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Development of the Flux-Adjusting Surface Data Assimilation System for Mesoscale Models

机译:中尺度模型通量调整面数据同化系统的开发

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The flux-adjusting surface data assimilation system (FASDAS) is developed to provide continuous adjustments for initial soil moisture and temperature and for surface air temperature and water vapor mixing ratio for mesoscale models. In the FASDAS approach, surface air temperature and water vapor mixing ratio are directly assimilated by using the analyzed surface observations. Then, the difference between the analyzed surface observations and model predictions of surface layer temperature and water vapor mixing ratio are converted into respective heat fluxes, referred to as adjustment heat fluxes of sensible and latent heat. These adjustment heat fluxes are then used in the prognostic equations for soil temperature and moisture via indirect assimilation in the form of several new adjustment evaporative fluxes. Thus, simulated surface fluxes for the subsequent model time step are affected such that the predicted surface air temperature and water vapor mixing ratio conform more closely to observations. The simultaneous application of indirect and direct data assimilation maintains greater consistency between the soil temperature-moisture and the surface layer mass-field variables. The FASDAS is coupled to a land surface submodel in a three-dimensional mesoscale model and tests are performed for a 10-day period with three one-way nested domains. The FASDAS is applied in the analysis nudging mode for two coarse-resolution nested domains and in the observational nudging mode for a fine-resolution nested domain. Further, the effects of FASDAS on two different initial specifications of a three-dimensional soil moisture field are also studied. Results indicate that the FASDAS consistently improved the accuracy of the model simulations.
机译:开发了通量调节表面数据同化系统(FASDAS),以便为中尺度模型提供对初始土壤湿度和温度以及地面空气温度和水蒸气混合比的连续调节。在FASDAS方法中,通过使用分析的地面观测值,可以直接吸收地面空气温度和水蒸气混合比。然后,将所分析的表面观测结果与表面层温度和水蒸气混合比的模型预测之间的差异转换为各自的热通量,称为显热和潜热的调节热通量。这些调节热通量随后通过间接同化以几种新的调节蒸发通量的形式用于土壤温度和湿度的预测方程中。因此,将影响后续模型时间步长的模拟表面通量,以使预测的表面空气温度和水蒸气混合比与观测更加一致。间接和直接数据同化的同时应用可保持土壤温度-湿度与表层质量-场变量之间的更大一致性。 FASDAS在三维中尺度模型中耦合到陆地表面子模型,并使用三个单向嵌套域进行了为期10天的测试。 FASDAS用于两个粗分辨率嵌套域的分析推挤模式,以及用于精细分辨率嵌套域的观察推算模式。此外,还研究了FASDAS对三维土壤水分场的两个不同初始规格的影响。结果表明,FASDAS不断提高了模型仿真的准确性。

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