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Spatial rainfall mapping from path-averaged rainfall measurements exploiting sparsity

机译:利用稀疏性通过路径平均降雨量测量得出的空间降雨量映射

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In this paper, a method for the estimation of the spatial rainfall distribution over a specified service area from a limited number of path-averaged rainfall measurements is proposed. The aforementioned problem is formulated as a nonnegativity constrained convex optimization problem with priors that influence both sparsity and clustering properties of the spatial rainfall distribution. The spatial covariance matrix is derived from the climatological variogram model and used to construct a basis for the spatial rainfall vector. A proper selection of the representation basis and the priors that directly relate to the spatial properties of the rainfall guarantee an efficient reconstruction with a low compression rate (fewer measurements).
机译:本文提出了一种从有限数量的路径平均降雨量测量值估计指定服务区域上的空间降雨量分布的方法。前述问题被公式化为具有影响空间降雨分布的稀疏性和聚类性的先验的非负约束约束凸优化问题。空间协方差矩阵是从气候变异函数模型中得出的,用于构建空间降雨矢量的基础。正确选择表示基础和与降雨的空间特性直接相关的先验条件,可确保以低压缩率(较少的测量值)进行有效的重建。

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