Title :
Analysis of the value for unit commitment of improved load forecasts
Author :
Hobbs, Benjamin F. ; Jitprapaikulsarn, Suradet ; Konda, Sreenivas ; Chankong, Vira ; Loparo, Kenneth A. ; Maratukulam, Dominic J.
Author_Institution :
Dept. of Geogr. & Environ. Eng., Johns Hopkins Univ., Baltimore, MD, USA
fDate :
11/1/1999 12:00:00 AM
Abstract :
Load forecast errors can yield suboptimal unit commitment decisions. The economic cost of inaccurate forecasts is assessed by a combination of forecast simulation, unit commitment optimization, and economic dispatch modeling for several different generation/load systems. The forecast simulation preserves the error distributions and correlations actually experienced by users of a neural net-based forecasting system. Underforecasts result in purchases of expensive peaking or spot market power; overforecasts inflate start-up and fixed costs because too much capacity is committed. The value of improved accuracy is found to depend on load and generator characteristics; for the systems considered here, a reduction of 1% in mean absolute percentage error (MAPE) decreases variable generation costs by approximately 0.1%-0.3% when MAPE is in the range of 3%-5%. These values are broadly consistent with the results of a survey of 19 utilities, using estimates obtained by simpler methods. A conservative estimate is that a 1% reduction in forecasting error for a 10,000 MW utility can save up to $1.6 million annually
Keywords :
electricity supply industry; load forecasting; optimisation; power generation dispatch; power generation scheduling; power system economics; 10000 MW; economic cost; economic dispatch modeling; forecast simulation; generation/load systems; load forecasts improvement; mean absolute percentage error; suboptimal unit commitment decisions; unit commitment; unit commitment optimization; Costs; Economic forecasting; Environmental economics; Error correction; Fuel economy; Load forecasting; Power generation economics; Power system analysis computing; Power system economics; Predictive models;
Journal_Title :
Power Systems, IEEE Transactions on