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Developing a dual assimilation approach for thermal infrared and passive microwave soil moisture retrievals.

机译:开发用于热红外和被动微波土壤水分回收的双重同化方法。

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摘要

Soil moisture plays a vital role in the partitioning of sensible and latent heat fluxes in the surface energy budget and the lack of a dense spatial and temporal network of ground-based observations provides a challenge to the initialization of the true soil moisture state in numerical weather prediction simulations. The retrieval of soil moisture using observations from both satellite-based thermal-infrared (TIR) and passive microwave (PM) sensors has been developed (Anderson et al., 2007; Hain et al., 2009; Jackson, 1993; Njoku et al., 2003). The ability of the TIR and microwave observations to diagnose soil moisture conditions within different layers of the soil profile provides an opportunity to use each in a synergistic data assimilation approach towards the goal of diagnosing the true soil moisture state from surface to root-zone.;TIR and PM retrievals of soil moisture are compared to soil moisture estimates provided by a retrospective Land Information System (LIS) simulation using the NOAH LSM during the time period of 2003--2008. The TIR-based soil moisture product is provided by a retrieval of soil moisture associated with surface flux estimates from the Atmosphere-Land-Exchange-Inversion (ALEXI) model (Anderson et al., 1997; Mecikalski et al., 1999; Hain et al., 2009). The PM soil moisture retrieval is provided by the Vrijie Universiteit Amsterdam (VUA)-NASA surface soil moisture product. The VUA retrieval is based on the findings of Owe et al. (2001; 2008) using the Land Surface Parameter model (LPRM), which uses one dual polarized channel (6.925 or 10.65 GHz) for a dual-retrieval of surface soil moisture and vegetation water content. In addition, retrievals of ALEXI (TIR) and AMSR-E (PM) soil moisture are assimilated within the Land Information System using the NOAH LSM. A series of data assimilation experiments is completed with the following configuration: (a) no assimilation, (b) only ALEXI soil moisture, (c) only AMSR-E soil moisture, and (d) ALEXI and AMSR-E soil moisture. The relative skill of each assimilation configuration is quantified through a data-denial experimental design, where the LSM is forced with a degraded precipitation dataset. The ability of each assimilation configuration to correct for precipitation errors is quantified through the comparison of the results with a control simulation over the same domain forced with a high-quality (NLDAS) precipitation dataset.
机译:土壤水分在表面能收支中感热通量和潜热通量的分配中起着至关重要的作用,并且缺乏密集的地面观测的时空网络为在数值天气中初始化真实的土壤水分状态带来了挑战预测模拟。已经开发了利用基于卫星的热红外(TIR)和无源微波(PM)传感器的观测值来获取土壤水分的方法(Anderson等,2007; Hain等,2009; Jackson,1993; Njoku等。 (2003年)。 TIR和微波观测能够诊断土壤剖面不同层中的土壤水分状况,这为将土壤水分状况用于从表层到根区的真实土壤水分状态进行诊断的协同数据同化方法提供了机会。在2003--2008年期间,使用NOAH LSM将回顾性土地信息系统(LIS)模拟提供的土壤水分的TIR和PM取值与土壤水分估算值进行了比较。基于TIR的土壤水分产品是通过从大气-土地交换-反演(ALEXI)模型中获取与地面通量估算值相关的土壤水分而提供的(Anderson等,1997; Mecikalski等,1999; Hain等)等(2009)。阿姆斯特丹Vrijie大学(VUA)-NASA地表土壤水分产品可提供PM土壤水分的回收。 VUA检索基于Owe等人的发现。 (2001年; 2008年)使用陆地表面参数模型(LPRM),该模型使用一个双极化通道(6.925或10.65 GHz)对表层土壤水分和植被含水量进行双重取回。此外,使用NOAH LSM在土地信息系统中还可以提取ALEXI(TIR)和AMSR-E(PM)的土壤水分。通过以下配置完成了一系列数据同化实验:(a)不进行同化,(b)仅ALEXI土壤水分,(c)仅AMSR-E土壤水分,以及(d)ALEXI和AMSR-E土壤水分。每个同化配置的相对技能通过数据拒绝实验设计进行量化,其中LSM被降级的降水数据集强迫。通过对结果进行比较,并在高质量(NLDAS)降水数据集的强制作用下对同一域进行控制仿真,从而量化了每种同化配置纠正降水误差的能力。

著录项

  • 作者

    Hain, Christopher Ryan.;

  • 作者单位

    The University of Alabama in Huntsville.;

  • 授予单位 The University of Alabama in Huntsville.;
  • 学科 Atmospheric Sciences.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 217 p.
  • 总页数 217
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TS97-4;
  • 关键词

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