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热带海洋学报 2011, Vol. 30 Issue (6) :24-30    
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集合滤波和三维变分混合数据同化方法研究
吴新荣 1,2,3 , 韩桂军 2 , 李冬 2 , 李威 2
1. 中国科学院南海海洋研究所 , 广东 广州 510301; 2. 国家海洋信息中心 , 天津 300171; 3. 中国科学院研究生院 , 北京 100049
WU Xin-rong1,2,3, HAN Gui-jun2, LI Dong2, LI Wei2
1. South China Sea Institute of Oceanology, CAS, Guangzhou 510301, China ; 2. National Marine Data and Information Service, Tianjin 300171, China ; 3. Graduate University of CAS, Beijing 100049, China

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摘要 发展了一种新的混合数据同化方法——基于集合滤波和三维变分的混合数据同化方法。该方法将集合调整卡尔曼滤波(ensembleadjustmentKalmanfilter, EAKF)得到的集合样本扰动通过一个转换矩阵的形式直接作用到背景场上, 利用顺序滤波的思想得到分析场的一个扰动; 然后在三维变分(threedimensionalvariationalanalysis, 3D-Var)的框架下与观测数据进行拟合, 从而给出分析场的最优估计。文中以Lorenz63模型为例, 开展了理想数据同化试验, 结果表明, 相比于集合调整卡尔曼滤波, 这种新的混合同化方法可以给出更好的同化结果。
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吴新荣
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李冬
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关键词混合数据同化方法   集合调整卡尔曼滤波   三维变分     
Abstract: A new hybrid data assimilation scheme based on ensemble adjustment Kalman filter (EAKF) and three-dimensional variational (3D-Var) analysis is developed. In this assimilation scheme, the perturbation of ensemble from EAKF is applied to the background field by using a transformation matrix, thus the perturbation of the analysis field can be obtained by taking advantage of a sequential filter, which will then be optimized by being combined with observations under the framework of 3D-Var. The data assimilation experiment in a perfect case is carried out by using Lorenz-63 model. The results demonstrate that the hybrid data assimilation scheme performs better than EAKF.
Keywords hybrid data assimilation scheme,   ensemble adjustment Kalman filter,   3D-Var      
收稿日期: 2010-01-31;
基金资助: 国家重点基础研究发展计划项目 (2007CB816001); 国家自然科学 (40776016)
作者简介: 吴新荣 (1981 — ), 男 , 江苏省泰州市人 , 在读博士生 , 主要从事海洋数据同化方法应用研究。
引用本文:   
吴新荣, 韩桂军, 李冬等 . 集合滤波和三维变分混合数据同化方法研究[J]  热带海洋学报, 2011,V30(6): 24-30
Tun-Xin-Rong, Han-Gui-Jun-, Li-Dong- etc . A hybrid ensemble filter and 3D variational analysis scheme [J]  Journal of Tropical Oceanography, 2011,V30(6): 24-30
链接本文:  
http://www.jto.ac.cn/CN/     或     http://www.jto.ac.cn/CN/Y2011/V30/I6/24
 
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