TY - GEN
T1 - A wind power forecasting system to optimize power integration
AU - Haupt, Sue Ellen
AU - Wiener, Gerry
AU - Liu, Yubao
AU - Myers, Bill
AU - Sun, Juanzhen
AU - Johnson, David
AU - Mahoney, William
PY - 2011
Y1 - 2011
N2 - The National Center for Atmospheric Research (NCAR) has developed a wind prediction system for Xcel Energy, the power company with the largest wind capacity in the United States. The wind power forecasting system includes advanced modeling capabilities, data assimilation, nowcasting, and statistical post-processing technologies. The system ingests both external model data and observations. NCAR produces a deterministic mesoscale wind forecast of hub height winds on a very fine resolution grid using the Weather Research and Forecasting (WRF) model, run using the Real Time Four Dimensional Data Assimilation (RTFDDA) system. In addition, a 30 member ensemble system is run to both improve forecast accuracy and provide an indication of forecast uncertainty. The deterministic and ensemble model output plus data from various global and regional models are ingested by NCAR's Dynamic, Integrated, Forecast System (DICast®), a statistical learning algorithm. DICast® produces forecasts of wind speed for each wind turbine. These wind forecasts are then fed into a power conversion algorithm that has been empirically derived for each Xcel power connection node. In addition, a ramp forecasting technology fine-tunes the capability to accurately predict the time, magnitude, and duration of a ramping event. This basic system has consistently improved Xcel's ability to optimize the economics of incorporating wind energy into their power system.
AB - The National Center for Atmospheric Research (NCAR) has developed a wind prediction system for Xcel Energy, the power company with the largest wind capacity in the United States. The wind power forecasting system includes advanced modeling capabilities, data assimilation, nowcasting, and statistical post-processing technologies. The system ingests both external model data and observations. NCAR produces a deterministic mesoscale wind forecast of hub height winds on a very fine resolution grid using the Weather Research and Forecasting (WRF) model, run using the Real Time Four Dimensional Data Assimilation (RTFDDA) system. In addition, a 30 member ensemble system is run to both improve forecast accuracy and provide an indication of forecast uncertainty. The deterministic and ensemble model output plus data from various global and regional models are ingested by NCAR's Dynamic, Integrated, Forecast System (DICast®), a statistical learning algorithm. DICast® produces forecasts of wind speed for each wind turbine. These wind forecasts are then fed into a power conversion algorithm that has been empirically derived for each Xcel power connection node. In addition, a ramp forecasting technology fine-tunes the capability to accurately predict the time, magnitude, and duration of a ramping event. This basic system has consistently improved Xcel's ability to optimize the economics of incorporating wind energy into their power system.
UR - https://www.scopus.com/pages/publications/84881169025
U2 - 10.1115/ES2011-54773
DO - 10.1115/ES2011-54773
M3 - Conference contribution
AN - SCOPUS:84881169025
SN - 9780791854686
T3 - ASME 2011 5th International Conference on Energy Sustainability, ES 2011
SP - 2215
EP - 2222
BT - ASME 2011 5th International Conference on Energy Sustainability, ES 2011
T2 - ASME 2011 5th International Conference on Energy Sustainability, ES 2011
Y2 - 7 August 2011 through 10 August 2011
ER -