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Analog Ensemble Data Assimilation in a Quasigeostrophic Coupled Model

Quarterly Journal of the Royal Meteorological Society(2023)SCI 3区

Univ Colorado

Cited 1|Views5
Abstract
The ensemble forecast dominates the computational cost of many data assimilation methods, especially for high‐resolution and coupled models. In situations where the cost is prohibitive, one can either use a lower‐cost model or a lower‐cost data assimilation method, or both. Ensemble optimal interpolation (EnOI) is a classical example of a lower‐cost ensemble data assimilation method that replaces the ensemble forecast with a single forecast and then constructs an ensemble about this single forecast by adding perturbations drawn from climatology. This research develops lower‐cost ensemble data assimilation methods that add perturbations to a single forecast, where the perturbations are obtained from analogs of the single model forecast. These analogs can either be found from a catalog of model states, constructed using linear combinations of model states from a catalog, or constructed using generative machine‐learning methods. Four analog ensemble data assimilation methods, including two new ones, are compared with EnOI in the context of a coupled model of intermediate complexity: Q‐GCM. Depending on the method and on the physical variable, analog methods can be up to 40% more accurate than EnOI.
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analogs,coupled models,data assimilation,machine learning
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要点】:该研究开发了一种新的低成本的集合数据同化方法,通过使用单个预报的类似物来添加扰动,与传统的集合最优插值方法相比,在一定条件下其精度可以提高高达40%。

方法】:该方法通过从模态状态目录中找到的、使用模型状态的线性组合构建的或使用生成式机器学习方法构建的单个预报的类似物,来增加对单个预报的扰动。

实验】:四种包括两种新方法的集合数据同化方法在中等复杂度的准地转耦合模型(Q-GCM)的背景下与集合最优插值方法进行了比较,结果显示,在不同的物理变量和不同的方法下,类似物方法可以比集合最优插值方法精确40%。实验使用的数据集为Q-GCM模型的数据集。