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首页> 外文期刊>International Journal for Numerical Methods in Fluids >Comparison of extended and ensemble Kalman filters for data assimilation in coastal area modelling
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Comparison of extended and ensemble Kalman filters for data assimilation in coastal area modelling

机译:扩展和集成卡尔曼滤波器在沿海地区建模中数据同化的比较

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摘要

Data assimilation in a two-dimensional hydrodynamic model for bays, estuaries and coastal areas is considered. Two different methods based on the Kalman filter scheme are presented. These include (1) an extended Kalman filter in which the errorcovariance matrix is approximated by a matrix of reduced rank using a square root factorisation (RRSQRT KF), and (2) an ensemble Kalman filter (EnKF) based on a Monte Carlo simulation approach for propagation of errors. The filtering problem is formulated by utilising a general description of the model noise process related to errors in the model forcing, i.e. open boundary conditions and meteorological forcing. The performance of the two Kalman filters is evaluated using a twin experiment based on ahypothetical bay region. For both filters, the error covariance approximation sufficiently resolves the error propagation in the model at a computational load that is significantly smaller than required by the full Kalman filter algorithm. Furthermore,the Kalman filters are shown to be very robust with respect to defining the errors. Even in the case of a severely biased model error, the filters are able to efficiently correct the model. In general, the use of coloured model noise provides anumerically more efficient algorithm as well as a better performance of the filter. The error covariance approximation in the RRSQRT KF is shown to be more efficient than the error representation in the EnKF. For strongly non-linear dynamics, however, the EnKF is preferable.
机译:考虑了海湾,河口和沿海地区的二维水动力模型中的数据同化。提出了两种基于卡尔曼滤波方案的方法。其中包括(1)扩展卡尔曼滤波器,其中使用平方根因子分解(RRSQRT KF)将误差协方差矩阵由降阶矩阵近似;以及(2)基于蒙特卡罗模拟方法的集成卡尔曼滤波器(EnKF)传播错误。通过利用与模型强迫中的误差有关的模型噪声过程的一般描述,即开放边界条件和气象强迫,来提出过滤问题。这两个卡尔曼滤波器的性能是使用基于假设海湾区域的孪生实验进行评估的。对于这两个滤波器,误差协方差逼近可充分解决模型中误差的传播,而计算负载远小于完整卡尔曼滤波器算法所需的计算负载。此外,卡尔曼滤波器显示出在定义误差方面非常强大。即使在严重偏差的模型误差的情况下,滤波器也能够有效地校正模型。通常,彩色模型噪声的使用从总体上提供了更有效的算法以及更好的滤波器性能。 RRSQRT KF中的误差协方差逼近比EnKF中的误差表示更有效。但是,对于强非线性动力学,最好使用EnKF。

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