Department of Watershed Management, Sari Agricultural Sciences and Natural Resources University, Sari, Iran; Department of Reclamation of Arid and Mountainous Regions, University of Tehran, Karaj, Iran.
Department of Reclamation of Arid and Mountainous Regions, University of Tehran, Karaj, Iran.
Sci Total Environ. 2019 Feb 15;651(Pt 2):2087-2096. doi: 10.1016/j.scitotenv.2018.10.064. Epub 2018 Oct 6.
Floods, as a catastrophic phenomenon, have a profound impact on ecosystems and human life. Modeling flood susceptibility in watersheds and reducing the damages caused by flooding is an important component of environmental and water management. The current study employs two new algorithms for the first time in flood susceptibility analysis, namely multivariate discriminant analysis (MDA), and classification and regression trees (CART), incorporated with a widely used algorithm, the support vector machine (SVM), to create a flood susceptibility map using an ensemble modeling approach. A flood susceptibility map was developed using these models along with a flood inventory map and flood conditioning factors (including altitude, slope, aspect, curvature, distance from river, topographic wetness index, drainage density, soil depth, soil hydrological groups, land use, and lithology). The case study area was the Khiyav-Chai watershed in Iran. To ensure a more accurate ensemble model, this study proposed a framework for flood susceptibility assessment where only those models with an accuracy of >80% were permissible for use in ensemble modeling. The relative importance of factors was determined using the Jackknife test. Results indicated that the MDA model had the highest predictive accuracy (89%), followed by the SVM (88%) and CART (0.83%) models. Sensitivity analysis showed that slope percent, drainage density, and distance from river were the most important factors in flood susceptibility mapping. The ensemble modeling approach indicated that residential areas at the outlet of the watershed were very susceptible to flooding, and that these areas should, therefore, be prioritized for the prevention and remediation of floods.
洪水作为一种灾难性现象,对生态系统和人类生活有着深远的影响。在流域中进行洪水易感性建模,并减少洪水造成的破坏,是环境和水资源管理的重要组成部分。本研究首次在洪水易感性分析中采用了两种新算法,即多元判别分析(MDA)和分类回归树(CART),并结合了一种广泛使用的算法——支持向量机(SVM),通过集成建模方法创建洪水易感性图。使用这些模型以及洪水清单图和洪水条件因素(包括海拔、坡度、方位、曲率、距河流的距离、地形湿度指数、排水密度、土壤深度、土壤水文组、土地利用和岩性)生成了洪水易感性图。案例研究区域是伊朗的 Khiyav-Chai 流域。为了确保更准确的集成模型,本研究提出了一种洪水易感性评估框架,只有那些准确率>80%的模型才允许用于集成建模。使用 Jackknife 测试确定了因素的相对重要性。结果表明,MDA 模型具有最高的预测精度(89%),其次是 SVM(88%)和 CART(0.83%)模型。敏感性分析表明,坡度百分比、排水密度和距河流的距离是洪水易感性图绘制中最重要的因素。集成建模方法表明,流域出口处的居民区极易受到洪水影响,因此应优先考虑这些地区的洪水预防和治理。