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集合滤波和三维变分混合数据同化方法研究 被引量:9

A hybrid ensemble filter and 3D variational analysis scheme
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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(ensemble adjustment Kalman filter,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(three dimensional variational analysis,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。 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.
出处 《热带海洋学报》 CAS CSCD 北大核心 2011年第6期24-30,共7页 Journal of Tropical Oceanography
基金 国家重点基础研究发展计划项目(2007CB816001) 国家自然科学基金项目(40776016)
关键词 混合数据同化方法 集合调整卡尔曼滤波 三维变分 hybrid data assimilation scheme ensemble adjustment Kalman filter 3D-Var
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