Downscaling Satellite Precipitation with Emphasis on Extremes: A Variational ℓ1-Norm Regularization in the Derivative Domain

被引:0
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作者
E. Foufoula-Georgiou
A. M. Ebtehaj
S. Q. Zhang
A. Y. Hou
机构
[1] University of Minnesota,Saint Anthony Falls Laboratory, Department of Civil Engineering
[2] University of Minnesota,Saint Anthony Falls Laboratory, Department of Civil Engineering, School of Mathematics
[3] NASA Goddard Space Flight Center,undefined
来源
Surveys in Geophysics | 2014年 / 35卷
关键词
Sparsity; Inverse problems; ℓ; -norm regularization; Non-smooth convex optimization; Generalized Gaussian density; Extremes; Hurricanes;
D O I
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学科分类号
摘要
The increasing availability of precipitation observations from space, e.g., from the Tropical Rainfall Measuring Mission (TRMM) and the forthcoming Global Precipitation Measuring (GPM) Mission, has fueled renewed interest in developing frameworks for downscaling and multi-sensor data fusion that can handle large data sets in computationally efficient ways while optimally reproducing desired properties of the underlying rainfall fields. Of special interest is the reproduction of extreme precipitation intensities and gradients, as these are directly relevant to hazard prediction. In this paper, we present a new formalism for downscaling satellite precipitation observations, which explicitly allows for the preservation of some key geometrical and statistical properties of spatial precipitation. These include sharp intensity gradients (due to high-intensity regions embedded within lower-intensity areas), coherent spatial structures (due to regions of slowly varying rainfall), and thicker-than-Gaussian tails of precipitation gradients and intensities. Specifically, we pose the downscaling problem as a discrete inverse problem and solve it via a regularized variational approach (variational downscaling) where the regularization term is selected to impose the desired smoothness in the solution while allowing for some steep gradients (called ℓ1-norm or total variation regularization). We demonstrate the duality between this geometrically inspired solution and its Bayesian statistical interpretation, which is equivalent to assuming a Laplace prior distribution for the precipitation intensities in the derivative (wavelet) space. When the observation operator is not known, we discuss the effect of its misspecification and explore a previously proposed dictionary-based sparse inverse downscaling methodology to indirectly learn the observation operator from a data base of coincidental high- and low-resolution observations. The proposed method and ideas are illustrated in case studies featuring the downscaling of a hurricane precipitation field.
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页码:765 / 783
页数:18
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  • [1] Downscaling Satellite Precipitation with Emphasis on Extremes: A Variational l1-Norm Regularization in the Derivative Domain
    Foufoula-Georgiou, E.
    Ebtehaj, A. M.
    Zhang, S. Q.
    Hou, A. Y.
    SURVEYS IN GEOPHYSICS, 2014, 35 (03) : 765 - 783