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首页> 外文期刊>Hydrology and Earth System Sciences >Simplifying a hydrological ensemble prediction system with a backward greedy selection of members - Part 1: Optimization criteria
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Simplifying a hydrological ensemble prediction system with a backward greedy selection of members - Part 1: Optimization criteria

机译:通过成员的向后贪婪选择简化水文集合预测系统-第1部分:优化标准

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Hydrological Ensemble Prediction Systems (HEPS), obtained by forcing rainfall-runoff models with Meteorological Ensemble Prediction Systems (MEPS), have been recognized as useful approaches to quantify uncertainties of hydrological forecasting systems. This task is complex both in terms of the coupling of information and computational time, which may create an operational barrier. The main objective of the current work is to assess the degree of simplification (reduction of the number of hydrological members) that can be achieved with a HEPS configured using 16 lumped hydrological models driven by the 50 weather ensemble forecasts from the European Centre for Medium-range Weather Forecasts (ECMWF). Here, Backward Greedy Selection (BGS) is proposed to assess the weight that each model must represent within a subset that offers similar or better performance than a reference set of 800 hydrological members. These hydrological models' weights represent the participation of each hydrological model within a simplified HEPS which would issue realtime forecasts in a relatively short computational time. The methodology uses a variation of the k-fold cross-validation, allowing an optimal use of the information, and employs a multi-criterion framework that represents the combination of resolution, reliability, consistency, and diversity. Results show that the degree of reduction of members can be established in terms of maximum number of members required (complexity of the HEPS) or the maximization of the relationship between the different scores (performance).
机译:通过使用气象集合预报系统(MEPS)强制降雨径流模型获得的水文集合预报系统(HEPS)已被认为是量化水文预报系统不确定性的有用方法。就信息和计算时间的耦合而言,此任务很复杂,这可能会造成操作障碍。当前工作的主要目标是评估采用由16个集总水文模型配置的HEPS所能实现的简化程度(减少水文成员数),该模型由欧洲中型研究中心的50个天气集合预报驱动范围天气预报(ECMWF)。在此,提出了“后向贪婪选择”(BGS)来评估每个模型在一个子集内必须代表的权重,该子集与800个水文成员的参考集相比具有相似或更好的性能。这些水文模型的权重代表每个水文模型在简化的HEPS中的参与,这将在相对较短的计算时间内发布实时预测。该方法使用k倍交叉验证的变体,从而可以最佳地利用信息,并采用了多标准框架,该框架代表了分辨率,可靠性,一致性和多样性的组合。结果表明,可以根据所需的最大成员数(HEPS的复杂性)或不同分数之间的关系(性能)的最大化来确定成员的减少程度。

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