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Improving the forecasts of extreme streamflow by support vector regression with the data extracted by self‐organizing map

机译:通过自组织映射提取的数据,通过支持向量回归来改善极端流量的预测

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During typhoons or storms, accurate forecasts of hourly streamflow are necessary for flood warning and mitigation. However, hourly streamflow is difficult to forecast because of the complex physical process and the high variability in time. Furthermore, under the global warming scenario, events with extreme streamflow may occur that leads to more difficulties in forecasting streamflows. Hence, to obtain more accurate hourly streamflow forecasts, an improved streamflow forecasting model is proposed in this paper. The computational kernel of the proposed model is developed on the basis of support vector machine (SVM). Additionally, self-organizing map (SOM) is used to analyse observed data to extract data with specific properties, which are capable of providing valuable information for streamflow forecasting. After reprocessing, these extracted data and the observed data are used to construct the SVM-based model. An application is conducted to clearly demonstrate the advantage of the proposed model. The comparison between the proposed model and the conventional SVM model, which is constructed without SOM, is performed. The results indicate that the proposed model is better performed than the conventional SVM model. Moreover, as regards the extreme events, the result shows that the proposed model reduces the forecasting error, especially the error of peak streamflow. It is confirmed that because of the use of data extracted by SOM, the improved forecasting performance is obtained. The proposed model, which can produce accurate forecasts, is expected to be useful to support flood warning systems. Copyright © 2012 John Wiley & Sons, Ltd.
机译:在台风或暴风雨期间,每小时洪水的准确预报对于洪水预警和减灾是必要的。但是,由于复杂的物理过程和时间的高度可变性,难以预测每小时的流量。此外,在全球变暖的情况下,可能会发生极端流量的事件,从而导致预测流量更大的困难。因此,为了获得更准确的每小时流量预测,本文提出了一种改进的流量预测模型。该模型的计算内核是在支持向量机(SVM)的基础上开发的。此外,自组织映射(SOM)用于分析观察到的数据,以提取具有特定属性的数据,这些属性能够为流量预测提供有价值的信息。重新处理后,这些提取的数据和观察到的数据将用于构建基于SVM的模型。进行了应用以清楚地证明所提出模型的优势。在建议的模型与不带SOM的常规SVM模型之间进行比较。结果表明,所提出的模型比常规的SVM模型具有更好的性能。此外,对于极端事件,结果表明所提出的模型减少了预测误差,特别是峰值流量的误差。可以肯定的是,由于使用了SOM提取的数据,因此可以提高预测性能。所提出的模型可以产生准确的预测,有望对支持洪水预警系统有用。版权所有©2012 John Wiley&Sons,Ltd.

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