Volume 7 Number 7 (Jul. 2012)
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JCP 2012 Vol.7(7): 1615-1622 ISSN: 1796-203X
doi: 10.4304/jcp.7.7.1615-1622

The Application of Support Vector Machine in Load Forecasting

Wenqing Zhao, Fei Wang, Dongxiao Niu
School of Business Administration, North China Electric Power University, Beijing, China
Abstract—The forecasting to mid-long term load is important because it can provide important evidence to the power planning. Traditional forecast techniques apply a single forecaster to carry out the task. However, this forecaster might not be the best for all situations or databases. A combinational model on the basis of Support Vector Machine (SVM) theory is proposed in this paper. During the process of the forecast, several single forecasting methods such as trend prediction model, exponent model, non-linear regression model, improved grey predictive model and improved grey verhulst predictive model, are used to form a model group, and then the fitted results by different traditional predictive models in time sequence act as the input of the support vector machine regression (SVMR) model, then by relative SVMR approach based on known input and output samples, we can obtain the test model. In the paper, the procedure of the combinational prediction on transformer faults based on SVMR is discussed in details. The example on load data has proven that the proposed model can give good results on both the fitting to the known data in time sequence and the extrapolation to the data to be predicted. Moreover, compared with other predictive approaches, both single model and other combinational model, the proposed combinational forecasting model has higher prediction accuracy.

Index Terms—Support Vector Machine, Mid-long term load forecasting, Combinational forecasting.

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Cite: Wenqing Zhao, Fei Wang, Dongxiao Niu, "The Application of Support Vector Machine in Load Forecasting," Journal of Computers vol. 7, no. 7, pp. 1615-1622, 2012.

General Information

ISSN: 1796-203X
Abbreviated Title: J.Comput.
Frequency: Bimonthly
Editor-in-Chief: Prof. Liansheng Tan
Executive Editor: Ms. Nina Lee
Abstracting/ Indexing: DBLP, EBSCO,  ProQuest, INSPEC, ULRICH's Periodicals Directory, WorldCat,etc
E-mail: jcp@iap.org
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