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Evaluating the Utility of Remotely Sensed Soil Moisture Retrievals for Operational Agricultural Drought Monitoring

机译:评估遥感土壤水分反演在农业干旱监测中的实用性

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摘要

Soil moisture is a fundamental data source used by the United States Department of Agriculture (USDA) International Production Assessment Division (IPAD) to monitor crop growth stage and condition and subsequently, globally forecast agricultural yields. Currently, the USDA IPAD estimates surface and root-zone soil moisture using a two-layer modified Palmer soil moisture model forced by global precipitation and temperature measurements. However, this approach suffers from well-known errors arising from uncertainty in model forcing data and highly simplified model physics. Here, we attempt to correct for these errors by designing and applying an Ensemble Kalman filter (EnKF) data assimilation system to integrate surface soil moisture retrievals from the NASA Advanced Microwave Scanning Radiometer (AMSR-E) into the USDA modified Palmer soil moisture model. An assessment of soil moisture analysis products produced from this assimilation has been completed for a five-year (2002 to 2007) period over the North American continent between 23???????° N-50???????° N and 128???????° W-65???????° W. In particular, a data denial experimental approach is utilized to isolate the added utility of integrating remotely sensed soil moisture by comparing EnKF soil moisture results obtained using (relatively) low-quality precipitation products obtained from real-time satellite imagery to baseline Palmer model runs forced with higher quality rainfall. An analysis of root-zone anomalies for each model simulation suggests that the assimilation of AMSR-E surface soil moisture retrievals can add significant value to USDA root-zone predictions derived from real-time satellite precipitation products.
机译:土壤水分是美国农业部(USDA)国际生产评估部(IPAD)用来监视作物生长阶段和状况以及随后全球范围内预测农业产量的基本数据源。目前,USDA IPAD使用由全球降水和温度测量强迫的两层修正Palmer土壤水分模型估算地表和根区土壤水分。但是,这种方法存在因模型强制数据的不确定性和高度简化的模型物理性而引起的众所周知的错误。在这里,我们尝试通过设计和应用Ensemble Kalman滤波器(EnKF)数据同化系统来纠正这些错误,以将来自NASA先进微波扫描辐射仪(AMSR-E)的地表土壤水分取回集成到USDA修改过的Palmer土壤水分模型中。在北美地区,从23°C至N-50°C之间的五年(2002年至2007年)期间,已经完成了对从这种同化过程中产生的土壤水分分析产品的评估。 N和128°W-65°W。特别是,通过比较EnKF土壤,采用了数据否认实验方法来分离整合遥感土壤水分的附加效用使用从实时卫星图像到基线Palmer模型获得的(相对)低质量降水产品获得的水分结果在较高质量降雨的情况下运行。对每个模型模拟的根区异常进行的分析表明,对AMSR-E表层土壤水分取回的同化可以为从实时卫星降水产物得出的USDA根区预测增加重要价值。

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