应用气象学报
應用氣象學報
응용기상학보
QUARTERLY JOURNAL OF APPLIED METEOROLOGY
2013年
6期
677-685
,共9页
刘长征%杜良敏%柯宗建%陈丽娟%贾小龙%艾(子兑)秀
劉長徵%杜良敏%柯宗建%陳麗娟%賈小龍%艾(子兌)秀
류장정%두량민%가종건%진려연%가소룡%애(자태)수
多模式集合%统计降尺度%MODES
多模式集閤%統計降呎度%MODES
다모식집합%통계강척도%MODES
multi-model ensemble%statistical downscaling%MODES
多模式集合和降尺度技术是提升模式预测能力的有效工具。该文对国家气候中心多模式解释应用集成预测(MODES)技术与业务应用现状进行了综合介绍。MODES采用欧洲中期天气预报中心、东京气候中心、美国国家环境预报中心和中国气象局国家气候中心4个气候业务季节预测模式输出场,利用EOF迭代、变形的典型相关分析、最优子集回归和高相关回归集成4种统计降尺度方法以及等权平均、经典超级集合等集成方法进行全国月及季节降水和气温预测。目前对 MODES进行了夏季回报检验和约1年的实时业务应用。回报检验和业务应用表明,MODES对气温有较好的预测能力(月预测平均PS评分为76),对降水有一定预测技巧(月预测平均PS评分为68),具有短期气候预测业务应用价值。
多模式集閤和降呎度技術是提升模式預測能力的有效工具。該文對國傢氣候中心多模式解釋應用集成預測(MODES)技術與業務應用現狀進行瞭綜閤介紹。MODES採用歐洲中期天氣預報中心、東京氣候中心、美國國傢環境預報中心和中國氣象跼國傢氣候中心4箇氣候業務季節預測模式輸齣場,利用EOF迭代、變形的典型相關分析、最優子集迴歸和高相關迴歸集成4種統計降呎度方法以及等權平均、經典超級集閤等集成方法進行全國月及季節降水和氣溫預測。目前對 MODES進行瞭夏季迴報檢驗和約1年的實時業務應用。迴報檢驗和業務應用錶明,MODES對氣溫有較好的預測能力(月預測平均PS評分為76),對降水有一定預測技巧(月預測平均PS評分為68),具有短期氣候預測業務應用價值。
다모식집합화강척도기술시제승모식예측능력적유효공구。해문대국가기후중심다모식해석응용집성예측(MODES)기술여업무응용현상진행료종합개소。MODES채용구주중기천기예보중심、동경기후중심、미국국가배경예보중심화중국기상국국가기후중심4개기후업무계절예측모식수출장,이용EOF질대、변형적전형상관분석、최우자집회귀화고상관회귀집성4충통계강척도방법이급등권평균、경전초급집합등집성방법진행전국월급계절강수화기온예측。목전대 MODES진행료하계회보검험화약1년적실시업무응용。회보검험화업무응용표명,MODES대기온유교호적예측능력(월예측평균PS평분위76),대강수유일정예측기교(월예측평균PS평분위68),구유단기기후예측업무응용개치。
Dynamic model is the dominant tool for the seasonal prediction operation in most climate prediction centers of the world.But now,for any single model,the predictability to seasonal precipitation and tem-perature is quite limited.Therefore,two kinds of techniques (i.e.,multi-model ensemble and downscal-ing)are developed efficiently to access better prediction ability.Multi-model ensemble can reduce model error and then bring higher prediction skills.Meanwhile,as the model predictability of circulation is better than that of precipitation and temperature,downscaling improves the prediction of temperature and precip-itation via regional model or statistic methods. <br> Due to the complex physical mechanism,the seasonal prediction to China climate is much a challenge. China National Climate Center (NCC)develops a new kind of prediction technique combining multi-model ensemble and downscaling.At present,the output variables from four seasonal models from WMO GPCs (inclu-ding ECMWF,TCC,NCEP and NCC)are used as predictors and four statistic downscaling methods (EOF-ITE, BP-CCA,Optical Subset Regression,Regress Ensemble of High Correlation Factors )are used to set prediction model.Every model output and every downscaling method are used so that 16 model-downscaling components are available.Besides,two methods (equal-weighted average,classic super-ensemble)are employed to access the en-semble result,respectively.As an index showing the prediction ability,the mean PS scores are computed for the reforecast of recent five years for every model-downscaling and ensemble component.The component with highest mean PS score is chosen as the best prediction result. <br> In NCC,the Multi-model Downscaling Ensemble Prediction System (MODES)are set up to realize the above ideas and the operational application of monthly and seasonal temperature with precipitation over China.Reforecast and operational application are carried out.The present reforecast and operational appli-cation for seasonal climate indicates that MODES has achieved quite good prediction skills for temperature and also improved precipitation prediction.The real-time application for monthly climate prediction for from September 2012 to July 2013 is assessed with NCC traditional PS methods.For monthly mean tem-perature,MODES holds the mean and median PS score of 76 and 81 ,respectively,showing much good prediction ability.Meanwhile,for the monthly precipitation of MODES,the mean and median PS scores are both 68,higher than mean scores of the operational prediction product of NCC.The reforecast and op-erational application indicate that MODES is a useful tool for the short-term climate operation prediction.