Title :
One-hour-ahead load forecasting using neural network
Author :
Senjyu, Tomonobu ; Takara, Hitoshi ; Uezato, Katsumi ; Funabashi, Toshihisa
Author_Institution :
Dept. of Electr. & Electron. Eng., Ryukyus Univ., Okinawa, Japan
fDate :
2/1/2002 12:00:00 AM
Abstract :
Load forecasting has always been the essential part of an efficient power system planning and operation. Several electric power companies are now forecasting load power based on conventional methods. However, since the relationship between load power and factors influencing load power is nonlinear, it is difficult to identify its nonlinearity by using conventional methods. Most of papers deal with 24-hour-ahead load forecasting or next day peak load forecasting. These methods forecast the demand power by using forecasted temperature as forecast information. But, when the temperature curves changes rapidly on the forecast day, load power changes greatly and forecast error would going to increase. In conventional methods neural networks uses all similar day´s data to learn the trend of similarity. However, learning of all similar day´s data is very complex, and it does not suit learning of neural network. Therefore, it is necessary to reduce the neural network structure and learning time. To overcome these problems, we propose a one-hour-ahead load forecasting method using the correction of similar day data. In the proposed prediction method, the forecasted load power is obtained by adding a correction to the selected similar day data
Keywords :
learning (artificial intelligence); load forecasting; power system analysis computing; power system planning; recurrent neural nets; 24-hour-ahead load forecasting; electric power companies; forecast information; forecasted temperature; load power; neural networks; next day peak load forecasting; nonlinearity; on-line learning; one-hour-ahead load forecasting; power system operation; power system planning; recurrent neural network; similar day data correction; Demand forecasting; Load forecasting; Neural networks; Power engineering and energy; Power system modeling; Power system planning; Prediction methods; Recurrent neural networks; Temperature; Weather forecasting;
Journal_Title :
Power Systems, IEEE Transactions on