A comparative study on machine learning modeling for mass movement susceptibility mapping (a case study of Iran)

被引:0
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作者
Sayed Naeim Emami
Saleh Yousefi
Hamid Reza Pourghasemi
Shahla Tavangar
M. Santosh
机构
[1] Chaharmahal and Bakhtiari Agricultural and Natural Resources Research and Education Center,Soil Conservation and Watershed Management Research Department
[2] AREEO,Department of Natural Resources and Environmental Engineering, College of Agriculture
[3] Shiraz University,Department of Watershed Management Engineering, College of Natural Resources
[4] Tarbiat Modares University,School of Earth Sciences and Resources
[5] China University of Geosciences Beijing,Department of Earth Sciences
[6] University of Adelaide,undefined
关键词
Landslides; Natural hazards; Multi-hazard; Machine learning; Random forest;
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中图分类号
学科分类号
摘要
Mass movements are among the most dangerous natural hazards in mountainous regions. The present study employs machine learning (ML) models for mass movement susceptibility mapping (MMSM) in Iran based on a comprehensive dataset of 864 mass movements which include debris flow, landslide, and rockfall during the last 42 years (1977–2019) as well as 12 conditional factors. The results of validation stage show that RF (random forest) is the most viable model for mass movement susceptibility maps. In addition, MARS (multivariate adaptive regression splines), MDA (mixture discriminant additive), and BRT (boosted regression trees) models also provide relatively accurate results. Results of the AUC for validation of produced maps were 0.968, 0.845, 0.828, and 0.765 for RF, MARS, MDA, and BRT, respectively. Based on MMSM generated by RF model, 32% of study area is identified to be under high and very high susceptibility classes. Most of the endangered areas for mass movement are in the west and central parts of the Chaharmahal and Bakhtiari Province. In addition, our findings indicate that elevation, slope angle, distance from roads, and distance from faults are critical factors for mass movement. Our results provide a perspective view for decision makers to mitigate natural hazards.
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页码:5291 / 5308
页数:17
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