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A Scalable Approach for Variational Data Assimilation

机译:可变数据同化的可扩展方法

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摘要

Data assimilation (DA) is a methodology for combining mathematical models simulating complex systems (the background knowledge) and measurements (the reality or observational data) in order to improve the estimate of the system state (the forecast). The DA is an inverse and ill posed problem usually used to handle a huge amount of data, so, it is a large and computationally expensive problem. Here we focus on scalable methods that makes DA applications feasible for a huge number of background data and observations. We present a scalable algorithm for solving variational DA which is highly parallel. We provide a mathematical formalization of this approach and we also study the performance of the resulted algorithm.
机译:数据同化(DA)是一种将模拟复杂系统(背景知识)和测量值(现实或观测数据)的数学模型相结合以改进对系统状态(预测)的估计的方法。 DA是通常用于处理大量数据的逆问题,因此它是一个庞大且计算量大的问题。在这里,我们关注于可伸缩的方法,这些方法使DA应用程序对于大量的背景数据和观测数据可行。我们提出了一种解决高度并行的变分DA的可扩展算法。我们提供了这种方法的数学形式,并且我们还研究了所得算法的性能。

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