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Title: PQPF using ensemble forecasts and reforecasts


1
PQPF using ensemble forecasts and reforecasts
NOAA Earth System Research Laboratory
  • Tom Hamill
  • NOAA Earth System Research Lab
  • Boulder, CO
  • tom.hamill_at_noaa.gov

2
Two grand successes of NWP (1) Improved,
high-resolution forecast models
We now have convection-permitting forecast
models that produce forecasts that look, for the
first time, somewhat like radar images of
precipitation.
3
Grand success (2) ensemble forecastsMultiple
simulations of the weather from slightly
different initial conditions, perhaps different
forecast models
Deterministic forecast totally
misses damaging storm over France
some ensemble members forecast it well.
Probabilities commonly estimated from
frequency of event in the ensemble.
from Tim Palmers book chapter, 2006.
4
Combining successes high-resolution ensembles!
From NCEP/SPCs Spring Experiment, a test of
high-resolution (4-km grid spacing)
ensembles. With some phenomena like supercells,
they simply wont exist in lower-resolution
models.
4
4
c/o NCEP/SPC Spring Experiment (Weiss, Kain, et
al., 2007)
5
  • Problem with current ensemble forecast systems
  • Forecasts may be biased and/or deficient in
    spread, so that
  • probabilities are mis-estimated. More so for
    surface temp precip. than Z500

Heavy rain in an area where none of the ensemble
members predicted it.
http//www.spc.noaa.gov/exper/sref/
6
Sources of errors inensemble systems
  • (1) Initial condition errors would like ensemble
    to sample distribution of plausible analysis
    states given current past observations.
  • (2) Model errors. Insufficient resolution,
    faulty parameterizations, use of limited-area
    models, etc.

7
Model error at mesoscaleExample cloud
microphysical processes
Conversion processes, like snow to graupel
conversion by riming, are very difficult to
parameterize but very important in convective
clouds.
Especially for snow and graupel the particle
properties like particle density and fall speeds
are important parameters. The assumption of a
constant particle density is questionable.
Aggregation processes assume certain collision
and sticking efficiencies, which are not well
known.
Most schemes do not include hail processes like
wet growth, partial melting or shedding (or only
very simple parameterizations).
The so-called ice multiplication (or
Hallet-Mossop process) may be very important, but
is still not well understood
7
from Axel Seifert presentation to NCAR ASP summer
colloquium
8
Model error at mesoscaleSummary of
microphysical issuesin convection-resolving NWP
  • Many fundamental problems in cloud microphysics
    are still unsolved.
  • The lack of in-situ observations makes any
    progress very slow and difficult.
  • Most of the current parameterization have been
    designed, operationally applied and tested for
    stratiform precipitation only.
  • Most of the empirical relations used in the
    parameterizations are based on surface
    observation or measurements in stratiform cloud
    (or storm anvils, stratiform regions).
  • Many basic parameterization assumptions, like
    N0const., are at least questionable in
    convective clouds.
  • Many processes which are currently neglected,
    or not well represented, may become important in
    deep convection (shedding, collisional breakup,
    ...).
  • One-moment schemes might be insufficient to
    describe the variability of the size
    distributions in convective clouds.
  • Two-moment schemes havent been used long
    enough to make any conclusions.
  • Spectral methods are overwhelmingly complicated
    and computationally expensive. Nevertheless, they
    suffer from our lack of understanding of the
    fundamental processes.

8
from Axel Seifert presentation to NCAR ASP summer
colloquium
9
Lateral boundary condition issues for
limited-areaensemble forecast systems
  • With 1-way LBCs, small scales in domain cannot
    interact with scales larger than some limit
    defined by domain size.
  • LBCs generally provided by coarser-resolution
    forecast models, and this sweeps in
    low-resolution information, sweeps out developing
    high-resolution information.
  • Physical process parameterizations for model
    driving LBCs may be different than for interior.
    Can cause spurious gradients.
  • LBC info may introduce erroneous information for
    other reasons, e.g., model numerics.
  • LBC initialization can produce transient
    gravity-inertia modes.

9
9
Ref Warner et al. review article, BAMS, November
1997
10
Influence of domain size
T-126 global model driving lateral boundary
conditions for nests with 80-km and 40-km grid
spacing of limited-area model.
from Warner et al. Nov 1997 BAMS, and Treadon and
Peterson (1993), Preprints, 13th Conf. on Weather
Analysis and Forecasting
10
10
11
Influence of domain size, continued
large nested domain
small nested domain
40-km nested domain in global model had thin,
realistic jet streak using large domain (left)
and smeared-out, unrealistic jet streak using
small domain (right). High resolution of
interior domain not useful here because of
sweeping in of low-resolution information.
11
11
Ref ibid
12
Model error at mesoscale(1) errors from
insufficient grid spacing
  • George Bryan (NCAR) tested convection in simple
    models with grid spacings from 8 km to 125 m

12
Ref http//www.mmm.ucar.edu/people/bryan/Presenta
tions/bryan_2007_nssl_resolution.pdf
13
4 km, 1 km, 0.25 km
  • Across the squall line vertical cross section for
    25 ms-1 wind shear. Shading mixing ratio (g
    kg-1) contours (vertical velocity (every 4
    ms-1).
  • Dramatic changes in structure of squall line,
    updraft, positioning of cold pool.

13
Ref http//www.mmm.ucar.edu/people/bryan/Presenta
tions/bryan_2007_nssl_resolution.pdf
14
4 km, 1 km, 0.25 km
  • Along the squall line vertical cross section for
    20 ms-1 wind shear. Shading mixing ratio (g
    kg-1) contours (vertical velocity (every 4
    ms-1).
  • Updrafts increase in number and intensity with
    increasing resolution, decrease in size.

14
Ref http//www.mmm.ucar.edu/people/bryan/Presenta
tions/bryan_2007_nssl_resolution.pdf
15
4 km, 1 km, 0.25 km
  • System propagation approximately converged at 1
    km for high-shear cases.
  • For low-shear environment (more weakly forced)
    resolutions above 1 km are increasingly
    inadequate.

15
Ref http//www.mmm.ucar.edu/people/bryan/Presenta
tions/bryan_2007_nssl_resolution.pdf
16
What are the implications for hydrological PQPF?
17
Example 1-2 day lead hydrologic forecast for a
basin in Northern Italy
Hydrologic model forced with multi-model weather
ensemble data.
Skill of hydrologic forecast tied to the skill of
the precipitation/temperature forecasts. Here,
all forecasts missed timing of rainfall event, so
subsequent hydrologic forecasts missed event.
Reservoir regulation, hydrologic model may have
also had effects.
17
Source A meteo-hydrological prediction system
based on a multi-model approach for ensemble
precipitation forecasting. Tomasso Diomede et
al, ARPA-SIM, Bologna, Italy.
18
In an ideal world what I think hydrologists want
  • An ensemble of data to feed into ensemble
    streamflow models, rather than just probability
    forecasts. Hydrologists will then run ensembles
    of streamflow models.
  • Ensembles must be reliable (when the frequency of
    this ensemble says P90, it happens 90 of the
    time), even (especially!) for extreme events
  • Sharpness (more 0 and 100, less of
    climatological probability, if still reliable).
  • Geographic specificity, to the extent its
    predictable (e.g., more snow in west Boulder than
    east Boulder).
  • Correct spatial and temporal correlations.

19
Possible paths forward
  • Use CPU resources to rapidly develop
    higher-resolution ensembles with improved
    physical veracity. Improve methods of generating
    initial conditions, generate ways of dealing with
    uncertainty of the forecast model itself. What
    weve been doing
  • Use those CPU cycles to run a fixed model and
    data assimilation system, albeit an older,
    low-resolution one. Run real-time, plus many past
    forecast cases. Diagnose the forecast error
    characteristics and generate statistically
    adjusted forecasts (reforecasting)
  • (3) Compromise between the two.

20
Approach 1(Building and continually improving
a highest-resolution ensemble)
  • ADVANTAGES
  • (1) CPU cycles dedicated to forecasts at highest
    resolution, with best physics.
  • (2) Small-scale features may actually be resolved
    by the model, rather than inferred from
    larger-scale conditions and statistical voodoo.
  • (3) As soon as improved model is developed, it
    can be implemented.
  • (4) Some phenomena require high resolution
    forecasts, and no amount of statistical
    post-processing can get around this (next page).
  • DISADVANTAGES
  • (1) Raw probability forecasts biased. And dont
    expect bias ? 0 with the next implementation.
  • (2) Correction of model problems difficult for
    human (or computer) to estimate without a long,
    careful look.
  • (3) Rapid changes ? little experience with model
    before next version.
  • (4) Resolving a feature ? successfully predicting
    a feature. You may be led into a sense of
    overconfidence by high-resolution model.

21
Summertime convectionin US Great Plains.
  • Week-long simulation of WRF model over US using
    4-km grid spacing, explicit convection.
  • Forecast and observed Hovmollers shows eastward
    propagating streaks of precipitation. This
    eastward propagation is not forecast correctly in
    models with convective parameterizations (not
    shown see Davis et al. 2003)
  • Statistical downscaling wont help much in a
    situation where the forecast model cant
    correctly propagate the feature of interest.
  • For this mode of convection, there appears to be
    little substitute for a high-resolution,
    explicitly resolved ensemble.

21
21
Ref Trier et al., JAS, Oct 2006. See also Davis
et al., MWR, 2003.
22
Approach 2Reforecasting (correcting our
mistakes)
  • ADVANTAGES
  • (1) Preliminary results show that the equivalent
    of gt 10 yrs. of NWP model development can be
    obtained through judicious forecast calibration
    with a large set of reforecasts.
  • (2) Can nearly eliminate bias spread
    deficiencies, downscale.
  • (3) End users like a stable, known product, and
    the forecast characteristics of reforecast-based
    products wont change often.
  • DISADVANTAGES
  • (1) Major improvements may not be able to be
    implemented quickly. If new model, must take the
    time to run reforecasts (expensive).
  • (2) Processes that form precipitation, like
    thunderstorms, cant be resolved, and must be
    parameterized.
  • (3) You learn much about the error
    characteristics of an old model, not a new one.

23
Rest of todays talk
  • Wont talk about
  • Approach 1, developing and improving hi-res.
    models. Youre probably well-educated already.
  • Climate forecasting and reforecasting. Marginal
    skill, not low-hanging fruit. Anyway, Kevin
    Werner will talk about this.
  • Will talk about
  • Reforecasting for shorter-range forecasts, 1 day
    to several weeks. Here is where there is a large
    gain from statistical post-processing.
  • How reforecasting may fit into NWS plans.

24
Do we really need reforecasts extending over
years or decades?
Consider training with a short sample in a
climatologically dry region. How could you
calibrate this latest forecast?
youd like enough training data to have
some similar events at a similar time of year to
this one.
25
Why not boost sample size by compositing
statistics over different locations?
Probably a good idea, if done with care.
However, even nearby grid points may have
different forecast errors.
Panels (a) and (b) provide the cumulative density
function (CDF) of 1-day forecasts of
precipitation for 1 January (CDFs determined from
reforecast data and observations in Dec-Jan).
Panel (a) is for a location on the CA coast, just
north of San Francisco, and panel (b) is for
Sacramento, CA. Panel (c) provides the implied
function for a bias correction from the forecast
amount to a presumed observed amount. Note the
very different corrections implied at two nearby
locations.
26
NOAAs reforecast data set
  • Model T62L28 NCEP GFS, circa 1998
  • Initial Conditions NCEP-NCAR Reanalysis II plus
    7 /- bred modes.
  • Duration 15 days runs every day at 00Z from
    19781101 to now. (http//www.cdc.noaa.gov/people/j
    effrey.s.whitaker/refcst/week2).
  • Data Selected fields (winds, hgt, temp on 5
    press levels, precip, t2m, u10m, v10m, pwat,
    prmsl, rh700, heating). NCEP/NCAR reanalysis
    verifying fields included (Web form to download
    at http//www.cdc.noaa.gov/reforecast).
  • Real-time probabilistic precipitation forecasts
    http//www.cdc.noaa.gov/reforecast/narr

27
Theory underlying analog calibration technique
the probability distribution of the true state
given todays forecast, where
Here, before simplification, xT refers to the
true state vector (presumably high-resolution),
and xf refers to the (lower-resolution)
ensemble- forecast state vector.
28
A simplified construct for calibration using
reforecasts
  • Most of the information in our GFS reforecast
    ensemble
  • contained in the ensemble mean, so
  • (2) Lets find the distribution of the observed
    conditional upon
  • the part of the forecast state thats nearby
    i.e., dont worry about
  • Washington, DC when making a forecast for
    Washington, State.

29
Producing a distribution of observed given
forecast using analogs
On the left are old forecasts similar to todays
ensemble- mean forecast. For making
probabilistic forecasts, form an ensemble from
the accompanying analyzed weather on
the right-hand side.
30
Producing a distribution of observed given
forecast using analogs
On the left are old forecasts similar to todays
ensemble- mean forecast. For making
probabilistic forecasts, form an ensemble from
the accompanying analyzed weather on
the right-hand side.
31
Verified over 25 years of forecasts skill
scores use conventional method of calculation
which may overestimate skill (Hamill and Juras
2006, QJRMS, Oct).
32
Comparison against NCEP medium-range T126
ensemble, ca. 2002
the improvement is a little bit of increased
reliability, a lot of increased resolution.
33
Analog example Day 4-6 heavy precipitation in
California, 0000 UTC 29 December 1996 - 0000
UTC 1 January 1997
This sort of spatial detail added by reforecast
calibration can be expected in regions of complex
terrain, where precipitation climatology varies a
lot.
34
(Will reforecasts still add value when using a
much improved model? Yes.)
Here we also have T255 ECMWF reforecasts
35
Effect of training sample size
ECMWF reforecasts were available once per
week over a 20-year period. Compared skill of
calibrated forecasts relative to using last 30
days of forecasts.
36
Real-time products from GFS
37
Whats next for reforecasting?
  • Growing interest from NWP centers worldwide
  • ECMWF operational with once-weekly, 5-member
    ensemble reforecasts, past 18 years.
  • Canadians hoping to do 5-year ensemble
    reforecasts
  • NCEP envisioning 1-member, real-time reforecast
    for bias correction.
  • NOAA/ESRL hoping to develop more complete
    2nd-generation reforecast data set that would be
    used to determine a long-term strategy for how
    reforecasts would be implemented into operations.

38
Research questions
  • Given computational expense of reforecasts, how
    do we best
  • Limit the number of reforecasts that we need to
    do (fewer ensemble members, not every day, etc.)
  • Can we do things like composite the data across
    different locations to boost sample size?
  • Do we need a new reanalysis every time we do a
    new reforecast?
  • Do the benefits of reforecasts propagate down to
    users like hydrological forecasters?
  • We welcome your thoughts and requirements for
    next-generation reforecast system.

39
References
Hamill, T. M., J. S. Whitaker, and X. Wei, 2003
Ensemble re-forecasting improving medium-range
forecast skill using retrospective forecasts.
Mon. Wea. Rev., 132, 1434-1447.
http//www.cdc.noaa.gov/people/tom.hamill/reforeca
st_mwr.pdf Hamill, T. M., J. S. Whitaker, and
S. L. Mullen, 2005 Reforecasts, an important
dataset for improving weather predictions. Bull.
Amer. Meteor. Soc., 87, 33-46. http//www.cdc.noaa
.gov/people/tom.hamill/refcst_bams.pdf
Whitaker, J. S, F. Vitart, and X. Wei, 2006
Improving week two forecasts with multi-model
re-forecast ensembles. Mon. Wea. Rev., 134,
2279-2284. http//www.cdc.noaa.gov/people/jeffrey.
s.whitaker/Manuscripts/multimodel.pdf Hamill,
T. M., and J. S. Whitaker, 2006 Probabilistic
quantitative precipitation forecasts based on
reforecast analogs theory and application. Mon.
Wea. Rev., in press. http//www.cdc.noaa.gov/peopl
e/tom.hamill/reforecast_analog_v2.pdf Hamill,
T. M., and J. Juras, 2006 Measuring forecast
skill is it real skill or is it the varying
climatology? Quart. J. Royal Meteor. Soc., 132,
2905-2923 . http//www.cdc.noaa.gov/people/tom.ham
ill/skill_overforecast_QJ_v2.pdf . Wilks, D. S.,
and T. M. Hamill, 2006 Comparison of
ensemble-MOS methods using GFS reforecasts. Mon.
Wea. Rev., 135, 2379-2390. http//www.cdc.noaa.gov
/people/tom.hamill/WilksHamill_emos.pdf Hamill,
T. M. and J. S. Whitaker, 2006 White Paper.
Producing high-skill probabilistic forecasts
using reforecasts implementing the National
Research Council vision. Available at
http//www.cdc.noaa.gov/people/tom.hamill/whitepap
er_reforecast.pdf . Hagedorn, R., T. M. Hamill,
and J. S. Whitaker, 2008 Probabilistic forecast
calibration using ECMWF and GFS reforecasts. Part
I Two-meter temperatures. Mon. Wea. Rev., 136,
2608-2619. http//www.cdc.noaa.gov/people/tom.hami
ll/ecmwf_refcst_temp.pdf Hamill, T. M., R.
Hagedorn, and J. S. Whitaker, 2008 Probabilistic
forecast calibration using ECMWF and GFS
reforecasts. Part I Precipitation. Mon. Wea.
Rev., 136, 2620-2632. http//www.cdc.noaa.gov/peop
le/tom.hamill/ecmwf_refcst_ppn.pdf
40
Framing the calibration problem
  • Suppose the climate were stationary (unchanging
    from decade to decade).
  • Suppose that we had quality weather observations
    going back many millennia
  • Suppose we had an ensemble of reforecasts
    available back over those many millennia.
  • Then how might we utilize the reforecasts to
    improve todays forecast?

41
Estimating the conditional distribution with
analogs
Suppose we have old forecasts that are
identical to todays
Then
estimated from
42
Asymptotic behavior of analog technique
  • Q What happens as corr(F,O) ? 0 ? A Ensemble of
    observed analogs becomes random draw from
    climatology.
  • Q What happens as corr(F,O) ? 1 ? A Ensemble
    of observed analogs looks just like todays
    forecast. Sharp, skillful forecasts.

43
Nov 06 OR-WA floods, 3-6 day forecast
44
Bias, spread, and downscaling corrections in
analog technique
raw ens
refcst analogs
Cant find any other reforecast analogs
with precip as heavy. But introduce large scatter
by taking associated observed analogs.
Again, few close reforecast analogs.
But observed data recognizes overforecast bias.
Here there are close reforecast analogs.
Observed data introduces spread, increases amount.
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