首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Rainfall-runoff modeling of flash floods in the absence of rainfall forecasts: The case of 'cévenol flash floods'
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Rainfall-runoff modeling of flash floods in the absence of rainfall forecasts: The case of 'cévenol flash floods'

机译:在没有降雨预报的情况下,山洪暴发的降雨径流模型:“塞万诺尔山洪暴发”案例

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摘要

"Cévenol flash floods" are famous in the field of hydrology, because they are archetypical of flash floods that occur in populated areas, thereby causing heavy damages and casualties. As a consequence, their prediction has become a stimulating challenge to designers of mathematical models, whether physics based or machine learning based. Because current, state-of-the-art hydrological models have difficulty performing forecasts in the absence of rainfall previsions, new approaches are necessary. In the present paper, we show that an appropriate model selection methodology, applied to neural network models, provides reliable two-hour ahead flood forecasts.
机译:“塞文诺尔山洪泛滥”在水文学领域很出名,因为它们是人口稠密地区山洪泛滥的典型代表,因此造成了严重的破坏和人员伤亡。结果,对于基于物理还是基于机器学习的数学模型的设计人员,其预测已成为一个刺激性的挑战。由于当前最新的水文模型在没有降雨预报的情况下很难进行预报,因此需要新的方法。在本文中,我们显示了一种适用于神经网络模型的适当模型选择方法,可以提供可靠的两小时提前洪水预报。

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