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首页> 外文期刊>Journal of Hydrology >Ensemble forecasts of monthly catchment rainfall out to long lead times by post-processing coupled general circulation model output
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Ensemble forecasts of monthly catchment rainfall out to long lead times by post-processing coupled general circulation model output

机译:通过后处理与一般环流模型输出相结合的方法,对长提前期的月集水量降雨进行综合预测

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Monthly streamflow forecasts with long lead time are being sought by water managers in Australia. In this study, we take a first step towards a monthly streamflow modelling approach by harnessing a coupled ocean-atmosphere general circulation model (CGCM) to produce monthly rainfall forecasts for three catchments across Australia. Bayesian methodologies are employed to produce forecasts based on CGCM raw rainfall forecasts and also CGCM sea surface temperature forecasts. The Schaake Shuffle is used to connect forecast ensemble members of individual months to form ensemble monthly time series forecasts. Monthly forecasts and three-monthly forecasts of rainfall are assessed for lead times of 0-6 months, based on leave-one-year-out cross-validation for 1980-2010. The approach is shown to produce well-calibrated ensemble forecasts that source skill from both the atmospheric and ocean modules of the CGCM. Although skill is generally low, moderate skill scores are observed in some catchments for lead times of up to 6 months. In months and catchments where there is limited skill, the forecasts revert to climatology. Thus the forecasts developed can be considered suitable for continuously forecasting time series of streamflow to long lead times, when coupled with a suitable monthly hydrological model. Crown Copyright (C) 2014 Published by Elsevier B.V. All rights reserved.
机译:澳大利亚的水务管理人员正在寻求提前期长的月流量预测。在这项研究中,我们通过利用耦合的海洋-大气总环流模型(CGCM)来为澳大利亚三个集水区产生每月降雨量预报,迈向了每月流量模型方法的第一步。使用贝叶斯方法来基于CGCM原始降雨量预报以及CGCM海面温度预报产生预报。 Schaake Shuffle用于连接各个月的预测集合成员,以形成集合每月时间序列预测。根据1980-2010年的一年假交叉验证,评估了0-6个月的交货期的月度预报和三个月预报。结果表明,该方法可产生校准良好的总体预报,这些预报可从CGCM的大气和海洋模块中获取技能。尽管技能通常较低,但在某些集水区中观察到中等技能得分,导致交货时间长达6个月。在技​​能有限的月份和流域,天气预报恢复为气候。因此,当与适当的每月水文模型结合使用时,可以将所开发的预测认为适合于连续地预测水流的时间序列至较长的提前期。官方版权(C)2014,Elsevier B.V.保留所有权利。

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