Acta Scientiarum Naturalium Universitatis Pekinensis

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Four-Dimensional Variational Assimilation of AWS Precipitation Data

SHAO Mingxuan1, 2, CHEN Min2, TAO Zuyu1, CHEN Lu3   

  • Received:2004-04-26 Online:2005-09-20 Published:2005-09-20

用四维变分法同化自动站降水资料

邵明轩1,2,陈敏2,陶祖钰1,陈露3   

Abstract: Four-dimensional variation data assimilation (4D-VAR) is a logical and rigorous mathematical method to obtain the "best" estimate of the model initial conditions from observations and a priori knowledge of the atmospheric state. It is one of the most advanced data assimilation methods today. Automation weather station (AWS) precipitation data is assimilated by 4D-VAR in experiments. Experiment results show that, due to addition of information of AWS precipitation data, the initial field of test is enhanced in meso-scale information, and it matches the model better in thermo-dynamical mechanism. After assimilation, the simulation is improved. The precipitation during the start period in simulation is increased, and the situation of simulating precipitation matches real situation better. The "spin-up" problem of the model is weakened. Experiment results also show that temporal information of AWS precipitation data is very important for assimilation.

Key words: four-dimensional variation data assimilation, AWS precipitation assimilation, meso-scale numerical model, torrential rain simulation

摘要: 用自动站降水资料作了四维变分同化试验。试验表明,由于它的加入,增加了初始场中的中尺度信息,改进了中尺度数值模式MM5的预报,增强了模拟开始阶段的降水量, 改进了降水量的落区预报,减弱了模式开始阶段的“spin-up"现象。试验还表明,自动站降水资料的时间变化信息,在同化时也起重要作用。

关键词: 四维变分, 自动站降水量同化, 中尺度数值模式, 暴雨模拟

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