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Efficient methods for computing observation impact in 4D-Var data assimilation

机译:计算4D-Var数据同化中观察影响的有效方法

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This paper presents a practical computational approach to quantify the effect of individual observations in estimating the state of a system. Such a methodology can be used for pruning redundant measurements and for designing future sensor networks. The mathematical approach is based on computing the sensitivity of the analyzed model states (unconstrained optimization solution) with respect to the data. The computational cost is dominated by the solution of a linear system, whose matrix is the Hessian of the cost function, and is only available in operator form. The right-hand side is the gradient of a scalar cost function that quantifies the forecast error of the numerical model. The use of adjoint models to obtain the necessary first- and second-order derivatives is discussed. We study various strategies to accelerate the computation, including matrix-free iterative solvers, preconditioners. and an in-house multigrid solver. Experiments are conducted on both a small-size shallow-water equations model and on a large-scale numerical weather prediction model, in order to illustrate the capabilities of the new methodology.
机译:本文提出了一种实用的计算方法来量化单个观测值在估计系统状态时的效果。这样的方法可以用于修剪冗余测量和设计未来的传感器网络。数学方法是基于计算分析的模型状态(无约束的优化解决方案)相对于数据的敏感性。计算成本主要由线性系统的解决定,线性系统的矩阵是成本函数的Hessian,并且只能以运算符形式提供。右侧是标量成本函数的梯度,用于量化数值模型的预测误差。讨论了使用伴随模型来获得必要的一阶和二阶导数。我们研究了各种加速计算的策略,包括无矩阵迭代求解器,预处理器。和一个内部的多网格求解器。为了说明新方法的功能,对小型浅水方程模型和大型数值天气预报模型都进行了实验。

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