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A Comparative Study of Landslide Susceptibility Mapping Using SVM and PSO-SVM Models Based on Grid and Slope Units

机译:基于网格和坡度单位的SVM和PSO-SVM模型的滑坡易感性映射的比较研究

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The main purpose of this study aims to apply and compare the rationality of landslide susceptibility maps using support vector machine (SVM) and particle swarm optimization coupled with support vector machine (PSO-SVM) models in Lueyang County, China, enhance the connection with the natural terrain, and analyze the application of grid units and slope units. A total of 186 landslide locations were identified by earlier reports and field surveys. The landslide inventory was randomly divided into two parts: 70% for training dataset and 30% for validation dataset. Based on the multisource data and geological environment, 16 landslide conditioning factors were selected, including control factors and triggering factors (i.e., altitude, slope angle, slope aspect, plan curvature, profile curvature, SPI, TPI, TRI, lithology, distance to faults, TWI, distance to rivers, NDVI, distance to roads, land use, and rainfall). The susceptibility between each conditioning factor and landslide was deduced using a certainty factor model. Subsequently, combined with grid units and slope units, the landslide susceptibility models were carried out by using SVM and PSO-SVM methods. The precision capability of the landslide susceptibility mapping produced by different models and units was verified through a receiver operating characteristic (ROC) curve. The results showed that the PSO-SVM model based on slope units had the best performance in landslide susceptibility mapping, and the area under the curve (AUC) values of training and validation datasets are 0.945 and 0.9245, respectively. Hence, the machine learning algorithm coupled with slope units can be considered a reliable and effective technique in landslide susceptibility mapping.
机译:本研究的主要目的是应用和比较使用支持向量机(SVM)和粒子群优化的滑坡易感性图的合理性,并与中国卢阳县的支持向量机(PSO-SVM)模型相加,增强了与之相关的自然地形,分析网格单元和坡度单位的应用。通过早期的报告和现场调查确定了186个山体滑坡地点。 LANDSLIDE库存随机分为两部分:训练数据集70%,验证数据集30%。基于多源数据和地质环境,选择了16个滑坡调节因素,包括控制因素和触发因素(即高度,斜坡角度,斜坡方面,平面曲率,轮廓曲率,SPI,TPI,TRI,岩性,距离发生故障,TWI,距离河流,NDVI,与道路距离,土地使用和降雨)。使用确定性因子模型推导出每个调节因子和滑坡之间的敏感性。随后,通过使用SVM和PSO-SVM方法来结合网格单元和斜坡单元,山体滑坡敏感性模型进行。通过不同模型和单位产生的滑坡敏感性映射的精确能力通过接收器操作特征(ROC)曲线来验证。结果表明,基于坡度单元的PSO-SVM模型在滑坡敏感性映射中具有最佳性能,训练和验证数据集的曲线(AUC)值下的面积分别为0.945和0.9245。因此,与坡度单元耦合的机器学习算法可以被认为是滑坡易感映射中可靠且有效的技术。

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