Susceptibility mapping of shallow landslides using kernel-based Gaussian process, support vector machines and logistic regression

被引:131
|
作者
Colkesen, Ismail [1 ]
Sahin, Emrehan Kutlug [1 ]
Kavzoglu, Taskin [1 ]
机构
[1] Gebze Tech Univ, Dept Geodet & Photogrammetr Engn, Gebze, Turkey
关键词
Gaussian process; Support vector machine; Logistic regression; Landslide; Susceptibility mapping; Kernel learning; ARTIFICIAL NEURAL-NETWORKS; ANALYTICAL HIERARCHY PROCESS; WEIGHTED LINEAR COMBINATION; SPATIAL PREDICTION MODELS; RANDOM FORESTS; CONDITIONING FACTORS; FREQUENCY RATIO; LIDAR DATA; GIS; AREA;
D O I
10.1016/j.jafrearsci.2016.02.019
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
Identification of landslide prone areas and production of accurate landslide susceptibility zonation maps have been crucial topics for hazard management studies. Since the prediction of susceptibility is one of the main processing steps in landslide susceptibility analysis, selection of a suitable prediction method plays an important role in the success of the susceptibility zonation process. Although simple statistical algorithms (e.g. logistic regression) have been widely used in the literature, the use of advanced non parametric algorithms in landslide susceptibility zonation has recently become an active research topic. The main purpose of this study is to investigate the possible application of kernel-based Gaussian process regression (GPR) and support vector regression (SVR) for producing landslide susceptibility map of Tonya district of Trabzon, Turkey. Results of these two regression methods were compared with logistic regression (LR) method that is regarded as a benchmark method. Results showed that while kernel based GPR and SVR methods generally produced similar results (90.46% and 90.37%, respectively), they outperformed the conventional LR method by about 18%. While confirming the superiority of the GPR method, statistical tests based on ROC statistics, success rate and prediction rate curves revealed the significant improvement in susceptibility map accuracy by applying kernel-based GPR and SVR methods. (C) 2016 Elsevier Ltd. All rights reserved.
引用
收藏
页码:53 / 64
页数:12
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