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Impact of remotely sensed soil moisture and precipitation on soil moisture prediction in a data assimilation system with the JULES land surface model

机译:利用JULES地表模型的数据同化系统中遥感土壤水分和降水对土壤水分预测的影响

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We show that satellite-derived estimates of shallow soil moisture can be used to calibrate a?land surface model at the regional scale in Ghana, using data assimilation techniques. The modified calibration significantly improves model estimation of soil moisture. Specifically, we find an?18?% reduction in unbiased root-mean-squared differences in the north of Ghana and a?21?% reduction in the south of Ghana for a?5-year hindcast after assimilating a?single year of soil moisture observations to update model parameters. The use of an improved remotely sensed rainfall dataset contributes to 6?% of this reduction in deviation for northern Ghana and 10?% for southern Ghana. Improved rainfall data have the greatest impact on model estimates during the seasonal wetting-up of soil, with the assimilation of remotely sensed soil moisture having greatest impact during drying-down. In the north of Ghana we are able to recover improved estimates of soil texture after data assimilation. However, we are unable to do so for the south. The significant reduction in unbiased root-mean-squared difference we find after assimilating a?single year of observations bodes well for the production of improved land surface model soil moisture estimates over sub-Saharan Africa.
机译:我们表明,利用数据同化技术,可以将卫星得出的浅层土壤湿度估算值用于在加纳区域尺度上校准陆地表面模型。修改后的校准显着改善了土壤湿度的模型估算。具体来说,在吸收了整整一年的土壤后,我们发现加纳北部的无偏根均方差降低了18%,而加纳南部的降低了21%。湿度观测以更新模型参数。对于加纳北部和南部加纳,使用改进的遥感降雨数据集有助于减少偏差的6%。改进的降雨数据在土壤季节性增湿期间对模型估计值的影响最大,而对遥感土壤水分的吸收对干燥期的影响最大。在加纳北部,经过数据同化后,我们能够恢复对土壤质地的改进估计。但是,我们无法在南方这样做。在吸收了一年的观测值后,我们发现无偏均方根差的显着减少预示着在撒哈拉以南非洲地区改进的土地表面模型土壤湿度估计的产生。

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