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非线性观测算子的集合卡尔曼滤波的改进
引用本文:吴国灿,郑小谷,李勇.非线性观测算子的集合卡尔曼滤波的改进[J].北京师范大学学报(自然科学版),2010,46(6).
作者姓名:吴国灿  郑小谷  李勇
作者单位:北京师范大学数学科学学院,数学与复杂系统教育部重点实验室;北京师范大学全球变化与地球系统科学研究院,100875,北京
基金项目:国家重点基础研究发展计划资助项目
摘    要:在带有线性观测算子的集合卡尔曼滤波中,对预报误差方差阵比较客观的调整是用与时间相依的因子对其进行膨胀调整,然后用极大似然方法去估计膨胀因子.若观测算子是非线性的,新息的似然函数不易表示,从而膨胀方法不能直接套用.我们通过对非线性观测算子的线性逼近,得到似然函数的近似表达式,进而实现对预报误差方差阵的膨胀调整.数据模拟表明这种方法预报精度更高,更加稳健,效果远好于传统的非线性集合卡尔曼滤波方法.

关 键 词:资料同化  集合卡尔曼滤波  预报误差方差阵  膨胀调整

IMPROVEMENT ON ENSEMBLE KALMAN FILTER OF NONLINEAR OBSERVATIONAL OPERATOR
WU Guocan,ZHENG Xiaogu,LI Yong.IMPROVEMENT ON ENSEMBLE KALMAN FILTER OF NONLINEAR OBSERVATIONAL OPERATOR[J].Journal of Beijing Normal University(Natural Science),2010,46(6).
Authors:WU Guocan  ZHENG Xiaogu  LI Yong
Institution:WU Guocan1) ZHENG Xiaogu2) LI Yong1)(1)School of Mathematical Science,Beijing Normal University,Key Laboratory of Mathematics and Complex Systems,Ministry of Education,2) College of Global Change and Earth System Science,100875,Beijing,China)
Abstract:In ensemble Kalman filter of linear observational operator,relatively objective adjustment on forecast error covariance matrix is on-line inflation adjustment followed by inflation factor optimization by minimizing-2log-likelihood of observation-minus-forecast residuals.If observational operator is nonlinear,-2log-likelihood are easily expressed,therefore inflation adjustment cannot be applied directly.We derive approximate expression of-2log-likelihood through linear approximation of observational operator...
Keywords:data assimilation  ensemble Kalman filter  forecast error covariance matrix  inflation adjustment  
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