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Where the Hessian matrix is. Finding the solution. New ray of data. First guess of x ... where the Hessian is. A=HTR-1H B-1. Calculate error in retrieval ... – PowerPoint PPT presentation

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Title: Robin Hogan


1
How to distinguish rain from hail using radarA
cunning, variational method
  • Robin Hogan
  • Last Minute Productions Inc.

2
Outline
  • Increasingly in active remote sensing (radar and
    lidar), many instruments are being deployed
    together, and individual instruments may measure
    many variables
  • We want to retrieve an optimum estimate of the
    state of the atmosphere that is consistent with
    all the measurements
  • But most algorithms use at most only two
    instruments/variables and dont take proper
    account of instrumental errors
  • The variational approach (a.k.a. optimal
    estimation theory) is standard in data
    assimilation and passive sounding, but has only
    recently been applied to radar retrieval problems
  • It is mathematically rigorous and takes full
    account of errors
  • Straightforward to add extra constraints and
    extra instruments
  • In this talk, it will be applied to polarization
    radar measurements of rain rate and hail
    intensity
  • Met Office recently commissioned new polarization
    radar
  • A variational retrieval is a very useful step
    towards assimilation of polarization data

3
Passive sensing
  • Radiance at a particular wavelength has
    contributions from large range of heights
  • A variational method is used to retrieve the
    temperature profile

4
Chilbolton 3GHz radar Z
  • We need to retrieve rain rate for accurate flood
    forecasts
  • Conventional radar estimates rain-rate R from
    radar reflectivity factor Z using ZaRb
  • Around a factor of 2 error in retrievals due to
    variations in raindrop size and number
    concentration
  • Attenuation through heavy rain must be corrected
    for, but gate-by-gate methods are intrinsically
    unstable
  • Hail contamination can lead to large
    overestimates in rain rate

5
Chilbolton 3GHz radar Zdr
  • Differential reflectivity Zdr is a measure of
    drop shape, and hence drop size Zdr 10 log10
    (ZH /ZV)
  • In principle allows rain rate to be retrieved to
    25
  • Can assist in correction for attenuation
  • But
  • Too noisy to use at each range-gate
  • Needs to be accurately calibrated
  • Degraded by hail

Drop
1 mm
ZV
3 mm
ZH
4.5 mm
ZDR 0 dB (ZH ZV)
  • Drop shape is directly related to drop size
    larger drops are less spherical
  • Hence the combination of Z and ZDR can provide
    rain rate to 25.

ZDR 1.5 dB (ZH gt ZV)
ZDR 3 dB (ZH gtgt ZV)
6
Chilbolton 3GHz radar fdp
  • Differential phase shift fdp is a propagation
    effect caused by the difference in speed of the H
    and V waves through oblate drops
  • Can use to estimate attenuation
  • Calibration not required
  • Low sensitivity to hail
  • But
  • Need high rain rate
  • Low resolution information need to take
    derivative but far too noisy to use at each
    gate derivative can be negative!
  • How can we make the best use of the Zdr and fdp
    information?

7
Using Zdr and fdp for rain
  • Useful at low and high R
  • Differential attenuation allows accurate
    attenuation correction but difficult to implement
  • Need accurate calibration
  • Too noisy at each gate
  • Degraded by hail

Zdr
  • Calibration not required
  • Low sensitivity to hail
  • Stable but inaccurate attenuation correction
  • Need high R to use
  • Must take derivative far too noisy at each gate

fdp
8
Simple Zdr method
Observations
  • Use Zdr at each gate to infer a in ZaR1.5
  • Measurement noise feeds through to retrieval
  • Noise much worse in operational radars

Noisy or Negative Zdr
9
Variational method
  • Start with a first guess of coefficient a in
    ZaR1.5
  • Z/R implies a drop size use this in a forward
    model to predict the observations of Zdr and fdp
  • Include all the relevant physics, such as
    attenuation etc.
  • Compare observations with forward-model values,
    and refine a by minimizing a cost function

Smoothness constraints
Observational errors are explicitly included, and
the solution is weighted accordingly
For a sensible solution at low rainrate, add an a
priori constraint on coefficient a
10
How do we solve this?
  • The best estimate of x minimizes a cost function
  • At minimum of J, dJ/dx0, which leads to
  • The least-squares solution is simply a weighted
    average of m and b, weighting each by the inverse
    of its error variance
  • Can also be written in terms of difference of m
    and b from initial guess xi
  • Generalize suppose I have two estimates of
    variable x
  • m with error sm (from measurements)
  • b with error sb (background or a priori
    knowledge of the PDF of x)

11
The Gauss-Newton method
  • We often dont directly observe the variable we
    want to retrieve, but instead some related
    quantity y (e.g. we observe Zdr and fdp but not
    a) so the cost function becomes
  • H(x) is the forward model predicting the
    observations y from state x and may be complex
    and non-analytic difficult to minimize J
  • Solution linearize forward model about a first
    guess xi
  • The x corresponding to yH(x), is equivalent
    to a direct measurement m
  • with error

y
Observation y
x
xi
xi1
xi2
(or m)
12
  • Substitute into prev. equation
  • If it is straightforward to calculate ?y/?x then
    iterate this formula to find the optimum x
  • If we have many observations and many variables
    to retrieve then write this in matrix form
  • The matrices and vectors are defined by

Where the Hessian matrix is
State vector, a priori vector and observation
vector
Error covariance matrices of observations and
background
The Jacobian
13
Finding the solution
New ray of data First guess of x
  • In this problem, the observation vector y and
    state vector x are

Forward model Predict measurements y and Jacobian
H from state vector x using forward model H(x)
Compare measurements to forward model Has the
solution converged? ?2 convergence test
No
Gauss-Newton iteration step Predict new state
vector xi1 xiA-1HTR-1y-H(xi)
B-1(b-xi) where the Hessian is AHTR-1HB-1
Yes
Calculate error in retrieval The solution error
covariance matrix is SA-1
Proceed to next ray
14
First guess of a
First guess a 200 everywhere
Rainrate
  • Use difference between the observations and
    forward model to predict new state vector (i.e.
    values of a), and iterate

15
Final iteration
  • Zdr and fdp are well fitted by forward model at
    final iteration of minimization of cost function

Rainrate
  • Retrieved coefficient a is forced to vary
    smoothly
  • Prevents random noise in measurements feeding
    through into retrieval (which occurs in the
    simple Zdr method)

16
A ray of data
  • Zdr and fdp are well fitted by the forward model
    at the final iteration of the minimization of the
    cost function
  • The scheme also reports the error in the
    retrieved values
  • Retrieved coefficient a is forced to vary
    smoothly
  • Represented by cubic spline basis functions
  • Prevents random noise in the measurements feeding
    through into the retrieval

17
Enforcing smoothness
  • In range cubic-spline basis functions
  • Rather than state vector x containing a at
    every range gate, it is the amplitude of smaller
    number of basis functions
  • Cubic splines ? solution is continuous in itself,
    its first and second derivatives
  • Fewer elements in x ? more efficient!

Representing a 50-point function by 10 control
points
  • In azimuth Two-pass Kalman smoother
  • First pass use one ray as a constraint on the
    retrieval at the next (a bit like an a priori)
  • Second pass repeat in the reverse direction,
    constraining each ray both by the retrieval at
    the previous ray, and by the first-pass retrieval
    from the ray on the other side

18
Enforcing smoothness 1
  • Cubic-spline basis functions
  • Let state vector x contain the amplitudes of a
    set of basis functions
  • Cubic splines ensure that the solution is
    continuous in itself and its first and second
    derivatives
  • Fewer elements in x ? more efficient!

Forward model Convert state vector to high
resolution xhrWx Predict measurements y and
high-resolution Jacobian Hhr from xhr using
forward model H(xhr) Convert Jacobian to low
resolution HHhrW
Representing a 50-point function by 10 control
points
The weighting matrix
19
Enforcing smoothness 2
  • Background error covariance matrix
  • To smooth beyond the range of individual basis
    functions, recognise that errors in the a priori
    estimate are correlated
  • Add off-diagonal elements to B assuming an
    exponential decay of the correlations with range
  • The retrieved a now doesnt return immediately to
    the a priori value in low rain rates
  • Kalman smoother in azimuth
  • Each ray is retrieved separately, so how do we
    ensure smoothness in azimuth as well?
  • Two-pass solution
  • First pass use one ray as a constraint on the
    retrieval at the next (a bit like an a priori)
  • Second pass repeat in the reverse direction,
    constraining each ray both by the retrieval at
    the previous ray, and by the first-pass retrieval
    from the ray on the other side

20
Full scan from Chilbolton
  • Observations
  • Retrieval
  • Note validation required!

Forward-model values at final iteration are
essentially least-squares fits to the
observations, but without instrument noise
21
Response to observational errors
  • Nominal Zdr error of 0.2 dB Additional
    random error of 1 dB

22
What if we use only Zdr or fdp ?
Retrieved a
Retrieval error
Zdr and fdp
  • Very similar retrievals in moderate rain rates,
    much more useful information obtained from Zdr
    than fdp

Zdr only
Where observations provide no information,
retrieval tends to a priori value (and its error)
fdp only
fdp only useful where there is appreciable
gradient with range
23
Heavy rain andhail
Difficult case differential attenuation of 1 dB
and differential phase shift of 80º
  • Observations
  • Retrieval

24
How is hail retrieved?
  • Hail is nearly spherical
  • High Z but much lower Zdr than would get for rain
  • Forward model cannot match both Zdr and fdp
  • First pass of the algorithm
  • Increase error on Zdr so that rain information
    comes from fdp
  • Hail is where Zdrfwd-Zdr gt 1.5 dB and Z gt 35 dBZ
  • Second pass of algorithm
  • Use original Zdr error
  • At each hail gate, retrieve the fraction of the
    measured Z that is due to hail, as well as a.
  • Now the retrieval can match both Zdr and fdp

25
Distribution of hail
Retrieved a
Retrieval error
Retrieved hail fraction
  • Retrieved rain rate much lower in hail regions
    high Z no longer attributed to rain
  • Can avoid false-alarm flood warnings
  • Use Twomey method for smoothness of hail retrieval

26
Enforcing smoothness 3
  • Twomey matrix, for when we have no useful a
    priori information
  • Add a term to the cost function to penalize
    curvature in the solution ld2x/dr2 (where r is
    range and l is a smoothing coefficient)
  • Implemented by adding Twomey matrix T to the
    matrix equations

27
Summary
  • New scheme achieves a seamless transition
    between the following separate algorithms
  • Drizzle. Zdr and fdp are both zero use a-priori
    a coefficient
  • Light rain. Useful information in Zdr only
    retrieve a smoothly varying a field (Illingworth
    and Thompson 2005)
  • Heavy rain. Use fdp as well (e.g. Testud et al.
    2000), but weight the Zdr and fdp information
    according to their errors
  • Weak attenuation. Use fdp to estimate attenuation
    (Holt 1988)
  • Strong attenuation. Use differential attenuation,
    measured by negative Zdr at far end of ray
    (Smyth and Illingworth 1998)
  • Hail occurrence. Identify by inconsistency
    between Zdr and fdp measurements (Smyth et al.
    1999)
  • Rain coexisting with hail. Estimate rain-rate in
    hail regions from fdp alone (Sachidananda and
    Zrnic 1987)
  • Could be applied to new Met Office polarization
    radars
  • Testing required higher frequency ? higher
    attenuation!

Hogan (2007, J. Appl. Meteorol. Climatology)
28
Conclusions and ongoing work
  • Variational methods have been described for
    retrieving cloud, rain and hail, from combined
    active and passive sensors
  • Appropriate choice of state vector and smoothness
    constraints ensures the retrievals are accurate
    and efficient
  • Could provide the basis for cloud/rain data
    assimilation
  • Ongoing work cloud
  • Test radiance part of cloud retrieval using
    geostationary-satellite radiances from
    Meteosat/SEVIRI above ground-based radar lidar
  • Retrieve properties of liquid-water layers,
    drizzle and aerosol
  • Incorporate microwave radiances for deep
    precipitating clouds
  • Apply to A-train data and validate using in-situ
    underflights
  • Use to evaluate forecast/climate models
  • Quantify radiative errors in representation of
    different sorts of cloud
  • Ongoing work rain
  • Validate the retrieved drop-size information,
    e.g. using a distrometer
  • Apply to operational C-band (5.6 GHz) radars
    more attenuation!
  • Apply to other radar problems, e.g. the radar
    refractivity method
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