GIS-based landslide susceptibility modeling:A comparison between fuzzy multi-criteria and machine learning algorithms

被引:0
作者
Sk Ajim Ali [1 ]
Farhana Parvin [1 ]
Jana Vojtekov [2 ]
Romulus Costache [3 ,4 ]
Nguyen Thi Thuy Linh [5 ]
Quoc Bao Pham [6 ,7 ]
Matej Vojtek [2 ]
Ljubomir Gigovi [8 ]
Ateeque Ahmad [1 ]
Mohammad Ali Ghorbani [9 ]
机构
[1] Department of Geography, Faculty of Science, Aligarh Muslim University (AMU)
[2] Department of Geography and Regional Development, Faculty of Natural Sciences, Constantine the Philosopher University in Nitra
[3] Research Institute of the University of Bucharest
[4] National Institute of Hydrology and Water Management
[5] Thuyloi University
[6] Institute of Research and Development, Duy Tan University
[7] Faculty of Environmental and Chemical Engineering, Duy Tan University
[8] Department of Geography, University of Defence
[9] Sustainable Management of Natural Resources and Environment Research Group, Faculty of Environment and Labour Safety, Ton Duc Thang University
关键词
D O I
暂无
中图分类号
P642.22 [滑坡]; TP181 [自动推理、机器学习];
学科分类号
0837 ; 081104 ; 0812 ; 0835 ; 1405 ;
摘要
Hazards and disasters have always negative impacts on the way of life.Landslide is an overwhelming natural as well as man-made disaster that causes loss of natural resources and human properties throughout the world.The present study aimed to assess and compare the prediction efficiency of different models in landslide susceptibility in the Kysuca river basin,Slovakia.In this regard,the fuzzy decision-making trial and evaluation laboratory combining with the analytic network process(FDEMATEL-ANP),Naive Bayes(NB) classifier,and random forest(RF) classifier were considered.Initially,a landslide inventory map was produced with 2000 landslide and nonlandslide points by randomly divided with a ratio of 70%:30% for training and te sting,re spectively.The geospatial database for assessing the landslide susceptibility was generated with the help of 16 landslide conditioning factors by allowing for topographical,hydrological,lithological,and land cover factors.The ReliefF method was considered for determining the significance of selected conditioning factors and inclusion in the model building.Consequently,the landslide susceptibility maps(LSMs) were generated using the FDEMATEL-ANP,Naive Bayes(NB) classifier,and random forest(RF) classifier models.Finally,the area under curve(AUC) and different arithmetic evaluation were used for validating and comparing the results and models.The results revealed that random forest(RF) classifier is a promising and optimum model for landslide susceptibility in the study area with a very high value of area under curve(AUC=0.954),lower value of mean absolute error(MAE=0.1238) and root mean square error(RMSE=0.2555),and higher value of Kappa index(K=0.8435) and overall accuracy(CAC=92.2%).
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页码:857 / 876
页数:20
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