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CIRA/CSU Four-Dimensional Variational Data Assimilation System

机译:CIRA / CSU多维变异数据同化系统

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A new four-dimensional variational data assimilation (4DVAR) system is developed at the Cooperative Institute for Research in the Atmosphere (CIRA)/Colorado State University (CSU). The system is also called the Regional Atmospheric Modeling Data Assimilation System (RAMDAS). In its present form, the 4DVAR system is employing the CSU/Regional Atmospheric Modeling System (RAMS) nonhydrostatic primitive equation model. The Weather Research and Forecasting (WRF) observation operator is used to access the observations, adopted from the WRF three-dimensional variational data assimilation (3DVAR) algorithm. In addition to the initial conditions adjustment, the RAMDAS includes the adjustment of model error (bias) and lateral boundary conditions through an augmented control variable definition. Also, the control variable is defined in terms of the velocity potential and streamfunction instead of the horizontal winds. The RAMDAS is developed after the National Centers for Environmental Prediction (NCEP) Eta 4DVAR system, however with added improvements addressing its use in a research environment. Preliminary results with RAMDAS are presented, focusing on the minimization performance and the impact of vertical correlations in error covariance modeling. A three-dimensional formulation of the background error correlation is introduced and evaluated. The Hessian preconditioning is revisited, and an alternate algebraic formulation is presented. The results indicate a robust minimization performance.
机译:大气合作研究机构(CIRA)/科罗拉多州立大学(CSU)开发了一种新的四维变差数据同化(4DVAR)系统。该系统也称为区域大气建模数据同化系统(RAMDAS)。以目前的形式,4DVAR系统采用CSU /区域大气建模系统(RAMS)非静水原始方程模型。天气研究和预报(WRF)观测运算符用于访问观测,该观测取自WRF三维变分数据同化(3DVAR)算法。除了初始条件调整之外,RAMDAS还包括通过增强的控制变量定义来调整模型误差(偏差)和横向边界条件。同样,控制变量是根据速度势和流函数而不是水平风来定义的。 RAMDAS是在国家环境预测中心(NCEP)Eta 4DVAR系统之后开发的,但是针对其在研究环境中的使用进行了改进。给出了RAMDAS的初步结果,重点放在最小化性能和垂直相关在误差协方差建模中的影响。介绍并评估了背景误差相关性的三维表达。再次讨论了Hessian预处理,并提出了另一种代数形式。结果表明鲁棒的最小化性能。

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