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An error estimate of Gaussian recursive filter in 3Dvar problem

机译:3Dvar问题中高斯递归滤波器的误差估计

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Computational kernel of the three-dimensional variational data assimilation (3D-Var) problem is a linear system, generally solved by means of an iterative method. The most costly part of each iterative step is a matrix-vector product with a very large covariance matrix having Gaussian correlation structure. This operation may be interpreted as a Gaussian convolution, that is a very expensive numerical kernel. Recursive Filters (RFs) are a well known way to approximate the Gaussian convolution and are intensively applied in the meteorology, in the oceanography and in forecast models. In this paper, we deal with an oceanographic 3D-Var data assimilation scheme, named OceanVar, where the linear system is solved by using the Conjugate Gradient (GC) method by replacing, at each step, the Gaussian convolution with RFs. Here we give theoretical issues on the discrete convolution approximation with a first order (1st-RF) and a third order (3rd-RF) recursive filters. Numerical experiments confirm given error bounds and show the benefits, in terms of accuracy and performance, of the 3-rd RF.
机译:三维变异数据同化(3D-Var)问题的计算核心是线性系统,通常通过迭代方法求解。每个迭代步骤中最昂贵的部分是矩阵向量乘积,该乘积具有非常大的具有高斯相关结构的协方差矩阵。该运算可以解释为高斯卷积,这是非常昂贵的数值内核。递归过滤器(RF)是一种近似的高斯卷积方法,在气象学,海洋学和预报模型中得到了广泛的应用。在本文中,我们处理了一个名为OceanOar的海洋3D-Var数据同化方案,其中通过使用共轭梯度(GC)方法替换线性系统,方法是在每个步骤中用RF替换高斯卷积。在这里,我们给出了关于具有一阶(1st-RF)和三阶(3rd-RF)递归滤波器的离散卷积近似的理论问题。数值实验确定了给定的误差范围,并显示了第三射频的准确性和性能方面的好处。

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