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A New Machine Learning Approach for parameter regionalization of Flash Flood Modelling in Henan Province, China

机译:中国河南省闪光模型参数区划新机械学习方法

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China is one of the countries in the world that seriously affected by flash floods disasters. The flash flood caused by extreme rainfall occurred at mountainous small-sized watersheds in China often leads to serious economic damages and obstructs the social development. Setting up an efficient forecasting system for flash flood has been widely accepted as one of the key non-structural measures to improve the control and prevention capability of China. However, due to the data limitation, establishing forecast models in those flash flood areas is challenged by the lack of parameter references. This paper proposed a new machine learning approach based on the Random Forest (RF) algorithm for model parameter regionalization. Integrated with distributed deterministic hydrological models of 20 small-sized watersheds in Henan province, the RF algorithm has been applied for defining the watersheds’ similarity and further transferring the parameters from sample watersheds to the objective watershed. Validated through leave-one-out approach, the RF model is able to effectively improve the simulation accuracy of flash floods in Henan province. The presented approach showed high-levelled applicability to be extended in other flash flood areas in China for providing effective reference for parameter regionalization.
机译:中国是世界各国之一,受到闪渠洪水灾害的严重影响。在中国的山区小型分水岭中发生极端降雨引起的闪现洪水往往导致严重的经济损害并阻碍社会发展。建立一种高效的闪光预测系统,已被广泛接受为改善中国控制和预防能力的关键无结构措施之一。但是,由于数据限制,在闪存洪水区域中建立预测模型是通过缺乏参数参考来挑战。本文提出了一种基于随机林(RF)算法的新型机器学习方法,用于模型参数区域化。与河南省的20个小型流域的分布式决定性水文模型集成,RF算法已经应用于定义流域的相似性,并进一步将参数从样品流域进一步转移到目标流域。通过休假方法验证,RF模型能够有效地提高河南省闪洪的模拟精度。本方法表明,在中国其他闪光区内延伸的高度适用性,以提供参数区域化的有效参考。

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