首页> 外文期刊>Journal of hydrometeorology >Improving Soil Moisture and Surface Turbulent Heat Flux Estimates by Assimilation of SMAP Brightness Temperatures or Soil Moisture Retrievals and GOES Land Surface Temperature Retrievals
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Improving Soil Moisture and Surface Turbulent Heat Flux Estimates by Assimilation of SMAP Brightness Temperatures or Soil Moisture Retrievals and GOES Land Surface Temperature Retrievals

机译:通过同化芯片亮度温度或土壤水分检索,改善土壤水分和表面湍流热通量估计,并进入陆地温度检索

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摘要

Surface heat fluxes are vital to hydrological and environmental studies, but mapping them accurately over a large area remains a problem. In this study, brightness temperature (TB) observations or soil moisture retrievals from the NASA Soil Moisture Active Passive (SMAP) mission and land surface temperature (LST) product from the Geostationary Operational Environmental Satellite (GOES) are assimilated together into a coupled water and heat transfer model to improve surface heat flux estimates. A particle filter is used to assimilate SMAP data, while a particle smoothing method is adopted to assimilate GOES LST time series, correcting for both systematic biases via parameter updating and for short-term error via state updating. One experiment assimilates SMAP TB at horizontal polarization and GOES LST, a second experiment assimilates SMAP TB at vertical polarization and GOES LST, and a third experiment assimilates SMAP soil moisture retrievals along with GOES LST. The aim is to examine if the assimilation of physically consistent TB and LST observations could yield improved surface heat flux estimates. It is demonstrated that all three assimilation experiments improved flux estimates compared to a no-assimilation case. Assimilating TB data tends to produce smaller bias in soil moisture estimates compared to assimilating soil moisture retrievals, but the estimates are influenced by the respective bias correction approaches. Despite the differences in soil moisture estimates, the flux estimates from different assimilation experiments are in general very similar.
机译:表面热量通量对水文和环境研究至关重要,但准确地在大面积上映射它们仍然存在问题。在本研究中,从地球静止操作环境卫星(GUSE)的美国宇航局土壤湿度有源被动(SMAP)任务(SMAP)任务(SMAP)使命(LST)产品中的亮度温度(TB)观察或土壤水分检索和陆地表面温度(LST)产品被同化成耦合水和传热模型改善表面热通量估计。粒子滤波器用于同化SMAP数据,而采用粒子平滑方法以同化STST时间序列,通过参数更新校正系统偏差,并通过状态更新进行短期错误。一个实验在水平极化下同化了Smap TB,并且LST,第二个实验同化了垂直极化的Smap TB,并且第三个实验使Smap土壤水分检索与LST相同。目的是检查物理一致的Tb和LST观察的同化是否可以产生改善的表面热通量估计。结果证明,与无同化案例相比,所有三种同化实验改善了助焊剂估计。与吸收土壤水分检索相比,同化结核病数据趋于在土壤水分估计中产生较小的偏差,但估计受相应偏置校正方法的影响。尽管土壤湿度估计存在差异,但不同同化实验的助焊剂估计一般非常相似。

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