Introduction to Data Assimilation

M. Nodet
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引用次数: 11

Abstract

The basic purpose of data assimilation is to combine different sources of information to estimate at best the state of a system. These sources generally are observations (data), a numerical model and error statistics. Why not simply use observations? First, because observations are sparse or partial in geophysics. Some information is necessary to interpolate the information from observations to unobserved regions or quantities. A numerical model naturally does that. Second, because observations can be noised. Combining several noised data is an efficient way to filter out noise and provide a more accurate estimate. The data assimilation problem may be tackled with different mathematical approaches: signal processing, control theory, estimation theory for example. Stochastic methods, such as the well known Kalman filter, are based on estimation theory. On the other hand, variational methods (3D-Var, 4D-Var...) come from control theory. I will briefly present these two types of methods, and some implementation issues.
数据同化概论
数据同化的基本目的是将不同来源的信息结合起来,以估计系统的最佳状态。这些来源通常是观测(数据)、数值模型和误差统计。为什么不直接用观察呢?首先,因为地球物理学的观测是稀疏的或部分的。为了将观测到的信息插入到未观测到的区域或量中,一些信息是必要的。数值模型自然能做到这一点。第二,因为观测结果可能有噪声。结合多个含噪数据是一种有效的滤除噪声和提供更准确估计的方法。数据同化问题可以用不同的数学方法来解决:信号处理、控制理论、估计理论等。随机方法,如众所周知的卡尔曼滤波,是基于估计理论的。另一方面,变分方法(3D-Var, 4D-Var…)来自控制理论。我将简要介绍这两种类型的方法,以及一些实现问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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