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首页> 外文期刊>Journal of hydrometeorology >Role of Subsurface Physics in the Assimilation of Surface Soil Moisture Observations
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Role of Subsurface Physics in the Assimilation of Surface Soil Moisture Observations

机译:地下物理学在表层土壤水分观测同化中的作用

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Root-zone soil moisture controls the land-atmosphere exchange of water and energy, and exhibits memory that may be useful for climate prediction at monthly scales. Assimilation of satellite-based surface soil moisture observations into a land surface model is an effective way to estimate large-scale root-zone soil moisture. The propagation of surface information into deeper soil layers depends on the model-specific representation of subsurface physics that is used in the assimilation system. In a suite of experiments. synthetic surface soil moisture observations are assimilated into four different models [Catchment, Mosaic, Noah, and Community Land Model (CLM)] using the ensemble Kalman filter. The authors demonstrate that identical twin experiments significantly overestimate the information that can be obtained from the assimilation of surface soil moisture observations. The second key result indicates that the potential of surface soil moisture assimilation to improve root-zone information is higher when the surface-root zone coupling is stronger. The experiments also suggest that (faced with unknown true subsurface physics) overestimating surface-root zone coupling in the assimilation system provides more robust skill improvements in the root zone compared with underestimating the coupling. When CLM is excluded from the analysis, the skill improvements from using models with different vertical coupling strengths are comparable for different subsurface truths. Last, the skill improvements through assimilation were found to be sensitive to the regional climate and soil types.
机译:根区土壤湿度控制着陆地与大气之间水和能量的交换,并表现出记忆力,可用于按月尺度进行气候预测。将基于卫星的地表土壤水分观测值同化为陆地表面模型是估算大规模根区土壤水分的有效方法。将表面信息传播到更深的土壤层取决于同化系统中使用的特定于模型的地下物理学表示。在一组实验中。使用集合卡尔曼滤波器,将合成的表层土壤水分观测值同化为四个不同的模型[集水区,马赛克,诺亚和社区土地模型(CLM)]。作者证明,相同的双生子实验显着高估了可以从表层土壤水分观测的同化中获得的信息。第二个关键结果表明,当表根之间的耦合更强时,表层土壤水分同化改善根区信息的潜力更高。实验还表明(面对未知的真实地下物理学),与低估耦合相比,高估同化系统中的表面-根部区域耦合可以在根部区域中提供更强大的技能改进。当从分析中排除CLM时,对于不同的地下真实情况,使用具有不同垂直耦合强度的模型所带来的技能改进是可比的。最后,发现通过同化提高技能对区域气候和土壤类型敏感。

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