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Assimilating passive microwave brightness temperature data into a land surface model to improve the snow depth predictability

机译:将被动微波亮度温度数据吸收到陆地面模型中以提高雪深度可预测性

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This paper introduces the application of the ensemble Kalman filter (EnKF) technique for the assimilation of passive microwave remote sensing observations into a land-surface model, to improve the snow depth (SD) predictability. A new landsurface model, currently developed at the Japan Meteorological Agency (JMA), which is based on the Simple Biosphere Model (SiB), is used as a forward model to predict the change of the snow pack. The Microwave Emission Model of Layered Snowpacks (MEMLS) is used as observation operator, to transfer the model prediction into the corresponding satellite brightness. The assimilation system was applied using data from the Coordinated Enhanced Observation Period (CEOP) Asia-Australia Monsoon Project (CAMP) Eastern Siberia Taiga region for the period from November 2002 to March 2003. The data sets includes JMA-GSM model output, which is used as forcing data, satellite brightness temperature observation from the Advanced Microwave Scanning Radiometer (AMSR-E) and in-situ snow depth (SD) observation and the current AMSR-E snow depth product for comparison. The assimilation results are in good agreement with the data from the snow depth observation sites in this region and improve the forecast of the land-surface model. Furthermore, comparison with the AMSR-E SD product showed, that the assimilation results are also in better agreement with the in-situ snow depth observation.
机译:本文介绍了集合Kalman滤波器(ENKF)技术的应用,使被动微波遥感观察的被动微波遥感观测分化为陆地模型,以提高雪深(SD)可预测性。目前在日本气象局(JMA)开发的新Landsurface模型,该模型是基于简单的生物圈模型(SIB),用作前向模型,以预测雪包的变化。分层积雪(MEML)的微波发射模型用作观察操作员,将模型预测转移到相应的卫星亮度中。在2002年11月至2003年11月,使用来自协调增强观测期(CEOP)亚洲澳大利亚季风项目(CAMP)Eastern Siberia Taiga地区的数据施用同化系统。数据集包括JMA-GSM模型输出,即用作迫使数据,卫星亮度温度观察从先进的微波扫描辐射计(AMSR-E)和原位雪深(SD)观察和当前的AMSR-E雪深度进行比较。同化结果与该地区的雪深度观察部位的数据吻合良好,并改善了陆地模型的预测。此外,与AMSR-E SD产品的比较显示,同化结果也与原位雪深度观察更好。

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