A comparative analysis of weight-based machine learning methods for landslide susceptibility mapping in Ha Giang area

被引:22
|
作者
Thanh Trinh [1 ,2 ]
Binh Thanh Luu [3 ]
Trang Ha Thi Le [4 ]
Duong Huy Nguyen [5 ]
Trong Van Tran [5 ]
Thi Hai Van Nguyen [5 ]
Khanh Quoc Nguyen [5 ]
Lien Thi Nguyen [5 ]
机构
[1] Phenikaa Univ, Fac Comp Sci, Hanoi 12116, Vietnam
[2] Phenikaa Res & Technol Inst PRATI, A&A Green Phoenix Grp JSC, 167 Hoang Ngan, Hanoi 11313, Vietnam
[3] Gen Dept Geol & Minerals Vietnam, Northwestern Geol Div, Hanoi, Vietnam
[4] Thuyloi Univ, Youth Union Off, 175 Tay Son, Hanoi, Vietnam
[5] Vietnam Inst Geosci & Mineral Resources, Ctr Remote Sensing & Geohazards, Hanoi, Vietnam
关键词
Landslide; logistic regression; random forest; SVM; Vietnam; ANALYTICAL HIERARCHY PROCESS; LOGISTIC-REGRESSION; HYBRID INTEGRATION; DECISION-TREE; GIS; PREDICTION; BIVARIATE; MULTIVARIATE; MOUNTAINS; PROVINCE;
D O I
10.1080/20964471.2022.2043520
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Landslide susceptibility maps (LSMs) are very crucial for planning policies in hazardous areas. However, the accuracy and reliability of LSMs depend on available data and the selection of suitable methods. This study is conducted to produce LSMs by combinations of machine learning methods and weighting techniques for Ha Giang province, Vietnam, where has limited data. In study area, we gather 11 landslide conditioning factors and establish a landslide inventory map. Computing the weights of classes (or factors) is very important to prepare data for machine learning methods to generate LSMs. We first use frequency ratio (FR) and analytic hierarchy process (AHP) techniques to generate the weights. Then, random forest (RF), support vector machine (SVM), logistic regression (LR), and AHP methods are combined with FR and AHP weights to yield accurate and reliable LSMs. Finally, the performance of these methods is evaluated by five statistical metrics, ROC and R-index. The empirical results have shown that RF is the best method in terms of R-index and the five metrics, i.e. TP rate (0.9661), FP rate (0.0), ACC (0.9835), MAE (0.0046), and RMSE (0.0350) for this study area. This study opens the perspective of weight-based machine learning methods for landslide susceptibility mapping.
引用
收藏
页码:1005 / 1034
页数:30
相关论文
共 50 条
  • [21] Landslide susceptibility prediction and mapping in Taihang mountainous area based on optimized machine learning model with genetic algorithm
    Jiang, Junjie
    Wang, Qizhi
    Luan, Shihao
    Gao, Minghui
    Liang, Huijie
    Zheng, Jun
    Yuan, Wei
    Ji, Xiaolei
    EARTH SCIENCE INFORMATICS, 2024, 17 (06) : 5539 - 5559
  • [22] Comparative analysis of statistical methods for landslide susceptibility mapping in the Bostanlik District, Uzbekistan
    Juliev, Mukhiddin
    Mergili, Martin
    Mondal, Ismail
    Nurtaev, Bakhtiar
    Pulatov, Alim
    Huebl, Johannes
    SCIENCE OF THE TOTAL ENVIRONMENT, 2019, 653 : 801 - 814
  • [23] Application of Ensemble-Based Machine Learning Models to Landslide Susceptibility Mapping
    Kadavi, Prima Riza
    Lee, Chang-Wook
    Lee, Saro
    REMOTE SENSING, 2018, 10 (08)
  • [24] Landslide susceptibility mapping of mountain roads based on machine learning combined model
    DOU Hong-qiang
    HUANG Si-yi
    JIAN Wen-bin
    WANG Hao
    Journal of Mountain Science, 2023, 20 (05) : 1232 - 1248
  • [25] Novel GIS Based Machine Learning Algorithms for Shallow Landslide Susceptibility Mapping
    Shirzadi, Ataollah
    Soliamani, Karim
    Habibnejhad, Mahmood
    Kavian, Ataollah
    Chapi, Kamran
    Shahabi, Himan
    Chen, Wei
    Khosravi, Khabat
    Binh Thai Pham
    Pradhan, Biswajeet
    Ahmad, Anuar
    Bin Ahmad, Baharin
    Dieu Tien Bui
    SENSORS, 2018, 18 (11)
  • [26] Improving Spatial Agreement in Machine Learning-Based Landslide Susceptibility Mapping
    Adnan, Mohammed Sarfaraz Gani
    Rahman, Md Salman
    Ahmed, Nahian
    Ahmed, Bayes
    Rabbi, Md. Fazleh
    Rahman, Rashedur M.
    REMOTE SENSING, 2020, 12 (20) : 1 - 23
  • [27] Landslide susceptibility mapping of mountain roads based on machine learning combined model
    Hong-qiang Dou
    Si-yi Huang
    Wen-bin Jian
    Hao Wang
    Journal of Mountain Science, 2023, 20 : 1232 - 1248
  • [28] Landslide susceptibility mapping of mountain roads based on machine learning combined model
    Dou, Hong-qiang
    Huang, Si-yi
    Jian, Wen-bin
    Wang, Hao
    JOURNAL OF MOUNTAIN SCIENCE, 2023, 20 (05) : 1232 - 1248
  • [29] A modular framework for FAIR shallow landslide susceptibility mapping based on machine learning
    Edrich, Ann-Kathrin
    Yildiz, Anil
    Roscher, Ribana
    Bast, Alexander
    Graf, Frank
    Kowalski, Julia
    NATURAL HAZARDS, 2024, 120 (09) : 8953 - 8982
  • [30] Decision tree based ensemble machine learning approaches for landslide susceptibility mapping
    Arabameri, Alireza
    Chandra Pal, Subodh
    Rezaie, Fatemeh
    Chakrabortty, Rabin
    Saha, Asish
    Blaschke, Thomas
    Di Napoli, Mariano
    Ghorbanzadeh, Omid
    Thi Ngo, Phuong Thao
    GEOCARTO INTERNATIONAL, 2022, 37 (16) : 4594 - 4627