Flood Susceptibility Mapping Using Machine Learning Algorithms: A Case Study in Huong Khe District, Ha Tinh Province, Vietnam

Q4 Social Sciences International Journal of Geoinformatics Pub Date : 2023-07-31 DOI:10.52939/ijg.v19i7.2739
D. L. Nguyen, T. Chou, T. Hoang, M. H. Chen
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Abstract

A flood is a natural catastrophe that causes heavy damage not only to people but also to properties. To prevent and mitigate flood damage, an accurate flood susceptibility map that reveals highly potential flood-prone areas is essential. This study aims to construct flood susceptibility maps in the Huong Khe district using three machine learning algorithms, namely the K - Nearest Neighbour (KNN), the Support Vector Machine (SVM) and Artificial Neural Network (ANN). Training and testing datasets were extracted from Sentinel-1 SAR images. Seven causative factors were selected as input for predictive models after removing high-correlation factors and unimportant factors through a rigorous screening process by analyzing the Pearson correlation coefficient (PCC) and calculating the information gain ratio (InGR). The model's hyperparameters were found by grid search algorithm integrated 5-fold cross-validation. The three optimal flood susceptibility models showed excellent performance, with very high accuracy indices in the training and testing phases, over 90% of overall accuracy and UAC values. High and very high susceptibility classes on flood susceptibility maps accounted for around 18% of the total study area and were mainly located in residential and agricultural areas. Thus, there is a need to make proper land use planning for these areas to reduce damage in flood seasons.
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使用机器学习算法绘制洪水敏感性图:以越南河静省洪溪区为例
洪水是一种自然灾害,不仅对人而且对财产造成重大损失。为了预防和减轻洪水的损害,一个准确的洪水易感性地图是必不可少的,它可以显示出高度潜在的洪水易发地区。本研究旨在利用三种机器学习算法,即K近邻算法(KNN)、支持向量机算法(SVM)和人工神经网络算法(ANN),在香溪地区构建洪水易感性图。训练和测试数据集提取自Sentinel-1 SAR图像。通过分析Pearson相关系数(PCC)和计算信息增益比(InGR),剔除高相关因素和不重要因素后,筛选出7个致病因素作为预测模型的输入。采用网格搜索算法结合5重交叉验证找到模型的超参数。3种最优洪水敏感性模型均表现出优异的性能,在训练阶段和测试阶段均具有很高的精度指标,总体精度和UAC值均超过90%。洪水易感性图上的高易感性等级和极高易感性等级约占整个研究区域的18%,主要位于居民区和农业区。因此,有必要为这些地区制定适当的土地利用规划,以减少洪水季节的破坏。
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来源期刊
International Journal of Geoinformatics
International Journal of Geoinformatics Social Sciences-Geography, Planning and Development
CiteScore
1.00
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