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Robin Hogan Ewan O’Connor, Anthony Illingworth University of Reading, UK

Verifying cloud forecasts: What is the “half-life” of a cloud forecast? Is the Equitable Threat Score really equitable?. Robin Hogan Ewan O’Connor, Anthony Illingworth University of Reading, UK Chris Ferro, Ian Jolliffe , David Stephenson University of Exeter, UK.

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Robin Hogan Ewan O’Connor, Anthony Illingworth University of Reading, UK

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  1. Verifying cloud forecasts:What is the “half-life” of a cloud forecast?Is the Equitable Threat Score really equitable? Robin Hogan Ewan O’Connor, Anthony Illingworth University of Reading, UK Chris Ferro, Ian Jolliffe, David Stephenson University of Exeter, UK

  2. How skillful is a forecast? ECMWF 500-hPa geopotential anomaly correlation • Most model evaluations of clouds test the cloud climatology • What about individual forecasts? • Standard measure shows ECMWF forecast “half-life” of ~6 days in 1980 and ~9 days in 2000 • But virtually insensitive to clouds!

  3. Overview • The “Cloudnet” processing of ground-based radar and lidar observations • Continuous evaluation of the climatology of clouds in models • Evaluation of the diurnal cycle of boundary-layer clouds • Desirable properties of verification measures (skill scores) • Usefulness for rare events: the Symmetric Extreme Dependency Score • Equitability: is the “Equitable Threat Score” equitable? • Testing the skill of cloud forecasts from seven models • Skill versus cloud fraction, height, scale, forecast lead time, season... • Estimating the forecast “half life” • Testing the skill of cloud forecasts from space • Evaluation of ECMWF model with ICESat/GLAS lidar • Most results taken from these papers: • Hogan, O’Connor & Illingworth (QJ 2009) • Hogan, Ferro, Jolliffe & Stephenson (WAF, in press)

  4. Project • Aim: to retrieve and evaluate the crucial cloud variables in forecast and climate models • 8+ models: global, mesoscale and high-resolution forecast models • Variables: cloud fraction, LWC, IWC, plus a number of others • Sites: 4 across Europe plus worldwide ARM sites • Period: several years to avoid unrepresentative case studies • Current status • Funded by US Department of Energy Climate Change Prediction Program to apply to ARM data worldwide

  5. Level 1b • Minimum instrument requirements at each site • Cloud radar, lidar, microwave radiometer, rain gauge, model or sondes • Radar • Lidar

  6. Level 1c • Instrument Synergy product • Example of target classification and data quality fields: Ice Liquid Rain Aerosol

  7. Level 2a/2b • Cloud products on (L2a) observational and (L2b) model grid • Water content and cloud fraction L2a IWC on radar/lidar grid L2b Cloud fraction on model grid

  8. Cloud fraction Chilbolton Observations Met Office Mesoscale Model ECMWF Global Model Meteo-France ARPEGE Model KNMI RACMO Model Swedish RCA model

  9. Cloud fraction in 7 models • All models except DWD underestimate mid-level cloud • Some have separate “radiatively inactive” snow (ECMWF, DWD); Met Office has combined ice and snow but still underestimates cloud fraction • Wide range of low cloud amounts in models • Not enough overcast boxes, particularly in Met Office model • Mean & PDF for 2004 for Chilbolton, Paris and Cabauw 0-7 km Illingworth et al. (BAMS 2007)

  10. Diurnal cycle composite of clouds Barrett, Hogan & O’Connor (GRL 2009) Radar and lidar provide cloud boundaries and cloud properties above site Meteo-France: Local mixing scheme: too little entrainment SMHI: Prognostic TKE scheme: no diurnal evolution All other models have a non-local mixing scheme in unstable conditions and an explicit formulation for entrainment at cloud top: better performance over the diurnal cycle

  11. Raw (1 hr) resolution 1 year from Murgtal DWD COSMO model Joint PDFs of cloud fraction b a d c • 6-hr averaging …or use a simple contingency table

  12. Contingency tables Model cloud Model clear-sky Observed cloud Observed clear-sky For given set of observed events, only 2 degrees of freedom in all possible forecasts (e.g. a & b), because 2 quantities fixed: - Number of events that occurred n =a +b +c +d - Base rate (observed frequency of occurrence) p =(a +c)/n

  13. Skill-Bias diagrams Reality (n=16, p=1/4) Forecast Under-prediction No bias Over-prediction Best possible forecast - Positive skill Random forecast Negative skill Random unbiased forecast Constant forecast of occurrence Constant forecast of non-occurrence Worst possible forecast

  14. 5 desirable properties of verification measures • “Equitable”: all random forecasts receive expected score zero • Constant forecasts of occurrence or non-occurrence also score zero • Note that forecasting the right cloud climatology versus height but with no other skill should also score zero • Difficult to “hedge” • Some measures reward under- or over-prediction • Useful for rare events • Almost all measures are “degenerate” in that they asymptote to 0 or 1 for vanishingly rare events • Dependence on full joint PDF, not just 2x2 contingency table • Difference between cloud fraction of 0.9 and 1 is as important for radiation as a difference between 0 and 0.1 • Difficult to achieve with other desirable properties: won’t be studied much today... • “Linear”: so that can fit an inverse exponential for half-life • Some measures (e.g. Odds Ratio Skill Score) are very non-linear

  15. Hedging“Issuing a forecast that differs from your true belief in order to improve your score” (e.g. Jolliffe 2008) • Hit rate H=a/(a+c) • Fraction of events correctly forecast • Easily hedged by randomly changing some forecasts of non-occurrence to occurrence H=0.5 H=0.75 H=1

  16. Equitability Defined by Gandin and Murphy (1992): • Requirement 1: An equitable verification measure awards all random forecasting systems, including those that always forecast the same value, the same expected score • Inequitable measures rank some random forecasts above skillful ones • Requirement 2: An equitable verification measure S must be expressible as the linear weighted sum of the elements of the contingency table, i.e. S = (Saa +Sbb +Scc +Sdd) / n • This can safely be discarded: it is incompatible with other desirable properties, e.g. usefulness for rare events • Gandin and Murphy reported that only the Peirce Skill Score and linear transforms of it is equitable by their requirements • PSS = Hit Rate minus False Alarm Rate = a/(a+c) – b/(b+d) • What about all the other measures reported to be equitable?

  17. Some reportedly equitable measures HSS = [x-E(x)] / [n-E(x)]; x = a+d ETS = [a-E(a)] / [a+b+c-E(a)] E(a) = (a+b)(a+c)/nis the expected value of a for an unbiased random forecasting system Simple attempts to hedge will fail for all these measures LOR = ln[ad/bc] ORSS = [ad/bc – 1] / [ad/bc + 1] Random and constant forecasts all score zero, so these measures are all equitable, right?

  18. Skill versus cloud-fraction threshold • Consider 7 models evaluated over 3 European sites in 2003-2004 HSS LOR • LOR implies skill increases for larger cloud-fraction threshold • HSS implies skill decreases significantly for larger cloud-fraction threshold

  19. Extreme dependency score • Stephenson et al. (2008) explained this behavior: • Almost all scores have a meaningless limit as “base rate” p  0 • HSS tends to zero and LOR tends to infinity • They proposed the Extreme Dependency Score: • where n = a + b + c + d • It can be shown that this score tends to a meaningful limit: • Rewrite in terms of hit rate H =a/(a +c) and base rate p =(a +c)/n : • Then assume a power-law dependence of H on p as p  0: • In the limit p  0 we find • This is useful because random forecasts have Hit rate converging to zero at the same rate as base rate: d=1 so EDS=0 • Perfect forecasts have constant Hit rate with base rate: d=0 so EDS=1

  20. Symmetric extreme dependency score • EDS problems: • Easy to hedge (unless calibrated) • Not equitable • Solved by defining a symmetric version: • All the benefits of EDS, none of the drawbacks! Hogan, O’Connor and Illingworth (2009 QJRMS)

  21. Skill versus cloud-fraction threshold SEDS HSS LOR • SEDS has much flatter behaviour for all models (except for Met Office which underestimates high cloud occurrence significantly)

  22. Skill versus height • Most scores not reliable near the tropopause because cloud fraction tends to zero SEDS EDS LBSS • New score reveals: • Skill tends to slowly decrease at tropopause • Mid-level clouds (4-5 km) most skilfully predicted, particularly by Met Office • Boundary-layer clouds least skilfully predicted HSS LOR

  23. A surprise? • Is mid-level cloud well forecast??? • Frequency of occurrence of these clouds is commonly too low (e.g. from Cloudnet: Illingworth et al. 2007) • Specification of cloud phase cited as a problem • Higher skill could be because large-scale ascent has largest amplitude here, so cloud response to large-scale dynamics most clear at mid levels • Higher skill for Met Office models (global and mesoscale) because they have the arguably most sophisticated microphysics, with separate liquid and ice water content (Wilson and Ballard 1999)? • Low skill for boundary-layer cloud is not a surprise! • Well known problem for forecasting (Martin et al. 2000) • Occurrence and height a subtle function of subsidence rate, stability, free-troposphere humidity, surface fluxes, entrainment rate...

  24. Key properties for estimating ½ life • We wish to model the score S versus forecast lead time t as: • where t1/2 is forecast “half-life” • We need linearity • Some measures “saturate” at high skill end (e.g. Yule’s Q / ORSS) • Leads to misleadingly long half-life • ...and equitability • The formula above assumes that score tends to zero for very long forecasts, which will only occur if the measure is equitable

  25. Expected values of a–d for a random forecasting system may score zero: S[E(a), E(b), E(c), E(d)] = 0 But expected score may not be zero! E[S(a,b,c,d)] = S P(a,b,c,d)S(a,b,c,d) Width of random probability distribution decreases for larger sample size n A measure is only equitable if positive and negative scores cancel Which measures are equitable? ETS & ORSS are asymmetric n = 16 n = 80

  26. Asyptotic equitability • Consider first unbiased forecasts of events that occur with probability p = ½ • Expected value of “Equitable Threat Score” by a random forecasting system decreases below 0.01 only when n > 30 • This behaviour we term asymptotic equitability • Other measures are never equitable, e.g. Critical Success Index CSI = a/(a+b+c), also known as Threat Score

  27. What about rarer events? • “Equitable Threat Score” still virtually equitable for n > 30 • ORSS, EDS and SEDS approach zero much more slowly with n • For events that occur 2% of the time (e.g. Finley’s tornado forecasts), need n > 25,000 before magnitude of expected score is less than 0.01 • But these measures are supposed to be useful for rare events!

  28. Possible solutions • Ensure n is large enough that E(a) > 10 • Inequitable scores can be scaled to make them equitable: • This opens the way to a new class of non-linear equitable measures Report confidence intervals and “p-values” (the probability of a score being achieved by chance)

  29. What is the origin of the term “ETS”? • First use of “Equitable Threat Score”: Mesinger & Black (1992) • A modification of the “Threat Score” a/(a+b+c) • They cited Gandin and Murphy’s equitability requirement that constant forecasts score zero (which ETS does) although it doesn’t satisfy requirement that non-constant random forecasts have expected score 0 • ETS now one of most widely used verification measures in meteorology • An example of rediscovery • Gilbert (1884) discussed a/(a+b+c) as a possible verification measure in the context of Finley’s (1884) tornado forecasts • Gilbert noted deficiencies of this and also proposed exactly the same formula as ETS, 108 years before! • Suggest that ETS is referred to as the Gilbert Skill Score (GSS) • Or use the Heidke Skill Score, which is unconditionally equitable and is uniquely related to ETS = HSS / (2 – HSS) Hogan, Ferro, Jolliffe and Stephenson (WAF, in press)

  30. Properties of various measures • Truly equitable • Asymptotically equitable • Not equitable

  31. Skill versus lead time 2007 2004 • Only possible for UK Met Office 12-km model and German DWD 7-km model • Steady decrease of skill with lead time • Both models appear to improve between 2004 and 2007 • Generally, UK model best over UK, German best over Germany • An exception is Murgtal in 2007 (Met Office model wins)

  32. Forecast “half life” Met Office DWD 2007 2004 3.0 d • Fit an inverse-exponential: • S0 is the initial score and t1/2 is the half-life • Noticeably longer half-life fitted after 36 hours • Same thing found for Met Office rainfall forecast (Roberts 2008) • First timescale due to data assimilation and convective events • Second due to more predictable large-scale weather systems 2.7 days 2.6 days 3.2 d 3.1 days 2.9 days 4.0 days 2.7 days 3.1 d 2.9 days 2.4 days 4.3 days 2.9 days 4.3 days 2.7 days

  33. Why is half-life less for clouds than pressure? • Different spatial scales? Convection? • Average temporally before calculating skill scores: • Absolute score and half-life increase with number of hours averaged

  34. Geopotential height anomaly Vertical velocity • Cloud is noisier than geopotential height Z because it is separated by around two orders of differentiation: • Cloud ~ vertical wind ~ relative vorticity ~ 2streamfunction ~ 2pressure • Suggests cloud observations should be used routinely to evaluate models

  35. Satellite observations: IceSAT • Cloud observations from IceSAT 0.5-micron lidar (first data Feb 2004) • Global coverage but lidar attenuated by thick clouds: direct model comparison difficult Lidar apparent backscatter coefficient (m-1 sr-1) Latitude Optically thick liquid cloud obscures view of any clouds beneath Solution: forward-model the measurements (including attenuation) using the ECMWF variables

  36. Global cloud fraction comparison ECMWF raw cloud fraction • Results for October 2003 • Tropical convection peaks too high • Too much polar cloud • Elsewhere agreement is good • Results can be ambiguous • An apparent low cloud underestimate could be a real error, or could be due to high cloud above being too thick ECMWF processed cloud fraction IceSAT cloud fraction Wilkinson, Hogan, Illingworth and Benedetti (MWR 2008)

  37. Testing the model skill from space Tropical skill appears to peak at mid-levels but cloud very infrequent here Clearly need to apply SEDS to cloud estimated from lidar & radar! Highest skill in north mid-latitude and polar upper troposphere Unreliable region Is some of reduction of skill at low levels because of lidar attenuation? Lowest skill: tropical boundary-layer clouds Wilkinson, Hogan, Illingworth and Benedetti (MWR 2008)

  38. CCPP project • US Dept of Energy Climate Change Prediction Program recently funded 5-year consortium project centred at Brookhaven, NY • Implement updated Cloudnet processing system at Atmospheric Radiation Measurement (ARM) radar-lidar sites worldwide • Ingests ARM’s cloud boundary diagnosis, but uses Cloudnet for stats • New diagnostics being tested • Testing of NWP models • NCEP, ECMWF, Met Office, Meteo-France... • Over a decade of data at several sites: have cloud forecasts improved over this time? • Single-column model testbed • SCM versions of many GCMs will be run over ARM sites by Roel Neggers • Different parameterization schemes tested • Verification measures can be used to judge improvements

  39. US Southern Great Plains 2004

  40. Winter2004

  41. Summer2004

  42. Summary and outlook • Model comparisons reveal: • Half-life of a cloud forecast is between 2.5 and 4 days, much less than ~9 days for ECMWF 500-hPa geopotential height forecast • In Europe, higher skill for mid-level cloud and lower for boundary-layer cloud, but larger seasonal contrast in Southern US • Findings applicable to other verification problems: • “Symmetric Extreme Dependency Score” is a reliable measure of skill for both common and rare events (given we have large enough sample) • Many measures regarded as equitable are only so for very large samples, including the “Equitable Threat Score”, but they can be rescaled • Future work (in addition to CCPP): • CloudSat & Calipso: what is the skill of cloud forecasts globally? • What is half-life of ECMWF cloud forecasts? (Need more data!) • Near-real-time evaluation for rapid feedback to NWP centres? • Dept of Meteorology Lunchtime Seminar, 1pm Tuesday 3rd Nov: “Faster and more accurate representation of clouds and gases in GCM radiation schemes”

  43. Monthly skill versus time • Measure of the skill of forecasting cloud fraction>0.05 • Comparing models using similar forecast lead time • Compared with the persistence forecast (yesterday’s measurements) • Lower skill in summer convective events

  44. Statistics from AMF • Murgtal, Germany, 2007 • 140-day comparison with Met Office 12-km model • Dataset released to the COPS community • Includes German DWD model at multiple resolutions and forecast lead times

  45. Possible skill scores • “Cloud” deemed to occur when cloud fraction f is larger than some threshold fthresh • To ensure equitability and linearity, we can use the concept of the “generalized skill score” = (x-xrandom)/(xperfect-xrandom) • Where “x ” is any number derived from the joint PDF • Resulting scores vary linearly from random=0 to perfect=1 • Simplest example: Heidke skill score (HSS) uses x=a+d • We will use this as a reference to test other scores • Brier skill score uses x=mean squared cloud-fraction difference, Linear Brier skill score (LBSS) uses x=mean absolute difference • Sensitive to errors in model for all values of cloud fraction

  46. Alternative approach • How valid is it to estimate 3D cloud fraction from 2D slice? • Henderson and Pincus (2009) imply that it is reasonable, although presumably not in convective conditions • Alternative: treat cloud fraction as a probability forecast • Each time the model forecasts a particular cloud fraction, calculate the fraction of time that cloud was observed instantaneously over the site • Leads to a Reliability Diagram: Perfect No resolution No skill Jakob et al. (2004)

  47. ECMWF cloud fraction after processing IceSAT cloud fraction ECMWF raw cloud fraction Simulate lidar backscatter: • Create subcolumns with max-rand overlap • Forward-model lidar backscatter from ECMWF water content & particle size • Remove signals below lidar sensitivity

  48. Testing the model climatology Error due to uncertain extinction-to-backscatter ratio Reduction in model due to lidar attenuation

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