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A nonparametric statistical technique for combining global precipitation datasets: development and hydrological evaluation over the Iberian Peninsula

机译:用于组合全球降水数据集的非参数统计技术:伊比利亚半岛的发展与水文评价

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This study investigates the use of a nonparametric, tree-based model, quantile regression forests (QRF), for combining multiple global precipitation datasets and characterizing the uncertainty of the combined product. We used the Iberian Peninsula as the study area, with a study period spanning 11 years (2000-2010). Inputs to the QRF model included three satellite precipitation products, CMORPH, PERSIANN, and 3B42 (V7); an atmospheric reanalysis precipitation and air temperature dataset; satellite-derived nearsurface daily soil moisture data; and a terrain elevation dataset. We calibrated the QRF model for two seasons and two terrain elevation categories and used it to generate ensemble for these conditions. Evaluation of the combined product was based on a high-resolution, ground-reference precipitation dataset (SAFRAN) available at 5 km1 h(-1) resolution. Furthermore, to evaluate relative improvements and the overall impact of the combined product in hydrological response, we used the generated ensemble to force a distributed hydrological model (the SURFEX land surface model and the RAPID river routing scheme) and compared its streamflow simulation results with the corresponding simulations from the individual global precipitation and reference datasets. We concluded that the proposed technique could generate realizations that successfully encapsulate the reference precipitation and provide significant improvement in streamflow simulations, with reduction in systematic and random error on the order of 20-99 and 44-88 %, respectively, when considering the ensemble mean.
机译:本研究调查了分位数回归森林(QRF)这一基于树的非参数模型的使用,用于组合多个全球降水数据集,并描述组合产品的不确定性。我们以伊比利亚半岛为研究区域,研究周期为11年(2000-2010)。QRF模型的输入包括三个卫星降水产品:CMORPH、波斯和3B42(V7);大气再分析降水和气温数据集;卫星获取的近地表每日土壤水分数据;以及地形高程数据集。我们校准了两个季节和两个地形高程类别的QRF模型,并使用它生成这些条件下的集合。组合产品的评估基于5 km1 h(-1)分辨率的高分辨率地面参考降水数据集(SAFRAN)。此外,为了评估组合产品在水文响应中的相对改进和总体影响,我们使用生成的集合强制建立分布式水文模型(SURFEX陆面模型和快速河流路由方案),并将其径流模拟结果与来自单个全球降水和参考数据集的相应模拟进行比较。我们得出结论,当考虑集合平均值时,所提出的技术可以产生成功封装参考降水量的实现,并在径流模拟中提供显著改进,系统误差和随机误差分别减少20-99%和44-88%。

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