首页> 外文会议>SPIE Conference on Remote Sensing for Agriculture, Ecosystems, and Hydrolog >Data assimilation of surface soil moisture, temperature and evapotranspiration estimates in a SVAT model over irrigated areas in semi-arid regions: what's best to constraint evapotranspiration predictions ?
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Data assimilation of surface soil moisture, temperature and evapotranspiration estimates in a SVAT model over irrigated areas in semi-arid regions: what's best to constraint evapotranspiration predictions ?

机译:在半干旱地区灌溉区域的SVAT模型中表面土壤水分,温度和蒸散估计的数据同化估算:最适合约束蒸发预测?

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This study presents a strategy to improve the evapotranspiration estimates in semi arid areas using data assimilation in a SVAT (Soil Vegetation Atmosphere Transfer) modeling, the ISBA scheme (Interaction Soil Biosphere Atmosphere). In the perspective to use remote sensing products, the overall objective of this work is to identify the best combination of data (surface soil moisture / surface temperature / evapotranspiration), the temporal repetitiveness of acquisition (daily / tri-daily / weekly / bi-monthly / monthly) and the kind of data assimilation technique (two dimensional variational method / Extended Kalman filter) to constraint evapotranspiration predictions. Within this preliminary study, synthetic data referring to a wheat crops experimental site located in the Haouz Plain, part of the Tensift basin near Marrakesh in Morocco have been used (from January to May 2003). The results show that in order to improve the evapotranspiration through the analysis of the root zone soil moisture, the surface soil moisture is the most informative observation to use in the assimilation process (roughly 40% improvement in evapotranspiration RMSE). Combinations of observations improve the results but not significantly (few % improvement in evapotranspiration RMSE). Assimilation is very efficient for short assimilation windows. It is also shown that the propagation of the background error matrix done through the Extended Kalman filter doesn't represent a significant added value with regards to the constant matrix used with two dimensional variational method.
机译:本研究介绍了一种在SVAT(土壤植被气氛转移)建模中使用数据同化,ISBA方案(相互作用土壤生物圈气氛)的数据同化来改善半干旱地区蒸发估计的策略。在使用遥感产品的角度来看,这项工作的总体目标是识别数据的最佳组合(表面土壤水分/表面温度/蒸散),采集的时间重复(每日/三日/每周/每周/二 - 每月/每月)和数据同化技术(二维变分方法/扩展卡尔曼滤波器)到约束蒸发预测。在这一初步研究中,综合数据指的是位于Haouz平原的小麦作物实验遗址,其中一部分的摩洛哥马拉喀什附近的张力盆地(从2003年1月至5月)。结果表明,为了通过分析根区土壤水分来改善蒸散,表面土壤水分是在同化过程中使用的最佳观察(蒸发蒸腾RMSE大约40%)。观察组合改善了结果但没有显着(蒸散蒸腾RMSE的改善差异)。同化对短同化窗口非常有效。还示出了通过扩展卡尔曼滤波器完成的背景误差矩阵的传播不表示关于与二维变分方法一起使用的常数矩阵的显着附加值。

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