Statistical Analysis Of Hydrological Drivers Of Landslide Inducing Factors Using Weights Of Evidence Approach On Kerch Peninsula
Statistical Analysis Of Hydrological Drivers Of Landslide Inducing Factors Using Weights Of Evidence Approach On Kerch Peninsula
Article is devoted to statistical analysis of the influence of the surface water of Kerch Peninsula on landslides. We chose a distance from water as indicator that can be express the impact of surface water on landslides. The territory of the peninsula was divided into 5 classes according to the degree of distance. Thus, according to the results of the study, it was found that the greatest impact on landslides is observed at a distance of up to 500 m. On the other hand, it is noted that there is no effect of surface water on landslides at a distance over 2 km.
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