期刊论文详细信息
Journal of Earth system science
Experimental real-time multi-model ensemble (MME) prediction of rainfall during Monsoon 2008: Large-scale medium-range aspects
V R Durai21  J Sanjay34  T N Krishnamurti42  D R Sikka53  G R Iyengar15  A K Mitra15  A Mishra42 
[1] India Meteorological Department, New Delhi 110 003, India.$$;Department of Meteorology, Florida State University, Tallahassee, USA.$$;40 Mausam Vihar, New Delhi 110 051, India.$$;Indian Institute of Tropical Meteorology, Pune 411 008, India.$$;National Centre for Medium Range Weather Forecasting (NCMRWF), Ministry of Earth Sciences, Noida 201 307, India.$$
关键词: India monsoon;    rainfall forecast;    global-models;    multi-model ensemble (MME).;   
DOI  :  
学科分类:天文学(综合)
来源: Indian Academy of Sciences
PDF
【 摘 要 】

Realistic simulation/prediction of the Asian summer monsoon rainfall on various space–time scales is a challenging scientific task. Compared to mid-latitudes, a proportional skill improvement in the prediction of monsoon rainfall in the medium range has not happened in recent years. Global models and data assimilation techniques are being improved for monsoon/tropics. However, multi-model ensemble (MME) forecasting is gaining popularity, as it has the potential to provide more information for practical forecasting in terms of making a consensus forecast and handling model uncertainties. As major centers are exchanging model output in near real-time, MME is a viable inexpensive way of enhancing the forecasting skill and information content. During monsoon 2008, on an experimental basis, an MME forecasting of large-scale monsoon precipitation in the medium range was carried out in real-time at National Centre for Medium Range Weather Forecasting (NCMRWF), India. Simple ensemble mean (EMN) giving equal weight to member models, bias-corrected ensemble mean (BCEMn) and MME forecast, where different weights are given to member models, are the products of the algorithm tested here. In general, the aforementioned products from the multi-model ensemble forecast system have a higher skill than individual model forecasts. The skill score for the Indian domain and other sub-regions indicates that the BCEMn produces the best result, compared to EMN and MME. Giving weights to different models to obtain an MME product helps to improve individual member models only marginally. It is noted that for higher rainfall values, the skill of the global model rainfall forecast decreases rapidly beyond day-3, and hence for day-4 and day-5, the MME products could not bring much improvement over member models. However, up to day-3, the MME products were always better than individual member models.

【 授权许可】

Unknown   

【 预 览 】
附件列表
Files Size Format View
RO201912040492196ZK.pdf 3372KB PDF download
  文献评价指标  
  下载次数:1次 浏览次数:1次