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The continuity equation for chemical mixing ratios in the context of atmospheric modeling. It covers eulerian and lagrangian approaches, operator splitting, and the use of inverse models based on bayes' theorem. The document also includes discussions on the jacobian matrix, gaussian pdfs, and the kalman filter.
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Solve continuity equation for chemical mixing ratios
C
(x i
,^
t)
Fires
Landbiosphere
Humanactivity
Lightning
Ocean
Volcanoes
Transport
Eulerian form:
i
i^
i^
i
C
C
P
L
t
U
Lagrangian form:
i
i^
i
dC
P
L
dt
= wind vector
i^
=
local sourceof chemical
i
i^
= local sink
Chemistry
Aerosol microphysics
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i^
i^
i
TRANSPORT
LOCAL
… and integrate each process separately over discrete time steps:
i^
o
i^
o
Split the continuity equation into contributions from transport and local terms:
i
i
TRANSPORT
i
i
LOCAL
i
These operators can be split further: •
split transport into 1-D advective and turbulent transport for
x, y, z
(usually necessary)
split local into chemistry, emissions, deposition (usually not necessary)
Reduces dimensionality of problem
1.
The Eulerian form of the continuity equation is a first-order PDE in4 dimensions. What are suitable boundary conditions for each ofthese dimensions?
1.
Textbooks will often tell you that operator splitting (transport vs.local in the continuity equation) requires time steps that are muchsmaller than the time scales for change in the system, but itactually also works fine for species that are very short-livedrelative to the time step. Error is largest for species that havelifetimes of magnitude comparable to the splitting time step.Explain.
Equation is
conservative:
need to avoid
diffusion or dispersion of features. Also needmass conservation, stability, positivity… •
All schemes involve finite difference approximation of derivatives : order ofapproximation
→
accuracy of solution
Classic schemes: leapfrog, Lax-Wendroff, Crank-Nicholson, upwind, moments… •
Stability requires Courant number
u
t/
x
< 1
… limits size of time step •^
Addressing other requirements (e.g., positivity) introduces non-linearity in advection scheme
i^
i
C
C
u
t
x
Convective cloud(0.1-100 km)
Model grid scale
Modelverticallevels
updraft
entrainment
downdraft
detrainment
Wet convection issubgrid scale in globalmodels and must betreated as a verticalmass exchangeseparate from transportby grid-scale winds.Need info on convectivemass fluxes from themodel meteorologicaldriver.
generally dominates over mean vertical advection
K-diffusion OK for dry convection in boundary layer (small eddies)
Deeper (wet) convection requires non-local convective parameterization
A given aerosol particle is characterized by its size, shape, phases, and chemical composition – large number of variables! •
Measures of aerosol concentrations must be given in some integral form, by summing over all particles present in a given air volume thathave a certain property •
If evolution of the size distribution is not resolved, continuity equation for aerosol species can be applied in same way as for gases •
Simulating the evolution of the aerosol size distribution requires inclusion of nucleation/growth/coagulation terms in
P
i^
and
L
, and size i
characterization either through size bins or moments.
Typical aerosolsize distributionsby volume
nucleation
condensation
coagulation
U
t
U’
t
Transport large number of points with trajectories from input meteorological data base (U) + randomturbulent component (U’) over time steps
t
Points have mass but no volume
Determine local concentrations as the number of points within a given volume •
Nonlinear chemistry requires Eulerian mapping at every time step (semi-Lagrangian)
PROS over Eulerian models:
no Courant number restrictions
no numerical diffusion/dispersion
easily track air parcel histories
invertible with respect to time
CONS:
need very large # points for statistics
inhomogeneous representation of domain
convection is poorly represented
nonlinear chemistry is problematic
position
t
o
position t
o
+
t
Release puffs from point sources and transport them along trajectories,allowing them to gradually dilute by turbulent mixing (“Gaussianplume”) until they reach the Eulerian grid size at which point they mixinto the gridbox
Advantages: resolve subgrid ‘hot spots’ and associated nonlinear processes (chemistry, aerosol growth) within plume •
Difference with Lagrangian approach is that (1) puff has volume as well as
mass, (2) turbulence is deterministic (Gaussian spread) rather than stochastic
S. California fire plumes,Oct. 25 2004
Optimize values of an ensemble of variables (
state vector
) using observations:
THREE MAIN APPLICATIONS FOR ATMOSPHERIC COMPOSITION:1.
Retrieve atmospheric concentrations (
) from observed atmospheric
radiances (
) using a radiative transfer model as forward model
2.
Invert sources (
) from observed atmospheric concentrations (
) using a
CTM as forward model
3.
Construct a continuous field of concentrations (
) by assimilation of sparse
observations (
) using a forecast model (initial-value CTM) as forward model
a priori estimate
a
observation vector
forward model
+
“MAP solution” “optimal estimate”
“retrieval”
ˆ
ˆ
x +
ε
Bayes’theorem
use single measurement used to optimize a single source
a priori
bottom-up estimate
a
Monitoring sitemeasuresconcentration
Forward model gives
“Observational error”
instrument
fwd model
2
2
2
2
a a
Max of
is given by minimum of cost function
2
2
2
2
a a
Solution:
a
a
where
is a
gain factor
2
2
2
2
a
a
(^2)
2
2
1
a
Alternate expression of solution:
(
)
a
y
kx
x
ax
a x
g
where
is an
averaging kernel
solve for
Assume random Gaussian errors, let
be the true value. Bayes’ theorem:
Variance of solution:
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1 n
j^
ij
i
i
Linear forward model:
A cost function defined as
,^
1
1
2
2
1
1
,^
,
n
j^
ij
i
n
m
i^
a i
i
n
i^
j
a i
j
is generally not adequate because it does not account for correlation betweensources or between observations. Need vector-matrix formalism:
1
1
T
T
n
m
Jacobian matrix
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A priori
pdf for
:
Scalar
Vector
2
2
a a
a
1
,
1
,
,
1
,
,^
,
a
a
n
a n
a
n
a n
n
a n
a
1
2 ln
( )
(
)
(
)
T
P
c
a
a
a
x
x
x
S
x
x
1/ 2
(^1) / 2
1
( )
exp[
2
(
)
T
n
a
P
-
a
a
a
x
(x - x ) S
(x - x )]
S
1
(
,...
)
T
n
x
x
x
where
a
is the
a priori
error covariance matrix describing error statistics on (
a
In log space:
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( )
i^
m
y
F x
ε
+
ε
observation
true value
instrument error
fwd model error
observational error
i^
m
ε
=
ε
+
ε
Observational error covariance matrix
1
1
1
var(
)
cov(
,^
)
cov(
,^
)
var(
n )
n
n
S
is the sum of the instrument and fwd model error covariance matrices:
i^
m
ε
ε
ε
S
= S
+ S
How well can the observing system constrain the
true value
of
?
1
2
2 ln
(
)
(
)
(
)
T
P
c
y | x
y
Kx
S
y
Kx
Corresponding pdf, in log space: