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

Using a mesoscale ensemble to predict forecast error and perform targeted observation
作者姓名:DU Jun  YU Rucong  CUI Chunguang  LI Jun
作者单位:National Centers for Environmental Prediction (NCEP), National Oceanic and Atmosphereic Administration (NOAA), Washington DC 20740, USA;Chinese Meteorological Administration (CMA), Beijing 100081, China;Wuhan Institute of Heavy Rain, CMA, Wuhan 430074, China;Wuhan Institute of Heavy Rain, CMA, Wuhan 430074, China
基金项目:the National Natural Science Foundation of China under contract No. 41275107.
摘    要:Using NCEP short range ensemble forecast(SREF) system,demonstrated two fundamental on-going evolutions in numerical weather prediction(NWP) are through ensemble methodology.One evolution is the shift from traditional single-value deterministic forecast to flow-dependent(not statistical) probabilistic forecast to address forecast uncertainty.Another is from a one-way observation-prediction system shifting to an interactive two-way observation-prediction system to increase predictability of a weather system.In the first part,how ensemble spread from NCEP SREF predicting ensemble-mean forecast error was evaluated over a period of about a month.The result shows that the current capability of predicting forecast error by the 21-member NCEP SREF has reached to a similar or even higher level than that of current state-of-the-art NWP models in predicting precipitation,e.g.,the spatial correlation between ensemble spread and absolute forecast error has reached 0.5 or higher at 87 h(3.5 d) lead time on average for some meteorological variables.This demonstrates that the current operational ensemble system has already had preliminary capability of predicting the forecast error with usable skill,which is a remarkable achievement as of today.Given the good spread-skill relation,the probability derived from the ensemble was also statistically reliable,which is the most important feature a useful probabilistic forecast should have.The second part of this research tested an ensemble-based interactive targeting(E-BIT) method.Unlike other mathematically-calculated objective approaches,this method is subjective or human interactive based on information from an ensemble of forecasts.A numerical simulation study was performed to eight real atmospheric cases with a 10-member,bred vector-based mesoscale ensemble using the NCEP regional spectral model(RSM,a sub-component of NCEP SREF) to prove the concept of this E-BIT method.The method seems to work most effective for basic atmospheric state variables,moderately effective for convective instabilities and least effective for precipitations.Precipitation is a complex result of many factors and,therefore,a more challenging field to be improved by targeted observation.

关 键 词:集合预测  预报误差  中尺度  NCEP  数值天气预报  传播预测  数值预报模型  概率预报
收稿时间:9/7/2010 12:00:00 AM
修稿时间:2012/6/10 0:00:00

Using a mesoscale ensemble to predict forecast error and perform targeted observation
DU Jun,YU Rucong,CUI Chunguang,LI Jun.Using a mesoscale ensemble to predict forecast error and perform targeted observation[J].Acta Oceanologica Sinica,2014,33(1):83-91.
Authors:DU Jun  YU Rucong  CUI Chunguang and LI Jun
Institution:1.National Centers for Environmental Prediction (NCEP), National Oceanic and Atmosphereic Administration (NOAA), Washington DC 20740, USA2.Chinese Meteorological Administration (CMA), Beijing 100081, China3.Wuhan Institute of Heavy Rain, CMA, Wuhan 430074, China
Abstract:Using NCEP short range ensemble forecast (SREF) system, demonstrated two fundamental on-going evolutions in numerical weather prediction (NWP) are through ensemble methodology. One evolution is the shift fromtraditional single-value deterministic forecast to flow-dependent (not statistical) probabilistic forecast to address forecast uncertainty. Another is froma one-way observation-prediction system shifting to an interactive two-way observation-prediction system to increase predictability of a weather system. In the first part, how ensemble spread from NCEP SREF predicting ensemble-mean forecast error was evaluated over a period of about a month. The result shows that the current capability of predicting forecast error by the 21- member NCEP SREF has reached to a similar or even higher level than that of current state-of-the-art NWP models in predicting precipitation, e.g., the spatial correlation between ensemble spread and absolute forecast error has reached 0.5 or higher at 87 h (3.5 d) lead time on average for some meteorological variables. This demonstrates that the current operational ensemble system has already had preliminary capability of predicting the forecast errorwith usable skill,which is a remarkable achievement as of today. Given the good spread-skill relation, the probability derived from the ensemble was also statistically reliable, which is the most important feature a useful probabilistic forecast should have. The second part of this research tested an ensemble-based interactive targeting (E-BIT) method. Unlike other math ematically-calculated objective approaches, thismethod is subjective or human interactive based on information froman ensemble of forecasts. A numerical simulation study was performed to eight real atmospheric cases with a 10-member, bred vector-based mesoscale ensemble using the NCEP regional spectralmodel (RSM, a sub-component of NCEP SREF) to prove the concept of this E-BIT method. The method seems to workmost effective for basic atmospheric state variables, moderately effective for convective instabilities and least effective for precipitations. Precipitation is a complex result of many factors and, therefore, a more challenging field to be improved by targeted observation.
Keywords:NCEP SREF ensemble  spread-skill relation  targeted observation
本文献已被 CNKI 维普 SpringerLink 等数据库收录!
点击此处可从《海洋学报(英文版)》浏览原始摘要信息
点击此处可从《海洋学报(英文版)》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