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. doi: 10.1007/s13131-014-0426-5
Citation: 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. doi: 10.1007/s13131-014-0426-5

Using a mesoscale ensemble to predict forecast error and perform targeted observation

doi: 10.1007/s13131-014-0426-5
  • Received Date: 2010-09-07
  • Rev Recd Date: 2012-06-10
  • 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.
  • loading
  • Bishop C H, Toth Z. 1999. Ensemble transformation and adaptive observation.J Atmos Sci, 56: 1748-1765
    Black T L. 1994. The new NMC mesoscale Eta model description andforecast examples. Wea Forecasting, 9: 265-278
    Du J. 2001. Present situation and prospects of ensemble numericalprediction. J of AppliedMeteorological Science (in Chinese), 13:16-28
    Du J. 2007. Uncertainty and ensemble forecasting. NOAA/NWS Scienceand Technology Infusion Lecture Series, 42, http://www.nws.noaa.gov/ost/climate/STIP/uncertainty.htm
    Du J, Deng G. 2010. The utility of the transition from deterministicto probabilistic weather forecasts-Verification and applicationof probabilistic forecasts. Meteorological Monthly (in Chinese),36(12): 10-18
    Du J, DiMego G, Tracton M S, et al. 2003. NCEP short-range ensembleforecasting (SREF) system: multi-IC, multi-modeland multi-physics approach. In: J Cote, ed. ResearchActivities in Atmospheric and Oceanic Modelling, Report33, CAS/JSC Working Group Numerical Experimentation(WGNE),WMO/TD-No. 1161, 5.09-5.10, http://www.emc.ncep.noaa.gov/mmb/SREF/reference.html
    Du J, McQueen J, DiMego G, et al. 2004. The NOAA/NWS/NCEPshort-range ensemble forecast (SREF) system: evaluationof an initial condition vs. multi-model physics ensembleapproach. Preprints, 16th Conference on NumericalWeather Prediction, Seattle, Washington, Amer Meteor Soc,http://www.emc.ncep.noaa. gov/mmb/SREF/reference.html
    Du J,McQueen J, DiMego G, et al. 2006. New dimension of NCEP SREFsystem: Inclusion of WRF members. Report to WMO ExportTeamMeeting on Ensemble Prediction System, Exeter,UK, 6-10,http://www.emc.ncep. noaa.gov/mmb/SREF/reference.html
    Du J,Mullen S L, Sanders F. 1997. Short-range ensemble forecasting ofquantitative precipitation. MonWea Rev, 125: 2427-2459
    Du J, Tracton M S. 2001. Implementation of a real-time short-rangeensemble forecasting system at NCEP: an update. Preprints,9th Conference onMesoscale Processes, Ft Lauderdale, Florida,AmerMeteor Soc, 355-356
    Hamill T M, Colucci S J. 1998. Evaluation of Eta-RSM ensemble probabilisticprecipitation forecasts. MonWea Rev, 126: 711-724
    Juang HM, Kanamitsu. 1994. The NMC nested regional spectralmodel.MonWea Rev, 122: 3-26
    Leith C E. 1974. Theoretical skill of Monte Carlo forecasts. Mon WeaRev, 102: 409-418
    Li J, Du J, Zhang D L, et al. 2013. Ensemble-based analysis and sensitivityof mesoscale forecasts of a vortex over southwest China.Quart J RoyMet Soc, DOI: 10.1002./qj.2200
    Lorenz E N. 1965. A study of the predictability of a 28-variable atmosphericmodel.Tellus, 17: 321-333
    Pu Z X, Kalnay E. 1999. Targeting observation with the quasi-inverselinear and adjoint NCEP global models: performance duringFASTEX. Quart J RoyMeteor Soc, 125: 3329-3338
    Stensrud D J, Brooks H E, Du J, et al. 1999. Using ensembles for shortrangeforecasting. MonWea Rev, 127: 433-446
    Szunyogh I, Toth Z, Moss R E, et al. 2000. The effect of targeted dropsondeobservation during the 1999 winter stormreconnaissanceprogram. MonWea Rev, 128: 3520-3537
    Toth Z, Kalnay E. 1993. Ensemble forecasting at the NMC: the generationof perturbations. Bull AmerMeteorol Soc, 74: 2317-2330
    Toth Z, Kalnay E. 1997. Ensemble forecasting at NCEP and the breedingmethod.MonWea Rev, 125: 3297-3319
    Tracton M S, Du J, Toth Z, et al. 1998: Short-range ensemble forecasting(SREF) at NCEP/EMC. Preprints, 12th Conf on NumericalWeather Prediction, Phoenix, AmerMeteor Soc, 269-272
    Tracton M S, Kalnay E. 1993. Operational ensemble prediction at thenational meteorological center: practical aspects. Wea Forecasting,8: 378-398
    Whitaker J S, Loughe A F. 1998. The relationship between ensemblespread and ensemble mean skill. MonWea Rev, 126: 3292-3302
    Wilks D S. 2006. Statistical Methods in the Atmospheric Sciences. AcademicPress, 627
  • 加载中

Catalog

    通讯作者: 陈斌, bchen63@163.com
    • 1. 

      沈阳化工大学材料科学与工程学院 沈阳 110142

    1. 本站搜索
    2. 百度学术搜索
    3. 万方数据库搜索
    4. CNKI搜索

    Article Metrics

    Article views (1021) PDF downloads(1083) Cited by()
    Proportional views
    Related

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return