknown sectors/subsectors. This process is done on a monthly basis to account for seasonal and other load changes. The error between the actual and estimated load profiles are used as a benchmark of accuracy. This approach has shown to be accurate in identifying customer types in unknown load profiles, and is used in cross-validation of the results and initial assumptions.
Keywords :
least squares approximations; load distribution; power distribution planning; power system management; regression analysis; Euclidean distance methods; commercial loads; customer loads decomposition; distribution utilities; industrial loads; least-squares regression; network management; network planning; residential loads; Accuracy; Clustering methods; Data mining; Electric breakdown; Euclidean distance; Load modeling; Power demand; Classification; K-means; clustering; decomposition; load profiling;
Journal_Title :
Power Delivery, IEEE Transactions on
DOI :
10.1109/TPWRD.2012.2204072