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VERIFICATION Highligths by WG5. 2 Outlook Some focus on Temperature with common plots and Conditional Verification Some Fuzzy verification Long trends.

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Presentation on theme: "VERIFICATION Highligths by WG5. 2 Outlook Some focus on Temperature with common plots and Conditional Verification Some Fuzzy verification Long trends."— Presentation transcript:

1 VERIFICATION Highligths by WG5

2 2 Outlook Some focus on Temperature with common plots and Conditional Verification Some Fuzzy verification Long trends

3 SON 2009

4 DJF 2009-2010

5 5 Verification results at MeteoSwiss in 2010 COSMO GM / WG5 Parallel Session, 06.09.2010 T2m: mean diurnal cycle (first 24h forecasts) domain Switzerland (hourly SYNOP‘s) Autumn 2009 Winter 2009/2010 Spring 2010 P. Kaufmann, V. Stauch OBS COSMO-7 COSMO-2 Summer 2010

6 T2m COSMO-I7 00UTC: LAST YEAR

7 WAM WG5 COSMO General Meeting, Moscow 2010 Conditional Verification Extracting information for relevant performance of weather parameters The input from modelers and forecasters is necessary for identifying and testing hypotheses. F. Gofa - HNMS

8 Temp in overcast conditions FallWinter SpringSummer F. Gofa - HNMS

9 COSMO General Meeting – Moscow 06-10 Sept 2010 Conditional Verification Temp – TCC obs >=75% SON MAM DJF Better behaviour for all the seasons Compare to no condition model

10 Temp in clear sky conditions FallWinter SpringSummer F. Gofa - HNMS

11 Conditional Verification Temp – TCC obs <=35% Worse behaviour for all the seasons Compare to no condition model SON MAM DJF

12 Temp in ‘calm’ conditions (<2 m/s) FallWinter SpringSummer WG5 COSMO General Meeting, Moscow 2010 F. Gofa - HNMS

13 WG5 COSMO General Meeting, Moscow 2010 FallWinter SpringSummer Temp in ‘high wind’ conditions >10m/s F. Gofa - HNMS

14 14 Some conclusion A problem with Temp is clear. RMSE between 2-3 °C it is not so small. Diurnal cycle too cold during the day and too warm during the night Clear different behaviour with conditions on TCC and with different wind conditions

15 15 Outlook Some focus on Temperature with common plots and Conditional Verification Some Fuzzy verification Long trends

16 16 Verification results at MeteoSwiss in 2010 COSMO GM / WG5 Parallel Session, 06.09.2010 results for 2009 3h accumulated precipitation sums over the domain of the swiss radar composit models: COSMO-2 and COSMO-7 leadtimes 04 – 07h for all 8 daily forecast runs obervation precipitation estimates of the swiss radar composit in case of a missing value, the full date will not be evaluated (total of 28 days) Neighborhood verification for precipitation

17 17 Verification results at MeteoSwiss in 2010 COSMO GM / WG5 Parallel Session, 06.09.2010 COSMO-2COSMO-7 COSMO-2 - COSMO-7 -= -= good bad COSMO-7 better COSMO-2 better Fractions Skill Score Upscaling Neighborhood (fuzzy) verification 2009, FSS and UP T. Weusthoff

18 18 Verification results at MeteoSwiss in 2010 COSMO GM / WG5 Parallel Session, 06.09.2010 Fractions Skill Score FSS Upscaling ETS Upscaling freq. bias FBI Neighborhood (fuzzy) verification: Spring 2010 COSMO-2/COSMO-7: 3h acc, leadtime +4 to +6 for all models COSMO-2 COSMO-7 IFS T. Weusthoff

19 19 Outlook Some Common Plots (Task 6 Versus) Conditional Verification Some Fuzzy verification Long trends verification

20 Introduction of new Z 0

21

22

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24 Total cloud cover _____ Cloud cover above 2 Octa (Cl.1).......... Cloud cover above 6 Octa (Cl.2) Valid time 00 UTC Cloud cover of low clouds because incorporation of AWS

25

26 Stand Mai 2010 Time series of the COSI: State May 2010

27 Stand Mai 2010 Time series of the COSI: State May 2010

28 Time series of the COSI: Temperature day 1

29 Stand Mai 2010 Time series of the COSI: Temperature day 2

30 Stand Mai 2010 Time series of the COSI: Temperature day 3

31 Stand Mai 2010 Time series of the COSI: State May 2010 (STDV used for T2m instead of RMSE)

32 Long period verification (seasonal trend) (from djf’04 to mam’10) 1.Some Statistical indices for low thres (0.2mm/24h) 2.Some Statistical indices for high thres (20mm/24h) Verification ovest last year (DJF 2009-MAM2010) 1. Driving model comparison: ecmwf/Cosmo-I7/Cosmo-I2 2.Driving model comparison: ecmwf/Cosmo-ME/Cosmo-IT

33 COSMO General Meeting – Moscow 06-10 Sept 2010 All the versions present a seasonal cycle with an overestimation during summertime (except COSMO-7 and I2) COSMO-7 and I2 underestimate Overestimation error decreases in D+2 (spin-up effect vanished) QPF verification of the 4 model versions at 7 km res. (COSMO-I7, COSMO-7, COSMO-EU, COSMO-ME) with the 2 model versions at 2.8 km res. (COSMO- I2, COSMO-IT) Dataset: high resolution network of rain gauges coming from COSMO dataset and Civil Protection Department  1300 stations Method: 24h/6h averaged cumulated precipitation value over 90 meteo-hydrological basins Seasonal trend - low thresholds

34 COSMO General Meeting – Moscow 06-10 Sept 2010 Very light improvement in trend Seasonal error cycle: lower ets during winter and summertime no significant differences between D+1 and D+2 Last winter (very snowy particularly in Northern Italy): low ets value (D+1 and D+2)  model error or lack of representativeness of the rain gauges over the plain during snowfall ? Seasonal trend - low thresholds

35 COSMO General Meeting – Moscow 06-10 Sept 2010 Driving model comparison: ECMWF/COSMO- ME/COSMO-IT, low thresholds ECMWF tendency to forecast low rainfall amounts  big overestimation, big false alarms, very low ets, quite good pod Better prediction for COSMO-models (no strong differences between ME and IT) Seasons DJF2009 – MAM2010

36 COSMO General Meeting – Moscow 06-10 Sept 2010 ECMWF tendency to forecast low rainfall amounts  big overestimation, big false alarms, very low ets, quite good pod Better prediction for COSMO-models BUT bad performance during summertime Seasons DJF2009 – MAM2010 Driving model comparison: ECMWF/COSMO- I7/COSMO-I2, low thresholds

37 37 Verification results at MeteoSwiss in 2010 COSMO GM / WG5 Parallel Session, 06.09.2010 Precipitation (12h-sums +12 to +24h): Spring 2010 over Switzerland (SYNOP‘s) COSMO-7 & COSMO-2 V. Stauch

38 38 Verification results at MeteoSwiss in 2010 COSMO GM / WG5 Parallel Session, 06.09.2010 Precipitation (12h-sums +12 to +24h): Spring 2010 over Switzerland (SYNOP‘s) COSMO-7 & IFS V. Stauch

39 COSMO General Meeting – Moscow 06-10 Sept 2010 Slight bias reduction during latest seasons Last winter: all the versions overestimate (probably due to lack of representativeness of the rain gauges over the plain during snowfall) Strong COSMO-7 underestimation BUT slight improvement during latest seasons Seasonal trend - high thresholds

40 COSMO General Meeting – Moscow 06-10 Sept 2010 Low values during summertime In general, quite stationary error since son2008 up to now All the versions present a jump around son2008: ets increases from 0.2-0.4 up to 0.3- 0.5 Skill decreases with forecast time Seasonal trend - high thresholds

41 COSMO General Meeting – Moscow 06-10 Sept 2010 ECMWF difficulty to forecast high rainfall amounts  bias around 1 BUT big false alarms, very low ets and pod Better prediction for COSMO-models Seasons DJF2009 – MAM2010 Driving model comparison: ECMWF/COSMO-ME/COSMO-IT, high thresholds

42 COSMO General Meeting – Moscow 06-10 Sept 2010 ECMWF difficulty to forecast high rainfall amounts  bias around 1 BUT big false alarms, very low ets and pod Better prediction for COSMO-models Seasons DJF2009 – MAM2010 Driving model comparison: ECMWF/COSMO- I7/COSMO-I2, high thresholds

43 12h Precipitation – Sep2009-Aug2010 WG5 COSMO General Meeting, Moscow 2010 COSMOECMWF Really strong overestimation of lower preci amounts up to 3mm and lower ETS scores for ECMWF F. Gofa - HNMS

44 44 Some conclusion Long term trends show a general (sometimes light) improvements for all the considered models Comparison between COSMO models and IFS shows a general clear better behaviour for COSMO implementations


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