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Title: Numerical Weather Prediction and Data Assimilation


1
Numerical Weather Prediction and Data Assimilation
  • David Schultz, Mohan Ramamurthy, Erik Gregow,
    John Horel

2
What is a model?
  • Resource Kalnay, E., 2003 Atmospheric Modeling,
    Data Assimilation and Predictability
  • model tool for simulating or predicting the
    behavior of a dynamical system such as the
    atmosphere
  • Types of models include
  • heuristic rule of thumb based on experience or
    common sense
  • empirical prediction based on past behavior
  • conceptual framework for understanding physical
    processes based on physical reasoning
  • analytic exact solution to simplified
    equations that describe the dynamical system
  • numerical integration of governing equations by
    numerical methods subject to specified initial
    and boundary conditions

3
What is Numerical Weather Prediction?
  • The technique used to obtain an objective
    forecast of the future weather (up to possibly
    two weeks) by solving a set of governing
    equations that describe the evolution of
    variables that define the present state of the
    atmosphere.
  • Feasible only using computers

4
A Brief History
  • Recognition by V. Bjerknes in 1904 that
    forecasting is fundamentally an initial-value
    problem and basic system of equations already
    known
  • L. F. Richardsons (1922) attempt at practical
    NWP
  • Radiosonde invention in 1930s made upper-air data
    available
  • Late 1940s First successful dynamical-numerical
    forecast made by Charney, Fjortoft, and von
    Neumann
  • 1960s Edward Lorenz shows the atmosphere is
    chaotic and its predictibility limit is about two
    weeks

5
NWP System
  • NWP entails not just the design and development
    of atmospheric models, but includes all the
    different components of an NWP system
  • It is an integrated, end-to-end forecast process
    system

6
Data Assimilation
7
Components of an NWP model
  • 1. Governing equations
  • Fma, conservation of mass, moisture, and
    thermodynamic eqn., gas law
  • 2. Numerical procedures
  • approximations used to estimate each term
    (especially important for advection terms)
  • approximations used to integrate model forward
    in time
  • boundary conditions
  • 3. Approximations of physical processes
    (parameterizations)
  • 4. Initial conditions
  • Observing systems, objective analysis,
    initialization, and data assimilation

8
Model Physics
  • Grid-scale precip. (large scale condensation)
  • Deep and shallow convection
  • Microphysics (increasingly becoming important)
  • Evaporation
  • PBL processes, including turbulence
  • Radiation
  • Cloud-radiation interaction
  • Diffusion
  • Gravity wave drag
  • Chemistry (e.g., ozone, aerosols)

9
Grid spacing (resolution) defines the scale of
the features you can simulate with the model.
10
Good Numerical Forecasts Require
  • Initial conditions that adequately represent the
    state of the atmosphere (three-dimensional wind,
    temperature, pressure, moisture and cloud
    parameters)
  • Numerical weather prediction model that
    adequately represents the physical laws of the
    atmosphere over the whole globe

11
Sources of error in NWP
  • Errors in the initial conditions
  • Errors in the model
  • Intrinsic predictability limitations
  • Errors can be random and/or systematic errors

12
Sources of Errors - continued
  • Initial Condition Errors
  • Observational Data Coverage
  • Spatial Density
  • Temporal Frequency
  • Errors in the Data
  • Instrument Errors
  • Representativeness Errors
  • Errors in Quality Control
  • Errors in Objective Analysis
  • Errors in Data Assimilation
  • Missing Variables
  • Model Errors
  • Equations of Motion Incomplete
  • Errors in Numerical Approximations
  • Horizontal Resolution
  • Vertical Resolution
  • Time Integration Procedure
  • Boundary Conditions
  • Horizontal
  • Vertical
  • Terrain
  • Physical Processes

Source Fred Carr
13
Given all these assumptions and limitations, we
have no right to do as well in forecasting the
weather as we do!
Dave sez
  • What other disciplines forecast the future with
    as much success as meteorology?

14
NWP in Finland
  • Currently, NWP models are run by FMI (limited
    domain over Europe) and by the European Centre
    for Medium-Range Weather Forecasts (global)
  • Currently the FMI model is run at about 9 22 km
    and the ECMWF model is run at 25 km grid spacing,
    meaning that these models can resolve features
    about 6 times those grid spacings.
  • The new AROME experimental model is running at
    2.5 km grid spacing.

15
22 km HIRLAM 9 km HIRLAM 2.5 km AROME
16
9 km HIRLAM 2.5 km AROME observed radar
reflectivity
17
9 km HIRLAM 2.5 km AROME
18
The Hopes of the Testbed
  • Higher-resolution observations will provide
    higher-resolution initial conditions, which could
    be put into a higher-resolution NWP model,
    producing higher-resolution forecasts.
  • The hope is that precise forecasts of convection,
    the sea breeze, rain/snow forecasting, and winds
    could be made up to a few hours in advance.
  • BUT

19
Difficulties Lie Ahead
  • The reality is often that you end up with a
    higher-resolution, less-accurate forecast.
  • Results from forecasting/research experiments at
    the NOAA/Storm Prediction Center show value can
    be added sometimes with high-resolution
    forecasts.
  • When that value can be added is a very important
    forecasting/research question!!!

20
Difficulties Lie Ahead
  • Producing the initial conditions from sparse
    resolution (in space and time) and incomplete
    observations is not easy.
  • Creating a gridded 3-D/4-D dataset suitable for
    initializing a NWP model is called data
    assimilation.
  • How it is proposed to be done in the Helsinki
    Testbed is described next

21
Erik Gregow Project Manager LAPS
22
  • Numerical weather prediction model that
    adequately represents the physical laws of the
    atmosphere over the whole globe
  • Initial conditions that adequately represent the
    state of the atmosphere (three-dimensional wind,
    temperature, pressure, moisture and cloud
    parameters)

23
Good Numerical Forecasts Require
  • Numerical weather prediction model that
    adequately represents the physical laws of the
    atmosphere over the whole globe
  • Initial conditions that adequately represent the
    state of the atmosphere (three-dimensional wind,
    temperature, pressure, moisture and cloud
    parameters)

24
Monitoring Current Conditions
September 6 20GMT
A D A S
25
Potential Discussion Points
  • Why are analyses needed?
  • Application driven data assimilation for NWP
    (forecasting) vs. objective analysis (specifying
    the present, or past)
  • What are the goals of the analysis?
  • Define microclimates?
  • Requires attention to details of geospatial
    information (e.g., limit terrain smoothing)
  • Resolve mesoscale/synoptic-scale weather
    features?
  • Requires good prediction from previous analysis
  • Whats the current state-of-the-art and whats
    likely to be available in the future?
  • Deterministic analyses relative to ensembles of
    analyses (ensemble synoptic analysisGreg
    Hakim)
  • How is analysis quality determined? What is
    truth?
  • Why not rely on observations alone to verify
    model guidance?

26
Observations vs. Truth
  • Truth? You cant handle the truth!
  • Truth is unknown and depends on application
    expected value for 5 x 5 km2 area
  • Assumption average of many unbiased observations
    should be same as expected value of truth
  • However, accurate observations may be biased or
    unrepresentative due to siting or other factors

27
Whats an appropriate analysis given the
inequitable distribution of observations?
Case 3
Case 2
Case 1
?
?
x
?
x
x
grid cell
observation
28
Whats an appropriate analysis given the variety
of weather phenomena?
Elevated Valley Inversions
Front
O
?
O
?
?
O
O
O
O
z
T
29
Analyses vs. Truth
Analysis value Background value observation
Correction
  • An analysis is more than spatial interpolation
  • A good analysis requires
  • a good background field supplied by a model
    forecast
  • observations with sufficient density to resolve
    critical weather and climate features
  • information on the error characteristics of the
    observations and background field
  • good techniques (forward observation operators)
    to transform the background gridded values into
    pseudo observations
  • Analysis error relative to unknown truth should
    be smaller than errors of observations and
    background field
  • Ensemble average of analyses should be closer to
    truth than single deterministic approach IF the
    analyses are unbiased

30
Truth Continuum vs. Discrete
Truth is unknown Truth depends on application
Temperature
Truth
West
East
31
Discrete Analysis ErrorGoal of objective
analysis minimize error relative to Truth not
Truth!
Temperature
Truth
West
East
32
ADAS
  • Near-real time surface
  • analysis of T, RH, V
  • (Lazarus et al. 2002 WAF
  • Myrick et al. 2005 WAF
  • Myrick Horel 2006 WAF)
  • Analyses on NWS GFE
  • grid at 5 km spacing
  • Background field RUC
  • Horizontal, vertical anisotropic weighting

33
Description In the following slides,
temperature results from LAPS/MM5 analysis are
shown. The objective is to compare a normal MM5
analysis with LAPS/MM5 analysis, also verify
against some observations that are not included
into the LAPS analysis Input to LAPS analysis is
here - MM5 9-km resolution (input to MM5 is
ECMWF 0.35 deg) - 52 surface observations from
HTB area
34
MM5 analysis Temperature at 9 m height, with 1
km resolution The analysis is based on 0.35
degree boundary fields from ECMWF operational
analysis.
09 Aug 2005,15 UTC
35
MM5 analysis Temperature at 9 m height, with 1
km resolution Verification The figures, within
the plot, are measurements from certain stations
not included in the LAPS analysis
09 Aug 2005,15 UTC
36
LAPS/MM5 analysis Temperature at 9 m height,
with 3 km resolution Verification The figures,
within the plot, are measurements from certain
stations not included in the LAPS analysis
09 Aug 2005,15 UTC
37
LAPS/MM5 analysis Temperature at 9 m height,
with 1 km resolution Verification The figures,
within the plot, are measurements from certain
stations not included in the LAPS analysis
09 Aug 2005,15 UTC
38
LAPS/MM5 analysis Temperature at 9 m height,
with 1 km resolution Verification The figures,
within the plot, are measurements from certain
stations which are not
included in the LAPS analysis
09 Aug 2005,15 UTC
39
Data Assimilation Surprises
  • Torn and Hakim (unpublished) have applied an
    ensemble Kalman filter for several hurricanes to
    determine the most sensitive regions for
    forecasts in the western Pacific Ocean. The
    largest sensitivities are associated with
    upper-level troughs upstream of the tropical
    cyclone. Observation impact calculations indicate
    that assimilating 40 key observations can have
    nearly the same impact on the forecast as
    assimilating all 12,000 available observations.
  • Sensitivity of the 48 hour forecast of tropical
    cyclone minimum central pressure to the analysis
    of 500 hPa geopotential height (colors) for the
    forecast initialized 12 UTC 19 October 2004.
    Regions of warm (cold) colors indicate that
    increasing the analysis of 500 hPa height at that
    point will increase (decrease) the 48 hour
    forecast of minimum central pressure. The
    contours are the ensemble mean analysis of 500
    hPa height.

40
More Data Assimilation Woes
  • Adaptive observations collecting data where the
    forecast is most sensitive
  • Sometimes assimilating more data produces a worse
    forecast (Morss and Emanuel)
  • Heretical thought What if none of the hundreds
    of observations from the Helsinki Testbed made
    any difference to the forecast?

41
Challenges Ahead for Testbed/LAPS
  • The Testbed only samples the lower troposphere at
    best, not the mid and upper troposphere.
  • Weather phenomena, even adequately sampled by the
    Testbed data, will move out of the Testbed domain
    within an hour or two.
  • Weather phenomena inadequately sampled by the
    Testbed data will move into the domain and screw
    up your forecast.
  • Predictability of mesoscale weather features is
    unknown.
  • All of this assumes a perfect model.

42
Challenges Ahead for Forecasters
  • Determinism is deadlong live probabilistic
    forecasting!
  • High-resolution model output cannot be
    interpreted the same way as a coarser-resolution
    model output.
  • Forecasters need to be retrained.
  • Communication of high-resolution forecasts to end
    users is not simple (i.e., you cannot just send
    raw model output to users and expect them to use
    it).
  • This ensures jobs for good forecasters in the
    future.
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