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Landslide susceptibility analysis with logistic regression model based on FCM sampling strategy

机译:基于FCM采样策略的Logistic回归模型滑坡敏感性分析

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摘要

Several mathematical models are used to predict the spatial distribution characteristics of landslides to mitigate damage caused by landslide disasters. Although some studies have achieved excellent results around the world, few studies take the inter-relationship of the selected points (training points) into account. In this paper, we present the Fuzzy c-means (FCM) algorithm as an optimal method for choosing the appropriate input landslide points as training data. Based on different combinations of the Fuzzy exponent (m) and the number of clusters (c), five groups of sampling points were derived from formal seed cells points and applied to analyze the landslide susceptibility in Mizunami City, Gifu Prefecture, Japan. A logistic regression model is applied to create the models of the relationships between landslide-conditioning factors and landslide occurrence. The pre-existing landslide bodies and the area under the relative operative characteristic (ROC) curve were used to evaluate the performance of all the models with different m and c. The results revealed that Model no. 4 (m=1.9, c=4) and Model no. 5 (m=1.9, c=5) have significantly high classification accuracies, i.e., 90.0%. Moreover, over 30% of the landslide bodies were grouped under the very high susceptibility zone. Otherwise, Model no. 4 and Model no. 5 had higher area under the ROC curve (AUC) values, which were 0.78 and 0.79, respectively. Therefore, Model no. 4 and Model no. 5 offer better model results for landslide susceptibility mapping. Maps derived from Model no. 4 and Model no. 5 would offer the local authorities crucial information for city planning and development.
机译:使用几种数学模型来预测滑坡的空间分布特征,以减轻滑坡灾害造成的破坏。尽管一些研究在世界范围内取得了优异的成绩,但很少有研究考虑到选定点(训练点)之间的相互关系。在本文中,我们提出了模糊c均值(FCM)算法,作为选择合适的输入滑坡点作为训练数据的最佳方法。根据模糊指数(m)和聚类数(c)的不同组合,从正式种子细胞点中提取了五组采样点,并用于分析日本岐阜县水浪市的滑坡敏感性。应用逻辑回归模型来创建滑坡条件因子与滑坡发生之间关系的模型。使用预先存在的滑坡体和相对工作特征曲线下的面积来评估所有m和c不同的模型的性能。结果显示型号为4(m = 1.9,c = 4)和型号5(m = 1.9,c = 5)具有很高的分类准确度,即90.0%。此外,超过30%的滑坡体被归类为高度敏感区。否则,请选择型号。 4和型号5的ROC曲线(AUC)值下的面积较大,分别为0.78和0.79。因此,型号4和型号5为滑坡敏感性图提供了更好的模型结果。源自模型编号的地图。 4和型号5将为地方当局提供有关城市规划和发展的重要信息。

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