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基于逻辑回归、极端梯度提升和随机森林建模方法的洪水敏感性预测。

Prediction of flood sensitivity based on Logistic Regression, eXtreme Gradient Boosting, and Random Forest modeling methods.

机构信息

Department of Environment and Energy Engineering, Beijing University of Civil Engineering and Architecture, No. 1 Zhanlanguan Road, Beijing 100044, China.

Beijing Climate Change Response Research and Education Center, School of Environment and Energy Engineering, Beijing University of Civil Engineering and Architecture, Beijing 100044, China E-mail:

出版信息

Water Sci Technol. 2024 May;89(10):2605-2624. doi: 10.2166/wst.2024.146. Epub 2024 May 7.

Abstract

Floods are one of the most destructive disasters that cause loss of life and property worldwide every year. In this study, the aim was to find the best-performing model in flood sensitivity assessment and analyze key characteristic factors, the spatial pattern of flood sensitivity was evaluated using three machine learning (ML) models: Logistic Regression (LR), eXtreme Gradient Boosting (XGBoost), and Random Forest (RF). Suqian City in Jiangsu Province was selected as the study area, and a random sample dataset of historical flood points was constructed. Fifteen different meteorological, hydrological, and geographical spatial variables were considered in the flood sensitivity assessment, 12 variables were selected based on the multi-collinearity study. Among the results of comparing the selected ML models, the RF method had the highest AUC value, accuracy, and comprehensive evaluation effect, and is a reliable and effective flood risk assessment model. As the main output of this study, the flood sensitivity map is divided into five categories, ranging from very low to very high sensitivity. Using the RF model (i.e., the highest accuracy of the model), the high-risk area covers about 44% of the study area, mainly concentrated in the central, eastern, and southern parts of the old city area.

摘要

洪水是每年在全球范围内造成生命和财产损失的最具破坏性灾害之一。本研究旨在寻找洪水敏感性评估中表现最佳的模型,并分析关键特征因素,使用三种机器学习(ML)模型:逻辑回归(LR)、极端梯度提升(XGBoost)和随机森林(RF)来评估洪水敏感性的空间格局。选择江苏省宿迁市作为研究区域,并构建了历史洪水点的随机抽样数据集。在洪水敏感性评估中考虑了十五个不同的气象、水文和地理空间变量,基于多重共线性研究选择了 12 个变量。在比较所选 ML 模型的结果中,RF 方法具有最高的 AUC 值、准确性和综合评价效果,是一种可靠有效的洪水风险评估模型。作为本研究的主要成果,洪水敏感性图分为五个类别,从非常低到非常高的敏感性。使用 RF 模型(即模型的最高准确性),高风险区域约占研究区域的 44%,主要集中在老城区的中部、东部和南部。

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