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Geostatistical Integration of Coarse Resolution Satellite Precipitation Products and Rain Gauge Data to Map Precipitation at Fine Spatial Resolutions

机译:粗分辨率卫星降水产品和雨量计数据的地统计整合,以精细空间分辨率绘制降水图

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This paper investigates the benefits of integrating coarse resolution satellite-derived precipitation estimates with quasi-point rain gauge data for generating a fine spatial resolution precipitation map product. To integrate the two precipitation data sources, a geostatistical downscaling and integration approach is presented that can account for the differences in spatial resolution between data from different supports and adjusts inherent errors in the coarse resolution precipitation estimates. First, coarse resolution precipitation estimates are downscaled at a fine spatial resolution via area-to-point kriging to allow direct comparison with rain gauge data. Second, the downscaled precipitation estimates are integrated with the rain gauge data by multivariate kriging. In particular, errors in the coarse resolution precipitation estimates are adjusted against rain gauge data during this second stage. In this study, simple kriging with local means (SKLM) and kriging with an external drift (KED) are used as multivariate kriging algorithms. For comparative purposes, conditional merging (CM), a frequently-applied method for integrating rain gauge data and radar precipitation, is also employed. From a case study with Tropical Rainfall Measuring Mission (TRMM) 3B43 monthly precipitation products acquired in South Korea from May–October in 2013, we found that the incorporation of TRMM data with rain gauge data did not improve prediction performance when the number of rain gauge data was relatively large. However, the benefit of integrating TRMM and rain gauge data was most striking, regardless of multivariate kriging algorithms, when a small number of rain gauge data was used. These results indicate that the coarse resolution satellite-derived precipitation product would be a useful source for mapping precipitation at a fine spatial resolution if the geostatistical integration approach is applied to areas with sparse rain gauges.
机译:本文研究了将基于粗分辨率卫星的降水估计与准点雨量计数据相集成的好处,以生成精细的空间分辨率降水图产品。为了整合两个降水数据源,提出了一种地统计学的按比例缩小和整合方法,该方法可以解决来自不同支持物的数据之间空间分辨率的差异,并调整粗分辨率降水估算中的固有误差。首先,通过面积到点克里金法以较精细的空间分辨率将粗分辨率的降水量估计值按比例缩小,从而可以直接与雨量计数据进行比较。其次,通过多元克里金法将降尺度的降水估计与雨量计数据相结合。特别是,在此第二阶段,根据雨量计数据调整了粗分辨率降水估算中的误差。在这项研究中,简单的局部均值克里金法(SKLM)和外部漂移的克里金法(KED)被用作多元克里金法。为了进行比较,还采用了条件合并(CM)(一种常用的方法来集成雨量计数据和雷达降水)。从2013年5月至10月在韩国购买的热带雨量测量任务(TRMM)3B43月降水产品的案例研究中,我们发现,当雨量计的数量增加时,将TRMM数据与雨量计数据相结合并不能改善预测性能数据相对较大。但是,在使用少量雨量计数据的情况下,无论采用多变量克里金法,将TRMM和雨量计数据集成在一起的好处最为明显。这些结果表明,如果将地统计整合方法应用于雨量稀疏地区,则粗分辨率的卫星降水产品将是有用的资料,用于以精细的空间分辨率绘制降水。

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