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首页> 外文期刊>Journal of hydrometeorology >Copula-derived observation operators for assimilating TMI and AMSR-E retrieved soil moisture into land surface models
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Copula-derived observation operators for assimilating TMI and AMSR-E retrieved soil moisture into land surface models

机译:由Copula派生的观测算子将TMI和AMSR-E吸收的土壤水分吸收到地表模型中

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摘要

Assimilating soil moisture from satellite remote sensing into land surface models (LSMs) has potential for improving model predictions by providing real-time information at large scales. However, the majority of the research demonstrating this potential has been limited to datasets based on either airborne data or synthetic observations. The limited availability of satellite-retrieved soil moisture and the observed qualitative difference between satellite-retrieved and modeled soil moisture has posed challenges in demonstrating the potential over large regions in actual applications. Comparing modeled and satellite-retrieved soil moisture fields shows systematic differences between their mean values and between their dynamic ranges, and these systematic differences vary with satellite sensors, retrieval algorithms, and LSMs. This investigation focuses on generating observation operators for assimilating soil moisture into LSMs using a number of satellite-model combinations. The remotely sensed soil moisture products come from the Tropical Rainfall Measuring Mission (TRMM) Microwave Imager (TMI) and the NASA/Earth Observing System (EOS) Advanced Microwave Scanning Radiometer (AMSR-E). The soil moisture model predictions are from the Variable Infiltration Capacity (VIC) hydrological model; the 40-yr European Centre for Medium-Range Weather Forecasts (ECMWF) Re-Analysis (ERA-40); and the NCEP North American Regional Reanalysis (NARR). For this analysis, the satellite and model data are over the southern Great Plains region from 1998 to 2003 (1998-2002 for ERA-40). Previous work on observation operators used the matching of cumulative distributions to transform satellite-retrieved soil moisture into modeled soil moisture, which implied perfect correlations between the ranked values. In this paper, a bivariate statistical approach, based on copula distributions, is employed for representing the joint distribution between retrieved and modeled soil moisture, allowing for a quantitative estimation of the uncertainty in modeled soil moisture when merged with a satellite retrieval. The conditional probability distribution of model-based soil moisture conditioned on a satellite retrieval forms the basis for the soil moisture observation operator. The variance of these conditional distributions for different retrieval algorithms, LSMs, and locations provides an indication of the information content of satellite retrievals in assimilation. Results show that the operators vary by season and by land surface model, with the satellite retrievals providing more information in summer [July-August (JJA)] and fall [September-November (SON)] than winter [December-February (DJF)] or spring [March-May (MAM)] seasons. Also, the results indicate that the value of satellite-retrieved soil moisture is most useful to VIC, followed by ERA-40 and then NARR.
机译:通过将卫星遥感中的土壤水分吸收到陆地表面模型(LSM)中,可以通过大规模提供实时信息来改善模型预测。然而,大多数证明这种潜力的研究仅限于基于航空数据或综合观测的数据集。卫星ret回土壤水分的有限供应以及观测到的卫星-回土壤湿度和模拟土壤水分之间的质量差异,在展示实际应用中的大区域潜力方面带来了挑战。比较建模的和卫星获取的土壤湿度场,可以发现其平均值之间以及动态范围之间的系统差异,并且这些系统差异会随卫星传感器,检索算法和LSM的不同而变化。这项研究的重点是使用多种卫星模型组合生成观察员,将土壤水分吸收到LSM中。遥感的土壤水分产品来自热带降雨测量任务(TRMM)微波成像仪(TMI)和NASA /地球观测系统(EOS)先进的微波扫描辐射仪(AMSR-E)。土壤水分模型的预测来自可变渗透能力(VIC)水文模型。 40年的欧洲中型天气预报中心(ECMWF)重新分析(ERA-40);以及NCEP北美区域再分析(NARR)。为了进行此分析,卫星和模型数据是1998年至2003年间大平原南部地区的数据(ERA-40为1998-2002年)。先前关于观测算子的工作是使用累积分布的匹配将卫星检索的土壤水分转换为模型土壤水分,这暗示了排名值之间的完美关联。在本文中,采用基于copula分布的双变量统计方法来表示取回的土壤水分和模拟土壤水分之间的联合分布,从而可以定量估算与卫星取回合并时模拟土壤水分的不确定性。基于卫星检索的基于模型的土壤水分的条件概率分布为土壤水分观测算子提供了基础。对于不同的检索算法,LSM和位置,这些条件分布的方差表示同化中卫星检索的信息内容。结果表明,运营商随季节和地面模型的不同而变化,卫星检索提供的信息在夏季[7月-8月(JJA)]和秋季[9月-11月(SON)]比冬季[12月-2月(DJF))更多。 ]或春季[3月-5月(MAM)]季节。同样,结果表明,卫星滴灌的土壤水分值对VIC最有用,其次是ERA-40,然后是NARR。

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