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Assessment of the effects of training data selection on the landslide susceptibility mapping: a comparison between support vector machine (SVM), logistic regression (LR) and artificial neural networks (ANN)

机译:评估训练数据选择对滑坡敏感性图的影响:支持向量机(SVM),逻辑回归(LR)和人工神经网络(ANN)之间的比较

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ABSTRACT Landslide is a natural hazard that results in many economic damages and human losses every year. Numerous researchers have studied landslide susceptibility mapping (LSM), each attempting to improve the accuracy of the final outputs. However, few studies have been published on the training data selection effects on the LSM. Thus, this study assesses the training landslides random selection effects on support vector machine (SVM) accuracy, logistic regression (LR) and artificial neural networks (ANN) models for LSM in a catchment at the Dodangeh watershed, Mazandaran province, Iran. A 160 landslide locations inventory was collected by Geological Survey of Iran for this investigation. Different methods were implemented to define the landslide locations, such as inventory reports, satellite images and field survey. Moreover, 14 landslide conditioning factors were considered in the analysis of landslide susceptibility. These factors include curvature, plan curvature, profile curvature, altitude, slope angle, slope aspect, distance to faults, distance to stream, topographic wetness index, stream power index, terrain roughness index, sediment transport index, lithology and land use. The results show that the random landslide training data selection affected the parameter estimations of the SVM, LR and ANN algorithms. The results also show that the training samples selection had an effect on the accuracy of the susceptibility model because landslide conditioning factors vary according to the geographic locations in the study area. The LR model was found to be less sensitive than the SVM and ANN models to the training samples selection. Validation results showed that SVM and LR models outperformed the ANN model for all scenarios. The average overall accuracy of LR, SVM and ANN models are 81.42%, 79.82% and 70.2%, respectively.
机译:摘要滑坡是一种自然灾害,每年都会造成许多经济损失和人员伤亡。许多研究人员已经研究了滑坡敏感性地图(LSM),每个人都试图提高最终产出的准确性。但是,关于训练数据选择对LSM的影响的研究很少。因此,本研究评估了伊朗Mazandaran省Dodangeh流域的训练滑坡随机选择对LSM的支持向量机(SVM)准确性,逻辑回归(LR)和人工神经网络(ANN)模型的影响。伊朗地质调查局收集了160个滑坡位置清单进行了调查。实施了各种方法来定义滑坡位置,例如清单报告,卫星图像和野外勘测。此外,在滑坡敏感性分析中考虑了14个滑坡条件因素。这些因素包括曲率,平面曲率,剖面曲率,高度,坡度角,坡度,断层距离,溪流距离,地形湿度指数,溪流功率指数,地形粗糙度指数,沉积物迁移指数,岩性和土地利用。结果表明,随机滑坡训练数据的选择会影响SVM,LR和ANN算法的参数估计。结果还表明,训练样本的选择对磁化率模型的准确性有影响,因为滑坡调节因子会根据研究区域的地理位置而变化。发现LR模型对SFU和ANN模型的训练样本选择不那么敏感。验证结果表明,在所有情况下,SVM和LR模型均优于ANN模型。 LR,SVM和ANN模型的平均总体准确度分别为81.42%,79.82%和70.2%。

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