DocumentCode :
2795818
Title :
A Novel Hybrid GA Based SVM Short Term Load Forecasting Model
Author :
Sun, Wei
Author_Institution :
Dept. of Econ. & Manage., North China Electr. Power Univ., Baoding, China
Volume :
2
fYear :
2009
fDate :
Nov. 30 2009-Dec. 1 2009
Firstpage :
227
Lastpage :
229
Abstract :
The increasing importance and complexity of STLF necessitates more accurate load forecast methods. A novel genetic algorithm (GA) based support vector machine (SVM) forecasting model with determinstic annealing (DA) clustering is presented in this paper. For NN forecasting, too many training data may lead to long training time and slow convergent speed. First deterministic annealing (DA)for load data clustering technique is adopted first to solve the problem. After data clustering, GA based SVM forecasting model is established. The parameters for SVM were optimized through genetic algorithms, which were used in SVM model. The hibrid GA-SVM forecasting model is tested by using Hebei Province practical load data. The experimental results demonstrate the GA-SVM model outperforms the BP neural network model based on the root mean square error (RMSE) and the mean absolute percentage error (MAPE). And the proposed method provided a satisfactory improvement of forecasting accuracy.
Keywords :
genetic algorithms; load forecasting; support vector machines; BP neural network; STLF; determinstic annealing clustering; forecasting accuracy; genetic algorithm; load data clustering technique; mean absolute percentage error; short term load forecasting model; support vector machine; Annealing; Genetic algorithms; Load forecasting; Load modeling; Neural networks; Predictive models; Root mean square; Support vector machines; Testing; Training data; STLF; deterministica annealing; genetic algorithm; support vector machine;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Knowledge Acquisition and Modeling, 2009. KAM '09. Second International Symposium on
Conference_Location :
Wuhan
Print_ISBN :
978-0-7695-3888-4
Type :
conf
DOI :
10.1109/KAM.2009.31
Filename :
5362081
Link To Document :
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