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Published byGabriella Welch Modified over 6 years ago
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Wavelets as a framework for describing inhomogenity and anisotropy
Alex Deckmyn Tomas Landelius Anders Höglund SMHI-OH
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Variational data assimilation
Minimization of a cost function SMHI-OH
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The importance of the B matrix
B contains the background error covariances: Weights background state against observations. Helps to impose balance to the assimilated fields. Smoothes out the observational information. SMHI-OH
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Problems with the B matrix
It is HUGE: Impossible to store explicitly. Impossible to fully determine. SMHI-OH
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Optimal interpolation
Direct local solution to 3D-VAR Local models of B that differ for different locations. SMHI-OH
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Need a global model for B
Variable substitution Fourier/Wavelet transform SMHI-OH
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The Fourier transform + Fast implementation O(n log(n)).
- Homogenous; same for all locations. - Boundary problems; periodic. SMHI-OH
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Tiling the time-frequency plane
Gridpoint Fourier Wavelet STFT SMHI-OH
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Discrete wavelet transform
Some problems with the DWT - Oscillations near singularities. - Shift variance. - Sensitive to processing. - Lack of directionality. SMHI-OH
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Dual tree complex wavelet transform
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The wavelet transform + Very fast implementation O(n) Some anisotropy and inhomogenity Boundary problem can be avoided. SMHI-OH
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Estimating D Orthogonal T Non-orthogonal T SMHI-OH
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Work status and issues ALADIN implementation - Wavelet transform v0.1 (cy30t1_wavbec) Software for estimation of D - FESTATWAV assumes orthogonal T - Treatment of vertical correlations Design of boundary wavelets SMHI-OH
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