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Spatial prediction of landslide susceptibility in Taleghan basin, Iran

机译:伊朗塔莱汉盆地滑坡敏感性的空间预测

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摘要

Identifying landslide-susceptible zones is warranted to prevent and mitigate associated hazards in mountainous regions, where a landslide is a destructive type of erosion. A landslide susceptibility map was developed for the Taleghan basin based on frequency ratio (FR), logistic regression (LR), maximum entropy (MaxEnt), and support vector machine (SVM) with radial base (RBF), sigmoid (SIG), linear (LN), and polynomial (PL) kernel functions. To this end, an inventory map with 166 landslide locations was prepared and partitioned into 70% and 30% to train and validate the models, respectively. Subsequently, the models were designed based on 13 factors including elevation, slope degree, slope aspect, distance to stream, Stream Power Index, Topographic Wetness Index, Stream Transport Index, distance to fault, lithology, soil texture, land use, distance to road and precipitation. The performance of the methods was assessed using the area under the receiver operating characteristic curve, the Seed Cell Area Index (SCAI), the precision index (P). Moreover, statistical measures including sensitivity, specificity, and accuracy were calculated. Friedman test was also applied to confirm significant statistical differences among the seven models employed in this research. The validation results showed that MaxEnt had the maximum area under the curve (0.812). The results obtained using the models LR, FR, PL-SVM, SIG-SVM, LN-SVM, and RBF-SVM were 0.807, 0.732, 0.679, 0.663, 0.643 and 0.660, respectively. The obtained P index showed the better performance of MaxEnt and LR models. Moreover, the trend of changes in the SCAI values, from low- to high-susceptibility, indicated that the MaxEnt and LR models had the best performance. Decision makers can effectively use the findings of the present study to mitigate the financial and human costs resulting from the landslides.
机译:必须确定滑坡易发区,以防止和减轻山区的滑坡是破坏性侵蚀的相关危险。基于频率比(FR),逻辑回归(LR),最大熵(MaxEnt)和带径向基(RBF),S形(SIG)的支持向量机(SVM),为塔勒甘盆地开发了滑坡敏感性图(LN)和多项式(PL)内核函数。为此,准备了一个具有166个滑坡位置的清单图,并将其划分为70%和30%,以分别训练和验证模型。随后,基于13个因素设计模型,包括海拔,坡度,坡度,到溪流的距离,溪流功率指数,地形湿度指数,溪流运输指数,断层距离,岩性,土壤质地,土地利用,距道路的距离和降水。使用接收器工作特性曲线下的面积,种子细胞面积指数(SCAI),精度指数(P)评估方法的性能。此外,还计算了包括敏感性,特异性和准确性在内的统计指标。弗里德曼检验还用于确认在本研究中使用的七个模型之间的显着统计学差异。验证结果表明MaxEnt具有曲线下的最大面积(0.812)。使用LR,FR,PL-SVM,SIG-SVM,LN-SVM和RBF-SVM模型获得的结果分别为0.807、0.732、0.679、0.663、0.643和0.660。获得的P指数显示了MaxEnt和LR模型的较好性能。此外,SCAI值从低敏感性到高敏感性的变化趋势表明,MaxEnt和LR模型具有最佳性能。决策者可以有效地利用本研究的结果来减轻山体滑坡造成的财务和人力成本。

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