Title |
Short-Term Load Forecasting Using Neural Networks and the Sensitivity of Temperatures in the Summer Season |
Authors |
하성관(Ha Seong-Kwan) ; 김홍래(Kim Hongrae) ; 송경빈(Song Kyung-Bin) |
Keywords |
Load Forecasting ; Neural Networks ; General Exponential Smoothing ; Temperature Sensitivity |
Abstract |
Short-term load forecasting algorithm using neural networks and the sensitivity of temperatures in the summer season is proposed. In recent 10 years, many researchers have focused on artificial neural network approach for the load forecasting. In order to improve the accuracy of the load forecasting, input parameters of neural networks are investigated for three training cases of previous 7-days, 14-days, and 30-days. As the result of the investigation, the training case of previous 7-days is selected in the proposed algorithm. Test results show that the proposed algorithm improves the accuracy of the load forecasting. |