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Skill of a global forecasting system in seasonal ensemble streamflow prediction

机译:在季节性集合流预测中的全球预测系统技能

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In this study we assess the skill of seasonal streamflow forecasts with the global hydrological forecasting system Flood Early Warning System (FEWS)-World, which has been set up within the European Commission 7th Framework Programme Project Global Water Scarcity Information Service (GLOWASIS). FEWS-World incorporates the distributed global hydrological model PCR-GLOBWB (PCRaster Global Water Balance). We produce ensemble forecasts of monthly discharges for 20 large rivers of the world, with lead times of up to 6?months, forcing the system with bias-corrected seasonal meteorological forecast ensembles from the European Centre for Medium-range Weather Forecasts (ECMWF) and with probabilistic meteorological ensembles obtained following the ESP procedure. Here, the ESP ensembles, which contain no actual information on weather, serve as a benchmark to assess the additional skill that may be obtained using ECMWF seasonal forecasts. We use the Brier skill score (BSS) to quantify the skill of the system in forecasting high and low flows, defined as discharges higher than the 75th and lower than the 25th percentiles for a given month, respectively. We determine the theoretical skill by comparing the results against model simulations and the actual skill in comparison to discharge observations. We calculate the ratios of actual-to-theoretical skill in order to quantify the percentage of the potential skill that is achieved. The results suggest that the performance of ECMWF S3 forecasts is close to that of the ESP forecasts. While better meteorological forecasts could potentially lead to an improvement in hydrological forecasts, this cannot be achieved yet using the ECMWF S3 dataset.
机译:在这项研究中,我们评估了季节性流普通预测的季节性流程预报洪水预警系统(少数) - 在欧洲委员会第七框架计划项目全球水资源稀缺信息服务(Glowasis)中,该计划的技能。少数世界纳入了分布式全球水文模型PCR-GlobWB(PCRaster全球水平)。我们为世界上20个大河流提供每月排放的合奏预测,其交货时间最多可达6个月,迫使系统与欧洲中距离预测中心(ECMWF)的偏重季节性气象预测集团(ECMWF)和遵循ESP程序后获得的概率气象合奏。这里,不包含天气实际信息的ESP合奏,用作评估可以使用ECMWF季节预测获得的额外技能的基准。我们使用BRIER技能评分(BSS)来量化在预测高低流量和低流量时系统的技能,定义为分别高于75th和给定月份的第25百分位数的放电。我们通过比较模拟模拟和实际技能的结果来确定理论技巧,与放电观察相比。我们计算实际对理论技能的比率,以量化实现的潜在技能的百分比。结果表明,ECMWF S3预测的表现接近ESP预测。虽然更好的气象预测可能导致水文预报的改善,但这不能使用ECMWF S3数据集实现。

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