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Assimilation of Satellite-Derived Skin Temperature Observations into Land Surface Models

机译:卫星衍生的皮肤温度观测资料同化到地面模型中

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Land surface (or "skin'') temperature (LST) lies at the heart of the surface energy balance and is a key variable in weather and climate models. In this research LST retrievals from the International Satellite Cloud Climatology Project (ISCCP) are assimilated into the Noah land surface model and Catchment land surface model (CLSM) using an ensemble-based, offline land data assimilation system. LST is described very differently in the two models. A priori scaling and dynamic bias estimation approaches are applied because satellite and model LSTs typically exhibit different mean values and variabilities. Performance is measured against 27 months of in situ measurements from the Coordinated Energy and Water Cycle Observations Project at 48 stations. LST estimates from Noah and CLSM without data assimilation ("open loop'') are comparable to each other and superior to ISCCP retrievals. For LST, the RMSE values are 4.9 K (CLSM), 5.5 K(Noah), and 7.6 K(ISCCP), and the anomaly correlation coefficients (R) are 0.61 (CLSM), 0.63 (Noah), and 0.52 (ISCCP). Assimilation of ISCCP retrievals provides modest yet statistically significant improvements (over an open loop, as indicated by nonoverlapping 95% confidence intervals) of up to 0.7 K in RMSE and 0.05 in the anomaly R. The skill of the latent and sensible heat flux estimates from the assimilation integrations is essentially identical to the corresponding open loop skill. Noah assimilation estimates of ground heat flux, however, can be significantly worse than open loop estimates. Provided the assimilation system is properly adapted to each land model, the benefits from the assimilation of LST retrievals are comparable for both models.
机译:地表(或“皮肤”)温度(LST)是地表能量平衡的核心,是天气和气候模型中的关键变量,本研究将国际卫星云气候学项目(ISCCP)的LST检索结果同化使用基于集成的离线土地数据同化系统将其转化为Noah地表模型和集水区地表模型(CLSM),这两种模型对LST的描述大不相同,因为卫星和模型都采用了先验缩放和动态偏差估计方法LST通常表现出不同的平均值和变异性,性能是根据48个站的能源和水循环协调观测项目的27个月现场测量得出的,Noah和CLSM的LST估计值没有数据同化(“开环”)是可比的彼此之间并优于ISCCP检索。对于LST,RMSE值分别为4.9 K(CLSM),5.5 K(Noah)和7.6 K(ISCCP),并且异常相关系数(R)为0.61(CLSM),0.63(Noah)和0.52(ISCCP) 。 ISCCP检索的同化提供了适度但统计上显着的改进(通过开环,如不重叠的95%置信区间所示),在RMSE中高达0.7 K,在异常R中高达0.05。潜在的和合理的热通量估算技术同化集成与相应的开环技术基本相同。但是,诺亚对地面热通量的估计可能比开环估计差得多。如果同化系统适合于每种土地模型,则同化LST取回物的收益对于这两个模型都是可比的。

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