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Improving estimated soil moisture fields through assimilation of AMSR-E soil moisture retrievals with an ensemble Kalman filter and a mass conservation constraint

机译:通过集成卡尔曼滤波器和质量守恒约束对AMSR-E土壤水分反演进行同化来改善估计的土壤水分场

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Model simulated soil moisture fields are often biased due to errors in input parameters and deficiencies in model physics. Satellite derived soil moisture estimates, if retrieved appropriately, represent the spatial mean of near surface soil moisture in a footprint area, and can be used to reduce bias of model estimates (at locations near the surface) through data assimilation techniques. While assimilating the retrievals can reduce bias, it can also destroy the mass balance enforced by the model governing equation because water is removed from or added to the soil by the assimilation algorithm. In addition, studies have shown that assimilation of surface observations can adversely impact soil moisture estimates in the lower soil layers due to imperfect model physics, even though the bias near the surface is decreased. In this study, an ensemble Kalman filter (EnKF) with a mass conservation updating scheme was developed to assimilate Advanced Microwave Scanning Radiometer (AMSR-E) soil moisture retrievals, as they are without any scaling or pre-processing, to improve the estimated soil moisture fields by the Noah land surface model. Assimilation results using the conventional and the mass conservation updating scheme in the Little Washita watershed of Oklahoma showed that, while both updating schemes reduced the bias in the shallow root zone, the mass conservation scheme provided better estimates in the deeper profile. The mass conservation scheme also yielded physically consistent estimates of fluxes and maintained the water budget. Impacts of model physics on the assimilation results are discussed.
机译:由于输入参数的误差和模型物理的不足,模型模拟的土壤湿度场通常会产生偏差。卫星得出的土壤含水量估算值(如果检索得当的话)表示足迹区域内近地表土壤含水量的空间平均值,可用于通过数据同化技术减少模型估算值(在地面附近的位置)的偏差。虽然同化取回可以减少偏差,但它也可以破坏模型控制方程所强制的质量平衡,因为同化算法会将水从土壤中去除或添加到土壤中。此外,研究表明,由于模型物理不完善,即使降低了地表附近的偏差,地表观测值的同化也会对较低土壤层的土壤水分估计产生不利影响。在这项研究中,开发了具有质量守恒更新方案的集成卡尔曼滤波器(EnKF),以吸收高级微波扫描辐射计(AMSR-E)的土壤水分,因为它们没有任何结垢或预处理,从而改善了估计的土壤诺亚陆地表面模型模拟了水汽场。在俄克拉何马州Little Washita流域使用常规和质量守恒更新方案进行的同化结果表明,尽管两种更新方案都减小了浅根区的偏差,但质量守恒方案在更深的剖面中提供了更好的估计。质量守恒计划还得出了通量在物理上一致的估计,并保持了水的预算。讨论了模型物理对同化结果的影响。

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