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Hybrid Integration Approach of Entropy with Logistic Regression and Support Vector Machine for Landslide Susceptibility Modeling

机译:熵与Logistic回归与支持向量机的混合集成方法在滑坡敏感性分析中的应用

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摘要

The main purpose of the present study is to apply three classification models, namely, the index of entropy (IOE) model, the logistic regression (LR) model, and the support vector machine (SVM) model by radial basis function (RBF), to produce landslide susceptibility maps for the Fugu County of Shaanxi Province, China. Firstly, landslide locations were extracted from field investigation and aerial photographs, and a total of 194 landslide polygons were transformed into points to produce a landslide inventory map. Secondly, the landslide points were randomly split into two groups (70/30) for training and validation purposes, respectively. Then, 10 landslide explanatory variables, such as slope aspect, slope angle, altitude, lithology, mean annual precipitation, distance to roads, distance to rivers, distance to faults, land use, and normalized difference vegetation index (NDVI), were selected and the potential multicollinearity problems between these factors were detected by the Pearson Correlation Coefficient (PCC), the variance inflation factor (VIF), and tolerance (TOL). Subsequently, the landslide susceptibility maps for the study region were obtained using the IOE model, the LR–IOE, and the SVM–IOE model. Finally, the performance of these three models was verified and compared using the receiver operating characteristics (ROC) curve. The success rate results showed that the LR–IOE model has the highest accuracy (90.11%), followed by the IOE model (87.43%) and the SVM–IOE model (86.53%). Similarly, the AUC values also showed that the prediction accuracy expresses a similar result, with the LR–IOE model having the highest accuracy (81.84%), followed by the IOE model (76.86%) and the SVM–IOE model (76.61%). Thus, the landslide susceptibility map (LSM) for the study region can provide an effective reference for the Fugu County government to properly address land planning and mitigate landslide risk.
机译:本研究的主要目的是应用三种分类模型,即基于径向基函数(RBF)的熵指数(IOE)模型,对数回归(LR)模型和支持向量机(SVM)模型,绘制中国陕西省府谷县的滑坡敏感性图。首先,从野外调查和航拍照片中提取滑坡位置,然后将总共194个滑坡多边形转换为点,以生成滑坡清单图。其次,将滑坡点随机分为两组(70/30),分别用于训练和验证。然后,选择了10个滑坡解释变量,例如坡度,坡度,高度,岩性,年平均降水量,到道路的距离,到河流的距离,到断层的距离,土地利用以及归一化植被指数(NDVI),这些因素之间潜在的多重共线性问题通过皮尔森相关系数(PCC),方差膨胀因子(VIF)和公差(TOL)进行检测。随后,使用IOE模型,LR–IOE和SVM–IOE模型获得了研究区域的滑坡敏感性图。最后,使用接收器工作特性(ROC)曲线验证并比较了这三个模型的性能。成功率结果表明,LR–IOE模型具有最高的准确性(90.11%),其次是IOE模型(87.43%)和SVM–IOE模型(86.53%)。同样,AUC值也表明预测精度表示出相似的结果,其中LR–IOE模型具有最高的准确性(81.84%),其次是IOE模型(76.86%)和SVM–IOE模型(76.61%) 。因此,研究区域的滑坡敏感性图(LSM)可以为府谷县政府正确处理土地规划和减轻滑坡风险提供有效参考。

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