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Ensemble Kalman filter based state estimation in 2D shallow water equations using Lagrangian sensing and state augmentation

机译:基于Lagrangian感应和状态增强的2D浅水方程的基于Senemble Kalman滤波器的状态估计

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We present a state estimation method for two-dimensional shallow water equations in rivers using Lagrangian drifter positions as measurements. The aim of this method is to compensate for the lack of knowledge of upstream and downstream boundary conditions in rivers that causes inaccuracy in the velocity field estimation by releasing drifters equipped with GPS receivers. The drifters report their positions and thus provide additional information of the state of the river. This information is incorporated into shallow water equations by using Ensemble Kalman Filtering (EnKF). The proposed method is based on the discretization of the governing nonlinear equations using the finite element method in unstructured meshes. We incorporate the drifter positions into the unknown state, which directly exploits the Langrangian nature of the measurements. The performance of the method is assessed with twin experiments.
机译:我们在河流中的二维浅水方程呈现了一种状态估计方法,使用拉格朗日漂移位置作为测量。这种方法的目的是弥补河流上游和下游边界条件的知识,这在通过释放配备有GPS接收器的漂移频率场估计中导致速度场估计不准确。漂移者报告其位置,从而提供河流状态的其他信息。通过使用集合卡尔曼滤波(ENKF)将该信息纳入浅水方程。该方法基于使用非结构化网格中的有限元方法的控制非线性方程的离散化。我们将漂移位置纳入未知状态,直接利用测量的Langrangian性质。用双实验评估该方法的性能。

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