2020
DOI: 10.5194/nhess-2020-251
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Landslide susceptibility assessment based on different machine-learning methods in Zhaoping County of eastern Guangxi

Abstract: Abstract. Regarding the ever increasing and frequent occurrence of serious landslide disaster in eastern Guangxi, the current study were implemented to adopt support vector machines (SVM), particle swarm optimization support vector machines (PSO-SVM), random forest (RF), and particle swarm optimization random forest (PSO-RF) methods to assess landslide susceptibility by Zhaoping County. To this end, 10 landslide disaster-related causal variables including digital elevation model (DEM)-derived, meteorology-deri… Show more

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