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用一种新的同化方法同化降水量资料
作者姓名:LIU Juan-Juan  WANG Bin
作者单位:中科院大气物理研究所,中科院大气物理研究所
基金项目:Acknowledgements. We acknowledge the Ministry of Finance of China and China Meteorological Administration for the Special Project of Meteorological Sector (Grant No. GYHY(QX)2007-6- 15), and the National Basic Research Program of China (Grant No. 2005CB321703),
摘    要:Observations of accumulated precipitation are extremely valuable for effectively improving rainfall analysis and forecast. It is, however, difficult to use such observations directly through sequential assimilation methods, such as three-dimensional variational data assimilation or an Ensemble Kalman Filter. In this study, the authors illustrate a new approach that makes effective use of precipitation data to improve rainfall forecast. The new method directly obtains an optimal solution in a reduced space by fitting observations with historical time series generated by the model; it also avoids the implementation of tangent linear model and its adjoint. A lot of historical samples are produced as the ensemble of precipitation observations with the fully nonlinear forecast model. The results show that the new approach is capable of extracting information from precipitation observations to improve the analysis and forecast. This method provides comparable performance with the standard four- dimensional variational data assimilation at a much lower computational cost.

关 键 词:四维变分资料同化  降水量观测  非线性预测模型  变分法  历史时间  卡尔曼滤波  有效利用  降水数据
收稿时间:5/8/2009 12:00:00 AM

Assimilating Amounts of Precipitation Using a New Four-Dimensional Variational Method
LIU Juan-Juan,WANG Bin.Assimilating Amounts of Precipitation Using a New Four-Dimensional Variational Method[J].Atmospheric and Oceanic Science Letters,2009,2(6):357-361.
Authors:LIU Juan-Juan and WANG Bin
Institution:LASG, Institute of Atmospheric Physics, Chinese Academy of Sciences, Beijing 100029; Graduate School of the Chinese Academy of Sciences, Beijing 100049,LASG, Institute of Atmospheric Physics, Chinese Academy of Sciences, Beijing 100029
Abstract:Observations of accumulated precipitation are extremely valuable for effectively improving rainfall analysis and forecast. It is, however, difficult to use such observations directly through sequential assimilation methods, such as three-dimensional variational data assimilation or an Ensemble Kalman Filter. In this study, the authors illustrate a new approach that makes effective use of precipitation data to improve rainfall forecast. The new method directly obtains an optimal solution in a reduced space by fitting observations with historical time series generated by the model; it also avoids the implementation of tangent linear model and its adjoint. A lot of historical samples are produced as the ensemble of precipitation observations with the fully nonlinear forecast model. The results show that the new approach is capable of extracting information from precipitation observations to improve the analysis and forecast. This method provides comparable performance with the standard four-dimensional variational data assimilation at a much lower computational cost.
Keywords:4-DVar  data assimilation  numerical simulation  precipitation
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