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A Comparison of the Impacts of Radiosonde and AMSU Radiance Observations in GSI Based 3DEnsVar and 3DVar Data Assimilation Systems for NCEP GFS

机译:基于GSI的3DEnsVar和3DVar数据同化系统对NCEP GFS的探空仪和AMSU辐射观测的影响的比较

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摘要

The impact of observations can be dependent on many factors in a data assimilation (DA) system including data quality control, preprocessing, skill of the model, and the DA algorithm. The present study focuses on comparing the impacts of observations assimilated by two different DA algorithms. Athree-dimensional ensemble-variational (3DEnsVar) hybrid data assimilation system was recently developed based on the Gridpoint Statistical Interpolation (GSI) data assimilation system and was implemented operationally for the National Center for Environmental Prediction (NCEP) Global Forecast System (GFS). One question to address is, how the impacts of observations on GFS forecasts differ when assimilated by the traditional GSI-three dimensional variational (3DVar) and the new 3DEnsVar. Experiments were conducted over a 6-week period during Northern Hemisphere winter season at a reduced resolution. For both the control and data denial experiments, the forecasts produced by 3DEnsVar were more accurate than GSI3DVar experiments. The results suggested that the observations were better and more effectively exploited to increment the background forecast in 3DEnsVar. On the other hand, in GSI3DVar, where the observation will be making mostly local, isotropic increments without proper flow dependent extrapolation is more sensitive to the number and types observations assimilated.
机译:观察的影响可能取决于数据同化(DA)系统中的许多因素,包括数据质量控制,预处理,模型技巧和DA算法。本研究的重点是比较两种不同的DA算法对观测结果的影响。最近基于Gridpoint统计插值(GSI)数据同化系统开发了三维整体变分(3DEnsVar)混合数据同化系统,并已在美国国家环境预测中心(NCEP)全球预报系统(GFS)上实施。要解决的一个问题是,当被传统的GSI三维变分(3DVar)和新的3DEnsVar吸收时,观测值对GFS预测的影响有何不同。在北半球冬季以降低的分辨率进行了为期6周的实验。对于控制实验和数据拒绝实验,由3DEnsVar产生的预测比GSI3DVar实验更准确。结果表明,可以更好,更有效地利用这些观测结果来增加3DEnsVar中的背景预测。另一方面,在GSI3DVar中,观测将主要是局部的,各向同性的增量,而没有适当的依赖于流量的外推法,对观测的数量和类型更加敏感。

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