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Subpixel-scale rainfall variability and the effects on separation of radar and gauge rainfall errors

机译:亚像素级降雨变异性及其对雷达和轨距降雨误差分离的影响

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This paper presents an extended error variance separation method (EEVS) that allows explicit partitioning of the variance of the errors in gauge- and radar-based representations of areal rainfall. The implementation of EEVS demonstrated in this study combines a kriging scheme for estimating areal rainfall from gauges with a sampling method for determining the correlation between the gauge- and radar-related errors. On the basis of this framework, this study examines scale- and pixel-dependent impacts of subpixel-scale rainfall variability on the perceived partitioning of error variance for four conterminous Hydrologic Rainfall Analysis Project ( HRAP) pixels in central Ohio with data from Next-Generation Weather Radar (NEXRAD) stage III product and from 11 collocated rain gauges as input. Application of EEVS for 1998-2001 yields proportional contribution of two error terms for July and October for each HRAP pixel and for two fictitious domains containing the gauges ( 4 and 8 km in size). The results illustrate the importance of considering subpixel variation of spatial correlation and how it varies with the size of domain size, number of gauges, and the subpixel locations of gauges. Further comparisons of error variance separation (EVS) and EEVS across pixels results suggest that accounting for structured variations in the spatial correlation under 8 km might be necessary for more accurate delineation of domain-dependent partitioning of error variance, and especially so for the summer months.
机译:本文提出了一种扩展的误差方差分离方法(EEVS),该方法可以对分区雨量和基于雷达的表示中的误差方差进行显式划分。这项研究中演示的EEVS的实施方案结合了一种用于估计仪表水位降雨的克里金法和一种确定仪表水准与雷达相关误差之间相关性的采样方法。在此框架的基础上,本研究使用来自下一代的数据,研究了俄亥俄州中部四个连续水文降雨分析项目(HRAP)像素的亚像素尺度降雨变化对尺度和像素依赖性的误差方差感知分区的影响。 Weather Radar(NEXRAD)第三阶段产品,并从11个并置的雨量计作为输入。 EEVS在1998-2001年的应用为每个HRAP像素和包含量规的两个虚拟域(大小分别为4和8 km)在7月和10月产生了两个误差项的比例贡献。结果说明了考虑空间相关性的子像素变化的重要性,以及它如何随着域尺寸的大小,量规的数量以及量规的子像素位置而变化。跨像素的误差方差分离(EVS)和EEVS的进一步比较结果表明,可能需要考虑8 km以下空间相关性的结构化变化,以便更准确地描述取决于域的误差方差划分,尤其是在夏季。

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