Title :
Power System Short-Term Load Forecasting Based on Improved Support Vector Machines
Author_Institution :
Econ. & Manage. Dept., Chongqing Normal Univ., Chongqing
Abstract :
Accurate forecasting of power system short -term load has been one of the most important issues in the electricity industry. And the forecasting accuracy is influenced by many unpredicted factors. Because of the non-linear features of short-term power load, the paper uses support vector machines (SVM) technology for the short-term electricity load forecast. The method can better solve such practical problems as small samples, nonlinearity, high dimensionality and local minimization, which can greatly enhancing its ability to handle non-linear. To solve the problems of SVM in training for large-scale convergence, such as slow convergence, greet complexity, particle swarm optimization(PSO) is proposed for the secondary planning problem to enhance SVM computing speed. The improved SVM is applied to short-term load forecasting, empirical studies show that the method has a high prediction accuracy and faster computing speed.
Keywords :
electricity supply industry; load forecasting; particle swarm optimisation; power engineering computing; support vector machines; electricity industry; forecasting accuracy; large-scale convergence; particle swarm optimization; power system short-term load forecasting; short-term electricity load forecast; support vector machines; Economic forecasting; Load forecasting; Neural networks; Power system economics; Power system management; Power system modeling; Power system planning; Power systems; Predictive models; Support vector machines; particle swarm optimization; short-term load forecasting; support vector machines;
Conference_Titel :
Knowledge Acquisition and Modeling, 2008. KAM '08. International Symposium on
Conference_Location :
Wuhan
Print_ISBN :
978-0-7695-3488-6
DOI :
10.1109/KAM.2008.68