Title :
Multistage Artificial Neural Network Short-Term Load Forecasting Engine With Front-End Weather Forecast
Author :
Methaprayoon, Kittipong ; Lee, Wei-Jen ; Rasmiddatta, Sothaya ; Liao, James R. ; Ross, Richard J.
Author_Institution :
ERCOT Taylor (TCCI), Taylor
Abstract :
A significant portion of the operating cost of utilities comes from energy production. To minimize the cost, unit commitment (UC) scheduling can be used to determine the optimal commitment schedule of generation units to accommodate the forecasted demand. The load forecast is a prerequisite for UC planning. The projected load of up to seven days is important for the allocation of generation resources. Hour-ahead forecast is used for optimally dispatching online resources to supply the next hour load. This paper addresses the systematic design of a multistage artificial-neural-network-based short-term load forecaster (ANNSTLF). The developed ANNSTLF engine has been utilized in a real utility system. The performance analysis over the past year shows that a majority of the forecast error was detected in a consistent period with a large temperature forecast error. The enhancement of ANNSTLF is proposed to improve the forecasting performance. The comparison of forecasting accuracy due to this enhancement is analyzed.
Keywords :
load forecasting; neural nets; power engineering computing; power generation planning; power generation scheduling; weather forecasting; ANNSTLF engine; energy production; front-end weather forecast; generation resources allocation; multistage artificial neural network; optimal commitment schedule; short-term load forecasting engine; temperature forecast error; unit commitment planning; unit commitment scheduling; Artificial neural networks; Cost function; Demand forecasting; Dispatching; Engines; Load forecasting; Performance analysis; Production; Resource management; Weather forecasting; Neural network; short-term load forecasting; unit commitment (UC) scheduling; weather forecast;
Journal_Title :
Industry Applications, IEEE Transactions on
DOI :
10.1109/TIA.2007.908190