Intelligent Methods for flood forecasting in Wadi al Wala, Jordan

Mohammad Al-Fawa'reh, Alaa Hawamdeh, Rana Alrawashdeh, Mousa Tayseer Jafar
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引用次数: 2

Abstract

Increasing water scarcity and rising demand throughout the Middle East and North Africa pose a major problem, and flood forecasting has been an open issue for a long time, attracting significant attention. Jordan seeks to use smart methods to solve the problem. Therefore, a real-world case study was conducted in Wadi al Wala for real-time rainfall forecasting and flood control, using 38 years of daily data from 13 rain gauge stations in the region. Different Machine Learning (ML) models were evaluated with various input information types to provide predictions in an almost real-time schedule. Preliminary tests showed that the decision tree (DT) and random forest (RF) techniques achieved the best generalized flood forecasting. In particular, the model was able to produce forecasts at any time, with the use of a mixture of meteorological parameters (relative humidity, air pressure, wet bulb temperature, and cloudiness), the precipitation at the forecasting point, and precipitation at the appropriate stations as input data, and the advanced ML model to be used with continuous data containing rainy and non-rainy cycles. Experiments showed the dominance of DT forecasts over those produced by the persistent model.
约旦Wadi al Wala洪水预报的智能方法
在整个中东和北非,日益严重的水资源短缺和不断增长的需求构成了一个主要问题,而洪水预报长期以来一直是一个公开的问题,引起了人们的极大关注。约旦试图用聪明的方法来解决这个问题。因此,在Wadi al Wala进行了一项现实世界的案例研究,利用该地区13个雨量计站38年的每日数据进行实时降雨预报和洪水控制。不同的机器学习(ML)模型使用不同的输入信息类型进行评估,以提供几乎实时的预测。初步试验表明,决策树(DT)和随机森林(RF)技术在广义洪水预报中效果最好。特别值得一提的是,该模型能够在任何时间进行预报,使用混合气象参数(相对湿度、气压、湿球温度和云量)、预报点的降水和适当站点的降水作为输入数据,并使用先进的ML模型与包含下雨和非下雨周期的连续数据一起使用。实验表明,DT预测优于持久模型预测。
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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