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Advances in LAM 3D-VAR formulation

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Through various experiments, a drawback of biperiodic increments has arisen : ... Aim: comparing DA and BK. comparing BO and BOK. 2.2 Large scale update - evaluation ... – PowerPoint PPT presentation

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Title: Advances in LAM 3D-VAR formulation


1
Advances in LAM 3D-VAR formulation
  • Vincent GUIDARD
  • Claude FISCHER
  • Météo-France, CNRM/GMAP

2
Introduction
  • Through various experiments, a drawback of
    biperiodic increments has arisen  wrapping
    around  analysis increments

3
Introduction
4
Introduction
  • Through various experiments, a drawback of
    biperiodic increments has arisen  wrapping
    around  analysis increments? Controlling the
    lengthscale of the correlation functions is
    necessary compact support
  • Introduction of a large-scale information in the
    LAM analysis to let the increments due to the
    observations be of mesoscale

5
1.1 Compact support - definition
  • Aim Reducing the lengthscale of structure
    functions
  • The COmpactly SUpported (COSU) correlation
    functions are obtained through a gridpoint
    multiplication by a cosine-shape mask
    function.The mask should be applied to the
    square root of the gridpoint correlations
    (Gaspari and Cohn, 1999)

6
1.1 Compact support - definition
  • Steps to modify the power spectrum
  • Power spectrum modal variances
  • Fill a 2D spectral array from the 1D square root
    of the modal variances
  • Inverse bi-Fourier transform mask the gridpoint
    structure direct bi-Fourier transform
  • Collect isotropically and square to obtain
    modified modal variances
  • Modal variances power spectrum

7
1.2 Compact support 1D model
Gridpoint Auto- Correlations T 22
8
1.2 Compact support 1D model
Power Spectrum T 22
9
1.2 Compact support 1D model
Analysis
10
1.3 Compact support ALADIN
  • Univariate approach

Horizontal covariances COSU 100km-300km
Original B
11
1.3 Compact support ALADIN
  • Multivariate approach
  • The multivariate formulation (Berre,
    2000)u is the umbalanced part of the
    errorH is the horizontal balance operator

12
1.3 Compact support ALADIN
  • COSU Horizontal autocorrelations Vertical
    cross-correlations and horizontal balance
    operator not modified
  • Whatever the distance of zeroing, results are
     worse  than with the original B.
  • Explanation the main part of the (temperature)
    increment is balanced, while only the horizontal
    correlations for z are COSU, but not for Hz.

13
1.3 Compact support ALADIN
  • Cure 1 a modification of the z power spectrum
    in order to have COSU correlations for Hz ? same
    results as the original B.
  • Cure 2 another solution is to compactly support
    the horizontal balance operator

14
1.3 Compact support ALADIN
15
1.3 Compact support conclusion
  • Single observation
  • Very efficient technique in univariate case
  • Needs drastic measures (COSU horizontal balance)
    to be efficient in multivariate case
  • Full observation set
  • No impact, even with drastic measures
  • Further research is necessary
  • Problems possibly due to a large scale error
    which this mesoscale analysis tries to reduce ?
    use of another source of information for large
    scales

16
2.1  Large scale  cost-function
  • Aim input a large scale information in the LAM
    3D-VAR.
  • The large scale information is the analysis of
    the global model (ARPEGE) put to a LAM low
    resolution geometry
  • Thanks to classical hypotheses, plus assuming
    that the global analysis error and the LAM
    background error are NOT correlated, we simply
    add a new term to the cost function

17
2.1  Large scale  cost-function
  • J(x) Jb(x) Jo(x) Jk(x), where
  • H1 global ? LAM low resolutionH2 LAM
    high resolution ? LAM low res. V  large
    scale  error covariancesxAA global analysis

18
2.2 Large scale update - evaluation
  • 1D Shallow Water  global  model (I. Gospodinov)
    LAM version with Davies coupling (P.
    Termonia)Both spectral models
  • 1D gridpoint analyses implemented
  • Using LAM background and observation (JbJo)? BO
  • Using LAM background and global analysis (JbJk)
    ? BK
  • Using all information (Jb JoJk) ? BOKPlus
    dynamical adaptation ? DA
  • Aim comparing DA and BK comparing BO and BOK

19
2.2 Large scale update - evaluation
  • Dynamical Adaptation versus BK

Statistically (Fisher and Student tests on bias
and RMS) No difference between DA and BK
LAM background
BK analysis
DA
global analysis
truth
20
2.2 Large scale update - evaluation
  • BO versus BOK observation over all the domain

Statistically No difference between BO and BOK
LAM background
BOK analysis
BO analysis
global analysis
truth
observation

21
2.2 Large scale update - evaluation
  • BO versus BOK obs. over a part of the domain

Statistically BOK better than BO
LAM background
BOK analysis
BO analysis
global analysis
truth
observation

22
2.3 Large scale update - conclusion
  • The large scale information seems useful only in
    border-line cases, in the Shallow Water model
  • Next steps
  • Evaluation in a Burger model
  • Ensemble evaluation of the statistics in
    ARPEGE-ALADIN (based on the work of Loïk Berre,
    Margarida Belo-Pereira and Simona Stefanescu)
  • Implementation in ALADIN
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