Abstract

The purpose of this study is to compare nine models, composed of certainty factors (CFs), weights of evidence (WoE), evidential belief function (EBF) and two machine learning models, namely random forest (RF) and support vector machine (SVM). In the first step, fifteen landslide conditioning factors were selected to prepare thematic maps, including slope aspect, slope angle, elevation, stream power index (SPI), sediment transport index (STI), topographic wetness index (TWI), plan curvature, profile curvature, land use, normalized difference vegetation index (NDVI), soil, lithology, rainfall, distance to rivers and distance to roads. In the second step, 152 landslides were randomly divided into two groups at a ratio of 70/30 as the training and validation datasets. In the third step, the weights of the CF, WoE and EBF models for conditioning factor were calculated separately, and the weights were used to generate the landslide susceptibility maps. The weights of each bivariate model were substituted into the RF and SVM models, respectively, and six integrated models and landslide susceptibility maps were obtained. In the fourth step, the receiver operating characteristic (ROC) curve and related parameters were used for verification and comparison, and then the success rate curve and the prediction rate curves were used for re-analysis. The comprehensive results showed that the hybrid model is superior to the bivariate model, and all nine models have excellent performance. The WoE–RF model has the highest predictive ability (AUC_T: 0.9993, AUC_P: 0.8968). The landslide susceptibility maps produced in this study can be used to manage landslide hazard and risk in Linyou County and other similar areas.

Highlights

  • Landslides cause various types of damage and affect people’s lives and property [1]

  • In terms of slope angle, the results showed that the slope angle between 30◦ and 40◦ had the highest potential for landslide occurrence (CF = 0.196)

  • This study introduced random forest (RF) as a machine learning algorithm combined with three bivariate models to solve this problem

Read more

Summary

Introduction

Landslides cause various types of damage and affect people’s lives and property [1]. In order to reduce these losses and hazards, relevant assessments of slope conditions where landslides are likely to occur should be made, and a series of countermeasures should be developed based on the combined assessment results [2]. A landslide susceptibility map is a basic source for representing landslide-prone areas and is a key source for decision-makers, planners, geologists and civil engineers to provide valuable information that provides the necessary information to establish monitoring systems within the study area or to develop measures that may guarantee human life and property [5,6]. The reliability of landslide susceptibility maps depends on the quantity and quality of available data, the scale of work and the choice of modeling methods [7]. Geographic Information Systems (GIS) and remote sensing (RS) are excellent and useful tools for collecting spatial data from the real world and for mapping landslide susceptibility in specific areas [8,9]. The application of GIS in landslide susceptibility analysis is becoming more and more popular [12,13]

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call