Evaluation of different machine learning models and novel deep learning-based algorithm for landslide susceptibility mapping

被引:0
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作者
Tingyu Zhang
Yanan Li
Tao Wang
Huanyuan Wang
Tianqing Chen
Zenghui Sun
Dan Luo
Chao Li
Ling Han
机构
[1] the Ministry of Natural Resources,Key Laboratory of Degraded and Unused Land Consolidation Engineering
[2] Shaanxi Provincial Land Engineering Construction Group Co.,Institute of Land Engineering and Technology
[3] Ltd,School of Land Engineering
[4] Shaanxi Provincial Land Engineering Construction Group Land Survey Planning and Design Institute Co.,undefined
[5] Ltd,undefined
[6] Chang’an University,undefined
来源
Geoscience Letters | / 9卷
关键词
Landslide susceptibility; Deep learning; Kernel logistic regression; Support vector machine; Evaluation;
D O I
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中图分类号
学科分类号
摘要
The losses and damage caused by landslide are countless in the world every year. However, the existing approaches of landslide susceptibility mapping cannot fully meet the requirement of landslide prevention, and further excavation and innovation are also needed. Therefore, the main aim of this study is to develop a novel deep learning model namely landslide net (LSNet) to assess the landslide susceptibility in Hanyin County, China, meanwhile, support vector machine model (SVM) and kernel logistic regression model (KLR) were employed as reference model. The inventory map was generated based on 259 landslides, the training dataset and validation dataset were, respectively, prepared using 70% landslides and the remaining 30% landslides. The variance inflation factor (VIF) was applied to optimize each landslide predisposing factor. Three benchmark indices were used to evaluate the result of susceptibility mapping and area under receiver operating characteristics curve (AUROC) was used to compare the models. Result demonstrated that although the processing speed of LSNet model is the slowest, it still significantly outperformed its corresponding benchmark models with validation dataset, and has the highest accuracy (0.950), precision (0.951), F1 (0.951) and AUROC (0.941), which reflected excellent predictive ability in some degree. The achievements obtained in this study can improve the rapid response capability of landslide prevention for Hanyin County.
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