Abstract

The main purpose of this paper is to present some potential applications of sophisticated data mining techniques, such as artificial neural network (ANN) and boosted tree (BT), for landslide susceptibility modeling in the Yongin area, Korea. Initially, landslide inventory was detected from visual interpretation using digital aerial photographic maps with a high resolution of 50 cm taken before and after the occurrence of landslides. The debris flows were randomly divided into two groups: training and validation sets with a 50:50 proportion. Additionally, 18 environmental factors related to landslide occurrence were derived from the topography, soil, and forest maps. Subsequently, the data mining techniques were applied to identify the influence of environmental factors on landslide occurrence of the training set and assess landslide susceptibility. Finally, the landslide susceptibility indexes from ANN and BT were compared with a validation set using a receiver operating characteristics curve. The slope gradient, topographic wetness index, and timber age appear to be important factors in landslide occurrence from both models. The validation result of ANN and BT showed 82.25% and 90.79%, which had reasonably good performance. The study shows the benefit of selecting optimal data mining techniques in landslide susceptibility modeling. This approach could be used as a guideline for choosing environmental factors on landslide occurrence and add influencing factors into landslide monitoring systems. Furthermore, this method can rank landslide susceptibility in urban areas, thus providing helpful information when selecting a landslide monitoring site and planning land-use.

Highlights

  • The mountainous area of Korea covers approximately 70% of the total land

  • Landslide Susceptibility Mapping and Validation susceptibility index was classified into four classes based on area for simple and visual interpretation: The probability forlow landslide was10%, predicted reflecting very high, high, medium, and indexsusceptibility ranges in 5%, 15%,byand

  • Digital aerial photographs of high resolution are very useful in constructing detailed landslide landslide scar areas areas and surrounding surrounding inventory maps, as it is difficult to separate the similar shapes of landslide using satellite images or panchromatic aerialaerial photographs

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Summary

Introduction

The mountainous area of Korea covers approximately 70% of the total land. Areas with landslide susceptibility in Korea have been reported in the steep slopes of mountainous areas consisting of granite or gneiss [1]. Techniques applied in landslide susceptibility modeling include: artificial neural network, decision tree, boosted tree, neuro fuzzy, Bayesian network, support vector machine, and random forest [21,22,23,24,25,26,27,28,29,30]. When using these approaches to predict landslide-susceptible areas, it is assumed that past landslide occurrence conditions are similar to the conditions for future landslide occurrence [12]. Mapping landslide susceptibility using ANN and BT, and assessing both maps using known landslide occurrences as a validation set

Study Area and Materials
The photos
Environmental Factors
Landslide Susceptibility Mapping and Validation
Findings
Discussion and Conclusions
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