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典型文献
GIS-based spatial prediction of landslide using road factors and random forest for Sichuan-Tibet Highway
文献摘要:
Accurate evaluation of landslide susceptibility is very important to ensure the safe operation of mountain highways.The Sichuan-Tibet Highway,which traverses the east of the Tibetan Plateau,frequently encounters natural hazards.Previous studies generally use statistical methods to analyze the hazards along the Sichuan-Tibet Highway.In this research,we present two road factors,namely aspect to road and road profile to increase the accuracy of landslide susceptibility mapping by considering the influence of landslide movement direction on road.First,the aspect to road,which represents the impact of different landslide movement directions on the highway,was extracted by combining road direction with mountain aspect.Then,the road profile,which reflects the subgrade structure between the road and surrounding mountains,was extracted according to the terrain data.Finally,the landslide susceptibility maps were produced based on the random forest (RF) method by using 473 landslides and 10 conditioning factors,including road factors (aspect to road,road profile)and primitive factors (slope,aspect,curvature,relief amplitude,peak ground acceleration,crustal movement velocity,faults,rainfall).The area under the receiver operating characteristic curve (AUC) and the Gini importance were used to evaluate the performance of proposed road factors.The AUC values on two groups that add road factors and only use primitive factors were 0.8517 and 0.8243,respectively.The Gini importance indicated that road profile (0.123) and aspect to road (0.116) have a significant contribution to landslides compared with the primitive factors.The results of multi-collinearity analysis and frequency ratio confirmed the suitability of the road factors for predicting hazards along the highway.
文献关键词:
作者姓名:
YE Cheng-ming;WEI Rui-long;GE Yong-gang;LI Yao;José Marcato JUNIOR;Jonathan LI
作者机构:
Key Laboratory of Earth Exploration and Information Technology of Ministry of Education,Chengdu University of Technology,Chengdu 610059,China;Institute of Mountain Hazards and Environment,Chinese Academy of Sciences,Chengdu 610041,China;Faculty of Engineering,Architecture and Urbanism and Geography,Federal University of Mato Grosso do Sul,Campo Grande 79070-900,Brazil;Department of Geography and Environmental Management,University of Waterloo,Waterloo,ONN2L 3G1,Canada
引用格式:
[1]YE Cheng-ming;WEI Rui-long;GE Yong-gang;LI Yao;José Marcato JUNIOR;Jonathan LI-.GIS-based spatial prediction of landslide using road factors and random forest for Sichuan-Tibet Highway)[J].山地科学学报(英文版),2022(02):461-476
A类:
B类:
spatial,prediction,using,road,factors,random,forest,Sichuan,Highway,Accurate,evaluation,susceptibility,very,important,ensure,safe,operation,highways,which,traverses,east,Tibetan,Plateau,frequently,encounters,natural,hazards,Previous,studies,generally,statistical,methods,analyze,along,In,this,research,two,namely,aspect,profile,increase,accuracy,mapping,by,considering,influence,movement,First,represents,impact,different,directions,was,extracted,combining,Then,reflects,subgrade,structure,between,surrounding,mountains,according,terrain,data,Finally,maps,were,produced,RF,landslides,conditioning,including,primitive,slope,curvature,relief,amplitude,peak,ground,acceleration,crustal,velocity,faults,rainfall,area,under,receiver,operating,characteristic,curve,Gini,importance,used,evaluate,performance,proposed,values,groups,that,add,only,respectively,indicated,have,significant,contribution,compared,results,multi,collinearity,analysis,frequency,confirmed,suitability,predicting
AB值:
0.485322
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