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对流尺度集合预报成员数对降水预报的影响

陈良吕 夏宇

陈良吕, 夏宇. 对流尺度集合预报成员数对降水预报的影响. 应用气象学报, 2023, 34(2): 142-153. DOI:  10.11898/1001-7313.20230202..
引用本文: 陈良吕, 夏宇. 对流尺度集合预报成员数对降水预报的影响. 应用气象学报, 2023, 34(2): 142-153. DOI:  10.11898/1001-7313.20230202.
Chen Lianglü, Xia Yu. The influence of ensemble size on precipitation forecast in a convective scale ensemble forecast system. J Appl Meteor Sci, 2023, 34(2): 142-153. DOI:  10.11898/1001-7313.20230202.
Citation: Chen Lianglü, Xia Yu. The influence of ensemble size on precipitation forecast in a convective scale ensemble forecast system. J Appl Meteor Sci, 2023, 34(2): 142-153. DOI:  10.11898/1001-7313.20230202.

对流尺度集合预报成员数对降水预报的影响

DOI: 10.11898/1001-7313.20230202
资助项目: 

中国气象局气象能力提升联合研究专项 22NLTSY003

国家自然科学基金青年科学基金项目 42205165

重庆市气象局业务技术攻关项目 YWJSGG-202114

详细信息
    通信作者:

    陈良吕, 邮箱:chenllv214@163.com

The Influence of Ensemble Size on Precipitation Forecast in a Convective Scale Ensemble Forecast System

  • 摘要: 选取2022年川渝地区发生的16个强降水个例开展对流尺度集合预报批量试验,并通过对31组初值采用不同集合成员数时的降水集合预报技巧进行检验评估和综合分析。结果表明:集合成员的降水预报技巧总体上大致相当,因而采用不同成员数时预报技巧差异也不明显;表征降水总体分布特征的Talagrand分布和预报失误概率以及表征降水概率预报技巧的相对作用特征面积随着成员数的增加而逐渐改进,但当成员数达到一定数值后继续增大成员数对预报改进不明显。总体而言,对流尺度集合预报成员数设置为16~18最适宜。
  • 图  1  对流尺度集合预报系统中同化的雷达资料站点(红点) 分布和影响范围(蓝色圆圈)

    Fig. 1  Location (the red dot) and influence range (the blue circle) of the assimilated radars in the convective scale ensemble prediction system

    图  2  集合成员逐3 h累积降水量的预报技巧综合图

    Fig. 2  Performance diagrams of the ensemble members for each 3 h accumulated precipitation forecast

    图  3  采用不同成员数对应的逐3 h累积降水量的平均TS评分

    Fig. 3  Averaged threat scores for each 3 h accumulated precipitation forecast using different ensemble size

    图  4  采用不同成员数对应的0~3 h累积降水量Talagrand分布

    Fig. 4  Talagrand distribution of 0-3 h accumulated precipitation forecast using different ensemble size

    图  5  图 4,但为3~6 h累积降水量预报

    Fig. 5  The same as in Fig. 4, but for 3-6 h accumulated precipitation forecast

    图  6  采用不同成员数对应的逐3 h累积降水量预报失误概率

    Fig. 6  Forecast error probability for each 3 h accumulated precipitation forecast using different ensemble size

    图  7  采用不同成员数对应的逐3 h累积降水量AROC评分

    Fig. 7  AROC scores for each 3 h accumulated precipitation forecast using different ensemble size

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  • 收稿日期:  2022-09-05
  • 修回日期:  2023-02-10
  • 刊出日期:  2023-03-31

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