Landslide inventory and susceptibility models considering the landslide typology using deep learning: Himalayas, India

被引:0
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作者
Somnath Bera
Vaibhav Kumar Upadhyay
Balamurugan Guru
Thomas Oommen
机构
[1] Tata Institute of Social Sciences,Centre for Geoinformatics, Jamsetji Tata School of Disaster Studies
[2] Indian Institute of Technology Kanpur,Geoinformatics Division, Civil Engineering
[3] Central University of Tamil Nadu,Department of Geology, School of Earth Sciences
[4] Michigan Technological University,Department of Geological and Mining Engineering and Sciences
来源
Natural Hazards | 2021年 / 108卷
关键词
Landslide inventory; Landslide typology; Deep learning; Spatial agreement; Kalimpong (Himalayas);
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摘要
Landslide susceptibility modeling is complex as it involves different types of landslides and diverse interests of the end-user. Developing mitigation strategies for the landslides depends on their typology.  Therefore, a landslide susceptibility based on different types should be more appealing than a susceptibility model based on a single inventory set. In this research, susceptibility models  are generated considering the  different types of landslides. Prior to the development of the model, we analyzed landslide inventory for understanding the complexity and scope of alternative landslide susceptibility mapping. We conducted this work by examining a case study of Kalimpong region (Himalayas), characterized by different types of landslides. The landslide inventory was analyzed based on its differential attributes, such as movement types, state of activity, material type, distribution, style, and failure mechanism. From the landslide inventory, debris slides, rockslides, and rockfalls were identified to generate two landslide susceptibility models using deep learning algorithms. The findings showed high accuracy for both models (above 0.90), although the spatial agreement is highly varied among the models.
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页码:1257 / 1289
页数:32
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