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The effect of data granularity on prediction of extreme hydrological events in highly urbanized watersheds: A supervised classification approach

机译:数据粒度对高度城市化流域极端水文事件预测的影响:一种监督分类方法

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摘要

During heavy rains, small urbanized watersheds with predominantly impervious surfaces exhibit high surface runoff which may subsequently lead to flash floods. Prediction of such extreme events in an efficient and timely manner is one of the important problems faced by regional flood management teams. These predictions can be done using supervised classification and data collected by stream and rain gauges installed on the watershed. The accuracy of predictions depends on data granularity which determines the achievable level of uncertainty for different lead time intervals. The study was implemented on data collected in a highly urbanized watershed of a small stream - Spring Creek, Ontario, Canada. It was demonstrated that the upscaling of observation data improves the classifiers' performance while increasing modelling scales. The obtained results suggest the development of ensembles of classifiers trained on data sets of different granularity as a means to extend the lead time of reliable predictions. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在大雨期间,表面不透水的小型城市集水区表现出较高的地表径流,这随后可能导致山洪泛滥。高效,及时地预测此类极端事件是区域洪水管理小组面临的重要问题之一。这些预测可以使用监督分类和流域中安装的水位计和雨量计收集的数据来完成。预测的准确性取决于数据粒度,该粒度确定了不同提前期间隔可实现的不确定性水平。这项研究是根据在加拿大安大略省Spring Creek的一条高度城市化小流域收集的数据进行的。事实证明,观察数据的放大可以提高分类器的性能,同时可以增加建模规模。获得的结果表明,在不同粒度的数据集上训练的分类器集合的发展,作为延长可靠预测的前置时间的一种手段。 (C)2017 Elsevier Ltd.保留所有权利。

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