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Evaluation of Quantitative Precipitation Predictions by ECMWF, CMA, and UKMO for Flood Forecasting: Application to Two Basins in China

机译:ECMWF,CMA和UKMO在洪水预报中定量降水预报的评估:在中国两个流域的应用

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Numerical weather predictions (NWPs) are very useful in hydrological modeling, including for river flow forecasting and flood warning in river basins. However, uncertainties in NWPs also significantly impact the accuracy of streamflow forecasting. Therefore, evaluating the accuracy of NWPs is crucial to achieve reliable streamflow forecasts. In this study, rainfall prediction skills of three NWP models [developed by the European Centre for Medium-Range Weather Forecasts (ECMWF); the U.K. Meteorological Office (UKMO); and the China Meteorological Administration (CMA)] are evaluated in two basins (Linxian and Jiuzhaigou) in China, which have different hydroclimatic, topographic, and other characteristics. The evaluation is made by comparing the model predictions with measurements of ground-based rain gauges during the flood seasons (May to October) during 2011-2013. Four different evaluation measures are used: the confusion matrix, correlation coefficient, Nash-Sutcliffe efficiency, and root-mean square error. The influence of rainfall station representativeness (i.e.,location and density of rain gauges in the basin) is also analyzed in detail. The results show that ECMWF has the highest skill in precipitation forecast over the two studied basins, followed by UKMO and CMA. The performance of UKMO is also found to be very close to that of ECMWF. The results also indicate that the precipitation prediction of each of the three models is better for the Linxian Basin when compared to that for the Jiuzhaigou Basin. The present results have important implications for the use of NWP data in hydrological modeling, especially for flood forecasting. This work is made available under the terms of the Creative Commons Attribution 4.0 International license, http://creativecommons.org/licenses/by/4.0/.
机译:数值天气预报(NWP)在水文建模中非常有用,包括用于河流流量预报和流域洪水预警。但是,NWP的不确定性也会显着影响流量预测的准确性。因此,评估NWP的准确性对于实现可靠的流量预测至关重要。在这项研究中,三种NWP模型的降雨预报技巧[由欧洲中程天气预报中心(ECMWF)开发;英国气象局(UKMO); [中国气象局(CMA)]在两个具有不同水文气候,地形和其他特征的盆地(L县和九寨沟)进行了评估。通过将模型预测与2011-2013年汛期(5月至10月)的地面雨量计的测量值进行比较来进行评估。使用了四种不同的评估方法:混淆矩阵,相关系数,纳什-苏克利夫效率和均方根误差。还详细分析了降雨台站代表性(即流域内雨量计的位置和密度)的影响。结果表明,在两个研究流域,ECMWF的降水预报技能最高,其次是UKMO和CMA。还发现UKMO的性能非常接近ECMWF。结果还表明,与九寨沟盆地相比,三种模式对临县盆地的降水预报都更好。目前的结果对于将NWP数据用于水文模型,尤其是洪水预报具有重要意义。根据知识共享署名4.0国际许可的条款(http://creativecommons.org/licenses/by/4.0/),可以使用此作品。

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