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首页> 外文期刊>Biometrika >Aggregation-cokriging for highly multivariate spatial data
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Aggregation-cokriging for highly multivariate spatial data

机译:高度聚合的高度多元空间数据

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Best linear unbiased prediction of spatially correlated multivariate random processes, often called cokriging in geostatistics, requires the solution of a large linear system based on the covariance and cross-covariance matrix of the observations. For many problems of practical interest, it is impossible to solve the linear system with direct methods. We propose an efficient linear unbiased predictor based on a linear aggregation of the covariables. The primary variable together with this single meta-covariable is used to perform cokriging. We discuss the optimality of the approach under different covariance structures, and use it to create reanalysis type high-resolution historical temperature fields.
机译:对空间相关的多元随机过程的最佳线性无偏预测(在地统计学中通常称为协克里金法)要求基于观测值的协方差和互协方差矩阵求解大型线性系统。对于许多具有实际意义的问题,不可能用直接方法求解线性系统。我们提出了基于协变量线性聚集的有效线性无偏预测器。主变量与该单个元协变量一起用于执行协同克里格。我们讨论了在不同协方差结构下该方法的最优性,并使用它来创建重新分析类型的高分辨率历史温度场。

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