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Singular-Vector-Based Covariance Propagation in a Quasigeostrophic Assimilation System

机译:准地化同化系统中基于奇异矢量的协方差传播

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Variational data assimilation systems require the specification of the covariances of background and observation errors. Although the specification of the background-error covariances has been the subject of intense research, current operational data assimilation systems still rely on essentially static and thus flow-independent background-error covariances. At least theoretically, it is possible to use flow-dependent background-error covariances in four-dimensional variational data assimilation (4DVAR) through exploiting the connection between variational data assimilation and estimation theory. This paper reports on investigations concerning the impact of flow-dependent background-error covariances in an idealized 4DVAR system that, based on quasigeostrophic dynamics, assimilates artificial observations. The main emphasis is placed on quantifying the improvement in analysis quality that is achievable in 4DVAR through the use of flow-dependent background-error covariances. Flow dependence is achieved through dynamical error-covariance evolution based on singular vectors in a reduced-rank approach, referred to as reduced-rank Kalman filter (RRKF). The RRKF yields partly dynamic background-error covariances through blending static and dynamic information, where the dynamic information is obtained from error evolution in a subspace of dimension k (defined here through the singular vectors) that may be small compared to the dimension of the model's phase space n, which is equal to 1449 in the system investigated here. The results show that the use of flow-dependent background-error covariances based on the RRKF leads to improved analyses compared to a system using static background-error statistics. That latter system uses static background-error covariances that are carefully tuned given the model dynamics and the observational information available. It is also shown that the performance of the RRKF approaches the performance of the extended Kalman filter, as k approaches n. Results therefore support the hypothesis that significant analysis improvement is possible through the use of flow-dependent background-error covariances given that a sufficiently large number (here on the order of n/10) of singular vectors is used.
机译:变分数据同化系统要求规范背景误差和观察误差。尽管背景误差协方差的规范一直是深入研究的主题,但当前的操作数据同化系统仍然依赖于基本静态的,因此与流量无关的背景误差协方差。至少在理论上,通过利用变异数据同化与估计理论之间的联系,可以在四维变异数据同化(4DVAR)中使用与流量相关的背景误差协方差。本文报道了有关在理想的4DVAR系统中基于流量的背景误差协方差的影响的研究,该系统基于拟地转动力学,吸收了人工观测结果。主要重点放在通过使用依赖于流量的背景误差协方差来量化4DVAR中可以实现的分析质量改进上。通过基于奇数向量的动态误差-协方差演化以降秩方法(称为降秩卡尔曼滤波器(RRKF))实现流依赖性。 RRKF通过混合静态和动态信息来产生部分动态的背景误差协方差,其中动态信息是从维度k(此处通过奇异矢量定义)的子空间中的误差演化获得的,该子空间与模型维数相比可能很小。相空间n,在这里研究的系统中等于1449。结果表明,与使用静态背景误差统计数据的系统相比,基于RRKF的依赖于流量的背景误差协方差的使用导致了改进的分析。后者的系统使用静态背景误差协方差,在模型动力学和可用的观测信息条件下会对其进行仔细调整。还表明,随着k接近n,RRKF的性能接近扩展卡尔曼滤波器的性能。因此,结果支持以下假设:假设使用足够多的奇异矢量(此处为n / 10),则可以通过使用流量相关的背景误差协方差来显着改善分析。

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