Applying deep learning and benchmark machine learning algorithms for landslide susceptibility modelling in Rorachu river basin of Sikkim Himalaya, India

被引:0
|
作者
Kanu Mandal [1 ]
Sunil Saha [1 ]
Sujit Mandal [2 ]
机构
[1] DepartmentofGeography,UniversityofGourBanga 
[2] DepartmentofGeography,DiamondHarbourWoman'sUniversity 
关键词
D O I
暂无
中图分类号
P642.22 [滑坡];
学科分类号
0837 ;
摘要
Landslide is considered as one of the most severe threats to human life and property in the hilly areas of the world. The number of landslides and the level of damage across the globe has been increasing over time. Therefore, landslide management is essential to maintain the natural and socio-economic dynamics of the hilly region. Rorachu river basin is one of the most landslide-prone areas of the Sikkim selected for the present study. The prime goal of the study is to prepare landslide susceptibility maps(LSMs) using computer-based advanced machine learning techniques and compare the performance of the models.To properly understand the existing spatial relation with the landslide, twenty factors, including triggering and causative factors, were selected. A deep learning algorithm viz. convolutional neural network model(CNN) and three popular machine learning techniques, i.e., random forest model(RF), artificial neural network model(ANN), and bagging model, were employed to prepare the LSMs. Two separate datasets including training and validation were designed by randomly taken landslide and nonlandslide points. A ratio of 70:30 was considered for the selection of both training and validation points.Multicollinearity was assessed by tolerance and variance inflation factor, and the role of individual conditioning factors was estimated using information gain ratio. The result reveals that there is no severe multicollinearity among the landslide conditioning factors, and the triggering factor rainfall appeared as the leading cause of the landslide. Based on the final prediction values of each model, LSM was constructed and successfully portioned into five distinct classes, like very low, low, moderate, high, and very high susceptibility. The susceptibility class-wise distribution of landslides shows that more than 90% of the landslide area falls under higher landslide susceptibility grades. The precision of models was examined using the area under the curve(AUC) of the receiver operating characteristics(ROC) curve and statistical methods like root mean square error(RMSE) and mean absolute error(MAE). In both datasets(training and validation), the CNN model achieved the maximum AUC value of 0.903 and 0.939, respectively. The lowest value of RMSE and MAE also reveals the better performance of the CNN model. So, it can be concluded that all the models have performed well, but the CNN model has outperformed the other models in terms of precision.
引用
收藏
页码:270 / 286
页数:17
相关论文
共 50 条
  • [1] Applying deep learning and benchmark machine learning algorithms for landslide susceptibility modelling in Rorachu river basin of Sikkim Himalaya, India
    Kanu Mandal
    Sunil Saha
    Sujit Mandal
    Geoscience Frontiers, 2021, (05) : 270 - 286
  • [2] Applying deep learning and benchmark machine learning algorithms for landslide susceptibility modelling in Rorachu river basin of Sikkim Himalaya, India
    Mandal, Kanu
    Saha, Sunil
    Mandal, Sujit
    GEOSCIENCE FRONTIERS, 2021, 12 (05)
  • [3] Bivariate statistical index for landslide susceptibility mapping in the Rorachu river basin of eastern Sikkim Himalaya, India
    Mandal S.
    Mandal K.
    Mandal, Kanu (kanumandal666@gmail.com), 2018, Springer Science and Business Media B.V. (26) : 59 - 75
  • [4] Deep learning and benchmark machine learning based landslide susceptibility investigation, Garhwal Himalaya (India)
    Saha, Soumik
    Majumdar, Paromita
    Bera, Biswajit
    QUATERNARY SCIENCE ADVANCES, 2023, 10
  • [5] Application of machine learning algorithms in landslide susceptibility mapping, Kali Valley, Kumaun Himalaya, India
    Solanki, Ambar
    Gupta, Vikram
    Joshi, Mallickarjun
    GEOCARTO INTERNATIONAL, 2022, 37 (27) : 16846 - 16871
  • [6] Modeling and mapping landslide susceptibility zones using GIS based multivariate binary logistic regression (LR) model in the Rorachu river basin of eastern Sikkim Himalaya, India
    Mandal S.
    Mandal K.
    Modeling Earth Systems and Environment, 2018, 4 (1) : 69 - 88
  • [7] Can deep learning algorithms outperform benchmark machine learning algorithms in flood susceptibility modeling?
    Binh Thai Pham
    Chinh Luu
    Tran Van Phong
    Phan Trong Trinh
    Shirzadi, Ataollah
    Renoud, Somayeh
    Asadi, Shahrokh
    Hiep Van Le
    von Meding, Jason
    Clague, John J.
    JOURNAL OF HYDROLOGY, 2021, 592
  • [8] Application of Machine Learning and Deep Learning Algorithms for Landslide Susceptibility Assessment in Landslide Prone Himalayan Region
    Bhattacharya, Subhasis
    Ali, Tarig
    Chakravortti, Sudip
    Pal, Tapas
    Majee, Barun Kumar
    Mondal, Ayan
    Pande, Chaitanya B.
    Bilal, Muhammad
    Rahman, Muhammad Tauhidur
    Chakrabortty, Rabin
    EARTH SYSTEMS AND ENVIRONMENT, 2024,
  • [9] Landslide susceptibility assessment with machine learning algorithms
    Marjanovic, Milos
    Bajat, Branislav
    Kovacevic, Milos
    2009 INTERNATIONAL CONFERENCE ON INTELLIGENT NETWORKING AND COLLABORATIVE SYSTEMS (INCOS 2009), 2009, : 273 - +
  • [10] Landslide Susceptibility Mapping with Deep Learning Algorithms
    Habumugisha, Jules Maurice
    Chen, Ningsheng
    Rahman, Mahfuzur
    Islam, Md Monirul
    Ahmad, Hilal
    Elbeltagi, Ahmed
    Sharma, Gitika
    Liza, Sharmina Naznin
    Dewan, Ashraf
    SUSTAINABILITY, 2022, 14 (03)