Landslide susceptibility modeling based on GIS and ensemble techniques

被引:7
|
作者
Heping Yan
Wei Chen
机构
[1] Coal Geological Co.,Shaanxi 194
[2] Ltd,College of Geology and Environment
[3] Key Lab of Coal Resources Exploration and Comprehensive Utilization Ministry of Land and Resources,undefined
[4] Xi’an University of Science and Technology,undefined
关键词
Landslide susceptibility; Ensemble technique; Machine learning; Weights of evidence; Jian’ge County;
D O I
10.1007/s12517-022-09974-8
中图分类号
学科分类号
摘要
In recent years, numerous landslide susceptibility assessment studies using conventional machine learning models have been carried out, and a series of achievements have been made. To acquire better landslide susceptibility mapping results, various ensemble techniques have been adopted to construct strong classifiers for landslide susceptibility prediction. Generally, for the same base classifier, it is necessary to compare the effects of multiple ensemble techniques and determine the best one. In this paper, a naïve Bayes tree (NBTree) was employed as the base classifier, and three popular ensemble techniques, namely, Bagging (Bag), RandomSubSpace (RS), and MultiBoostAB (MB), were applied to build ensemble landslide susceptibility models for Jian’ge County, China. Herein, a total of 262 landslides were included in the landslide inventory map. Then, the training and validation datasets were randomly divided at a ratio of 70/30. Moreover, fifteen conditioning factors related to topography, geology, vegetation, and human activities were selected to train landslide susceptibility models. The correlations between conditioning factors and landslide occurrence were also measured by weights of evidence (WoE). Ultimately, the performance of each landslide susceptibility model was quantitatively evaluated by receiver operating characteristic (ROC) curves and areas under the curves (AUCs). The results show that all the ensemble models outperform the NBTree model with the validation datasets, and the Bag-NBTree model exhibits the best performance on the processing validation dataset (AUC = 0.852). Additionally, as landslide susceptibility levels are escalated, the corresponding frequency of landslide occurrence significantly increases, indicating that the landslide susceptibility maps (LSMs) produced by the four models are rational and effective. Overall, this study is of great significance to landslide prevention and mitigation in Jian’ge County.
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