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Application of hybrid Kalman filter for improving water level forecast

机译:混合卡尔曼滤波在提高水位预报中的应用

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Numerical modeling is one of the popular means to simulate and forecast the state of oceanographic systems. However, it still suffers from some limitations, e.g., parameter uncertainties, simplification of model assumptions, and absence of data for proper boundary and initial conditions. This paper proposes a hybrid data assimilation scheme, which combines the Kalman filter (KF) with a data-driven model (local linear model (LM)), to directly correct numerical model outputs at locations without measurements. Two different types of KF (unscented Kalman filter and two-sample Kalman filter) are tested and compared. A local LM is utilized to describe the evolution of the model state and then assimilated into the KF. This in turns simplifies the application of KF for highly complex nonlinear systems such as the dynamic motion of Singapore regional water. The proposed scheme is first examined using a simple hypothetical bay experiment followed by an operational model of the Singapore Regional Model (SRM), in which both are set up in the Delft3D modeling environment. This combination of KF and data-driven model provides insights into the influence of different error covariance estimations on the model updating accuracy. This research also provides guidance to offline utilization of KF in updating of numerical model output.
机译:数值建模是模拟和预测海洋学系统状态的流行方法之一。但是,它仍然受到一些限制,例如参数不确定性,简化模型假设以及缺乏适当边界和初始条件的数据。本文提出了一种混合数据同化方案,该方案将卡尔曼滤波器(KF)与数据驱动模型(局部线性模型(LM))相结合,以直接校正没有测量值的位置处的数值模型输出。测试并比较了两种不同类型的KF(无味卡尔曼滤波器和两样本卡尔曼滤波器)。利用局部LM来描述模型状态的演化,然后被吸收到KF中。反过来,这简化了KF在高度复杂的非线性系统(例如新加坡区域水的动态运动)中的应用。首先使用简单的假设性海湾实验,然后是新加坡地区模型(SRM)的操作模型,对所提出的方案进行检查,在这两种模型中均在Delft3D建模环境中进行了设置。 KF和数据驱动的模型的这种结合提供了洞悉不同误差协方差估计对模型更新准确性的影响。该研究还为在更新数值模型输出中离线使用KF提供了指导。

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