Title
Application of Classification Methods for Forecasting Mid-Term Power Load Patterns
Abstract
Currently an automated methodology based on data mining techniques is presented for the prediction of customer load patterns in long duration load profiles. The proposed approach in this paper consists of three stages: (i) data preprocessing: noise or outlier is removed and the continuous attribute-valued features are transformed to discrete values, (ii) cluster analysis: k-means clustering is used to create load pattern classes and the representative load profiles for each class and (iii) classification: we evaluated several supervised learning methods in order to select a suitable prediction method. According to the proposed methodology, power load measured from AMR (automatic meter reading) system, as well as customer indexes, were used as inputs for clustering. The output of clustering was the classification of representative load profiles (or classes). In order to evaluate the result of forecasting load patterns, the several classification methods were applied on a set of high voltage customers of the Korea power system and derived class labels from clustering and other features are used as input to produce classifiers. Lastly, the result of our experiments was presented.
Year
DOI
Venue
2008
10.1007/978-3-540-85930-7_7
ADVANCED INTELLIGENT COMPUTING THEORIES AND APPLICATIONS, PROCEEDINGS: WITH ASPECTS OF CONTEMPORARY INTELLIGENT COMPUTING TECHNIQUES
Keywords
DocType
Volume
supervised learning,k means clustering,automatic meter reading,data preprocessing,high voltage,power system,cluster analysis,indexation,data mining
Conference
15
ISSN
Citations 
PageRank 
1865-0929
4
0.49
References 
Authors
4
4
Name
Order
Citations
PageRank
Minghao Piao1376.30
Heon Gyu Lee2727.77
Jin Hyoung Park3111.29
Keun Ho Ryu488385.61