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Landslide Susceptibility Mapping Using Single Machine Learning Models: A Case Study from Pithoragarh District, India

机译:使用单机学习模型的滑坡易感性测绘:印度Pithoragarh区的案例研究

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Landslides are one of the most devastating natural hazards causing huge loss of life and damage to properties and infrastructures and adversely affecting the socioeconomy of the country. Landslides occur in hilly and mountainous areas all over the world. Single, ensemble, and hybrid machine learning (ML) models have been used in landslide studies for better landslide susceptibility mapping and risk management. In the present study, we have used three single ML models, namely, linear discriminant analysis (LDA), logistic regression (LR), and radial basis function network (RBFN), for landslide susceptibility mapping at Pithoragarh district, as these models are easy to apply and so far they have not been used for landslide study in this area. The main objective of this study is to evaluate the performance of these single models for correctly identifying landslide susceptible zones for their further application in other areas. For this, ten important landslide affecting factors, namely, slope, aspect, curvature, elevation, land cover, lithology, geomorphology, distance to rivers, distance to roads, and overburden depth based on the local geoenvironmental conditions, were considered for the modeling. Landslide inventory of past 398 landslide events was used in the development of models. The data of past landslide events (locations) was randomly divided into a 70/30 ratio for training (70%) and validation (30%) of the models. Standard statistical measures, namely, accuracy (ACC), specificity (SPF), sensitivity (SST), positive predictive value (PPV), negative predictive value (NPV), Kappa, root mean square error (RMSE), and area under the receiver operating characteristic curve (AUC), were used to evaluate the performance of the models. Results indicated that the performance of all the models is very good (AUC??0.90) and that of the LR model is the best (AUC?=?0.926). Therefore, these single ML models can be used for the development of accurate landslide susceptibility maps. Our study demonstrated that the single models which are easy to use and can compete with the complex ensemble/hybrid models can be applied for landslide susceptibility mapping in landslide-prone areas.
机译:Landslides是最具破坏性的自然灾害之一,导致巨大的生命损失和对性质和基础设施的损害,并对国家的社会经济产生不利影响。世界各地的丘陵和山区发生山体滑坡。单一,集合和混合机械学习(ML)模型已用于Landslide研究,以获得更好的滑坡易感性测绘和风险管理。在本研究中,我们使用了三种单一ML模型,即线性判别分析(LDA),逻辑回归(LR)和径向基函数网络(RBFN),用于Pithoragarh区的滑坡敏感性映射,因为这些模型很容易申请,到目前为止,他们未用于该地区的滑坡研究。本研究的主要目的是评估这些单一模型的性能,用于正确识别山体滑坡易感区,以便在其他领域进一步应用。为此,坡度,方面,曲率,升高,陆覆盖,岩性,地貌,与河流的距离,与道路距离以及基于当地地理环境的覆盖深度的坡度,岩石学,距离的距离,距离,距离的距离,距离。过去398年山体滑坡事件的滑坡库存用于发展模型。过去滑坡事件(地点)的数据随机分为70/30的培训比,验证(70%)和验证(30%)。标准统计措施,即精度(ACC),特异性(SPF),灵敏度(SST),阳性预测值(PPV),否定预测值(NPV),Kappa,root均方误差(RMSE)以及接收器下的区域操作特征曲线(AUC),用于评估模型的性能。结果表明,所有模型的性能非常好(AUC?&?0.90),并且LR模型是最好的(AUC?= 0.926)。因此,这些单一ML型号可用于开发准确的滑坡易感性图。我们的研究表明,易于使用的单一型号,可与复杂的集合/混合模型竞争,可以应用于滑坡易受摇摆滑坡的滑坡敏感性映射。

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