Journal article
Probabilistic forecasts of wind power generation accounting for geographically dispersed information
Department of Applied Mathematics and Computer Science, Technical University of Denmark1
Dynamical Systems, Department of Applied Mathematics and Computer Science, Technical University of Denmark2
Department of Electrical Engineering, Technical University of Denmark3
Center for Electric Power and Energy, Centers, Technical University of Denmark4
Forecasts of wind power generation in their probabilistic form are a necessary input to decision-making problems for reliable and economic power systems operations in a smart grid context. Thanks to the wealth of spatially distributed data, also of high temporal resolution, such forecasts may be optimized by accounting for spatio-temporal effects that are so far merely considered.
The way these effects may be included in relevant models is described for the case of both parametric and nonparametric approaches to generating probabilistic forecasts. The resulting predictions are evaluated on the real-world test case of a large offshore wind farm in Denmark (Nysted, 165 MW), where a portfolio of 19 other wind farms is seen as a set of geographically distributed sensors, for lead times between 15 minutes and 8 hours.
Forecast improvements are shown to mainly come from the spatio-temporal correction of the first order moments of predictive densities. The best performing approach, based on adaptive quantile regression, using spatially corrected point forecasts as input, consistently outperforms the state-of-theartbenchmark based on local information only, by 1.5%-4.6%, depending upon the lead time.
Language: | English |
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Publisher: | IEEE |
Year: | 2014 |
Pages: | 480-489 |
ISSN: | 19493061 and 19493053 |
Types: | Journal article |
DOI: | 10.1109/TSG.2013.2277585 |
ORCIDs: | Pinson, Pierre and Madsen, Henrik |
Decision-Making Offshore Power systems operations Prediction Renewable energy SDG 7 - Affordable and Clean Energy
Decision-making Denmark Estimation Forecasting Predictive models Probabilistic logic Wind farms Wind forecasting Wind power generation adaptive quantile regression geographically dispersed information geographically distributed sensors load forecasting off-shore wind farm offshore offshore installations power generation economics power systems operations prediction probabilistic forecasts regression analysis renewable energy smart grid spatially corrected point forecasts wind power generation wind power plants