Title :
Improve the unit commitment scheduling by using the neural-network-based short-term load forecasting
Author :
Saksornchai, Titti ; Lee, Wei-Jen ; Methaprayoon, Kittipong ; Liao, James R. ; Ross, Richard J.
Author_Institution :
Energy Syst. Res. Center, Univ. of Texas, Arlington, TX, USA
Abstract :
Unit commitment scheduling of the utility company relies upon the forecast of the demand, demand pattern, availability and capacity of the generators, minimum/maximum up and down time of the generators, and heat rate. According to the experiences of a local utility company, the difference of the fuel cost can reach a million dollars per day with different unit commitment scheduling. Accurate hour-ahead and day-ahead demand forecasting play important roles for proper unit commitment scheduling. This paper describes the procedure to improve the unit commitment scheduling by using the hour-ahead and day-ahead results from the newly developed neural network based short-term load forecasting program in the supervisory control and data acquisition and energy management system. Comparison of field records is also provided.
Keywords :
SCADA systems; load forecasting; neural nets; power engineering computing; power generation scheduling; data acquisition; energy management system; generator capacity; neural network based short term load forecasting; supervisory control; unit commitment scheduling; Costs; Demand forecasting; Fuels; Job shop scheduling; Load forecasting; Neural networks; Power generation; Power system planning; Production; Spinning;
Journal_Title :
Industry Applications, IEEE Transactions on
DOI :
10.1109/TIA.2004.841029