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A comparison of statistical and machine learning methods for debris flow susceptibility mapping

机译:碎片流动敏感性测绘统计和机器学习方法的比较

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Debris flows destroys the facilities and seriously threatens human lives, especially in mountainous area. Susceptibility mapping is the key for hazard prevention. The aim of the present study is to compare the performance of three methods including Bayes discriminant analysis (BDA), logistic regression (LR) and random forest (RF) for debris flow susceptibility mapping from three aspects: applicability, analyticity and accuracy. Nyalam county, a debris flow-prone area, located in Southern Tibet, was selected as the study area. Firstly, the dataset containing 49 debris flow inventories and 16 conditioning factors was prepared. Subsequently, divided the dataset into two groups with a ratio of 70/30 for training and validation purposes, and repeated 5 times to obtain 5 different groups. Then, 16 factors were involved in the modeling of RF, of which 11 factors with low linear correlation were for BDA and LR. Finally, receiver operating characteristic curves, the area under curve (AUC) and contingency tables were applied to evaluated the accuracy performance of the 3 models. The prediction rates were 74.6-81.8%, 74.6-83.6% and 80-92.7%, for the BDA, LR and FR, while the AUC values of three models were 0.72-0.78, 0.82-0.92 and 0.90-0.99, respectively. Compare to LR an BDA, RF not only effectively process and preserved dataset without priori assumption and the obtained susceptibility zoning map and major factors were reasonable. The conclusion of the current study is useful for risk mitigation and land use planning in the study area and provide related references to other researches.
机译:碎片流动摧毁了设施,严重威胁人类生活,特别是在山区。易感性映射是防止危害的关键。本研究的目的是比较三种方法的性能,包括贝叶斯判别分析(BDA),逻辑回归(LR)和随机森林(RF),用于从三个方面的碎片流动敏感性映射:适用性,分析性和准确性。 Nyalam County是位于西藏南部的碎片流动普通区,被选为研究区。首先,制备包含49个碎片流量库存和16个调节因子的数据集。随后,将数据集分成两组,比率为70/30以进行训练和验证目的,并重复5次以获得5个不同的组。然后,RF的建模参与了16个因素,其中LR为BDA和LR具有低线性相关性的因素。最后,接收器操作特征曲线,曲线下的区域(AUC)和应变表被应用于评估3型号的精度性能。预测率为BDA,LR和FR为74.6-83.8%,74.6-83.6%和80-92.7%,而三种模型的AUC值分别为0.72-0.78,0.82-0.92和0.90-0.99。与LR AN BDA进行比较,RF不仅有效地处理和保存的数据集,而无需先验假设,并且获得的易感性分区地图和主要因素是合理的。目前研究的结论对于研究区内的风险缓解和土地利用规划是有用的,并提供对其他研究的相关参考。

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