Title: Addressing Model Errors in the UK Met Office
1Addressing Model Errors in the UK Met Office
- Tim Hewson
- Chief Forecaster / Forecasting Research
- Met Office
- Exeter, England
- (at SUNY, Albany, NY until Feb 2005)
2UK Met Office Forecasting Structure
3Structure of Talk
How is the forecast constructed, and what
systematic errors need to be overcome?
- 1. Deputy Chief Medium Range
- Guidance components
- Rationale from raw to modified field
modification - Verification
- 2. Chief Short Range
- Guidance components
- Examples upgraded field modification tools
- Verification
- Discussion of Systematic Model Errors included..
4Compiling Guidance
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Recent observational data
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Mesoscale model run(s)
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Known model weaknesses
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Short Range
Medium Range
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Short Range Ensembles
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Global model runs
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Medium Range Ensembles
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51. Medium Range Guidance
- Cover lead time of about 30 hrs to 10 days
- Rationale
- combine charts, text, tabular and graphical
output to represent - a most-probable consensus forecast
- error bounds on various aspects of that forecast
6Principles of the Consensus Forecast
- This is a weighted, multi-model, mid-range
forecast, in which gradients have been preserved
(unlike an ensemble mean, in which gradients
weaken as lead time increases) - So how do we weight the different models?
- Can we account for known strengths and weaknesses
of the different model formulations?
7Deriving the Consensus forecast
- Two stages
- 1. Deciding what the forecast should look like
(and if a particular run can be used unmodified) - 2. Applying the relevant changes to a selected
model run
- 1 - subjectively allow for
- Relative model accuracy
- Seasonal differences
- Regional differences
- Regime dependancy of errors (information
lacking!) - Forecast data times
- Ensembles (clustering etc)
- Systematic errors
8Verification statistics suggest how to weight
different centres forecasts
NH rms MSLP error vs Lead Time
1 5
days 10
9Seasonal differences (NH mslp, RMS at T72)
- EC Best throughout then UKMET, but NCEP
consistently better in summer
10Regional Performance Europe, vs Lead Time
- Europe-based models perform better in forecasting
for Europe
11Regional Performance N America, vs Lead Time
- Relative to performance over Europe UKMET does
worse over US/Canada, GFS better
12- Note also that plots can vary greatly for other
parameters, and for other levels - Need to know which parameters are most important
for the task in hand? - Much use is also made of ECMWF ensemble data
13Examples
- Underlying Strategy
- First ascertain the key meteorological
feature(s), - Then incorporate the different model and ensemble
solutions accordingly, weighting as appropriate
(on screen or on paper) to arrive at a consensus
solution
14EG1 Frontal wave is main Feature for
UK Consensus would move GM wave (red) towards
NW, perhaps weakening it a little
VT 00z 24/7/02, mostly T48 GM, EC, FR, NCEP, DWD
15EG2 Cold front is the main feature Consensus
would move GM front south, possibly hinting
at wave development, as GM underdoes waves, and
as NCEP shows one.
16Cyclone Database - Snapshot
17GM cyclone spectra for year 2000, categorised by
max wind speed within 300km radius of centre
North Atlantic Domain
18Deriving the Consensus forecast
- Two stages
- 1. Deciding what the forecast should look like
(and if a particular run can be used unmodified) - 2. Modifying a selected model run
19Modifying a Selected Model Run
- Use Field Modification tool (devised by Eddy
Carroll) AFTER a model run has finished - Allows quick, interactive, dynamically consistent
changes to be made to a set of 3-d fields from
one model run, eg - Move low or front
- Deepen/fill low
- Introduce low or wave
- Relies on modification vectors applied to PV
distribution, followed by PV inversion with
changed boundary conditions - Equivalent translation vectors applied to ppn and
RH simple boundary layer model used for surface
winds - Temporal consistency achieved via time-linking
(with decay parameter) - Precipitation rate type, winds etc can also be
adjusted directly and time-linked
See Carroll, Meteorological Applications, 1997
for field modification description
20Field Modification Example moving a low with
slight deepening
21Resulting fields (takes 2 seconds)
22Initial Fields
23500mb ht and 100-500mb Thickness - before
24500mb ht and 100-500mb Thickness - after
25Raw Model Forecast
26Modified Forecast
27- Time-linking of changes enables a
meteorologically and dynamically consistent chart
sequence representing the most probable
(consensus) forecast evolution to be produced
28Objective Verification
29- Subjective verification shows similar results to
mslp verification (though needs an overhaul!) - Objective verification of other parameters higher
up in atmosphere (eg 250 and 500mb ht) shows
minimal difference between mod and unmod just a
slight improvement at longer leads - PV inversion within field modification is thus
not adversely influencing levels remote in height
from the lower levels that are generally targetted
302. Short Range Guidance
- Cover lead time up to about 30 hrs
- Rationale
- combine charts, text, tabular and graphical
output to represent - a most-probable consensus forecast
- Output is mainly graphical 3 hourly frames
depicting mslp, rainfall rate, ppn type
(convective/dynamic rain/snow), cloud cover - Special emphasis on hazardous / severe weather
- Warning issue as required
- Methodology
- Blend output from limited number of models (eg 3)
with inferences from observations imagery, and
also adjust according to known model weaknesses
(highest weight usually for UK mesoscale (12km)
model).
31Short Range Forecast Example
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33B
B
A
A
OBSERVED
FORECAST
- Northerly Winter Marine Convection example
- A precipitation too extensive, dynamic rather
than convective - B precipitation rate variation too small, more
inland penetration - 12km model, 38 levels, parametrised convection
(Gregory-Rowntree) - convective life-cycle is zero
A
B
34Impact of higher resolution
4km run
Radar
12km run
35Impact of higher resolution
- 4km resolution runs have
- Convection scheme used for low CAPE, switched off
for high CAPE (assumed resolved explicitly) - This can give
- more inland penetration of showers ?
- greater rate variations ?
- local rates that are too extreme ?
- 4km resolution represents a transition
- 1km should prove better. Introduce operationally
in 5-10 years? - much testing / development still required -
ongoing
36Boscastle Floods August 16th 2004
12km RUN
37Snow Example - 30/1/2003 12 hour forecasts
38Harpenden, N of London 31 January 2003 (c/o John
Davies)
- Persistence of heavier convective component
(especially inland) can lead to extra cooling,
and missed snow
39Severe Weather Verification
- From the perspective of hazardous weather, were
there serious errors in either the modified or
raw model forecasts?
- Fewer errors in Modified (blue) than in raw
(red) - Warm air (summer) convection is the most
difficult to deal with - Forecasters biggest contribution is in cold air
convection
40Verificationresults approx 1 year
- As regards giving an appropriate graphical
impression of the weather experienced, which
forecast was better modified, raw model or
neither?
Modified was
41Snow Forecasts Objective Verification
Hit Rate (POD)
False Alarm Ratio
Modified
Raw
Uses SYNOP observations
42Lead Time Gain
Can be used to put together composite
modification indices, as a measure of
forecaster contribution, which in turn can be
compared with modification time
½ (ab) (at time T1)
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44Orographic 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
45Severe windstorms
38 Levels (operational)
- High resolution required (90 levels?) to model
sting jet - Mslp may be OK but winds not
90 Levels
Greater strength along downward trajectory
c/o Pete Clark JCMM, Reading
46Summary (1)
- Met Office guidance centre forecasters have the
facility to modify numerical model output fields
at all lead times - In the short range, small changes to model fields
are fairly common, and are usually based on
current trends and knowledge of model systematic
errors - Changes usually relate to precipitation
distribution, intensity and type, and cloud cover - The forecaster is 4 times more likely to improve
the forecast than make it worse - Cold air convection, including snow forecasts,
shows biggest forecaster contribution - Summer (warm air) convection is the most
difficult to improve upon - In the medium range issuing unmodified output is
more common, especially at T36 and 48, though
any changes that are made to mslp and other
fields can be substantial. The basis for changes
is usually model (including ensemble)
discrepancies. - According to standard rms error statistics, there
are improvements in both 700mb RH and mslp
fields, though RH seems to show more added
value
47Summary (2)
- Compositing together various verification
measures into a single modification index,
utilising the concept of lead time gain,
indicates - A reduction in forecaster contribution in the
short range, between T6 and T30, as current
trends become less relevant - In the medium range an increase in forecaster
contribution with lead time. This is partly
logistical because longer lead-time forecasts
are generally issued last, implying that the
number of available model runs increases for
longer leads - DESPITE high quality models, high quality
forecasters (!) and high quality observational
data, some severe weather events are still poorly
forecast, even at very short range - Regular dialogue between forecasters and model
developers, backed up by verification results
(particularly those relating to systematic
errors) enables model development to focus on
practical forecasting problems
48Summary (3)
- Model Systematic Errors include
- 20 shortfall in number of modest frontal waves
forecast by T48 - Orographic precipitation and rain shadow
underdone with smoothed orography - Insufficient inland penetration of showers in
marine convection - Insufficient rate variation in marine convection
- Insufficient cooling of lower troposphere by
(unrepresented) heavier convection, implying
severe errors in snow forecasts - Inadequate representation of sting jet
phenomenon, which leads to underprediction of
severe windstorms - Answers include
- Increased horizontal resolution
- Increased vertical resolution
- BUT increased resolution brings also its own
problems CARE REQUIRED!
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50Types of Error corrected / introduced
- What was it, specifically, about the good
forecast that made it better?"
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