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1 Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model Tim Hewson Met Office Exeter, England Currently at SUNY, Albany (until Feb 2005)
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Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Jan 09, 2016

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Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model. Tim Hewson Met Office Exeter, England Currently at SUNY, Albany (until Feb 2005). Utility of different model forecasts. A multi-model (poor man’s) ensemble can provide the best forecast guidance - PowerPoint PPT Presentation
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Page 1: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

1

Systematic and Random Errors in Operational Forecasts by the UK

Met Office Global Model

Tim Hewson

Met Office

Exeter, England

Currently at SUNY, Albany (until Feb 2005)

Page 2: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Utility of different model forecasts

A multi-model (poor man’s) ensemble can provide the best forecast guidance

Operationally, can use be made of different models ?

Requires appropriate tools, and a detailed knowledge of typical model performance:

– Relative Errors, Seasonal and Regional differences [A]

– Individual Model Characteristics (systematic and random errors) [B]

A and B will be discussed here, focusing on the UK Met Office global model (~60km resolution, 38 levels)

Page 3: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

A

Global Model Intercomparison:

Net, Seasonal and Regional differences

Page 4: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Northern Hemisphere RMS Mslp errors vs Lead Time

1 5 days 10

RANK Best - EC UK FR US JAP GER CAN… -Worst

Page 5: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Seasonal differences (NH mslp, RMS at T+72)

EC UK FR US JAP GER CAN

EC Best throughout; then UKMET, but NCEP consistently better in summer

Page 6: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Regional Performance – Europe, vs Lead Time Europe-based models perform better in forecasting for Europe

EC UK FR US JAP GER CAN

Page 7: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

EC UK FR US JAP GER CAN

Regional Performance – N America, vs Lead Time Relative to performance over Europe: UKMET does worse over US/Canada, GFS better

Page 8: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

B

UK Global Model Characteristics -

Systematic and Random Errors

Precipitation (net / orographic)

Low level Winds (Land / Ocean / Severe cyclonic storms)

Handling of Cyclones (Cyclone spectra / Regional / Random errors)

Page 9: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Global Precipitation

Page 10: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Precipitation ~ 30% overestimate globally

EnhancedResolution60km30L

3DVar & ATOVS

New DynamicsHadAM4 physics

c/o Sean MiltonMet Office, Exeter

Page 11: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Precipitation errors mainly oceanic – tropics and extra-tropical storm tracks

Largely ‘balanced’ by too much evaporation – boundary layer locally too dry

Soil moisture is one global weakness being addressed – led to under-prediction of daytime temperatures during 2003 European heatwave (UK bias -4C)

Page 12: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Orographic Precipitation

Page 13: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

ODNDMTNS

A B C D E F G

New Model Old Model Orographic precipitation

Smoothed orography (in new model = “New Dynamics”) reduces upslope rainfall, and similarly reduces the rain shadow

Older model better (even if for the ‘wrong’ reason!)

Magnitude of impact is proportional to flow strength

Important for QPF

ODNDMTNS

A B C D E F G

B

A

C

DE F

B

A

C

DE F

GG

Page 14: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

NE Region

Model orography peaks much lower than reality

Many key features missing – eg Hudson Valley

Expect similar ppn problems to those found in Europe – eg insufficient upslope rain in flow from SE quadrant (factor of 2?)

‘European’ higher resolution (20km) model may help

Page 15: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Convective Precipitation

Page 16: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Diurnal cycle in convection

A significant problem area (especially tropics, but also mid latitudes)

Decay can be too rapid towards dusk

Page 17: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Surface Winds over land

Page 18: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Example – Oct 2004

Page 19: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model
Page 20: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

15kt winds in GFS model

(mslp v similar)

Page 21: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

UK Global Model Effective Roughness Lengths

Account for roughness due to missing orography + …

Slows down low level winds considerably

10m winds especially poor in Albany: ~50% of reality

GFS model seems much better

Changes to be implemented in ~1 year

~50% reductionIn 10m winds

Page 22: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Surface Winds over Oceans

Page 23: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

GFS model

Peak winds 55kts on S flank of deep, mature low

Page 24: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model
Page 25: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

UKMET model

Peak 10m winds only 45kts

Gradients and low depth the same as GFS

Complex interface with ocean

GFS seemed to validate better in this case (and may well be better generally)

Page 26: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Surface winds in Extreme Storms

Page 27: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

L

High resolution required (90 levels?) to model sting jet

Mslp may be OK but winds not

38 Levels(operational)

90 Levels

Greater strengthalong downwardtrajectory

Severe windstorms

c/o Pete ClarkJCMM, Reading

Page 28: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Cyclone Spectra

Page 29: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Cyclone Database - Snapshot

(a) standard frontal wave

(c) standard potential wave

(b) ‘barotropic’ low

(d) weak frontal wave

(e) weak potential wave

Page 30: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

GM cyclone spectra for year 2000, categorised by ‘max wind speed within 300km radius of centre’

North Atlantic Domain

Page 31: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Geographical biases in cyclone forecasts, based on trends in total numbers T+0 to T+144

Under-predictionOver-prediction

Page 32: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Random Errors in Cyclogenesis

Page 33: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

November 2003 Example

Page 34: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

15Z

18Z

Page 35: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

18Z

Intense cyclonic storm missed at short range – random error

Perhaps 3 similar poorly forecast events per year around UK

Expect similar problems elsewhere. High Impact.

Page 36: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model

Summary Met Office global model’s broadscale evolution is on average second only

to ECMWF (NH)– Performance over Europe better than over N America

– Performance in the 3 summer months lags behind GFS

Despite this a number of significant problem areas exist– Precipitation over-forecast globally by 30%

– Some significant errors around orography and in convection

– Low Level winds under-forecast over land with unresolved orography

– Some under-prediction of stronger winds over oceans?

– Wind maxima under-forecast in extreme storms (resolution limitation)

– No systematic drift with lead time in the number of intense storms

– Fewer modest cyclones predicted at longer lead times (main bias regions include Great lakes, Gulf stream wall)

– Significant random errors still occur occasionally, even at short leads

Many of the above noted through active forecaster-NWP liaison Most are now being addressed within NWP division at Met Office HQ

Page 37: Systematic and Random Errors in Operational Forecasts by the UK Met Office Global Model