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Enhancing the accuracy of rainfall-induced landslide prediction along mountain roads with a GIS-based random forest classifier
Authors:Dang  Viet-Hung  Dieu  Tien Bui  Tran  Xuan-Linh  Hoang  Nhat-Duc
Affiliation:1.Faculty of Information Technology, Institute of Research and Development, Duy Tan University, P809–03 Quang Trung, Da Nang, 550000, Vietnam
;2.Geographic Information System Group, Department of Business and IT, School of Business, University College of Southeast Norway, Gullbringvegen 36, 3800, Bø I Telemark, Norway
;3.Institute of Research and Development, Duy Tan University, Faculty of Civil Engineering, Duy Tan University, P809–03 Quang Trung, Da Nang, 550000, Vietnam
;4.Faculty of Civil Engineering, Institute of Research and Development, Duy Tan University, P809–03 Quang Trung, Da Nang, 550000, Vietnam
;
Abstract:

Along mountain roads, rainfall-triggered landslides are typical disasters that cause significant human casualties. Thus, to establish effective mitigation measures, it would be very useful were government agencies and practicing land-use planners to have the capability to make an accurate landslide evaluation. Here, we propose a machine learning methodology for the spatial prediction of rainfall-induced landslides along mountain roads which is based on a random forest classifier (RFC) and a GIS-based dataset. The RFC is used as a supervised learning technique to generalize the classification boundary that separates the input information of ten landslide conditioning factors (slope, aspect, relief amplitude, toposhape, topographic wetness index, distance to roads, distance to rivers, lithology, distance to faults, and rainfall) into two distinctive class labels: ‘landslide’ and ‘non-landslide’. Experimental results with a cross validation process and sensitivity analysis on the RFC model parameters reveal that the proposed model achieves a superior prediction accuracy with an area under the curve ?of 0.92. The RFC significantly outperforms other benchmarking methods, including discriminant analysis, logistic regression, artificial neural networks, relevance vector machines, and support vector machines. Based on our experimental outcome and comparative analysis, we strongly recommend the RFC as a very capable tool for spatial modeling of rainfall-induced landslides.

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