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Landslide susceptibility mapping using random forest and boosted tree models in Pyeong-Chang, Korea

机译:韩国平原昌的随机森林和提升树模型的滑坡易感性映射

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摘要

Landslides susceptibility maps were constructed in the Pyeong-Chang area, Korea, using the Random Forest and Boosted Tree models. Landslide locations were randomly selected in a 50/50 ratio for training and validation of the models. Seventeen landslide-related factors were extracted and constructed in a spatial database. The relationships between the observed landslide locations and these factors were identified by using the two models. The models were used to generate a landslide susceptibility map and the importance of the factors was calculated. Finally, the landslide susceptibility maps were validated. Finally, landslide susceptibility maps were generated. For the Random Forest model, the validation accuracy in regression and classification algorithms showed 79.34 and 79.18%, respectively, and for the Boosted Tree model, these were 84.87 and 85.98%, respectively. The two models showed satisfactory accuracies, and the Boosted Tree model showed better results than the Random Forest model.
机译:Landslides易感性地图是在韩国Pyeong-Chang地区建造的,使用随机森林和升级树模型。 Landslide位置以50/50的比率随机选择,以进行模型的培训和验证。将十七个滑坡相关因子提取并在空间数据库中构建。通过使用两种模型来确定观察到的滑坡位置与这些因素之间的关系。该模型用于产生滑坡敏感性图谱,并计算了因素的重要性。最后,验证了滑坡易感性图。最后,产生了滑坡易感性图。对于随机森林模型,回归和分类算法中的验证精度分别显示79.34和79.18%,并为升级树模型分别为84.87和85.98%。这两种模型显示出令人满意的精度,升压树模型显示出比随机林模型更好的结果。

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