城市环境下山洪暴发的建模与短期预报

Suraj Ogale, S. Srivastava
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引用次数: 4

摘要

快速城市化、气候变化和极端降雨导致越来越多的城市山洪暴发。预测洪水的发生是很重要的,这样就可以把洪水的后果降到最低。顾名思义,城市山洪在很短的时间内发生在城市地区。为了减少这些事件的影响,短期预报或临近预报用于预测非常近的将来事件。在传统的洪水预报方法中,使用传统的方法,如使用雷达、卫星成像和涉及复杂数学方程的计算,来检查当前的天气状况。然而,信息和通信技术(ICT)和机器学习(ML)的最新发展帮助我们从不同的角度研究这个水文问题。本文的目的是设计一个考虑城市山洪成因参数的理论模型,并对其进行事前预测。为了验证模型的可靠性,进行了数据综合,并利用人工神经网络对结果进行了检验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling and short term forecasting of flash floods in an urban environment
Rapid urbanization, climate change, and extreme rainfall have resulted in a growing number of cases of urban flash floods. It is important to predict the occurrence of a flood so that the aftermath of it can be minimized. As the name suggests, an urban flash flood occurs in an urban area in a very short span of time. To reduce the impact of these events, short-term forecasting or nowcasting is used for prediction of the very near future incident. In orthodox methods of flood forecasting, current weather conditions are examined using conventional methods such as the use of radar, satellite imaging and calculations involving complicated mathematical equations. However, recent developments in Information and Communication Technology (ICT) and Machine Learning (ML) has helped us to study this hydrological problem from a different perspective. The aim of this paper is to design a theoretical model considering the parameters causing the urban flash flood and predict the event beforehand. To test the soundness model, data syntheses is performed and the results are checked using the artificial neural network.
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