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首页> 外文期刊>Meteorological applications >The influence of erroneous background, beam-blocking and microphysical non-linearity on the application of a four-dimensional variational Doppler radar data assimilation system for quantitative precipitation forecasts
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The influence of erroneous background, beam-blocking and microphysical non-linearity on the application of a four-dimensional variational Doppler radar data assimilation system for quantitative precipitation forecasts

机译:错误背景,光束阻挡和微物理非线性对多维变分多普勒雷达数据同化系统在定量降水预报中的应用的影响

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摘要

A series of observation system simulation experiments (OSSEs) and a real case study are conducted to investigate the application of the Doppler radar data assimilation technique for numerical model quantitative precipitation forecasts (QPFs). A four-dimensional variational Doppler radar analysis system (VDRAS) is adopted for all experiments. The first set of OSSEs demonstrates that when the background field contains the imperfect information predicted from a mesoscale model, the incorrect convective-scale perturbations in the background can result in spurious scattered precipitation. However, a smoothing procedure can be used to remove the fine structures from the primitive model output in order to avoid this over-prediction. Results from the second set of OSSEs indicate that the lack of low-elevation data owing to radar scan and/or beam blockage could significantly alter the retrieved low-level thermal and dynamical structures when a different number of data assimilation cycles is applied. These impacts could lower the rainfall forecast capability of the model. The third set of OSSEs shows that, when the rainwater is assimilated over a long assimilation window, the non-linearity embedded in the microphysical process could lead the minimization algorithm in a wrong direction, causing a further degradation of the rainfall prediction. However, using multiple short assimilation cycles produces better minimization and forecast results than those obtained with a single long cycle. A real case experiment based on data collected during Intensive Operation Period (IOP) #8 of the 2008 Southwest Monsoon Experiment (SoWMEX) is conducted to provide a verification of the conclusions obtained from OSSEs under a realistic framework.
机译:进行了一系列观测系统模拟实验(OSSE)和实际案例研究,以研究多普勒雷达数据同化技术在数值模型定量降水预报(QPF)中的应用。所有实验均采用四维变分多普勒雷达分析系统(VDRAS)。第一组OSSE证明,当背景场包含从中尺度模型预测的不完善信息时,背景中不正确的对流尺度扰动会导致虚假的分散降水。但是,可以使用平滑过程从原始模型输出中删除精细结构,以避免这种过度预测。第二组OSSE的结果表明,当应用不同数量的数据同化循环时,由于雷达扫描和/或波束阻塞而导致的低海拔数据不足,可能会显着改变检索到的低层热力和动力结构。这些影响可能会降低模型的降雨预报能力。第三组OSSE显示,当雨水在较长的同化窗口中被吸收时,微物理过程中嵌入的非线性可能会导致最小化算法朝错误的方向发展,从而导致降雨预测的进一步降低。但是,使用多个短同化周期会比单个长周期获得更好的最小化和预测结果。基于2008年西南季风实验(SoWMEX)的第8次密集运行期(IOP)收集的数据进行了真实案例实验,以验证在现实框架下从OSSE获得的结论。

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