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A comparison of assimilation results from the ensemble Kalman Filter and a reduced-rank extended Kalman Filter

机译:集成卡尔曼滤波器和降阶扩展卡尔曼滤波器的同化结果比较

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The goal of this study is to compare the performances of the ensemble Kalman filter and a reduced-rank extended Kalman filter when applied to different dynamic regimes. Data assimilation experiments are performed using an eddy-resolving quasi-geostrophic model of the wind-driven ocean circulation. By changing eddy viscosity, this model exhibits two qualitatively distinct behaviors: strongly chaotic for the low viscosity case and quasi-periodic for the high viscosity case. In the reduced-rank extended Kalman filter algorithm, the model is linearized with respect to the time-mean from a long model run without assimilation, a reduced state space is obtained from a small number (100 for the low viscosity case and 20 for the high viscosity case) of leading empirical orthogonal functions (EOFs) derived from the long model run without assimilation. Corrections to the forecasts are only made in the reduced state space at the analysis time, and it is assumed that a steady state filter exists so that a faster filter algorithm is obtained. The ensemble Kalman filter is based on estimating the state-dependent forecast error statistics using Monte Carlo methods. The ensemble Kalman filter is computationally more expensive than the reduced-rank extended Kalman filter.The results show that for strongly nonlinear case, chaotic regime, about 32 ensemble members are sufficient to accurately describe the non-stationary, inhomogeneous, and anisotropic structure of the forecast error covariance and the performance of the reduced-rank extended Kalman filter is very similar to simple optimal interpolation and the ensemble Kalman filter greatly outperforms the reduced-rank extended Kalman filter. For the high viscosity case, both the reduced-rank extended Kalman filter and the ensemble Kalman filter are able to significantly reduce the analysis error and their performances are similar. For the high viscosity case, the model has three preferred regimes, each with distinct energy levels. Therefore, the probability density of the system has a multi-modal distribution and the error of the ensemble mean for the ensemble Kalman filter using larger ensembles can be larger than with smaller ensembles.
机译:这项研究的目的是比较集成卡尔曼滤波器和降阶扩展卡尔曼滤波器在应用于不同动态范围时的性能。使用风驱动海洋环流的涡旋解析准地转模型进行数据同化实验。通过改变涡流粘度,该模型在质量上表现出两种不同的行为:对于低粘度情况,强烈混沌;对于高粘度情况,准周期性。在降秩扩展卡尔曼滤波算法中,模型是从长时间模型运行开始的,相对于时间平均值线性化的,没有同化,从少量(低粘度情况下为100,低粘度情况下为20)获得状态空间减少。高黏度的情况)源自长期模型运行而没有同化的领先经验正交函数(EOF)。仅在分析时在缩减状态空间中对预测进行校正,并假定存在稳态滤波器,以便获得更快的滤波器算法。集成卡尔曼滤波器基于使用蒙特卡洛方法估计状态相关的预测误差统计量的基础。集合卡尔曼滤波器在计算上比降阶扩展卡尔曼滤波器更昂贵。结果表明,在强非线性情况下,混沌状态下,大约32个集合成员足以准确地描述该集合的非平稳,不均匀和各向异性结构。预测误差协方差和降秩扩展卡尔曼滤波器的性能与简单最优插值非常相似,并且集成卡尔曼滤波器的性能大大优于降秩扩展卡尔曼滤波器。对于高粘度情况,降阶扩展卡尔曼滤波器和集成卡尔曼滤波器都能够显着降低分析误差,并且它们的性能相似。对于高粘度情况,模型具有三个首选方案,每个方案具有不同的能级。因此,系统的概率密度具有多峰分布,并且使用较大的集成体的集成卡尔曼滤波器的集成平均误差可能大于较小的集成体。

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