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An evaluation of the probabilistic information in multi-model ensembles

An evaluation of the probabilistic information in multi-model ensembles. David Unger Huug van den Dool , Malaquias Pena, Peitao Peng, and Suranjana Saha 30 th Annual Climate Prediction and Diagnostics Workshop October 25, 2005. Objective.

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An evaluation of the probabilistic information in multi-model ensembles

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  1. An evaluation of the probabilistic information in multi-model ensembles David Unger Huug van den Dool , Malaquias Pena, Peitao Peng, and Suranjana Saha 30th Annual Climate Prediction and Diagnostics Workshop October 25, 2005

  2. Objective • Produce a Probability Distribution Function (PDF) from the ensembles. Challenge • Calibration • Account for skill • Retain information from ensembles (Or not if no skill)

  3. Schematic illustration Temperature

  4. σ

  5. Schematic example σz Temperature (F)

  6. Kernel vs. Mean

  7. Regression Step 1. Standardization Step 2. Skill Adjustment ^ Step 3. Make the forecast ^ ^

  8. ______ σe= σc√ 1-Rm2 σe

  9. Analysis of Ensemble Variance V = Variance Total = Explained + Unexplained Variance Variance Variance σc2 = Ve + Vu σc2 = σFm2+ σe2 σc2 = σFm2+ (E2 + σz2) ^ ^

  10. Analysis of Ensemble Variance (Continued) With help of some relationships commonly used in linear regression: <E2 > = (Rm2 - Ri2) σc2 σz2 = (1-2Rm2 + Ri2) σc2 Rz2 = 2Rm2 - Ri2 Rz≤ 1. ^

  11. Ensemble Calibration Step 1. Standardization Step 2. Ensemble Spread Adjustment Zi’ = K(Zi - Zm) + Zm Step 3. Skill Adjustment Zi = Rz Zi ’ ^ Step 4. Make the Forecast ^ ^

  12. Schematic example σz Temperature (F)

  13. Rz=.97, Rfm=.94, Ri=.90

  14. Rz=.93, Rfm=.87, Rf=.30

  15. Rz=.85, Rfm=.67, Ri=.41

  16. Rz=.62, Rfm=.46, Rf=.20

  17. Weighting

  18. Wgts: 50% Ens. 1, 17%Ens 2, 3, 4

  19. Real time system • Time series estimates of Statistics. • Exponential filter FT+1 = (1-α)FT + α fT+1 • Initial guess provided from 1956-1981 CA statistics

  20. Continuous Ranked Probability Score

  21. Some Results • Nino 3.4 SSTs Operational system 15 CFS ,12 CA, 1 CCA , 1 MKV • Demeter Data 9 CFS, 12 CA, 1 CCA, 1 MKV 9 UKM, 9 MFR, 9 MPI, 9 ECM, 9 ING, 9 LOD, 9 CER,

  22. Nino 3.4 SSTs

  23. Nino 3.4 SST5-month lead by initial time 1982-2001

  24. CRPSS – Nino 3.4 SSTs All Initial times 1982-2001

  25. CRPSS – Nino 3.4 SSTs All Initial times 1990-2001 (Independent)

  26. CRPSS – Nino 3.4 SSTs 5-month Lead, All Initial times 1990-2001 (Independent data)

  27. Reliability Nino 3.4 SST (1990-2001)

  28. U.S. Temperature and Precipitation Consolidation • 15 CFS • 1 CCA • 1 SMLR Trends are removed from models Statistics and distribution are computed Trend added to end result.

  29. Trend Problem • Should a skill mask be applied? How much? - This technique requires a quantitative estimate of the trend. • Component models sometimes “learn” trends, making bias correction difficult. – Doubles trends. • Errors in estimating high frequency model forecasts

  30. U.S. T and P consolidation Skill Mask on Trends No Skill Mask on Trends

  31. CRPS and RPS-3 (BNA) Skill Scores: Temperature Skill .15 .07 .02 CRPS RPS Cons 1-Month Lead, All initial times Ensm

  32. Reliability U. S. Temperatures(1995-2003)

  33. CRPS and RPS-3 (BNA) Skill Scores: Precipitation Skill .10 .05 .01 CRPS RPS Cons 1-Month Lead, All initial times Ensm

  34. Reliability U.S. Precipitation(1995-2003)

  35. Conclusions • Calibrated ensemble and ensemble means score very closely (by CRPS) Calibrated ensembles seem to have a slight edge. • No penalty for including many ensembles (but not much benefit either) • Considerable penalty for including less skillful ensembles – Weighting is critical. • Probabilistic predictions are reliable (when looked at in terms of a continuous PDF)

  36. Conclusions (Continued) • Calibrated ensembles tend to be slightly overconfident • Trends are a major problem – and are outside the realm of consolidation (but they are critically important for seasonal temperature forecasting).

  37. 6-10 day Forecasts (based on Analogs)

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