Abstract
Smoothing of wind power forecast errors is well-known for large areas. Comparable effects within a wind farm are investigated in this paper. A Neural Network was taken to predict the power output of a wind farm in north-western Germany comprising 17 turbines. A comparison was done between an algorithm that fits mean wind and mean power data of the wind farm and a second algorithm that fits wind and power data individually for each turbine. The evaluation of root mean square errors (RMSE) shows that relative small smoothing effects occur. However, it can be shown for this wind farm that individual calculations have the advantage that only a few turbines are needed to give better results than the use of mean data. Furthermore different results occurred if predicted wind speeds are directly fitted to observed wind power or if predicted wind speeds are first fitted to observed wind speeds and then applied to a power curve. The first approach gives slightly better RMSE values, the bias improves considerably. © 2007 IOP Publishing Ltd.
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CITATION STYLE
Saleck, N., & Von Bremen, L. (2007). Wind power forecast error smoothing within a wind farm. In Journal of Physics: Conference Series (Vol. 75). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/75/1/012051
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