Abstract

This study focused on landslide susceptibility analysis mapping of the Xulong hydropower station reservoir, which is located in the upstream of Jinsha River, a rapidly uplifting region of the Tibetan Plateau region. Nine factors were employed as landslide conditioning factors in landslide susceptibility mapping. These factors included the slope angle, slope aspect, curvature, geology, distance-to-fault, distance-to-river, vegetation, bedrock uplift and annual precipitation. The rapid bedrock uplift factor was represented by the slope angle. The eight factors were processed with the information content model. Since this area has a significant vertical distribution law of precipitation, the annual precipitation factor was analyzed separately. The analytic hierarchy process weighting method was used to calculate the weights of nine factors. Thus, this study proposed a component approach to combine the normalized eight-factor results with the normalized annual precipitation distribution results. Subsequently, the results were plotted in geographic information system (GIS) and a landslide susceptibility map was produced. The evaluation accuracy analysis method was used as a validation approach. The landslide susceptibility classes were divided into four classes, including low, moderate, high and very high. The results show that the four susceptibility class ratios are 12.9%, 35.06%, 34.11%and 17.92% of the study area, respectively. The red belt in the high elevation area represents the very high susceptibility zones, which followed the vertical distribution law of precipitation. The prediction accuracy was 85.74%, which meant that the susceptibility map was confirmed to be reliable and reasonable. This susceptibility map may contribute to averting the landslide risk in the future construction of the Xulong hydropower station.

Highlights

  • The interaction between triggering mechanisms and natural conditions directly determines the occurrence and frequency of landslides [1,2,3,4,5]

  • Based on the field investigation data, this study provided a landslide distribution and data of their basic influencing factors

  • Among the landslide-related factors, the slope angle, slope aspect, curvature, geology, distance-to-river, distance-to-fault, vegetation, bedrock uplift, and annual precipitation were used for landslide susceptibility mapping

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Summary

Introduction

The interaction between triggering mechanisms and natural conditions directly determines the occurrence and frequency of landslides [1,2,3,4,5]. To understand these natural hazards and predict potential landslide hazard areas, landslide susceptibility mapping (LSM) is considered to be an effective method to reduce the hazard impacts [6]. Many approaches can be used to predict the occurrence of slope failures, such as physically-based and statistical approaches [7,8,9,10]. The physically-based method is appropriate for analyzing the specific event. GIS technology and the nonlinear method are utilized for LSM, which is more appropriate due to their flexibility.

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