• English
Risk Analysis所収
査読付論文

Landslides have become increasingly frequent and destructive in Uttarakhand, leading to substantial loss of life and significant
damage to infrastructure. This research focuses on generating a detailed landslide susceptibility map for a selected area in
Chamoli district, Uttarakhand, by integrating remote sensing and geographical information system (GIS) techniques. Twelve
critical factors influencing landslide occurrence, such as slope, aspect, vegetation cover, proximity to geological structures, distance
from roads, elevation, curvature, topographic wetness index (TWI), stream power index (SPI), drainage proximity, and lithology,
were considered. The Statistical Information Value Model (SIVM) was used to assess the contribution (weight) of each factor class
toward landslide occurrence. These derived weights were then integrated using a weighted overlay method to produce the final
landslide susceptibility map. The predictive accuracy of the model was validated through receiver operating characteristic (ROC)
analysis, achieving an area under the curve (AUC) value of 0.72. The results demonstrate that the SIVM-based weighted overlay
approach provides a reliable tool for identifying landslide-prone zones, offering valuable insights for land use planning and disaster
mitigation.

著者:
Kumar
Anand
Kanga
Shruti
Choudhury
Upasana
Singh
Suraj Kumar
Rana
Rakesh Singh
Meraj
Gowhar
日付:
著作権:
トピック:
Languages:
  • English
Risk Analysis所収
著者:
Kumar
Anand
Kanga
Shruti
Choudhury
Upasana
Singh
Suraj Kumar
Rana
Rakesh Singh
Meraj
Gowhar
出版日:

Landslides have become increasingly frequent and destructive in Uttarakhand, leading to substantial loss of life and significant
damage to infrastructure. This research focuses on generating a detailed landslide susceptibility map for a selected area in
Chamoli district, Uttarakhand, by integrating remote sensing and geographical information system (GIS) techniques. Twelve
critical factors influencing landslide occurrence, such as slope, aspect, vegetation cover, proximity to geological structures, distance
from roads, elevation, curvature, topographic wetness index (TWI), stream power index (SPI), drainage proximity, and lithology,
were considered. The Statistical Information Value Model (SIVM) was used to assess the contribution (weight) of each factor class
toward landslide occurrence. These derived weights were then integrated using a weighted overlay method to produce the final
landslide susceptibility map. The predictive accuracy of the model was validated through receiver operating characteristic (ROC)
analysis, achieving an area under the curve (AUC) value of 0.72. The results demonstrate that the SIVM-based weighted overlay
approach provides a reliable tool for identifying landslide-prone zones, offering valuable insights for land use planning and disaster
mitigation.