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Improving the ensemble transform Kalman filter using a second-order Taylor approximation of the nonlinear observation operator

机译:使用非线性观测算子的二阶泰勒近似来改进集合变换卡尔曼滤波器

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The ensemble transform Kalman filter (ETKF) assimilation scheme has recently seen rapid development and wide application. As a specific implementation of the ensemble Kalman filter (EnKF), the ETKF is computationally more efficient than the conventional EnKF. However, the current implementation of the ETKF still has some limitations when the observation operator is strongly nonlinear. One problem in the minimization of a nonlinear objective function similar to 4D-Var is that the nonlinear operator and its tangent-linear operator have to be calculated iteratively if the Hessian is not preconditioned or if the Hessian has to be calculated several times. This may be computationally expensive. Another problem is that it uses the tangent-linear approximation of the observation operator to estimate the multiplicative inflation factor of the forecast errors, which may not be sufficiently accurate. brbr This study attempts to solve these problems. First, we apply the second-order Taylor approximation to the nonlinear observation operator in which the operator, its tangent-linear operator and Hessian are calculated only once. The related computational cost is also discussed. Second, we propose a scheme to estimate the inflation factor when the observation operator is strongly nonlinear. Experimentation with the Lorenz 96 model shows that using the second-order Taylor approximation of the nonlinear observation operator leads to a reduction in the analysis error compared with the traditional linear approximation method. Furthermore, the proposed inflation scheme leads to a reduction in the analysis error compared with the procedure using the traditional inflation scheme.
机译:集成变换卡尔曼滤波器(ETKF)同化方案近来得到了快速发展和广泛应用。作为集成卡尔曼滤波器(EnKF)的特定实现,ETKF在计算上比常规EnKF更有效。但是,当观测算子是强非线性时,ETKF的当前实现仍存在一些局限性。最小化类似于4D-Var的非线性目标函数的一个问题是,如果未对Hessian进行预处理或必须多次计算Hessian,则必须迭代计算非线性算子及其正切线性算子。这在计算上可能是昂贵的。另一个问题是,它使用观测算子的切线线性逼近来估计预测误差的乘法膨胀因子,这可能不够准确。 这项研究试图解决这些问题。首先,我们将二阶泰勒逼近应用于非线性观测算子,其中算子,其切线算子和Hessian仅计算一次。还讨论了相关的计算成本。其次,我们提出了一种在观测算子是强非线性时估计通货膨胀因子的方案。使用Lorenz 96模型进行的实验表明,与传统的线性逼近方法相比,使用非线性观测算子的二阶泰勒逼近可降低分析误差。此外,与使用传统充气方案的程序相比,提出的充气方案可降低分析误差。

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