首页 | 官方网站   微博 | 高级检索  
     

中高纬度地区500 hPa高度场动力预测统计订正
引用本文:谭桂容,段浩,任宏利.中高纬度地区500 hPa高度场动力预测统计订正[J].应用气象学报,2012,23(3):304-311.
作者姓名:谭桂容  段浩  任宏利
作者单位:1.南京信息工程大学 气象灾害省部共建教育部重点实验室,南京 210044
基金项目:国家自然科学基金项目(40805028),公益性行业(气象)科研专项(20080232, 201206016)
摘    要:利用DEMETER多模式集合研究计划中Météo France模式的预报资料集,在分析其对冬季北半球中高纬度地区 (20°~90°N)500 hPa高度场预报效果的基础上,针对模式预测较差的模态分别运用最优子集回归修正方案和回归-相似相结合的修正方案对其进行订正。结果表明:数值模式对观测模态的预测能力并非随模态数的增加而递减,方差贡献较小的模态的预报效果可能好于方差贡献较大的模态;基于最优子集的回归订正方法未能改进原模式预报技巧;在最优子集回归基础上再经相似订正的方法 (DAP-OSR) 能够改进预测效果,独立试报的距平相关系数平均每年提高0.1。

关 键 词:季节预测    中高纬度地区    500  hPa高度场    动力预测    统计订正
收稿时间:2011-08-19

Statistical Correction for Dynamical Prediction of 500 hPa Height Field in Mid high Latitudes
Tan Guirong,Duan Hao and Ren Hongli.Statistical Correction for Dynamical Prediction of 500 hPa Height Field in Mid high Latitudes[J].Quarterly Journal of Applied Meteorology,2012,23(3):304-311.
Authors:Tan Guirong  Duan Hao and Ren Hongli
Affiliation:1.Key Laboratory of Meteorological Disaster of Ministry of Education, Nanjing University of Information Science & Technology, Nanjing 2100442.National Climate Center, Beijing 100081
Abstract:In terms of the Météo France model data of DEMETER project, the performance of ensemble forecast system at 500 hPa height field of winter in mid-high latitudes (20°—90°N) is studied, then both optimum subset regression (OSR) and dynamical analogue prediction (DAP) method are used to improve the model prediction. First, empirical orthogonal function (EOF) analysis is applied to investigate the observed 500 hPa height field of 1958—1991. The time coefficients of different modes for the numerical model are calculated by projecting the model data onto the observed EOF basement. Then the performance of the model modes based on empirical orthogonal function (EOF) of observations is examined by calculating the anomaly correlation coefficient (ACC) between the time coefficients of the leading 10 model and observed EOF modes. Next, the optimum subset regression (OSR) experiential model is established to advance the model prediction on the modes, which are predicted by the numerical modes with very low skill (i.e., low skill modes). Finally, the mean time coefficients of 5 observed similarity years on each low skill mode are substituted for those of the model prediction, where the similarity year is defined as its time coefficient estimated by OSR has minor difference from that of the prediction year. In this way, the analogue method is employed to correct the model prediction on OSR basis, namely, OSR-based analogue method. The results suggest that the prediction ability of the mode accounting for less variance may be higher than the mode with more variance, such as the 2nd and 3rd EOF modes have low skill but with large variance contribution to total variance of the model field. OSR fails in advancing the model prediction. The DAP method based on OSR (DAP-OSR) shows a possibility of improving the prediction techniques with ACC increasing 0.1 by correcting the bad modes of model while OSR fails.Correcting the dynamic prediction by combing the advantages of the numerical models and statistic methods, the nonlinear analogue method based on linear OSR shows a possibility of improving the prediction techniques by correcting the EOF modes, which are predicted by the numerical modes with very low skills. However, since the numerical model has a poor capability in representing the 2nd and 3rd EOF modes of the observation which account for large percent of total variance, and the forecast ability can not be improved effectively because the model prediction information is not enough or incorrect. Therefore, it is necessary to make further analysis on the samples of the modes, predicted with low skill by the numerical model, and the corresponding external forcing. The external forcing might be more effective to improve the correction for such modes with low skill.
Keywords:
本文献已被 CNKI 万方数据 等数据库收录!
点击此处可从《应用气象学报》浏览原始摘要信息
点击此处可从《应用气象学报》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司    京ICP备09084417号-23

京公网安备 11010802026262号