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首页> 外文期刊>Journal of Hydrology >Urban flood risk mapping using the GARP and QUEST models: A comparative study of machine learning techniques
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Urban flood risk mapping using the GARP and QUEST models: A comparative study of machine learning techniques

机译:使用Garp和Quest模型的城市洪水风险映射:机器学习技术的比较研究

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Flood risk mapping and modeling is important to prevent urban flood damage. In this study, a flood risk map was produced with limited hydrological and hydraulic data using two state-of-the-art machine learning models: Genetic Algorithm Rule-Set Production (GARP) and Quick Unbiased Efficient Statistical Tree (QUEST). The flood conditioning factors used in modeling were: precipitation, slope, curve number, distance to river, distance to channel, depth to groundwater, land use, and elevation. Based on available reports and field surveys for Sari city (Iran), 113 points were identified as flooded areas (with each flooded zone assigned a value of 1). Different conditioning factors, including urban density, quality of buildings, age of buildings, population density, and socio-economic conditions, were taken into account to analyze flood vulnerability. In addition, the weight of these conditioning factors was determined based on expert knowledge and Fuzzy Analytical Network Process (FANP). An urban flood risk map was then produced using flood hazard and flood vulnerability maps. The area under the receiver-operator characteristic curve (AUC-ROC) and Kappa statistic were applied to evaluate model performance. The results demonstrated that the GARP model (AUC-ROC = 93.5%, Kappa = 0.86) had higher performance accuracy than the QUEST model (AUC-ROC = 89.2%, Kappa = 0.79). The results also indicated that distance to channel, land use, and elevation played major roles in flood hazard determination, whereas population density, quality of buildings, and urban density were the most important factors in terms of vulnerability. These findings demonstrate that machine learning models can help in flood risk mapping, especially in areas where detailed hydraulic and hydrological data are not available.
机译:洪水风险映射和建模对于防止城市洪水损害很重要。在这项研究中,使用两个最先进的机器学习模型的水文和液压数据产生了洪水风险地图:遗传算法规则集生产(Garp)和快速无偏见的有效统计树(Quest)。建模中使用的洪水调理因子是:降水,坡度,曲线数,到河流的距离,通道距离,地下水深度,土地利用和海拔。根据可用的报告和萨里市(伊朗)的现场调查,113个点被确定为洪水区(每个洪水区分配了1)。考虑到不同的调节因素,包括城市密度,建筑物,建筑物的年龄,人口密度和社会经济条件,分析洪水脆弱性。此外,这些调节因子的重量是基于专家知识和模糊分析网络过程(FANP)确定的。然后使用洪水危险和洪水漏洞地图制作城市洪水风险地图。接收器 - 操作员特征曲线(AUC-ROC)和Kappa统计所在的区域进行了评估模型性能。结果表明,GARP模型(AUC-ROC = 93.5%,Kappa = 0.86)的性能准确性高于任务模型(AUC-ROC = 89.2%,Kappa = 0.79)。结果还表明,与渠道,土地利用和海拔的距离在洪水危险中起作用的主要作用,而人口密度,建筑物的质量和城市密度是脆弱性方面最重要的因素。这些调查结果表明,机器学习模型可以帮助洪水风险映射,尤其是在不可用详细的液压和水文数据的区域。

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