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State-of-the-art stochastic data assimilation methods for high-dimensional non-Gaussian problems

机译:高维非高斯问题的最新随机数据同化方法

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This paper compares several commonly used state-of-the-art ensemble-based data assimilation methods in a coherent mathematical notation. The study encompasses different methods that are applicable to high-dimensional geophysical systems, like ocean and atmosphere and provide an uncertainty estimate. Most variants of Ensemble Kalman Filters, Particle Filters and second-order exact methods are discussed, including Gaussian Mixture Filters, while methods that require an adjoint model or a tangent linear formulation of the model are excluded. The detailed description of all the methods in a mathematically coherent way provides both novices and experienced researchers with a unique overview and new insight in the workings and relative advantages of each method, theoretically and algorithmically, even leading to new filters. Furthermore, the practical implementation details of all ensemble and particle filter methods are discussed to show similarities and differences in the filters aiding the users in what to use when. Finally, pseudo-codes are provided for all of the methods presented in this paper.
机译:本文以连贯的数学符号比较了几种常用的基于集合的最新数据同化方法。该研究包含适用于高维地球物理系统(如海洋和大气层)的不同方法,并提供了不确定性估计。讨论了Ensemble Kalman滤波器,粒子滤波器和二阶精确方法的大多数变体,包括高斯混合滤波器,而排除了需要伴随模型或模型的切线线性公式的方法。对所有方法的详细描述以数学上连贯的方式为新手和经验丰富的研究人员提供了独特的概述,并在理论上和算法上对每种方法的工作原理和相对优势提供了新的见解,甚至带来了新的过滤器。此外,讨论了所有集成和粒子过滤器方法的实际实现细节,以显示过滤器的相似之处和不同之处,以帮助用户何时使用。最后,为本文提出的所有方法提供了伪代码。

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