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Title: Lectures on Modeling and Data Assimilation


1
Lectures on Modeling and Data Assimilation
  • Richard B. Rood
  • NASA/Goddard Space Flight System
  • Visiting Scientist, Lawrence Livermore National
    Laboratory
  • May 7 - 13, 2005
  • Banff, Alberta, CANADA

2
Plan of Presentations
  • Models and Modeling
  • Data Assimilation
  • What is it?
  • Why?
  • Things to Think About
  • Coupled Modeling

3
Model and Modeling
  • Model
  • A work or construction used in testing or
    perfecting a final product.
  • A schematic description of a system, theory, or
    phenomenon that accounts for its known or
    inferred properties and may be used for further
    studies of its characteristics.

Types Conceptual, Statistical, Physical,
Mechanistic,
4
Types of Models(see also, Chapter 17, Peixoto
and Oort, 1992)
  • Conceptual or heuristic models which outline in
    the simplest terms the processes that describe
    the interrelation between different observed
    phenomena. These models are often intuitively or
    theoretically based. An example would be the
    tropical pipe model of Plumb 1996, which
    describes the transport of long-lived tracers in
    the stratosphere.
  • Statistical models which describe the behavior of
    the observations based on the observations
    themselves. That is the observations are
    described in terms of the mean, the variance, and
    the correlations of an existing set of
    observations. Johnson et al. 2000 discuss the
    use of statistical models in the prediction of
    tropical sea surface temperatures.
  • Physical models which describe the behavior of
    the observations based on first principle tenets
    of physics (chemistry, biology, etc.). In
    general, these principles are expressed as
    mathematical equations, and these equations are
    solved using discrete numerical methods. Good
    introductions to modeling include Trenberth
    1992, Jacobson 1998, Randall 2000.

5
Conceptual/Heuristic Model
  • Observed characteristic behavior
  • Theoretical constructs
  • Conservation
  • Spatial Average or Scaling
  • Temporal Average or Scaling
  • Yields
  • Relationship between parameters if observations
    and theory are correct

Plumb, R. A. J. Meteor. Soc. Japan, 80, 2002
6
Big models contain little models
Atmosphere
atmos
Thermosphere
Mesosphere
Stratosphere
land
ice
Troposphere
coupler
Troposphere
ocean
Dynamics / Physics
Convection
Advection
Mixing
PBL
Radiation
Clouds
Management of complexity But, complex and costly
Wheres chemistry and aerosols?
7
What are models used for?
  • Diagnostic The model is used to test the
    processes that are thought to describe the
    observations.
  • Are processes adequately described?
  • Prognostic The model is used to make a
    prediction.
  • Deterministic
  • Probabilistic

8
Whats a mechanistic model?
Mechanistic models have one or more parameters
prescribed, for instance by observations, and
then the system evolves relative to the
prescribed parameters.
Thermosphere
Sink of energy from below
Mesosphere
Relaxation to mean state
Stratosphere
Stratosphere
Troposphere
Geopotential _at_ 100 hPa
A mechanistic model to study stratosphere
9
Simulation Environment(General Circulation
Model, Forecast)
(eb, ev) (bias error, variability error)
Derived Products likely to be physically
consistent, but to have significant errors.
i.e. The theory-based constraints are met.
10
Representative Equations
  • ?A/?t ??UA M P LA n/HAq/H
  • A is some constituent
  • U is velocity ? resolved transport, advection
  • M is Mixing ? unresolved transport,
    parameterization
  • P is production
  • L is loss
  • n is deposition velocity
  • q is emission
  • H is representative length scale for n and q
  • All terms are potentially important answer is a
    balance

11
Discretization of Resolved Transport
  • ?A/?t ??UA

? (A,U)
Grid Point (i,j)
Choice of where to Represent Information Choice
of technique to approximate operations in
representative equations Rood (1987, Rev.
Geophys.)
Gridded Approach Orthogonal? Uniform
area? Adaptive? Unstructured?
12
Discretization of Resolved Transport
Grid Point (i1,j1)
Grid Point (i,j1)
(A,U) ?
(A,U) ?
? (A,U)
? (A,U)
Grid Point (i,j)
Grid Point (i1,j)
13
Discretization of Resolved Transport
Grid Point (i1,j1)
Grid Point (i,j1)
(U) ?
? (U)
? (A)
? (U)
? (U)
Grid Point (i,j)
Grid Point (i1,j)
  • Choice of where to
  • Represent Information
  • Impacts Physics
  • Conservation
  • Scale Analysis Limits
  • Stability

14
Discretization of Resolved Transport
  • ?A/?t ??UA

Line Integral around discrete volume
?
15
Finite-difference vs. finite-volume
  • Finite-difference methods discretize the
    partial differential equations via Taylor series
    expansion pay little or no attention to the
    underlying physics
  • Finite-volume methods can be used to describe
    directly the physical conservation laws for the
    control volumes or, equivalently, to solve the
    integral form of the equations using the
    following 3 integral theorems
  1. Divergence theorem for the advection-transport
    process
  2. Greens theorem for computing the pressure
    gradient forces
  3. Stokes theorem for computing the finite-volume
    mean vorticity using circulation around the
    volume (cell)

Lin and Rood (1996 (MWR), 1997 (QJRMS)), Lin
(1997 (QJRMS), 2004 (MWR))
16
The importance of your decisions
17
Importance of your decisions(Tape recorder in
full Goddard GCM circa 2000)
FINITE-VOLUME
Slower ascent Faster mean vertical velocity
FINITE-DIFFERENCE
Faster ascent Slower mean vertical velocity
S. Pawson, primary contact
18
Importance of your decisions(Precipitation in
full GCM)
Spectral Dynamics Community Atmosphere Model /
Eulerian
Finite Volume Dynamics Community Atmosphere Model
/ Finite Volume
Precipitation in California (from P. Duffy)
19
Some conclusions about modeling
  • Physical approach versus a mathematical approach
  • Pay attention to the underlying physics seek
    physical consistency
  • How does my comprehensive model relate to the
    heuristic models?
  • Quantitative analysis of models and observations
    is much more difficult than building a new
    model. This is where progress will be made.
  • Avoid coffee table / landscape comparisons

20
The Dark Path of Data Assimilation
  • Basics of Assimilation
  • Assimilation in tracer transport
  • Ozone assimilation

21
Data Assimilation
  • Assimilation
  • To incorporate or absorb for instance, into the
    mind or the prevailing culture (or, perhaps, a
    model)
  • Model-Data Assimilation
  • Assimilation is the objective melding of observed
    information with model-predicted information.

Attributes Rigorous Theory, Difficult to do
well, Easy to do poorly, Controversial
(Best estimate)
22
Assimilation Environment
O is the observation operator Pf is forecast
model error covariance R is the observation error
covariance x is the innovation Generally
assimilate resolved, predicted variables.
Future, assimilate or constrain
parameterizations. (T, u, v, H2O, O3) Data
appear as a forcing to the representative model
equation Does the average of this added forcing
equal zero?
23
What do these things mean?
(OPfOT R)x Ao OAf
Sat
Rad
Sat
Rad
Bal
Geo
Sat
Rad
Sat
Rad
Bal
Geo
Sat
Rad
Space and Time Interpolation
To Measured Quantity
Sat
Rad
Bal
Geo
Sat
Rad
Bal
Geo
Sat
Rad
Sat
Rad
Ship
Tem
Sat
Rad
Ship
Tem
Sat
Rad
Ship
Tem
Sat
Rad
Bal
Geo
Satellite Balloon Ship
Radiance Geopotential Temperature
Model Forecast
O The Observation Operator
24
What do these things mean?
(OPfOT R)x Ao OAf
Radius of Influence
Correlation aligned with flow?
Errors Variance and Correlation
25
Figure 5 Schematic of Data Assimilation System
Observation minus Forecast
Data Stream 1 (Assimilation)
Statistical Analysis
Analysis (Observation Minus Analysis)
Error Covariance
Quality Control
Data Stream 2 (Monitoring)
Model Forecast
Forecast / Simulation
26
What does an assimilation system look
like?(Goddard Ozone Data Assimilation System)
Obs - Forecast
Analysis Increments
HALOE Sondes
Analysis
BALANCE, BALANCE, BALANCE!
27
Why do we do assimilation?
  • Global synoptic maps (Primary (Constrained)
    Product)
  • Unobserved parameters (Primary - Derived Product)
  • Ageostrophic wind, constituents, vertical
    information,
  • Derived products
  • Vertical wind / Divergence, residual circulation,
    Diabatic and Radiative information, tropospheric
    ozone,
  • Forecast initialization
  • Radiative correction for retrievals
  • Background, a priori profile, for retrievals
  • Alternative to traditional retrieval
  • Instrument/Data System monitoring
  • Instrument calibration
  • Observation quality control
  • Model evaluation / validation

28
ECMWF, ERA-40
29
The transport application
A ( space, time )
Chemistry Transport Model (CTM)

?A/?t ??UA M P LA n/HAq/H
Transport / Chemistry
PBL
Advection
Mixing
J Rates
Convection
React. Rate
Solver
Emissions
Wet/Dry
Input Fields ONE WAY COUPLER Winds,
Temperature, Convective Mass Flux, Water, Ice,
Turbulent Kinetic Energy Diabatic Heating
Atmospheric Model History Tape
30
The Transport Application
Residual Circulation
Wave Transport Planetary Synoptic
(u,v)
(u,v)
MIXING
31
PDFs of total ozone observations CTM
GCM-driven
DAS-driven
  • Means displaced
  • Spread too wide
  • Means displaced
  • Half-width ok

Too much tropical-extratropical mixing in DAS
Douglass, Schoeberl, Rood and Pawson (JGR, 2003)
32
Three-dimensional trajectory calculations
UKMO
UKMO
DAO
DAO
GCM
(50 days)
GCM shows very little dispersion, regardless of
method used Assimilated fields are excessively
dispersive
Schoeberl, Douglass, Zhu and Pawson (JGR, 2003)
33
Transport have we reached a wall?
TRANSPORT with winds from assimilation
D
Residual Circulation
Wave Transport Planetary Synoptic
D
C
MIXING
(u,v)
(u,v)
  • Derived quantities are not physically consistent
  • Dynamic Radiative equilibrium is not present
  • Bias acts as forcing and generates spurious
    circulations
  • Data insertion generates noise that grows and
    propagates ? relation to bias
  • Temperature constraint too weak to define winds?
  • Wallace and Holton (1968)
  • Thickness measurements too thick?

34
Major assimilation issue Bias
Primary Products Errors, (eb, ev) (bias error,
variability error), errors usually reduced.
Derived Products and unobserved parameters likely
to be physically Inconsistent, errors likely to
increase relative to simulation.
Why? Consider Ozone and Temperature How are they
related? O3 T, Chemistry (P and L) Seconds
hours ? O3 T, Transport (U) Hours Days
? O3 T, Diabatic forcing Days Months
? O3 T, Other constituents Seconds hours
days ? If adjust O3 and T by observations to
be correct and if that correction is biased,
then there has to be a compenradion somewhere in
the Representative Equation. Usually it appears
as a bias in unobserved parameters and leads to
inconsistent results. Budgets do NOT balance.
35
Ozone Assimilation
  • Why? (Rood, NATO ASI Review Paper, 2003)
  • Monitoring instrument behavior
  • Improving radiative calculation
  • Models
  • Retrievals
  • Tropospheric ozone?
  • What?
  • Impact of new data, what does it mean?

36
MIPAS Ozone assimilation
  • Comparison of an individual ozone sonde profile
    with three assimilations that use SBUV total
    column and stratospheric profiles from
  • SBUV
  • SBUV and MIPAS
  • MIPAS
  • MIPAS assimilation captures vertical gradients in
    the lower stratosphere
  • Model Data capture synoptic variability and
    spreads MIPAS information

MIPAS data
37
Monitoring Data System
EP TOMS Going Bad
Adjustment To change in observing system
38
Summary (1)
  • Good representation of primary products, T, wind,
    ozone
  • Model-data bias, noise added at data insertion,
    data insertion as a source of gravity waves
    provides difficult challenges
  • Derived products are often non-physical, and
    examples of improving primary products degrades
    derived products
  • Pushing model errors into the derived products
  • Need to incorporate Theory/Constraints into
    assimilation more effectively

39
Summary (2)
  • Can we really do climate with assimilated data
    sets?
  • Dont do trends
  • If I worked in data assimilation what would I
    propose?
  • Primary products New data, Bias correction
  • Derived products/Use in Climate studies
    Fundamental physics of model, model improvement
  • Error covariance modeling? Data assimilation
    technique?

40
Quality Control Interface to the Observations
Satellite 1
Self-comparison
DATA GOOD BAD SUSPECT
Comparison to Expected
Satellite 2
Self-comparison
GOOD!
Intercomparison
Non-Satellite 1
Self-comparison
O
Expected Value
MODEL Forecast
MONITOR ASSIMILATE
Memory of earlier observations
41
When Good Data Go Bad?
  • Good Data
  • Normal range of expectation
  • Spatial or temporal consistency
  • Bad data
  • Instrument malfunction
  • Cloud in field of view
  • Operator, data transmission error
  • The unknown unknown
  • New phenomenon
  • Model failure
  • New extreme of variability

42
Link to the adaptive observing
Obs - Forecast
What to Observe? What to Process?
Data Anomalies
Analysis Increments
Features
Analysis
43
Model - Data Assimilation
  • Objective, Automated Examination and Use of
    Observing System.
  • All types of observations need to write an
    observation operator.
  • Requires Robust Sampling Observing System as a
    Foundation
  • There is no controversy of sampling versus
    targeted observations. They are each an
    important part of scientific investigation.
  • Powerful Technique for Certain Applications.
  • Provides Information that might be used in
    Adaptive Observing (or Data Processing).
  • From Quality Control Subsystem
  • From Forecast Subsystem
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