Title :
Load forecasting based on partial mutual information and multiple kernel least squares vector regression
Author :
Yuan Conggui ; Zhu Cailian ; Xu Shuqiong
Author_Institution :
Dongguan Polytech., Dongguan, China
Abstract :
Load forecasting is important to power system. A load forecasting model is proposed here, which based on the partial mutual information estimation and the multiple kernel learning. The inputs of the model are selected according to the partial mutual information which can use to measure statistical dependence. The training samples are mapped into a high dimensional feature space by a nonlinear function with cooperative structure, and then fitted by a multiple kernel least square support vector regression model. The kernel matrix and the regularization parameters of this model are optimized simultaneously in a quadratically constrained linear Program. The application shows that the proposed model has higher prediction accuracy and better generalization performance than LS-SVR.
Keywords :
least squares approximations; load forecasting; regression analysis; high dimensional feature space; kernel matrix; load forecasting; multiple kernel least squares vector regression; nonlinear function; partial mutual information; regularization parameters; statistical dependence; Kernel; Load forecasting; Load modeling; Mutual information; Predictive models; Support vector machines; Least Squares Support Vector Regression; Load Forecast; Multiple kernel Learning; Partial Mutual Information;
Conference_Titel :
Control Conference (CCC), 2013 32nd Chinese
Conference_Location :
Xi´an