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Three-dimensional variational data assimilation for a limited area model Part II : Observation handling and assimilation experiments

机译:有限区域模型的三维变分数据同化第二部分:观测处理和同化实验

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摘要

A 3-dimensional variational data assimilation (3D-Var) scheme for the HIgh Resolution Limited Area Model (HIRLAM) forecasting system is described. The HIRLAM 3D-Var is based on the minimisation of a cost function that consists of one term, J(b), which measures the distance between the resulting analysis and a background field, in general a short-range forecast, and another term. J(o), which measures the distance between the analysis and the observations. This paper is concerned with J(o) and the handling of observations, while the companion Paper by Gustafsson et al. (2001) is concerned with the general 3D-Var formulation and with the J(b) term. Individual system components. such as the screening of observations and the observation operators, and other issues, such as the parallelisation strategy for the computer code, are described. The functionality of the observation quality control is investigated and the 3D-Var system is validated through data assimilation and forecast experiments. Results from assimilation and forecast experiments indicate that the 3D-Var assimilation system performs significantly better than two currently used HIRLAM systems. which are based on statistical interpolation. The use of all significant level data from multilevel observation reports is shown to be one factor contributing to the superiority of the 3D-Var system. Other contributing factors are most probably the formulation of the analysis as a single global problem, the use of non-separable structure functions and the variational quality control, which accounts for non-Gaussian observation errors.
机译:描述了一种用于高分辨力有限区域模型(HIRLAM)预测系统的3维变化数据同化(3D-Var)方案。 HIRLAM 3D-Var基于成本函数的最小化,该成本函数包含一个项J(b),该项测量结果分析与背景场(通常是短期预测)和另一个项之间的距离。 J(o),它测量分析和观察值之间的距离。本文涉及J(o)和观测值的处理,而Gustafsson等人的同伴论文。 (2001年)涉及一般的3D-Var公式和J(b)术语。各个系统组件。例如,观察结果的筛选和观察员,以及其他问题,例如计算机代码的并行化策略。研究了观测质量控制的功能,并通过数据同化和预测实验对3D-Var系统进行了验证。同化和预测实验的结果表明3D-Var同化系统的性能明显优于两个当前使用的HIRLAM系统。基于统计插值。使用多级观测报告中的所有重要水平数据被证明是有助于3D-Var系统优势的因素之一。其他影响因素很可能是将分析表示为单个整体问题,使用不可分的结构函数以及使用变分质量控制(这是造成非高斯观测误差的原因)。

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