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Rainfall-runoff models using artificial neural networks for ensemble streamflow prediction

机译:基于人工神经网络的降雨径流模型的集成流预报

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Previous ensemble streamflow prediction (ESP) studies in Korea reported that modelling error significantly affects the accuracy of the ESP probabilistic winter and spring (i.e. dry season) forecasts, and thus suggested that improving the existing rainfall-runoff model, TANK, would be critical to obtaining more accurate probabilistic forecasts with ESP. This study used two types of artificial neural network (ANN), namely the single neural network (SNN) and the ensemble neural network (ENN), to provide better rainfall-runoff simulation capability than TANK, which has been used with the ESP system for forecasting monthly inflows to the Daecheong multipurpose dam in Korea. Using the bagging method, the ENN combines the outputs of member networks so that it can control the generalization error better than an SNN. This study compares the two ANN models with TANK with respect to the relative bias and the root-mean-square error. The overall results showed that the ENN performed the best among the three rainfall-runoff models. The ENN also considerably improved the probabilistic forecasting accuracy, measured in terms of average hit score, half-Brier score and hit rate, of the present ESP system that used TANK. Therefore, this study concludes that the ENN would be more effective for ESP rainfall-runoff modelling than TANK or an SNN.
机译:韩国先前的整体流量预报(ESP)研究表明,建模误差会严重影响ESP概率性冬季和春季(即旱季)预报的准确性,因此,建议改进现有的降雨径流模型TANK对于使用ESP获得更准确的概率预测。该研究使用了两种类型的人工神经网络(ANN),即单神经网络(SNN)和集成神经网络(ENN),以提供比TANK更好的降雨径流模拟能力,后者已与ESP系统一起用于预测韩国大清多用途水坝的月流入量。使用装袋方法,ENN合并了成员网络的输出,因此与SNN相比,它可以更好地控制泛化误差。这项研究比较了两种采用TANK的ANN模型的相对偏差和均方根误差。总体结果表明,ENN在三个降雨径流模型中表现最佳。 ENN还大大提高了使用TANK的现有ESP系统的概率预测准确性,该准确性预测是通过平均命中分数,半格挡分数和命中率来衡量的。因此,这项研究得出的结论是,ENN在ESP降雨径流建模方面比TANK或SNN更有效。

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