Assimilation of Water Vapor Retrievals from ZDR Columns Using the 3DVar Method for Improving the Short-Term Prediction of Convective Storms

IF 2.8 3区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
Haiqin Chen, Jidong Gao, Tao Sun, Yaodeng Chen, Yunheng Wang, Jacob T. Carlin
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Abstract

The differential reflectivity (ZDR) column is a notable polarimetric signature related to updrafts in deep moist convection. In this study, pseudo water vapor (qv) observations are retrieved from observed ZDR columns under the assumption that humidity is saturated within the convection where ZDR columns are detected, and are then assimilated within the 3DVar framework. The impacts of assimilating pseudo qv observations from ZDR columns on short-term severe weather prediction are first evaluated for a squall line case. Radar data analysis indicates that the ZDR columns are mainly located on the inflow side of the high-reflectivity region. Assimilation of the pseudo qv observations leads to an enhancement of qv within the convection, while concurrently reducing humidity in no-rain areas. Sensitivity experiments indicate that a tuned smaller observation error and a shorter horizontal decorrelation scale are optimal for a better assimilation of pseudo qv from ZDR columns, resulting in more stable rain rates during short-term forecasts. Additionally, a 15-minute cycling assimilation frequency yields the best performance, providing the most accurate reflectivity forecast in terms of both location and intensity. Analysis of thermodynamic fields reveal that assimilating ZDR columns provides more favorable initial conditions for sustaining convection, including sustainable moisture condition, a strong cold pool, and divergent winds near the surface, consequently enhancing reflectivity and precipitation. With the optimal configuration determined from the sensitivity tests, a quantitative evaluation further demonstrates that assimilating the pseudo qv observations from ZDR columns using the 3DVar method can improve the 0-3 hour reflectivity and accumulated precipitation predictions of convective storms.
利用 3DVar 方法同化来自 ZDR 柱的水汽检索结果以改进对流风暴的短期预测
微分反射率(ZDR)柱是与深层潮湿对流中上升气流有关的一个显著的极坐标特征。在本研究中,假定在探测到 ZDR 柱的对流中湿度饱和,从观测到的 ZDR 柱中获取伪水汽(qv)观测值,然后在 3DVar 框架内进行同化。首先评估了从 ZDR 柱同化伪 qv 观测数据对短期恶劣天气预报的影响。雷达数据分析表明,ZDR 柱主要位于高反射率区域的流入侧。伪 qv 观测数据的同化导致对流内部的 qv 增强,同时降低了无雨区域的湿度。灵敏度实验表明,调谐较小的观测误差和较短的水平去相关尺度是更好地同化 ZDR 柱的伪 qv 的最佳选择,从而在短期预报中获得更稳定的降雨率。此外,15 分钟的循环同化频率能产生最佳性能,在位置和强度方面提供最准确的反射率预报。对热力学场的分析表明,同化 ZDR 柱为维持对流提供了更有利的初始条件,包括可持续的水汽条件、强大的冷池和近地面的发散风,从而提高了反射率和降水量。根据灵敏度测试确定的最佳配置,定量评估进一步证明,利用 3DVar 方法同化来自 ZDR 柱的伪 qv 观测数据,可以改进对流风暴 0-3 小时反射率和累积降水量的预测。
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来源期刊
Monthly Weather Review
Monthly Weather Review 地学-气象与大气科学
CiteScore
6.40
自引率
12.50%
发文量
186
审稿时长
3-6 weeks
期刊介绍: Monthly Weather Review (MWR) (ISSN: 0027-0644; eISSN: 1520-0493) publishes research relevant to the analysis and prediction of observed atmospheric circulations and physics, including technique development, data assimilation, model validation, and relevant case studies. This research includes numerical and data assimilation techniques that apply to the atmosphere and/or ocean environments. MWR also addresses phenomena having seasonal and subseasonal time scales.
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