Landslide susceptibility mapping using random forest, boosted regression tree, classification and regression tree, and general linear models and comparison of their performance at Wadi Tayyah Basin, Asir Region, Saudi Arabia

被引:0
|
作者
Ahmed Mohamed Youssef
Hamid Reza Pourghasemi
Zohre Sadat Pourtaghi
Mohamed M. Al-Katheeri
机构
[1] Sohag University,Geology Department, Faculty of Science
[2] Saudi Geological Survey,Geological Hazards Department, Applied Geology Sector
[3] Shiraz University,Department of Natural Resources and Environmental Engineering, College of Agriculture
[4] Yazd University,Department of Environment Management Engineering, College of Natural Resources
来源
Landslides | 2016年 / 13卷
关键词
Landslide susceptibility mapping; Random forest; Boosted regression tree; Classification and regression tree; General linear model; Saudi Arabia;
D O I
暂无
中图分类号
学科分类号
摘要
The purpose of the current study is to produce landslide susceptibility maps using different data mining models. Four modeling techniques, namely random forest (RF), boosted regression tree (BRT), classification and regression tree (CART), and general linear (GLM) are used, and their results are compared for landslides susceptibility mapping at the Wadi Tayyah Basin, Asir Region, Saudi Arabia. Landslide locations were identified and mapped from the interpretation of different data types, including high-resolution satellite images, topographic maps, historical records, and extensive field surveys. In total, 125 landslide locations were mapped using ArcGIS 10.2, and the locations were divided into two groups; training (70 %) and validating (25 %), respectively. Eleven layers of landslide-conditioning factors were prepared, including slope aspect, altitude, distance from faults, lithology, plan curvature, profile curvature, rainfall, distance from streams, distance from roads, slope angle, and land use. The relationships between the landslide-conditioning factors and the landslide inventory map were calculated using the mentioned 32 models (RF, BRT, CART, and generalized additive (GAM)). The models’ results were compared with landslide locations, which were not used during the models’ training. The receiver operating characteristics (ROC), including the area under the curve (AUC), was used to assess the accuracy of the models. The success (training data) and prediction (validation data) rate curves were calculated. The results showed that the AUC for success rates are 0.783 (78.3 %), 0.958 (95.8 %), 0.816 (81.6 %), and 0.821 (82.1 %) for RF, BRT, CART, and GLM models, respectively. The prediction rates are 0.812 (81.2 %), 0.856 (85.6 %), 0.862 (86.2 %), and 0.769 (76.9 %) for RF, BRT, CART, and GLM models, respectively. Subsequently, landslide susceptibility maps were divided into four classes, including low, moderate, high, and very high susceptibility. The results revealed that the RF, BRT, CART, and GLM models produced reasonable accuracy in landslide susceptibility mapping. The outcome maps would be useful for general planned development activities in the future, such as choosing new urban areas and infrastructural activities, as well as for environmental protection.
引用
收藏
页码:839 / 856
页数:17
相关论文
共 47 条
  • [31] Landslide-susceptibility mapping in Gangwon-do, South Korea, using logistic regression and decision tree models
    Prima Riza Kadavi
    Chang-Wook Lee
    Saro Lee
    [J]. Environmental Earth Sciences, 2019, 78
  • [32] Modeling Landslide Susceptibility in Forest-Covered Areas in Lin'an, China, Using Logistical Regression, a Decision Tree, and Random Forests
    Chen, Chongzhi
    Shen, Zhangquan
    Weng, Yuhui
    You, Shixue
    Lin, Jingya
    Li, Sinan
    Wang, Ke
    [J]. REMOTE SENSING, 2023, 15 (18)
  • [33] Landslide Detection and Susceptibility Modeling on Cameron Highlands (Malaysia): A Comparison between Random Forest, Logistic Regression and Logistic Model Tree Algorithms
    Viet-Ha Nhu
    Mohammadi, Ayub
    Shahabi, Himan
    Bin Ahmad, Baharin
    Al-Ansari, Nadhir
    Shirzadi, Ataollah
    Geertsema, Marten
    Kress, Victoria R.
    Karimzadeh, Sadra
    Kamran, Khalil Valizadeh
    Chen, Wei
    Nguyen, Hoang
    [J]. FORESTS, 2020, 11 (08):
  • [34] A Novel Performance Assessment Approach Using Photogrammetric Techniques for Landslide Susceptibility Mapping with Logistic Regression, ANN and Random Forest
    Sevgen, Eray
    Kocaman, Sultan
    Nefeslioglu, Hakan A.
    Gokceoglu, Candan
    [J]. SENSORS, 2019, 19 (18)
  • [35] Comparison of landslide susceptibility maps using random forest and multivariate adaptive regression spline models in combination with catchment map units
    Lei Chu
    Liang-Jie Wang
    Jiang Jiang
    Xia Liu
    Kazuhide Sawada
    Jinchi Zhang
    [J]. Geosciences Journal, 2019, 23 : 341 - 355
  • [36] Comparison of landslide susceptibility maps using random forest and multivariate adaptive regression spline models in combination with catchment map units
    Chu, Lei
    Wang, Liang-Jie
    Jiang, Jiang
    Liu, Xia
    Sawada, Kazuhide
    Zhang, Jinchi
    [J]. GEOSCIENCES JOURNAL, 2019, 23 (02) : 341 - 355
  • [37] Soil erosion susceptibility assessment using logistic regression, decision tree and random forest: study on the Mayurakshi river basin of Eastern India
    Ghosh, Abhishek
    Maiti, Ramkrishna
    [J]. ENVIRONMENTAL EARTH SCIENCES, 2021, 80 (08)
  • [38] Soil erosion susceptibility assessment using logistic regression, decision tree and random forest: study on the Mayurakshi river basin of Eastern India
    Abhishek Ghosh
    Ramkrishna Maiti
    [J]. Environmental Earth Sciences, 2021, 80
  • [39] A robust discretization method of factor screening for landslide susceptibility mapping using convolution neural network, random forest, and logistic regression models
    Zhao, Zheng
    Chen, Jianhua
    [J]. INTERNATIONAL JOURNAL OF DIGITAL EARTH, 2023, 16 (01) : 408 - 429
  • [40] Mapping landslide susceptibility at the Three Gorges Reservoir, China, using gradient boosting decision tree,random forest and information value models
    CHEN Tao
    ZHU Li
    NIU Rui-qing
    TRINDER C John
    PENG Ling
    LEI Tao
    [J]. Journal of Mountain Science, 2020, 17 (03) : 670 - 685