DocumentCode :
1556429
Title :
A Wind Power Forecasting System to Optimize Grid Integration
Author :
Mahoney, William P. ; Parks, Keith ; Wiener, Gerry ; Liu, Yubao ; Myers, William L. ; Sun, Juanzhen ; Monache, Luca Delle ; Hopson, Thomas ; Johnson, David ; Haupt, Sue Ellen
Author_Institution :
Nat. Center for Atmos. Res., Boulder, CO, USA
Volume :
3
Issue :
4
fYear :
2012
Firstpage :
670
Lastpage :
682
Abstract :
Wind power forecasting can enhance the value of wind energy by improving the reliability of integrating this variable resource and improving the economic feasibility. The National Center for Atmospheric Research (NCAR) has collaborated with Xcel Energy to develop a multifaceted wind power prediction system. Both the day-ahead forecast that is used in trading and the short-term forecast are critical to economic decision making. This wind power forecasting system includes high resolution and ensemble modeling capabilities, data assimilation, now-casting, and statistical postprocessing technologies. The system utilizes publicly available model data and observations as well as wind forecasts produced from an NCAR-developed deterministic mesoscale wind forecast model with real-time four-dimensional data assimilation and a 30-member model ensemble system, which is calibrated using an Analogue Ensemble Kalman Filter and Quantile Regression. The model forecast data are combined using NCAR´s Dynamic Integrated Forecast System (DICast). This system has substantially improved Xcel´s overall ability to incorporate wind energy into their power mix.
Keywords :
Kalman filters; decision making; power grids; regression analysis; weather forecasting; wind power; 30-member model ensemble system; DICast; National Center for Atmospheric Research; Xcel Energy; analogue ensemble Kalman filter; day ahead forecast; dynamic integrated forecast system; economic decision making; economic feasibility; grid integration; mesoscale wind forecast model; quantile regression; real time 4D data assimilation; short term forecast; statistical postprocessing; wind energy; wind power forecasting system; Data assimilation; Data models; Forecasting; Predictive models; Wind energy; Wind forecasting; Wind speed; Data assimilation; forecasting; nowcasting; wind energy; wind power forecasting;
fLanguage :
English
Journal_Title :
Sustainable Energy, IEEE Transactions on
Publisher :
ieee
ISSN :
1949-3029
Type :
jour
DOI :
10.1109/TSTE.2012.2201758
Filename :
6237561
Link To Document :
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