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利用二元统计和新颖的混合机器学习模型对小流域山洪暴发潜力进行比较评估。

Comparative assessment of the flash-flood potential within small mountain catchments using bivariate statistics and their novel hybrid integration with machine learning models.

机构信息

Research Institute of the University of Bucharest, 36-46 Bd. M. Kogalniceanu, 5th District, 050107 Bucharest, Romania; National Institute of Hydrology and Water Management, București-Ploiești Road, 97E, 1st District, 013686 Bucharest, Romania.

Key Laboratory of Virtual Geographic Environment (Nanjing Normal University), Ministry of Education, Nanjing 210023, China; State Key Laboratory Cultivation Base of Geographical Environment Evolution (Jiangsu Province), Nanjing 210023, China; Department of Geography and Regional Research, University of Vienna, Universitätsstraße 7, 1010 Vienna, Austria.

出版信息

Sci Total Environ. 2020 Apr 1;711:134514. doi: 10.1016/j.scitotenv.2019.134514. Epub 2019 Oct 8.

Abstract

The present study is carried out in the context of the continuous increase, worldwide, of the number of flash-floods phenomena. Also, there is an evident increase of the size of the damages caused by these hazards. Bâsca Chiojdului River Basin is one of the most affected areas in Romania by flash-flood phenomena. Therefore, Flash-Flood Potential Index (FFPI) was defined and calculated across the Bâsca Chiojdului river basin by using one bivariate statistical method (Statistical Index) and its novel ensemble with the following machine learning models: Logistic Regression, Classification and Regression Trees, Multilayer Perceptron, Random Forest and Support Vector Machine and Decision Tree CART. In a first stage, the areas with torrentiality were digitized based on orthophotomaps and field observations. These regions, together with an equal number of non-torrential pixels, were further divided into training surfaces (70%) and validating surfaces (30%). The next step of the analysis consisted of the selection of flash-flood conditioning factors based on the multicollinearity investigation and predictive ability estimation through Information Gain method. Eight factors, from a total of ten flash-floods predictors, were selected in order to be included in the FFPI calculation process. By applying the models represented by Statistical Index and its ensemble with the machine learning algorithms, the weight of each conditioning factor and of each factor class/category in the FFPI equations was established. Once the weight values were derived, the FFPI values across the Bâsca Chiojdului river basin were calculated by overlaying the flash-flood predictors in GIS environment. According to the results obtained, the central part of Bâsca Chiojdului river basin has the highest susceptibility to flash-flood phenomena. Thus, around 30% of the study site has high and very high values of FFPI. The results validation was carried out by applying the Prediction Rate and Success Rate. The methods revealed the fact that the Multilayer Perceptron - Statistical Index (MLP-SI) ensemble has the highest efficiency among the 3 methods.

摘要

本研究是在全球范围内闪洪现象数量不断增加的背景下进行的。此外,这些灾害造成的损失规模也明显增大。巴斯卡乔伊杜尔河流域是罗马尼亚受闪洪现象影响最严重的地区之一。因此,定义并计算了巴斯卡乔伊杜尔河流域的闪洪潜在指数(FFPI),使用了一种双变量统计方法(统计指数)及其与以下机器学习模型的新颖集成:逻辑回归、分类和回归树、多层感知机、随机森林和支持向量机和决策树 CART。在第一阶段,根据正射影像图和实地观测对洪流区进行了数字化。这些区域与同等数量的非洪流像素一起,进一步分为训练面(70%)和验证面(30%)。分析的下一步是根据多元共线性调查和通过信息增益方法估计预测能力选择闪洪条件因素。从总共十个闪洪预测因素中选择了八个因素,以便纳入 FFPI 计算过程。通过应用代表统计指数及其与机器学习算法的集成的模型,确定了 FFPI 方程中每个条件因素和每个因素类/类别的权重。得出权重值后,通过在 GIS 环境中叠加闪洪预测因素,计算了巴斯卡乔伊杜尔河流域的 FFPI 值。根据获得的结果,巴斯卡乔伊杜尔河流域的中心部分对闪洪现象的敏感性最高。因此,研究区域约 30%的地区具有高和极高的 FFPI 值。通过应用预测率和成功率进行了结果验证。这些方法表明,多层感知机-统计指数(MLP-SI)集成在 3 种方法中具有最高的效率。

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