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Slope Failure Prediction Using Random Forest Machine Learning and LiDAR in an Eroded Folded Mountain Belt

机译:在侵蚀折叠山带中使用随机林机学习和激光雷达的斜坡故障预测

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摘要

The probabilistic mapping of landslide occurrence at a high spatial resolution and over a large geographic extent is explored using random forests (RF) machine learning; light detection and ranging (LiDAR)-derived terrain variables; additional variables relating to lithology, soils, distance to roads and streams and cost distance to roads and streams; and training data interpreted from high spatial resolution LiDAR-derivatives. Using a large training set and all predictor variables, an area under the receiver operating characteristic (ROC) curve (AUC) of 0.946 is obtained. Our findings highlight the value of a large training dataset, the incorporation of a variety of terrain variables and the use of variable window sizes to characterize the landscape at different spatial scales. We also document important variables for mapping slope failures. Our results suggest that feature selection is not required to improve the RF modeling results and that incorporating multiple models using different pseudo absence samples is not necessary. From our findings and based on a review of prior studies, we make recommendations for high spatial resolution, large-area slope failure probabilistic mapping.
机译:利用随机林(RF)机器学习,探讨了高空间分辨率和大型地理范围内滑坡发生的概率映射;光检测和测距(LIDAR)的地形变量;与岩性,土壤,与道路和流距离的距离以及与道路和溪流的成本距离有关的额外变量;并从高空间分辨率激光雷达衍生物解释训练数据。使用大型训练集和所有预测变量,获得了0.946的接收器操作特性(ROC)曲线(AUC)下的区域。我们的研究结果突出了大型训练数据集的价值,并入各种地形变量以及使用可变窗口尺寸,以表征不同的空间尺度的景观。我们还记录了用于映射斜率故障的重要变量。我们的结果表明,不需要选择特征选择来改善RF建模结果,并且不需要使用不同的伪缺失样本结合多种模型。从我们的调查结果以及对先前研究的审查,我们提出了高空间分辨率,大面积斜率故障概率映射的建议。

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