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首页> 外文期刊>Journal of hydrometeorology >Combining Datasets of Satellite-Retrieved Products. Part I: Methodology and Water Budget Closure
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Combining Datasets of Satellite-Retrieved Products. Part I: Methodology and Water Budget Closure

机译:组合卫星检索产品的数据集。第一部分:方法和水费预算的关闭

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This study addresses in general terms the problem of the optimal combination of multiple observation datasets. Only satellite-retrieved geophysical parameter datasets are considered here (not the raw satellite observations). This study focuses on the terrestrial water cycle and presents methodologies to obtain a coherent dataset of four water cycle key components: precipitation, evapotranspiration, runoff, and terrestrial water storage. Various innovative "integration" methodologies are introduced: simple weighting (SW), constrained linear (CL), optimal interpolation (OI), and neural networks (NN). The term "integration" will be used here, not "assimilation," as no model will be included in the data fusion process. A simple postprocessing filtering (PF) step can be used to impose the water cycle budget closure after the integration method. It is shown that this constraint actually improves the estimation of the water cycle components. The integration techniques are tested using real observation data over the Mississippi and Niger basins from satellite and in situ measurements. A Monte Carlo experiment with a synthetic uncertainty perturbation model is used to measure the ability of the SW, OI, and NN, with or without the PF step, to retrieve the four water cycle components. Once the PF closure constraint is added, the methodologies have equivalent accuracies. The need for these types of methodologies should increase in the future since multiple observation datasets are now available and the climate community needs to combine them into a unique, optimal, and coherent dataset of multiple parameters. A companion paper will test these methodologies on satellite observation datasets at the basin and global scales.
机译:这项研究大体上解决了多个观测数据集的最佳组合问题。这里仅考虑卫星获取的地球物理参数数据集(而不是原始卫星观测值)。这项研究的重点是陆地水循环,并提出了获得四个水循环关键组成部分的连贯数据集的方法:降水,蒸散,径流和陆地水存储。引入了各种创新的“积分”方法:简单加权(SW),约束线性(CL),最优插值(OI)和神经网络(NN)。这里将使用术语“集成”,而不是“同化”,因为数据融合过程中将不包括任何模型。在集成方法之后,可以使用简单的后处理过滤(PF)步骤强加水循环预算。结果表明,该约束实际上改善了水循环分量的估计。使用来自密西西比州和尼日尔盆地的实际观测数据,通过卫星和现场测量对集成技术进行了测试。带有综合不确定性摄动模型的蒙特卡洛实验用于测量SW,OI和NN(带有或不带有PF步骤)检索四个水循环分量的能力。一旦添加了PF封闭约束,这些方法就具有同等的准确性。由于现在可以使用多个观测数据集,并且气候界需要将它们组合成多个参数的唯一,最优且一致的数据集,因此对这类方法的需求在未来会增加。伴随论文将在流域和全球范围内的卫星观测数据集上测试这些方法。

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