Data Assimilation: Two Different Perspectives Based on the Initial-Condition Dependence

Mohammad N. Murshed, Zarin Subah, Mohammad Monir Uddin
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Abstract

Both theory and real data are what we tend to use for engineering purposes. Data Assimilation (DA) is a computational tool that uses value from the model and the real measurement to arrive to an optimally acceptable value. The work in this paper is motivated by the fact that DA needs to be tailored based on the dependence of the problem on the initial condition. We point out that DA has two different perspectives based on the type of problem: one that does not rely on the initial condition, and the other that is initial condition dependent. Data Assimilation is demonstrated on two examples: runoff monitoring and forecasting in the city of Dhaka (initial condition independent) and convection in the atmosphere (initial condition dependent). We show that standard DA works well for problems with no initial condition dependence and piecewise DA is to be utilized when the problem has initial condition dependence. In the first example, we exploited standard Data Assimilation to arrive at values that are more realistic than the ones from the model and the observations. The second example is where we devised a method to find the dynamics of the system in a piecewise manner in Data Assimilation framework and noticed that the data assimilated dynamics (even due to noisy initial condition) is in good agreement with the true dynamics for a reasonable extent of time in future.
数据同化:基于初始条件依赖的两种不同视角
理论和实际数据都是我们用于工程目的的东西。数据同化(Data Assimilation, DA)是一种利用模型值和实际测量值得出最优可接受值的计算工具。本文工作的动机是,数据处理需要根据问题对初始条件的依赖性进行定制。我们指出,基于问题的类型,数据分析有两种不同的视角:一种不依赖于初始条件,另一种依赖于初始条件。数据同化通过两个实例进行了演示:达卡市径流监测和预报(初始条件独立)和大气对流(初始条件依赖)。我们证明了标准数据分析对于没有初始条件依赖的问题是有效的,而对于有初始条件依赖的问题则可以采用分段数据分析。在第一个例子中,我们利用标准的数据同化来获得比模型和观测结果更现实的值。第二个例子是我们在数据同化框架中设计了一种方法,以分段的方式找到系统的动态,并注意到数据同化的动态(即使是由于有噪声的初始条件)在未来合理的时间范围内与真实动态很好地一致。
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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