Constraint Free Early Warning System for Flood Using Multivariate LSTM Network

Touqir Gohar, L. Hasan, G. M. Khan, Mehreen Mubashir
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Abstract

Floods are the world's most damaging natural disasters, which not only claim thousands of human lives but also result in huge damage to infrastructure. Floods if forecasted in advance can help in the reduction of damages. Flood prediction especially long term is a complex task as it involves many hydrological and metrological parameters. For the short and medium-term, machine learning methods seem to have contributed to a great extent in simulating mathematical modelling of the physical flow processes of floods. However, these developed model's performance lacks generalization. Such systems trained on one geographical location's data have degraded performance when exploited for another location. In this paper, Long Short-Term Memory (LSTM) machine learning algorithm was applied where the hourly river level, river flow, and rainfall data from Brooklyn station was used as input data to the model and test for one hour, two hours, four hours, six hours, eight hours, and twelve hours in advance for river level prediction at Hoppers Crossing station. The developed algorithm achieved an accuracy of 98% for one hour and 97.2 %, 96.14 %, 94.67%,94.61 %, and 93.55% for two, four, six, eight, and twelve hours respectively. These systems not only forecast the future water level but also help in estimating the water level in case of a sensor failure. Multivariate modelling is utilized to predict the unknown parameter from the given other parametric values, thus not only predicting the forecasted water level but also reporting the sensor failure.
基于多元LSTM网络的无约束洪水预警系统
洪水是世界上最具破坏性的自然灾害,它不仅夺去成千上万人的生命,而且对基础设施造成巨大破坏。如果提前预报洪水,可以帮助减少损失。洪水预测是一项复杂的任务,因为它涉及许多水文和气象参数。从短期和中期来看,机器学习方法似乎在很大程度上有助于模拟洪水物理流动过程的数学建模。然而,这些开发的模型的性能缺乏泛化。这种在一个地理位置的数据上训练的系统在用于另一个位置时性能会下降。本文采用LSTM (Long - Short-Term Memory)机器学习算法,将布鲁克林站每小时的河流水位、河流流量和降雨量数据作为模型的输入数据,并在Hoppers Crossing站提前1小时、2小时、4小时、6小时、8小时和12小时进行水位预测测试。该算法1小时的准确率为98%,2小时、4小时、6小时、8小时和12小时的准确率分别为97.2%、96.14%、94.67%、94.61%和93.55%。这些系统不仅可以预测未来的水位,还可以在传感器故障的情况下帮助估计水位。利用多元模型从给定的其他参数值中预测未知参数,不仅可以预测预测水位,还可以报告传感器故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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