Impact of high-frequency observations on fog forecasting: a case study of OSSE
2017年11月16日·
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0 分钟阅读时长
胡慧琴
Qinghong Zhang
Juanzhen Sun
Chengqing Ruan
Fei Huang
Shaoqing Zhang
徐俊丽
Kai Ma
Yuling Nie
Chuanyu Liu
Xin Bi
Wenqi Shi
Xianqing Lv

摘要
Fog that refers to the concentration of ice or water droplets in the near surface air is an important short-time meteorological phenomenon. As the measure of visibility of air environment, it directly affects societal economic activities and daily lives. As more and more high-frequency observations (observations with short time intervals) become available, understanding how to make full use of such observed data to improve fog forecasting is an important and urgent research topic. Based on the Weather Research and Forecasting (WRF) Model and an observation simulation system experiment (OSSE) framework, this study explores a modified three-dimensional variational (3D-Var) data assimilation (DA) scheme to address the utilization of high-frequency observations on fog forecasting. In the modified 3D-Var scheme, the large-scale analysis constraint (LSAC) method is employed to the WRF 3D-Var. A dense fog event, which occurred in the North of China in 2007, is selected for the case study. Experimental results show that coherently combining high-frequency observational information with large-scale analysis information enables to significantly improve the 3D-Var analyses and the initialized model forecasts of fog coverage, especially over areas with coarse observations. The modified scheme is therefore promising for improving the routine forecasting of coastal sea fog. The optimal DA interval for fog forecasting is also discussed in this study.
类型
出版物
Tellus A: Dynamic Meteorology and Oceanography

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讲师
博士,硕士生导师,2016年1月从中国海洋大学海洋科学博士后流动站出站,3月进入青岛科技大学数理学院工作。主持多项科研项目,如国家自然科学基金青年基金、山东省海洋生态环境与防灾减灾重点实验室开放基金、青岛市博士后研究人员应用研究项目资助。
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