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Assimilation of Doppler Radar Data with an Ensemble 3DEnVar Approach to Improve Convective Forecasting
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作者 Shibo GAO Haiqiu YU +2 位作者 Chuanyou REN Limin LIU Jinzhong MIN 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2021年第1期132-146,共15页
An ensemble three-dimensional ensemble-variational(3DEnVar)data assimilation(E3DA)system was developed within the Weather Research and Forecasting model’s 3DVar framework to assimilate radar data to improve convectiv... An ensemble three-dimensional ensemble-variational(3DEnVar)data assimilation(E3DA)system was developed within the Weather Research and Forecasting model’s 3DVar framework to assimilate radar data to improve convective forecasting.In this system,ensemble perturbations are updated by an ensemble of 3DEnVar and the ensemble forecasts are used to generate the flow-dependent background error covariance.The performance of the E3DA system was first evaluated against one experiment without radar DA and one radar DA experiment with 3DVar,using a severe storm case over southeastern China on 5 June 2009.Results indicated that E3DA improved the quantitative forecast skills of reflectivity and precipitation,as well as their spatial distributions in terms of both intensity and coverage over 3DVar.The root-mean-square error of radial velocity from 3DVar was reduced by E3DA,with stronger low-level wind closer to observation.It was also found that E3DA improved the wind,temperature and water vapor mixing ratio,with the lowest errors at the surface and upper levels.3DVar showed moderate improvements in comparison with forecasts without radar DA.A diagnosis of the analysis revealed that E3DA increased vertical velocity,temperature,and humidity corresponding to the added reflectivity,while 3DVar failed to produce these adjustments,because of the lack of reasonable cross-variable correlations.The performance of E3DA was further verified using two convective cases over southern and southeastern China,and the reflectivity forecast skill was also improved over 3DVar. 展开更多
关键词 ensemble 3denvar 3DVAR radar data assimilation convective forecasting
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不同同化方案在台风“白鹿”强降水预报中的应用 被引量:1
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作者 梁钧怡 王东海 +1 位作者 张宇 姚乐宝 《中山大学学报(自然科学版)(中英文)》 CAS CSCD 北大核心 2022年第4期104-118,共15页
基于WRF模式和GSI同化系统,构建了一套同化预报系统,研究常见的两种同化方法3DVar(threedimensional variational)和3DEnVar(three-dimensional ensemble-variational)的应用,开展不同的嵌套区域采用不同的同化方法对模式预报效果的影... 基于WRF模式和GSI同化系统,构建了一套同化预报系统,研究常见的两种同化方法3DVar(threedimensional variational)和3DEnVar(three-dimensional ensemble-variational)的应用,开展不同的嵌套区域采用不同的同化方法对模式预报效果的影响研究。基于本系统,分别设计三组试验,评估不同的同化方案对2019年8月第11号台风“白鹿”在华南地区造成强降水的模式预报和分析同化效果。个例试验结果表明:在双层嵌套模式中,两层均采用3DVar同化方法的试验对“白鹿”登陆前后所带来的小雨、中雨量级降水落区的模拟存在优势;而两层均采用3DEnVar同化方法的试验则对强降水落区和强度预报把握度更好,特别是对暴雨、大暴雨等强降水事件中心位置的模拟与实况更接近,且降水评分最优。此外,3DEnVar同化方法所构建的背景误差协方差具有明显的流依赖特性,并且对形成强降水的相关气象要素场包括垂直风场、温度场和湿度场的预报中均有较好的表现。 展开更多
关键词 三维变分同化 三维集合变分混合同化 WRF-GSI预报系统 台风降水 台风“白鹿”
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