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Landslide Susceptibility Mapping of Karakorum Highway Combined with the Application of SBAS-InSAR Technology

机译:结合SBAS-InSAR技术应用喀喇昆仑公路滑坡敏感性图

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摘要

Geological conditions along the Karakorum Highway (KKH) promote the occurrence of frequent natural disasters, which pose a serious threat to its normal operation. Landslide susceptibility mapping (LSM) provides a basis for analyzing and evaluating the degree of landslide susceptibility of an area. However, there has been limited analysis of actual landslide activity processes in real-time. The SBAS-InSAR (Small Baseline Subsets-Interferometric Synthetic Aperture Radar) method can fully consider the current landslide susceptibility situation and, thus, it can be used to optimize the results of LSM. In this study, we compared the results of LSM using logistic regression and Random Forest models along the KKH. Both approaches produced a classification in terms of very low, low, moderate, high, and very high landslide susceptibility. The evaluation results of the two models revealed a high susceptibility of land sliding in the Gaizi Valley and the Tashkurgan Valley. The Receiver Operating Characteristic (ROC) curve and historical landslide verification points were used to compare the evaluation accuracy of the two models. The Area under Curve (AUC) value of the Random Forest model was 0.981, and 98.79% of the historical landslide points in the verification points fell within the range of high and very high landslide susceptibility degrees. The Random Forest evaluation results were found to be superior to those of the logistic regression and they were combined with the SBAS-InSAR results to conduct a new LSM. The results showed an increase in the landslide susceptibility degree for 2808 cells. We conclude that this optimized landslide susceptibility mapping can provide valuable decision support for disaster prevention and it also provides theoretical guidance for the maintenance and normal operation of KKH.
机译:喀喇昆仑公路(KKH)沿线的地质条件助长了频繁的自然灾害的发生,严重威胁了其正常运行。滑坡敏感性图(LSM)为分析和评估某个地区的滑坡敏感性程度提供了基础。但是,对实时实际滑坡活动过程的分析有限。 SBAS-InSAR(小基线子集-干涉合成孔径雷达)方法可以充分考虑当前的滑坡易感性,因此可用于优化LSM的结果。在这项研究中,我们使用逻辑回归和KKH的随机森林模型比较了LSM的结果。两种方法都产生了非常低,低,中,高和非常高的滑坡敏感性分类。这两个模型的评估结果表明,盖兹河谷和塔什库尔干河谷的土地滑坡敏感性很高。使用接收器工作特征(ROC)曲线和历史滑坡验证点来比较两个模型的评估准确性。随机森林模型的曲线下面积(AUC)值为0.981,验证点中的历史滑坡点的98.79%处于高和非常高的滑坡敏感性程度范围内。发现随机森林评估结果优于逻辑回归评估结果,并将其与SBAS-InSAR结果结合进行新的LSM。结果显示2808个细胞的滑坡敏感性程度增加。我们得出的结论是,这种优化的滑坡敏感性图可以为防灾提供有价值的决策支持,也可以为KKH的维护和正常运行提供理论指导。

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