Title :
Short term load forecasting using a self-supervised adaptive neural network
Author :
Yoo, Hyeonjoong ; Pimmel, Russell L.
Author_Institution :
Inf. & Telecommun. Dept., Sangmyung Univ., Chonan, South Korea
fDate :
5/1/1999 12:00:00 AM
Abstract :
We developed a self-supervised adaptive neural network to perform short term load forecasts (STLF) for a large power system covering a wide service area with several heavy load centers. We used the self-supervised network to extract correlational features from temperature and load data. In using data from the calendar year 1993 as a test case, we found a 0.90 percent error for hour-ahead forecasting and 1.92 percent error for day-ahead forecasting. These levels of error compare favorably with those obtained by other techniques. The algorithm ran in a couple of minutes on a PC containing an Intel Pentium -120 MHz CPU. Since the algorithm included searching the historical database, training the network, and actually performing the forecasts, this approach provides a real-time, portable, and adaptable STLF
Keywords :
learning (artificial intelligence); load forecasting; power system analysis computing; self-organising feature maps; correlational features; day-ahead forecasting; heavy load centers; historical database searching; hour-ahead forecasting; large power system; neural network training; self-supervised adaptive neural network; self-supervised network; short term load forecasting; wide service area; Adaptive systems; Calendars; Data mining; Feature extraction; Load forecasting; Neural networks; Power systems; Radio access networks; Temperature; Testing;
Journal_Title :
Power Systems, IEEE Transactions on