首页 | 本学科首页   官方微博 | 高级检索  
     检索      

数值天气预报检验方法研究进展
引用本文:潘留杰,张宏芳,王建鹏.数值天气预报检验方法研究进展[J].地球科学进展,2014,29(3):327-335.
作者姓名:潘留杰  张宏芳  王建鹏
作者单位:陕西省气象台;陕西省气象服务中心;
基金项目:中国气象局预报员专项“T639、ECMWF、日本高分辨率模式对陕西强降水过程预报性能的诊断分析”(编号:CMAYBY2014-070);陕西省气象局数值模式应用团队、预报员专项“基于MODE方法的日本、T639高分辨率模式降水预报能力的诊断分析”(编号:2014Y-9)资助
摘    要:数值天气预报检验是改进及应用数值模式的重要环节。近年来,模式检验中的观念不断更新,适用于不同预报产品及不同用户需求的模式检验方法也不断涌现。首先简单回顾了以列联表为基础的传统的模式检验方法。其次重点总结了伴随高分辨率数值预报而出现的空间诊断检验技术,按照检验目的的不同,诊断方法可以归纳为:①基于滤波技术的分辨模式在不同时空尺度上预报能力的邻域法、尺度分离法;②利用位移偏差诊断模式预报位置、面积、方位、轴角等与观测差异的属性判别法、变形评估法。然后阐述了集合样本成员的概率分布函数(PDF)、集合预报与观测概率分布函数相似程度、事件发生的概率预报等集合预报检验方法。最后论述了空间诊断技术、集合预报检验方法的适用领域,并讨论了模式检验中存在的一些问题及未来的发展方向。

关 键 词:空间诊断  集合预报  概率预报

Progress on Verification Methods of Numerical Weather Prediction
Pan Liujie,Zhang Hongfang,Wang Jianpeng.Progress on Verification Methods of Numerical Weather Prediction[J].Advance in Earth Sciences,2014,29(3):327-335.
Authors:Pan Liujie  Zhang Hongfang  Wang Jianpeng
Institution:1.Shaanxi Meteorological Observatory, Xi’an 710014, China; 2.Shaanxi Meteorological Service Centre, Xi’an 710014, China
Abstract:The numerical weather prediction verification is a key step to improving applied numerical models. In recent years, the concepts used in model verification have been updated constantly and the model verification approaches fit for different prediction products and meeting the needs of different customers have proposed continuously. First, this research gives a brief overview of traditional model verification methods based on contingency table. Second, the spatial verification technology along with high resolution numerical prediction is illustrated. According to different purposes, the spatial verification methods can mostly be classified into two general categories: filtering methods and displacement methods. The filtering methods can be further delineated into neighborhood and scale separation, and the displacement methods can be divided into features-based ones and field deformations. Third, the probability distribution function of ensemble prediction sample members, the similar degrees between probability distribution function of ensemble prediction and the observation distribution function, the probability of an event occurring and such ensemble prediction verification methods are described. Finally, the fields where spatial verification technology and ensemble prediction verification methods can be used are analyzed and some problems concerning model verification and the direction in which these technologies will go are discussed.
Keywords:Ensemble forecasts  Probability forecasts  Spatial forecast verification  
本文献已被 CNKI 等数据库收录!
点击此处可从《地球科学进展》浏览原始摘要信息
点击此处可从《地球科学进展》下载免费的PDF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