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Atmospheric Data Assimilation with an Ensemble Kalman Filter: Results with Real Observations

机译:集成卡尔曼滤波器的大气数据同化:真实观测结果

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An ensemble Kalman filter (EnKF) has been implemented for atmospheric data assimilation. It assimilates observations from a fairly complete observational network with a forecast model that includes a standard operational set of physical parameterizations. To obtain reasonable results with a limited number of ensemble members, severe horizontal and vertical covariance localizations have been used. It is observed that the error growth in the data assimilation cycle is mainly due to model error. An isotropic parameterization, similar to the forecast-error parameterization in variational algorithms, is used to represent model error. After some adjustment, it is possible to obtain innovation statistics that agree with the ensemble-based estimate of the innovation amplitudes for winds and temperature. Currently, no model error is added for the humidity variable, and, consequently, the ensemble spread for humidity is too small. After about 5 days of cycling, fairly stable global filter statistics are obtained with no sign of filter divergence. The quality of the ensemble mean background field, as verified using radiosonde observations, is similar to that obtained using a 3D variational procedure. In part, this is likely due to the form chosen for the parameterized model error. Nevertheless, the degree of similarity is surprising given that the background-error statistics used by the two procedures are rather different, with generally larger background errors being used by the variational scheme. A set of 5-day integrations has been started from the ensemble of initial conditions provided by the EnKF. For the middle and lower troposphere, the growth rates of the perturbations are somewhat smaller than the growth rate of the actual ensemble mean error. For the upper levels, the perturbation patterns decay for about 3 days as a consequence of diffusive model dynamics. These decaying perturbations tend to severely underestimate the actual error that grows rapidly near the model top.
机译:集成卡尔曼滤波器(EnKF)已用于大气数据同化。它使用一个包括物理参数化的标准操作集的预测模型,将来自相当完整的观测网络的观测结果同化。为了获得有限数量的合奏成员的合理结果,已使用了严重的水平和垂直协方差定位。可以看出,数据同化周期中的误差增长主要是由于模型误差引起的。各向同性参数化类似于变分算法中的预测误差参数化,用于表示模型误差。进行一些调整后,可以获得与风和温度的创新幅度的基于集合的估计相符的创新统计数据。当前,没有为湿度变量添加模型误差,因此,湿度的整体分布太小。循环约5天后,获得了相当稳定的全局过滤器统计信息,而没有过滤器发散的迹象。使用探空仪观测证实的整体平均背景场的质量与使用3D变分程序获得的质量相似。在某种程度上,这可能是由于为参数化模型误差选择的形式。然而,鉴于两个过程使用的背景误差统计数据相当不同,而变分方案使用的背景误差通常较大,因此相似度令人惊讶。从EnKF提供的初始条件开始,开始了为期5天的集成。对于对流层中低层,扰动的增长率略小于实际整体平均误差的增长率。对于较高级别,由于扩散模型动力学的影响,扰动模式衰减了大约3天。这些衰减的扰动会严重低估模型顶部附近迅速增长的实际误差。

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