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Classification of hydro-meteorological conditions and multiple artificial neural networks for streamflow forecasting

机译:水文气象条件分类和多个人工神经网络进行流量预报

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This paper presents the application of a modular approach for real-time streamflow forecasting that uses different system-theoretic rainfall-runoff models according to the situation characterising the forecast instant. For each forecast instant, a specific model is applied, parameterised on the basis of the data of the similar hydrological and meteorological conditions observed in the past. In particular, the hydro-meteorological conditions are here classified with a clustering technique based on Self-Organising Maps (SOM) and, in correspondence of each specific case, different feed-forward artificial neural networks issue the streamflow forecasts one to six hours ahead, for a mid-sized case study watershed. The SOM method allows a consistent identification of the different parts of the hydrograph, representing current and near-future hydrological conditions, on the basis of the most relevant information available in the forecast instant, that is, the last values of streamflow and areal-averaged rainfall. The results show that an adequate distinction of the hydro-meteorological conditions characterising the basin, hence including additional knowledge on the forthcoming dominant hydrological processes, may considerably improve the rainfall-runoff modelling performance.
机译:本文介绍了一种模块化方法在实时流量预报中的应用,该方法根据表征预报时刻的情况使用不同的系统理论降雨径流模型。对于每个预报时刻,将应用一个特定的模型,并根据过去观察到的类似水文和气象条件的数据进行参数化。特别是,这里的水文气象条件是利用基于自组织图(SOM)的聚类技术进行分类的,并且根据每种特定情况,不同的前馈人工神经网络会在未来一到六小时发布流量预测,是中型案例研究的分水岭。 SOM方法可以根据预报时刻可用的最相关信息(即水流的最新值和面积平均值)一致地识别代表当前和近期水文状况的水文图的不同部分雨量。结果表明,对流域水文气象条件的充分区分,因此包括有关即将到来的主要水文过程的更多知识,可能会大大改善降雨径流模拟性能。

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