Title :
A Statistical Model for Wind Power Forecast Error and its Application to the Estimation of Penalties in Liberalized Markets
Author :
Tewari, Saurabh ; Geyer, Charles J. ; Mohan, Ned
Author_Institution :
Dept. of Electr. Eng., Univ. of Minnesota, Minneapolis, MN, USA
Abstract :
The problem of accurately forecasting wind energy has garnered a great deal of attention in recent years. There are always some errors associated with any forecasting methodology. Although it is sometimes assumed that the forecast errors are Normally distributed, it is a special case arising from the geographical dispersion of wind resources, as shown in this paper. The distribution of the forecast error needs to be examined individually for every wind farm to determine the impact of this error on trading energy in electricity markets. This paper addresses the problem of modeling the distribution of the forecast errors associated with Persistence forecasts at the level of a single wind farm, and develops a novel, mixed distribution-based model to approximate the distribution of these errors. The model is then used to estimate the penalties for imperfectly forecast energy injections in the short-term markets. The results from the application of this model to trading are further used to assess the feasibility of energy storage in hedging against imperfect forecasts.
Keywords :
energy storage; load forecasting; power markets; wind power plants; electricity markets; energy storage; forecast error distribution; geographical dispersion; liberalized markets; penalty estimation; short-term markets; statistical model; trading energy; wind energy; wind farm; wind power forecast error; wind resources; Approximation methods; Distribution functions; Energy storage; Predictive models; Wind forecasting; Wind power generation; Energy storage; forecasting; statistics; wind energy;
Journal_Title :
Power Systems, IEEE Transactions on
DOI :
10.1109/TPWRS.2011.2141159