Abstract

This study proposed a new hybrid model based on the convolutional neural network (CNN) for making effective use of historical datasets and producing a reliable landslide susceptibility map. The proposed model consists of two parts; one is the extraction of landslide spatial information using two-dimensional CNN and pixel windows, and the other is to capture the correlated features among the conditioning factors using one-dimensional convolutional operations. To evaluate the validity of the proposed model, two pure CNN models and the previously used methods of random forest and a support vector machine were selected as the benchmark models. A total of 621 earthquake-triggered landslides in Ludian County, China and 14 conditioning factors derived from the topography, geological, hydrological, geophysical, land use and land cover data were used to generate a geospatial dataset. The conditioning factors were then selected and analyzed by a multicollinearity analysis and the frequency ratio method. Finally, the trained model calculated the landslide probability of each pixel in the study area and produced the resultant susceptibility map. The results indicated that the hybrid model benefitted from the features extraction capability of the CNN and achieved high-performance results in terms of the area under the receiver operating characteristic curve (AUC) and statistical indices. Moreover, the proposed model had 6.2% and 3.7% more improvement than the two pure CNN models in terms of the AUC, respectively. Therefore, the proposed model is capable of accurately mapping landslide susceptibility and providing a promising method for hazard mitigation and land use planning. Additionally, it is recommended to be applied to other areas of the world.

Highlights

  • These results demonstrated that the proposed hybrid model showed a better performance in correctly classifying the landslide samples as landslide locations compared with the four benchmark models

  • The experiment results showed that the proposed hybrid model achieved the highest performance for predicting the landslide occurrence compared to the four benchmark methods of convolutional neural network (CNN)-1D, CNN-2D, random forest (RF), and support vector machine (SVM)

  • The results demonstrated that the proposed model effectively avoided an overfitting risk by generating additional data from the limited dataset

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Summary

Introduction

Landslide occurrence is a complicated phenomenon in terms of the gravitational mass movement of soil and rocks that are ascribed to numerous environmental variables, like geomorphology, hydrology, human activities, or other natural hazards [1,2]. Depending on the external triggers, landslides can be classified as earthquake-induced landslides, rainfall-induced landslides, or human interference induced-landslides [3]. A landslide is one of the most destructive and widespread disasters across many parts of the world, occasionally resulting in extensive casualties and severe economic losses [4].

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