Abstract

To mitigate the negative effects of landslide occurrence, there is a need for effective landslide susceptibility mapping (LSM). The fundamental source for LSM is landslide inventory. Unfortunately, there are still areas where landslide inventories are not generated due to financial or reachability constraints. Considering this led to the following research question: can we model landslide susceptibility in an area for which landslide inventory is not available but where such is available for surrounding areas? To answer this question, we performed cross-modeling by using various strategies for landslide susceptibility. Namely, landslide susceptibility was cross-modeled by using two adjacent regions (“Łososina” and “Gródek”) separated by the Rożnów Lake and Dunajec River. Thus, 46% and 54% of the total detected landslides were used for the LSM in “Łososina” and “Gródek” model, respectively. Various topographical, geological, hydrological and environmental landslide-conditioning factors (LCFs) were created. These LCFs were generated on the basis of the Digital Elevation Model (DEM), Sentinel-2A data, a digitized geological and soil suitability map, precipitation, the road network and the Różnów lake shapefile. For LSM, we applied the Frequency Ratio (FR) and Landslide Susceptibility Index (LSI) methods. Five zones showing various landslide susceptibilities were generated via Natural Jenks. The Seed Cell Area Index (SCAI) and Relative Landslide Density Index were used for model validation. Even when the SCAI indicated extremely high values for “very low” susceptibility classes and very small values for “very high” susceptibility classes in the training and validation areas, the accuracy of the LSM in the validation areas was significantly lower. In the “Łososina” model, 90% and 57% of the landslides fell into the “high” and “very high” susceptibility zones in the training and validation areas, respectively. In the “Gródek” model, 86% and 46% of the landslides fell into the “high” and “very high” susceptibility zones in the training and validation areas, respectively. Moreover, the comparison between these two models was performed. Discrepancies between these two models exist in the areas of critical geological structures (thrust and fault proximity), and the reliability for such susceptibility zones can be low (2–3 susceptibility zone difference). However, such areas cover only 11% of the analyzed area; thus, we can conclude that in remaining regions (89%), LSM generated by the inventory for the surrounding area can be useful. Therefore, the low reliability of such a map in areas of critical geological structures should be borne in mind.

Highlights

  • A landslide is the movement of earthen materials down a slope under the influence of gravity [1]and occurs when earthen material exceeds the shear strength [2]

  • Frequency Ratio (FR) indexes used for calculations (presented in landslide and conditioning factors, and the indexes used for the calculations; (2) a presentation of the landslide susceptible maps generated by two models; Appendices and B); (2)and a presentation of of thethe landslide susceptible generated by R

  • This study evaluated whether landslide susceptibility could be effectively assessed in such areas where landslide inventory was available for an adjacent region

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Summary

Introduction

A landslide is the movement of earthen materials down a slope under the influence of gravity [1]and occurs when earthen material exceeds the shear strength (resistance to shearing) [2]. A landslide is the movement of earthen materials down a slope under the influence of gravity [1]. Landslide events can cause damage to buildings, infrastructure and property and endanger human life [3,4,5]. According to [6], landslides are in seventh place when it comes to the destruction of human life and property. In Poland, the area most susceptible to landslides is the Carpathians. The reason for this is the nature of the relief and the geological structure. The high slopes combined with the flysch conditions render the Carpathians a region strongly prone to landslide occurrence.

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