1 / 13

Pertti Nurmi Juha Kilpinen Sigbritt Näsman Annakaisa Sarkanen ( Finnish Meteorological Institute )

Pertti Nurmi Juha Kilpinen Sigbritt Näsman Annakaisa Sarkanen ( Finnish Meteorological Institute ) Probabilistic Forecasts and Their Verification as Decision-Making Tools for Warnings against Near-Gale Force Winds WSN05: WWRP Symposium on Nowcasting and Very Short Range Forecasting

brier
Download Presentation

Pertti Nurmi Juha Kilpinen Sigbritt Näsman Annakaisa Sarkanen ( Finnish Meteorological Institute )

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Pertti Nurmi Juha Kilpinen Sigbritt Näsman Annakaisa Sarkanen ( Finnish Meteorological Institute ) Probabilistic Forecasts and Their Verification as Decision-Making Tools for Warnings against Near-Gale Force Winds WSN05: WWRP Symposium on Nowcasting and Very Short Range Forecasting Toulouse, 5-9 September 2005 WWRP_WSN05, Toulouse, 5-9 September 2005

  2. Introduction: • Develop warning criteria / Guidance methods to forecast probability of near-gale force winds in the Baltic  Joint Scandinavian research undertaking • e.g. Finland and Sweden issue near-gale & storm force wind warnings for same areas using different criteria  Homogenize ! • 6 Finnish coastal stations  c. 15-20 stations from Sweden, Denmark, Norway • Probabilistic vs. deterministic approach • HIRLAM  ECMWF model input • Different calibration methods, e.g. Kalman filtering • Goal: Common Scandinavian operational warning practice WWRP_WSN05, Toulouse, 5-9 September 2005

  3. HIRLAM (limited area model) RCR ~ 22 km version MBE ~ 9 km version Data coverage: 9.11.2004 – 31.3.2005  ~ 140 cases ECMWF Applied as reference, only Data interpolated to 0.5o *0.5o  Nearest grid point Data coverage: 1.10.2004 – 30.4.2005  ~ 210 cases Forecast lead time: +6 hrs (and beyond  ECAM paper) Forecasts: wind speed at 10m Observations: 10 minute mean wind speed Data: WWRP_WSN05, Toulouse, 5-9 September 2005

  4. with height of instrumentation ? with observing site surroundings and obstacles ? with the coast ? with nearby islands ? with barriers ? with installations ? with low-level stability ? NE Potential problems: “Statistical correction” scheme available at FMI WWRP_WSN05, Toulouse, 5-9 September 2005

  5. Height of the instrumentation - Large filled dots: 6 Finnish stations being used- Yellow dot: Station_981; Results presented here (m) 55 50 45 40 35 30 25 20 15 10 5 WWRP_WSN05, Toulouse, 5-9 September 2005

  6. 979 - Bogskär Unstable 32 m Neutral Stable 10 m Wind speed dependence: Logarithmic wind profile 14 m/s 15 15,5 m/s threshold WWRP_WSN05, Toulouse, 5-9 September 2005

  7. Methods for producing probabilistic forecasts 1: • ECMWF EPS (51 members)  P (wind speed) > 14 m/s • Kalman filtering • Various approaches  No details given here • Deterministic forecast, “dressed” with “a posteriori” description of theobserved error distribution of the past, dependent sample P (wind speed) > 14 m/s • “Simplistic reference” ! Deterministic forecasts: • Error distribution of original sample (~140 cases) • Approximation of the error distribution with a Gaussian fit (m, s): • ”Dressing” method WWRP_WSN05, Toulouse, 5-9 September 2005

  8. Methods for producing probabilistic forecasts 2: • Deterministic forecast, adjusted with a Gaussian fit to model forecasted stability ( Temperature forecasts from 2 adjacent model levels)  P (wind speed) > 14 m/s “Stability” method • Scheme used at SMHI (H. Hultberg) • “Uncertainty area” method (aka ”Neighborhood method”) (aka ”Probabilistic upscaling”) • Spatial (Fig.) and/or temporal neighboring grid points • Size of uncertainty area ? • Size of time window ? • c. 50-500 “members” • RCR: ± 3 points ~ 150*150 km2 • MBE: ± 6 points ~ 120*120 km2 WWRP_WSN05, Toulouse, 5-9 September 2005

  9. Relative Operating Characteristic Probabilistic FCs: ROC • To determine the ability of a forecasting system to discriminate between situations when a signal is present (here, occurrence of near-gale) from no-signal cases (“noise”) • To test model performance ( H vs. F ) relative to a given probability threshold • Applicable for probability forecasts and also for categorical deterministic forecasts • Allows for their comparison • “R” statistical package used for ROC computation/presentation WWRP_WSN05, Toulouse, 5-9 September 2005

  10. ROC curve/area; Station_981; +6 hrs; No. of events ~25/130 ”Simple reference” (dep. sample): HIR_MBE_”Dressing” HIR_MBE_”Uncertainty area” ~ 120 * 120 km ROCA = 0.93 ROCA fit = 0.91 ROCA = 0.82 ROCA fit = 0.91 WWRP_WSN05, Toulouse, 5-9 September 2005

  11. ROC curve/area; Station_981; +6 hrs; No. of events ~25/130 ”Simple reference” (dep. sample): HIR_MBE_”Dressing” HIR_MBE_”Stability” ROCA = 0.93 ROCA fit = 0.91 ROCA = 0.84 ROCA fit = 0.82 WWRP_WSN05, Toulouse, 5-9 September 2005

  12. Comparison of methods; Station_981; +6 hrs WWRP_WSN05, Toulouse, 5-9 September 2005

  13. Conclusions  Future: • We’ve only scratched the (sea) surface • Need (much) more experimentation with various methods • Different methods for different time/space scales ? • Apply to data of other Scandinavian counterparts (here, only single station) • Scores depend on station properties (e.g. observation height; Not dealt with here) • (Statistical) adjustment of original observations required ! • Finland has an operational scheme for this ! • “Dressing” of dependent sample: quality level hard to reach • “Uncertainty area” size: a tricky issue • Higher resolution HIRLAM version produces higher scores • Not necessarily a trivial result ! • Reach the goal, i.e. common operational practice !!! WWRP_WSN05, Toulouse, 5-9 September 2005

More Related