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A Scalable Space-Time Domain Decomposition Approach for Solving Large Scale Nonlinear Regularized Inverse Ill Posed Problems in 4D Variational Data Assimilation

机译:一种可扩展的空时域分解方法,用于求解四维变分数据同化中的大规模非线性正则化逆病态问题

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摘要

Abstract We address the development of innovative algorithms designed to solve the strong-constraint Four Dimensional Variational Data Assimilation (4DVar DA) problems in large scale applications. We present a space-time decomposition approach which employs the whole domain decomposition, i.e. both along the spacial and temporal direction in the overlapping case, and the partitioning of both the solution and the operator. Starting from the global functional defined on the entire domain, we get to a sort of regularized local functionals on the set of sub domains providing the order reduction of both the predictive and the Data Assimilation models. The algorithm convergence is developed. Performance in terms of reduction of time complexity and algorithmic scalability is discussed on the Shallow Water Equations on the sphere. The number of state variables in the model, the number of observations in an assimilation cycle, as well as numerical parameters as the discretization step in time and in space domain are defined on the basis of discretization grid used by data available at repository Ocean Synthesis/Reanalysis Directory of Hamburg University.
机译:摘要 研究开发创新算法,以解决大规模应用中强约束的四维变分数据同化(4DVar DA)问题。我们提出了一种时空分解方法,该方法采用全域分解,即在重叠情况下沿空间和时间方向进行分解,以及解和算子的划分。从在整个域上定义的全局泛函开始,我们得到了一组子域上的一种正则化的局部泛函,它提供了预测模型和数据同化模型的阶数降阶。算法收敛性得到发展。在降低时间复杂度和算法可扩展性方面的性能在球体上的浅水方程中进行了讨论。模型中的状态变量数量、同化周期中的观测值数量以及作为时间和空间域离散化步长的数值参数是根据汉堡大学海洋综合/再分析目录存储库中可用数据使用的离散化网格定义的。

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