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首页> 外文期刊>Journal of hydrometeorology >Enhancing Model Skill by Assimilating SMOPS Blended Soil Moisture Product into Noah Land Surface Model
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Enhancing Model Skill by Assimilating SMOPS Blended Soil Moisture Product into Noah Land Surface Model

机译:通过将SMOPS混合的土壤水分产品吸收到Noah地表模型中来增强模型技巧

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Many studies that have assimilated remotely sensed soil moisture into land surface models have generally focused on retrievals from a single satellite sensor. However, few studies have evaluated the merits of assimilating ensemble products that are merged soil moisture retrievals from several different sensors. In this study, the assimilation of the Soil Moisture Operational Products System (SMOPS) blended soil moisture (SBSM) product, which is a combination of soil moisture products from WindSat, Advanced Scatterometer (ASCAT), and Soil Moisture and Ocean Salinity (SMOS) satellite sensors is examined. Using the ensemble Kalman filter (EnKF), a synthetic experiment is performed on the global domain at 25-km resolution to assess the impact of assimilating the SBSM product. The benefit of assimilating SBSM is assessed by comparing it with in situ observations from U.S. Department of Agriculture Soil Climate Analysis Network (SCAN) and the Surface Radiation Budget Network (SURFRAD). Time-averaged surface-layer soil moisture fields from SBSM have a higher spatial coverage and generally agree with model simulations in the global patterns of wet and dry regions. The impacts of assimilating SMOPS blended data on model soil moisture and soil temperature are evident in both sparsely and densely vegetated areas. Temporal correlations between in situ observations and net shortwave radiation and net longwave radiation are higher with assimilating SMOPS blended product than without the data assimilation.
机译:许多将遥感土壤水分吸收到陆地表面模型中的研究通常集中于从单个卫星传感器进行的检索。但是,很少有研究评估同化产品的优点,这些产品是从几个不同的传感器中获取的土壤水分合并而成的。在这项研究中,土壤水分操作产品系统(SMOPS)混合了土壤水分(SBSM)产品,该产品是WindSat,高级散射仪(ASCAT)和土壤水分和海洋盐分(SMOS)的土壤水分产品的组合检查了卫星传感器。使用集成卡尔曼滤波器(EnKF),以25公里的分辨率对全球域进行了合成实验,以评估吸收SBSM产品的影响。通过将SBSM与美国农业部土壤气候分析网络(SCAN)和地表辐射预算网络(SURFRAD)的现场观测结果进行比较,可以评估吸收SBSM的好处。 SBSM的时间平均表层土壤水分场具有较高的空间覆盖率,通常与干湿地区整体模式中的模型模拟相符。在稀疏和茂密的植被区中,将SMOPS混合数据同化对模型土壤水分和土壤温度的影响显而易见。与SMOPS混合产品同化后,原位观测值与净短波辐射和净长波辐射之间的时间相关性高于没有数据同化的情况。

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