DocumentCode :
1050905
Title :
Short-Term Load Forecasting Using Comprehensive Combination Based on Multimeteorological Information
Author :
Fan, Shu ; Chen, Luonan ; Lee, Wei-Jen
Author_Institution :
Bus. & Economic Forecasting Unit, Monash Univ., Clayton, VIC, Australia
Volume :
45
Issue :
4
fYear :
2009
Firstpage :
1460
Lastpage :
1466
Abstract :
Short-term load forecasting is always a popular topic in the electric power industry because of its essentiality in energy system planning and operation. In the deregulated power system, an improvement of a few percentages in the prediction accuracy would bring benefits worth of millions of dollars, which makes load forecasting become more important than ever before. This paper focuses on the short-term load forecasting for a power system in the U.S., where several alternative meteorological forecasts are available from different commercial weather services. To effectively take advantage of the alternative meteorological predictions in the load forecasting system, a new comprehensive forecasting methodology has been proposed in this paper. Specifically, combining forecasting using adaptive coefficients is applied to share the strength of the different temperature forecasts in the first stage, and then, ensemble neural networks have been used to improve the model´s generalization performance based on bagging. The proposed load forecasting system has been verified by using the real data from the utility. A range of comparisons with different forecasting models have been conducted. The forecasting results demonstrate the superiority of the proposed methodology.
Keywords :
electricity supply industry deregulation; load forecasting; U.S; comprehensive combination; deregulated power system; electric power industry; energy system operation; energy system planning; multimeteorological information; neural networks; short-term load forecasting; Artificial neural network (ANN); bagging; combining forecasting; ensemble learning; load forecasting;
fLanguage :
English
Journal_Title :
Industry Applications, IEEE Transactions on
Publisher :
ieee
ISSN :
0093-9994
Type :
jour
DOI :
10.1109/TIA.2009.2023571
Filename :
5061556
Link To Document :
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