LIU Lin, CHEN Jing, CHENG Long, LIN Chunze, WU Zhipeng. 2013: Study of the ensemble-based forecast of extremely heavy rainfalls in China:Experiments for July 2011 cases. Acta Meteorologica Sinica, (5): 853-866. DOI: 10.11676/qxxb2013.044
Citation: LIU Lin, CHEN Jing, CHENG Long, LIN Chunze, WU Zhipeng. 2013: Study of the ensemble-based forecast of extremely heavy rainfalls in China:Experiments for July 2011 cases. Acta Meteorologica Sinica, (5): 853-866. DOI: 10.11676/qxxb2013.044

Study of the ensemble-based forecast of extremely heavy rainfalls in China:Experiments for July 2011 cases

  • According to the Anderson-Darling principle, a method for forecast of extremely severe rainfalls (abbreviated as extreme rainfall/precipitation) was developed based on the ensemble forecast data of the T213 global ensemble prediction system (EPS) of the China Meteorological Administration (CMA). Using the T213 forecast precipitation data during 2007-2010 and the observed rainfall data in June-August of 2001-2010, the characteristics of the cumulative distribution functions (CDFs) of the observed and the T213 EPS forecast precipitation were analyzed. Accordingly, in the light of the continuous differences of the CDFs between the model climate and EPS forecasts, a mathematical model of the Extreme Precipitation Forecast Index (EPFI) was established and applied to forecast experiments of the several extreme rainfall events in China during 17-31 July 2011. The results show that the EPFI has taken advantage of the tail information of the model climatic CDF and provided agreeable forecasts of extreme rainfalls. The EPFI based on the T213 EPS is useful for issuing early warnings of extreme rainfalls 3-7 days in advance. With extension of the forecast lead time, the EPFI becomes less skillful. The results also demonstrate that the rationality of the model climate CDF was of vital importance to the skill of EPFI.
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