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首页> 外文期刊>Progress in Oceanography >The Regional Ocean Modeling System (ROMS) 4-dimensional variational data assimilation systems: Part I - System overview and formulation
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The Regional Ocean Modeling System (ROMS) 4-dimensional variational data assimilation systems: Part I - System overview and formulation

机译:区域海洋建模系统(ROMS)4维变化数据同化系统:第一部分-系统概述和公式化

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摘要

The Regional Ocean Modeling System (ROMS) is one of the few community ocean general circulation models for which a 4-dimensional variational data assimilation (4D-Var) capability has been developed. The ROMS 4D-Var capability is unique in that three variants of 4D-Var are supported: a primal formulation of incremental strong constraint 4D-Var (I4D-Var), a dual formulation based on a physical-space statistical analysis system (4D-PSAS), and a dual formulation representer-based variant of 4D-Var (R4D-Var). In each case, ROMS is used in conjunction with available observations to identify a best estimate of the ocean circulation based on a set of α priori hypotheses about errors in the initial conditions, boundary conditions, surface forcing, and errors in the model in the case of 4D-PSAS and R4D-Var. In the primal formulation of I4D-Var the search for the best circulation estimate is performed in the full space of the model control vector, while for the dual formulations of 4D-PSAS and R4D-Var only the sub-space of linear functions of the model state vector spanned by the observations (i.e. the dual space) is searched. In oceanographic applications, the number of observations is typically much less than the dimension of the model control vector, so there are clear advantages to limiting the search to the space spanned by the observations. In the case of 4D-PSAS and R4D-Var, the strong constraint assumption (i.e. that the model is error free) can be relaxed leading to the so-called weak constraint formulation. This paper describes the three aforementioned variants of 4D-Var as they are implemented in ROMS. Critical components that are common to each approach are conjugate gradient descent, preconditioning, and error covariance models, which are also described. Finally, several powerful 4D-Var diagnostic tools are discussed, namely computation of posterior errors, eigenvector analysis of the posterior error covariance, observation impact, and observation sensitivity.
机译:区域海洋建模系统(ROMS)是为数不多的几个开发了4维变异数据同化(4D-Var)能力的海洋总体环流模型之一。 ROMS 4D-Var功能的独特之处在于,它支持4D-Var的三个变体:增量强约束4D-Var(I4D-Var)的原始公式,基于物理空间统计分析系统(4D- (PSAS),以及基于双重配方代表物的4D-Var(R4D-Var)变体。在每种情况下,ROMS都与可用的观测值结合使用,以基于关于初始条件,边界条件,地表强迫和模型中的误差的α先验假设集,确定最佳的海洋环流估计。 4D-PSAS和R4D-Var。在I4D-Var的原始公式中,寻找最佳循环估计值是在模型控制向量的整个空间中进行的,而对于4D-PSAS和R4D-Var的双重公式,则只有线性函数的子空间搜索由观测值跨越的模型状态向量(即对偶空间)。在海洋学应用中,观测值的数量通常比模型控制向量的维数少得多,因此将搜索限制在观测值所跨越的空间上具有明显的优势。在4D-PSAS和R4D-Var的情况下,可以放宽强约束假设(即模型无错误),从而导致所谓的弱约束公式化。本文描述了在ROMS中实现的上述4D-Var的三个变体。每种方法共有的关键组成部分是共轭梯度下降,预处理和误差协方差模型,这些内容也进行了描述。最后,讨论了几种功能强大的4D-Var诊断工具,即后误差的计算,后误差协方差的特征向量分析,观察影响和观察灵敏度。

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  • 来源
    《Progress in Oceanography》 |2011年第1期|p.34-49|共16页
  • 作者单位

    Department of Ocean Sciences, University of California, 1156 High Street, Santa Cruz, CA 95064, United States;

    Institute of Marine and Coastal Sciences, Rutgers University, 71 Dudley Road, New Brunswick, NJ 08901-8521, United States;

    Laboratoire des Sciences du Climat et de I'Environnement, CEA-Orme des Merisiers, F-91191 CIF-SUR-YVETTE CEDEX, France;

    Department of Oceanography, University of Hawai'I at Manoa, Honolulu, HI 96822, United States;

    Centre Europeen de Recherche et de Formation Avancee en Calcul Scientifique, Toulouse, France;

    Institute of Marine and Coastal Sciences, Rutgers University, 71 Dudley Road, New Brunswick, NJ 08901-8521, United States;

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