Seshagiri Rao Kolusu, Marion Mittermaier, Joanne Robbins, Raghavendra Ashrit, Ashis K. Mitra
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引用次数: 1
摘要
我们评估了来自GloSea5 - GC2的完全耦合滞后集合预测的技能,用于长达4周的亚季节到季节(S2S)时间尺度,目的是了解这些预测如何在Ready - Set - Go风格的决策框架中使用。全球降水测量综合多卫星检索(IMERG - GPM)用于无缝验证这些月时间尺度的集合预报,其中预测和观测到的降水场在一系列增加的提前期积累窗口(LTAWs)上进行汇总,从1d到2w2w。结果表明,模型偏差随LTAW的增大和集合成员年龄的增大而增大。S2S模型显示了印度不同地区的湿偏和干偏。S2S模型误差从24小时累积的10毫米左右增加到2周ltaw的50毫米。集合预测的实际技能和潜在技能表明,潜在技能并不总是处处大于实际技能。对团队成员数量和年龄的敏感性进行了测试,在所有ltaw中排除年长成员对潜在技能的影响更大。我们得出的结论是,较老的滞后成员不一定会通过将其纳入中短期或甚至扩展范围预测而增加价值。GloSea5‐GC2在探测大型堆积方面表现出一定的能力,这些堆积并不总是与气候上频繁发生的地点有关。
Novel evaluation of sub-seasonal precipitation ensemble forecasts for identifying high-impact weather events associated with the Indian monsoon
We assess the skill of the fully coupled lagged ensemble forecasts from GloSea5-GC2, for the sub-seasonal to seasonal (S2S) timescale up to 4 weeks, with the aim of understanding how these forecasts might be used in a Ready-Set-Go style decision-making framework. Integrated Multi-satellite Retrievals for Global Precipitation Measurement (IMERG-GPM) are used to seamlessly verify these ensemble forecasts up to monthly timescales whereby forecast and observed precipitation fields are summed over a sequence of increasing lead time accumulation windows (LTAWs), from 1d1d up to 2w2w. Results show that model biases grow with increasing LTAW and with ensemble member age. The S2S model exhibits both wet and dry biases across different parts of the Indian domain. The S2S model error grows from around 10 mm for a 24-h accumulation to 50 mm for the 2-week LTAWs. The actual skill and potential skill of the ensemble forecasts reveal that the potential skill is not always greater than actual skill everywhere. The sensitivity to the number and age of ensemble members was tested, with potential skill showing more impact from the exclusion of older members at all LTAWs. We conclude that the older lagged members do not necessarily add value by being included in the short to medium range or even for the extended range forecasts. GloSea5-GC2 shows some skill in detecting large accumulations, which are not always tied to locations where they are climatologically frequent.
期刊介绍:
The aim of Meteorological Applications is to serve the needs of applied meteorologists, forecasters and users of meteorological services by publishing papers on all aspects of meteorological science, including:
applications of meteorological, climatological, analytical and forecasting data, and their socio-economic benefits;
forecasting, warning and service delivery techniques and methods;
weather hazards, their analysis and prediction;
performance, verification and value of numerical models and forecasting services;
practical applications of ocean and climate models;
education and training.