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Joint assimilation of soil moisture retrieved from multiple passive microwave frequencies increases robustness of soil moisture state estimation

机译:从多次无源微波频率检索的土壤水分的联合同化增加了土壤水分估计的鲁棒性

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Soil moisture affects the partitioning of water and energy and is recognized as an essential climate variable. Soil moisture estimates derived from passive microwave remote sensing can improve model estimates through data assimilation, but the relative effectiveness of microwave retrievals in different frequencies is unclear. Land Parameter Retrieval Model (LPRM) satellite soil moisture derived from L-, C-, and X-band frequency remote sensing were assimilated in the Australian Water Resources Assessment landscape hydrology model (AWRA-L) using an ensemble Kalman filter approach. Two sets of experiments were performed. First, each retrieval was assimilated individually for comparison. Second, each possible combination of two retrievals was assimilated jointly. Results were evaluated against field-measured top-layer and root-zone soil moisture at 24 sites across Australia. Assimilation generally improved the coefficient of correlation (r) between modeled and field-measured soil moisture. L- and X-band retrievals were more informative than C-band retrievals, improving r by an average of 0.11 and 0.08 compared to 0.04, respectively. Although L-band retrievals were more informative for top-layer soil moisture in most cases, there were exceptions, and L- and X-band were equally informative for root-zone soil moisture. The consistency between L-and X-band retrievals suggests that they can substitute for each other, for example when transitioning between sensors and missions. Furthermore, joint assimilation of retrievals resulted in a model performance that was similar to or better than assimilating either retrieval individually. Comparison of model estimates obtained with global precipitation data and with higher-quality, higher-resolution regional data, respectively, demonstrated that precipitation data quality does determine the overall benefit that can be expected from assimilation. Further work is needed to assess the potentially complementary spatial information that can be derived from retrievals from different frequencies.
机译:土壤水分影响水和能量的分配,被认为是一个重要的气候变量。被动微波遥感的土壤湿度估计可以通过数据同化改善模型估计,但不同频率微波反演的相对有效性尚不清楚。土地参数反演模型(LPRM)卫星土壤湿度由L、C和X波段频率遥感获得,采用集成卡尔曼滤波方法在澳大利亚水资源评估景观水文模型(AWRA-L)中进行同化。进行了两组实验。首先,每一次检索都被单独同化以进行比较。第二,两次检索的每个可能组合都被联合同化。根据澳大利亚24个地点的表层和根区土壤水分现场测量结果进行了评估。同化通常会提高模拟土壤水分和现场测量土壤水分之间的相关系数(r)。与C波段检索相比,L波段和X波段检索的信息量更大,与0.04相比,r波段检索的平均值分别提高了0.11和0.08。虽然在大多数情况下,L-波段反演对表层土壤水分的信息更丰富,但也有例外,L-波段和X-波段对根区土壤水分的信息同样丰富。L波段和X波段反演的一致性表明,它们可以相互替代,例如在传感器和任务之间转换时。此外,联合同化反演结果的模型性能类似于或优于单独同化任一反演结果。将全球降水数据和高质量、高分辨率区域数据分别与模式估计值进行比较,结果表明,降水数据的质量确实决定了同化的总体效益。需要进一步的工作来评估从不同频率的检索中得到的潜在互补空间信息。

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