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A new downscaling-integration framework for high-resolution monthly precipitation estimates: Combining rain gauge observations, satellite-derived precipitation data and geographical ancillary data

机译:用于高分辨率月度降水估算的新次标集成框架:结合雨量仪观测,卫星衍生的降水数据和地理辅助数据

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Deriving high quality precipitation estimates at high spatial resolution is of prime importance for many hydrological, meteorological, and environmental investigations. Rain gauge observations and satellite-derived precipitation data are two main sources of precipitation estimates. Gauge observations are accurate and reliable, but are heavily point-based and sparse in areas of rugged or complex terrains. Satellite-derived precipitation products can cover large areas, but they are generally characterized by inherent bias. To optimize the use of both datasets, we propose in this paper, a downscaling-integration framework to generate high quality monthly precipitation datasets at 1 km spatial resolution by merging rain gauge observations and TRMM 3B43 products. Firstly, an area-to-point kriging (ATPK) approach is used to downscale the original TRMM product to 1 km, so as to ensure a fair comparison with rain gauge data. Then, the downscaled TRMM precipitation datasets are integrated with the gauge observations using geographically weighted regression kriging (GWRK). The geographical factors (i.e. longitude, latitude and elevation) are also used as auxiliary variables in the GWRK model. Applying this approach to an experiment conducted at the middle and lower reaches of the Yangtze River in China from 2001 to 2014 shows that: (1) the downscaled monthly TRMM precipitation data by ATPK are more accurate than the original TRMM estimates; (2) the GWRK model employing the downscaled TRMM precipitation data and geographical factors provides better monthly precipitation estimates than the conventional ordinary kriging (OK) interpolation and the commonly used merging methods (i.e. geographical difference analysis, GDA and kriging with extemal drift, KED); (3) the GWRK method reduces the influence of the inaccuracy (bias) of satellite-derived precipitation data on the precipitation estimates compared to GDA. The approach presented in this study has provided an efficient alternat
机译:在高空间分辨率下获得高质量降水估算对于许多水文,气象和环境调查具有重要意义。雨量仪观测和卫星衍生的降水数据是降水估计的两个主要来源。仪表观测是准确可靠的,但在坚固的或复杂地形的区域的基于点和稀疏。卫星衍生的降水量可以覆盖大面积,但它们通常具有固有的偏差特征。为了优化两个数据集的使用,我们提出了一种缩小集成框架,通过合并雨量测量观测和TRMM 3B43产品,以1公里的空间分辨率产生高质量的每月降水数据集。首先,将原始的TRMM产品缩小到1公里的区域到点Kriging(ATPK)方法,以确保与雨量计数据进行公平比较。然后,使用地理加权回归克里格(GWRK)与尺寸的TRMM降水数据集整合在仪表观测中。地理因素(即经度,纬度和高度)也用作GWRK模型中的辅助变量。从2001年至2014年将这种方法应用于在中国长江中下游进行的实验表明:(1)ATPK的每月TRMM降水数据比原来的TRMM估计更准确; (2)采用较低的TRMM降水数据和地理因素的GWRK模型提供比传统的普通克里格(OK)插值和常用合并方法(即,GDA和Kriging与超大漂移,KED的地理差异分析,GDA和Kriging)提供更好的月度降水估算。 ; (3)GWRK方法减少了与GDA相比卫星衍生的降水数据的不准确(偏差)对降水估计的影响。本研究介绍的方法提供了一个有效的交替

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