Numerical linear algebra in data assimilation

Q1 Mathematics
Melina A. Freitag
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引用次数: 5

Abstract

Data assimilation is a method that combines observations (ie, real world data) of a state of a system with model output for that system in order to improve the estimate of the state of the system and thereby the model output. The model is usually represented by a discretized partial differential equation. The data assimilation problem can be formulated as a large scale Bayesian inverse problem. Based on this interpretation we will derive the most important variational and sequential data assimilation approaches, in particular three-dimensional and four-dimensional variational data assimilation (3D-Var and 4D-Var) and the Kalman filter. We will then consider more advanced methods which are extensions of the Kalman filter and variational data assimilation and pay particular attention to their advantages and disadvantages. The data assimilation problem usually results in a very large optimization problem and/or a very large linear system to solve (due to inclusion of time and space dimensions). Therefore, the second part of this article aims to review advances and challenges, in particular from the numerical linear algebra perspective, within the various data assimilation approaches.

Abstract Image

数据同化中的数值线性代数
数据同化是一种将系统状态的观测(即真实世界的数据)与该系统的模型输出相结合的方法,目的是改进对系统状态的估计,从而改进模型输出。该模型通常用离散化的偏微分方程表示。数据同化问题可以表述为一个大规模的贝叶斯反问题。基于这种解释,我们将推导出最重要的变分和顺序数据同化方法,特别是三维和四维变分数据同化(3D-Var和4D-Var)和卡尔曼滤波。然后,我们将考虑更先进的方法,即卡尔曼滤波和变分数据同化的扩展,并特别注意它们的优点和缺点。数据同化问题通常会导致一个非常大的优化问题和/或一个非常大的线性系统需要解决(由于包含时间和空间维度)。因此,本文的第二部分旨在回顾各种数据同化方法的进展和挑战,特别是从数值线性代数的角度。
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来源期刊
GAMM Mitteilungen
GAMM Mitteilungen Mathematics-Applied Mathematics
CiteScore
8.80
自引率
0.00%
发文量
23
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