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Estimation of the Root-Zone Soil Moisture Using Passive Microwave Remote Sensing and SMAR Model

机译:被动微波遥感和SMAR模型估算根区土壤水分

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Estimation of root-zone soil moisture (RZSM) at regional scales is a critical issue in surface hydrology that could be a great help for estimating evapotranspiration, erosion, runoff, and irrigation requirements, etc. A significant number of satellites [soil moisture and ocean salinity (SMOS), special sensor microwave imager (SSM/I), advanced microwave scanning radiometer-EOS (AMSR-E), tropical rainfall measuring mission/microwave imager (TRMM/TMI), etc.] retrieve surface soil moisture (SSM) using passive microwave remote sensing. This information can be used to derive RZSM using a new mathematical filter. In particular, the recently developed soil moisture analytical relationship (SMAR) can relate the surface soil moisture to the moisture of deeper layer using a relationship derived from a soil water balance equation where infiltration is estimated based on the relative fluctuations of soil moisture in the surface soil layer. In the present paper, the SMAR model is tested on two research databases in Africa and North America [African monsoon multidisciplinary analysis (AMMA) and soil climate analysis network (SCAN), respectively], where field measurements at different depths are available. Furthermore, the TRMM/ TMI Satellite is selected to retrieve the satellite SSM data of the studied regions using the land parameter retrieval model (LPRM). Both remotely sensed SSM and field measurements are used within the SMAR model to explore their ability in reproducing the RZSM and also to explore the existing difference in model parameterization moving from one dataset to the other. The SMAR model is applied using three different schemes: (1) with parameters calibrated using surface field measurements, (2) with parameters calibrated using remotely sensed SSM as input, and finally (3) using the remotely sensed SSM with the same parameters calibrated in Scheme 1. In all cases, SMAR parameters have been calibrated using a genetic algorithm optimizing the root-mean square error (RMSE) between SMAR prediction and measured RZSM. The results show that remotely sensed data may be coupled with the SMAR model to provide a good description of RZSM dynamics, but it requires a specific parameterization respect to Scheme 1. Nevertheless, it is surprising to observe that two of the four parameters of the model related to the soil texture are relatively stable moving from remote-sensed to field data.
机译:在区域尺度上估算根区土壤水分(RZSM)是地表水文学中的一个关键问题,这可能对估算蒸散量,侵蚀,径流和灌溉需求等有很大帮助。大量卫星[土壤水分和海洋盐度(SMOS),特殊传感器微波成像仪(SSM / I),高级微波扫描辐射计-EOS(AMSR-E),热带雨量测量任务/微波成像仪(TRMM / TMI)等。]检索表层土壤水分(SSM)使用无源微波遥感。该信息可用于使用新的数学过滤器得出RZSM。特别是,最近开发的土壤水分分析关系(SMAR)可以使用从土壤水平衡方程得出的关系将地表土壤水分与深层水分联系起来,该关系式是根据地表土壤水分的相对波动估算入渗量的土壤层。在本文中,在非洲和北美的两个研究数据库上分别测试了SMAR模型[分别是非洲季风多学科分析(AMMA)和土壤气候分析网络(SCAN)],其中提供了不同深度的野外测量。此外,选择TRMM / TMI卫星以使用陆地参数检索模型(LPRM)检索研究区域的卫星SSM数据。遥感SSM和现场测量都用于SMAR模型中,以探究其再现RZSM的能力,并探究模型参数化从一个数据集到另一个数据集的现有差异。 SMAR模型使用三种不同的方案来应用:(1)使用表面场测量校准的参数;(2)使用遥感SSM作为输入校准的参数;最后(3)使用在SSM中校准相同参数的遥感SSM方案1.在所有情况下,均已使用遗传算法对SMAR参数进行了校准,该遗传算法可优化SMAR预测与测得的RZSM之间的均方根误差(RMSE)。结果表明,可以将遥感数据与SMAR模型耦合以提供RZSM动力学的良好描述,但是它需要针对方案1进行特定的参数设置。但是,令人惊讶的是,观察到模型的四个参数中的两个从遥感数据到田间数据,与土壤质地相关的相对稳定。

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