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Verification of the NCAR-Xcel Ensemble-RTFDDA system for Wind Energy Prediction

Gregory Roux , Yubao Liu , Luca Delle Monache , Tom Hopson, Will Y.Y. Cheng, Yuewei Liu NCAR/Research Application Laboratory 13 th WRF Users Workshop, Boulder, CO 25 - 29 June 2012. Verification of the NCAR-Xcel Ensemble-RTFDDA system for Wind Energy Prediction . Motivations.

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Verification of the NCAR-Xcel Ensemble-RTFDDA system for Wind Energy Prediction

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  1. Gregory Roux, Yubao Liu, Luca DelleMonache, Tom Hopson, Will Y.Y. Cheng, Yuewei Liu NCAR/Research Application Laboratory 13thWRF Users Workshop, Boulder, CO 25 - 29 June 2012 Verification of the NCAR-Xcel Ensemble-RTFDDA system for Wind Energy Prediction

  2. Motivations • Since April 2010, E-RTFDDA implemented for Xcel energy, to support wind power forecasting • Extends the predictability of the mesoscale weather processes, improves the wind and power trend prediction from the single deterministic model forecasting and provides probabilistic information for the timing and magnitude of wind Outline 1) E-RTFDDA Modeling System 2) Verification of SPD atthreewindfarms 3) Evaluation of WRF physics settings 4) Statisticalbias correction/Calibration

  3. RTFDDA - 4D Continuous DA and Forecasting • 4 cycles a day • 6-hour FDDA analysis • 48 hour forecast All WMO/GTS GOES Radars Weather observations Wind Prof t WRF Cold start FDDA Forecast MESONETs Met-Towers Etc. ACARS RTFDDA Regional-scale model, based on WRF

  4. RTFDDA  E-RTFDDA RTFDDA 48h fcst Perturbations Member 1 48h fcst Member 2 Observations Post processing Member 3 Perturbations RTFDDA … 48h fcst Observations Member 30

  5. D1 D2 XcelE-RTFDDA Model Domains D1: 30 km D2: 10 km 37 vertical levelswith 12 levels in the lowest 1-km 30 members, 6h cycle, 48h forecast

  6. 30 members, 6h cycles, 48h forecasts

  7. Xcel Wind Farms MN1 MN2 MN3 COL1 COL2 COL3 COL4 COL5 • 3 windfarms: COL1, TX1 and MN1 • Hub-heightwind speed • Over the year 2011 NM1 TX1

  8. Statistics of the ensemble mean Under-estimation of wind-speed • Over the year 2011 • 0-24h forecast • Ensemble mean Overall good correlation Better statistics than deterministic run TX1, MN1: underestimate higher winds

  9. Ensemble Verication COL1 TX1

  10. Ensemble Verification COL1 TX1 Reliability plot for 24h fcst ROC for 24h fcst

  11. Verification of Ensemble Members

  12. Model Comparison RMSE TX1 RMSE COL1 Low differences for COL1. Low NAM/GFS differences. GFS better for MN1 and TX1. Lowest underestimation for WRF for MN1 and TX1.

  13. PBL SchemesComparison RMSE COL1 RMSE TX1 For COL1, YSU/BOU lowest errors/MYNN highest. For TX1, MYJ lowest errors/BOU highest. YSU (daytime) and MYJ (nighttime) lowest errors on average. Low differences for the Microphysics/Cumulus schemes (not shown)

  14. StatisticalBias Correction Schemes This correction is applied independently at each observation location, for a given forecast time and for each member (work by: Luca DelleMonache) KF-weight • Apply Quantile Regression on the ANKF corrected ensemble • Fitting SPD quantiles using QR conditioned on: • Ranked forecast ensemble • Ensemble mean • Ensemble median • Ensemble standard deviation • Persistence ANKF PRED OBS day-6 day-5 day-3 day-2 day-1 day-7 day-4 (work by: Tom Hopson) “Analog” Space farthest analog closest analog

  15. Verificationafter Correction/Calibration CORR RMSE

  16. Summary • E-RTFDDA system has been developed for Xcel Energy for Wind Power forecasting since April, 2010. This study investigates the wind forecast characteristics at Wind Farms and post-processing approaches. It is found that: • Underpredict hub-height (60 – 80m AGL) wind speeds at all the farms and underestimate strong wind events (low-level jet at TX1); • Ensemble underdispersive, lack resolution, but good skill; • Differences between NAM and GFS LBC are small. WRF members show lower errors than MM5. • On average, YSU and MYJ perform the best. • Applying a statistical bias correction (ANKF) and a quantile regression improves the forecasts: lower bias, better spread and skill; • Future work: improve statistical bias correction and verification of the ramp events…

  17. Thank you… QUESTIONS?

  18. Forecast of rampevents: TX1 3h Duration ramp (3h forecast) 3h Duration ramp (3h forecast) Delta obs(m/s) Delta obs(m/s) Delta fcst (m/s) Delta fcst (m/s) Observation Forecast Percent Correct: 45% (work by: Matt Pocernich)

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