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首页> 外文期刊>Journal of the Atmospheric Sciences >Sigma-Point Kalman Filter Data Assimilation Methods for Strongly Nonlinear Systems JAISON THOMAS AMBADAN AND YOUMIN TANG
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Sigma-Point Kalman Filter Data Assimilation Methods for Strongly Nonlinear Systems JAISON THOMAS AMBADAN AND YOUMIN TANG

机译:强非线性系统的Sigma-Point Kalman滤波数据同化方法JAISON THOMAS AMBADAN和YOUMIN TANG

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摘要

Performance of an advanced, derivativeless, sigma-point Kalman filter (SPKF) data assimilation scheme in a strongly nonlinear dynamical model is investigated. The SPKF data assimilation scheme is compared against standard Kalman filters such as the extended Kalman filter (EKF) and ensemble Kalman filter (EnKF) schemes. Three particular cases—namely, the state, parameter, and joint estimation of states and parameters from a set of discontinuous noisy observations—are studied. The problems associated with the use of tangent linear model (TLM) or Jacobian when using standard Kalman filters are eliminated when using SPKF data assimilation algorithms. Further, the constraints and issues of SPKF data assimilation in real ocean or atmospheric models are emphasized. A reduced sigma-point subspace model is proposed and investigated for higher-dimensional systems. A low-dimensional Lorenz 1963 model and a higher-dimensional Lorenz 1995 model are used as the test beds for data assimilation experiments. The results of SPKF data assimilation schemes are compared with those of standard EKF and EnKF, in which a highly nonlinear chaotic case is studied. It is shown that the SPKF is capable of estimating the model state and parameters with better accuracy than EKF and EnKF. Numerical experiments showed that in all cases the SPKF can give consistent results with better assimilation skills than EnKF and EKF and can overcome the drawbacks associated with the use of EKF and EnKF.
机译:研究了在强非线性动力学模型中先进的无导数西格玛点卡尔曼滤波器(SPKF)数据同化方案的性能。将SPKF数据同化方案与标准卡尔曼滤波器(例如扩展卡尔曼滤波器(EKF)和集成卡尔曼滤波器(EnKF)方案)进行比较。研究了三种特殊情况,即状态,参数以及根据一组不连续的嘈杂观测值对状态和参数的联合估计。使用SPKF数据同化算法时,消除了与使用标准卡尔曼滤波器时使用切线线性模型(TLM)或雅可比行列式相关的问题。此外,强调了在实际海洋或大气模型中SPKF数据同化的约束和问题。提出了简化的sigma-point子空间模型,并针对高维系统进行了研究。低维Lorenz 1963模型和高维Lorenz 1995模型用作数据同化实验的测试平台。将SPKF数据同化方案的结果与标准EKF和EnKF的结果进行了比较,其中研究了高度非线性的混沌情况。结果表明,与EKF和EnKF相比,SPKF能够以更高的精度估算模型状态和参数。数值实验表明,在所有情况下,SPKF都可以提供比EnKF和EKF更好的同化结果,并且具有更好的同化技巧,并且可以克服与使用EKF和EnKF相关的缺点。

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