卡尔曼平滑法在平流和扩散逆建模中的应用

IF 0.4 Q4 MATHEMATICS, APPLIED
E. G. Klimova
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引用次数: 0

摘要

摘要 利用数据同化系统研究温室气体在空间和时间上的扩散,并评估这些气体从地球表面的通量,是监测环境的一个重要问题。估算温室气体通量的方法之一是假设通量在给定子域和给定时间间隔(约一周)内恒定不变。算法的特性和使用的观测数据证明了这一点。估算来自地球表面的温室气体通量的现代问题具有很大的维度。因此,通常会考虑对通量进行估算,并在观测算子中加入平流和扩散模型。我们在这里讨论的是大同化窗口,其中通量是在几个时间间隔内估算的。本文考虑了一种根据给定时间间隔的观测结果估算通量的算法。该算法是广泛应用于此类问题的集合平滑算法的变体。研究表明,当使用一个同化窗口对多个时间间隔的通量进行估算时,该算法可能会变得不稳定,从而违反了可观测性条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Application of Ensemble Kalman Smoothing in Inverse Modeling of Advection and Diffusion

Application of Ensemble Kalman Smoothing in Inverse Modeling of Advection and Diffusion

Abstract

To study the spread of greenhouse gases in space and time, as well as to assess the fluxes of these gases from the Earth’s surface by using a data assimilation system is an important problem of monitoring the environment. One of the approaches to estimating the greenhouse gas fluxes is based on the assumption that the fluxes are constant in a given subdomain and over a given time interval (about a week). This is justified by the properties of the algorithm and the observational data used. The modern problems of estimating greenhouse gas fluxes from the Earth’s surface have large dimensions. Therefore, a problem statement is usually considered in which the fluxes are estimated, and an advection and diffusion model is included in the observation operator. Here we deal with large assimilation windows in which fluxes are estimated in several time intervals. The paper considers an algorithm for estimating the fluxes based on observations from a given time interval. The algorithm is a variant of an ensemble smoothing algorithm, which is widely used in such problems. It is shown that when using an assimilation window in which the fluxes are estimated for several time intervals, the algorithm may become unstable, and an observability condition is violated.

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来源期刊
Numerical Analysis and Applications
Numerical Analysis and Applications MATHEMATICS, APPLIED-
CiteScore
1.00
自引率
0.00%
发文量
22
期刊介绍: Numerical Analysis and Applications is the translation of Russian periodical Sibirskii Zhurnal Vychislitel’noi Matematiki (Siberian Journal of Numerical Mathematics) published by the Siberian Branch of the Russian Academy of Sciences Publishing House since 1998. The aim of this journal is to demonstrate, in concentrated form, to the Russian and International Mathematical Community the latest and most important investigations of Siberian numerical mathematicians in various scientific and engineering fields. The journal deals with the following topics: Theory and practice of computational methods, mathematical physics, and other applied fields; Mathematical models of elasticity theory, hydrodynamics, gas dynamics, and geophysics; Parallelizing of algorithms; Models and methods of bioinformatics.
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