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GIS-aided Statistical Landslide Susceptibility Modeling And Mapping Of Antipolo Rizal (Philippines)

机译:GIS-辅助统计滑坡易感性建模与Antipolo Rizal(菲律宾)

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Slope instability associated with heavy rainfall or earthquake is a familiar geotechnical problem in the Philippines. The main objective of this study is to perform a detailed landslide susceptibility assessment of Antipolo City. The statistical method of assessment used was logistic regression. Landslide inventory was done through interpretation of aerial photographs and satellite images with corresponding field verification. In this study, morphologic and non-morphologic factors contributing to landslide occurrence and their corresponding spatial relationships were considered. The analysis of landslide susceptibility was implemented in a Geographic Information System (GIS). The 17320 randomly selected datasets were divided into training and test data sets. K-cross fold validation is done with k= 5. The subsamples are then fitted five times with k-1 training data set and the remaining fold as the validation data set. The AUROC of each model is validated using each corresponding data set. The AUROC of the five models are; 0.978, 0.977, 0.977, 0.974, and 0.979 respectively, implying that the models are effective in correctly predicting the occurrence and non-occurrence of landslide activity. Field verification was also done. The landslide susceptibility map was then generated from the model. It is classified into four categories; low, moderate, high and very high susceptibility. The study also shows that almost 40% of Antipolo City has been assessed to be potentially dangerous areas in terms of landslide occurrence.
机译:与大雨或地震相关的边坡不稳定性是菲律宾熟悉的岩土问题。本研究的主要目的是对安东热市进行详细的滑坡易感性评估。使用的评估统计方法是逻辑回归。通过对相应的场验证的空中照片和卫星图像的解释来完成滑坡库存。在本研究中,考虑了对滑坡发生的形态学和非形态因素及其相应的空间关系。在地理信息系统(GIS)中实施了对滑坡易感性的分析。将17320随机选择的数据集分为训练和测试数据集。 k交叉折叠验证用k = 5完成。然后使用K-1训练数据集和剩余折叠安装五次,作为验证数据集。使用每个相应的数据集进行验证每个模型的AUROC。五种型号的煤气是;分别为0.978,0.977,0.977,0.974和0.979,暗示该模型在正确预测山体滑坡活动的发生和不发生方面有效。现场验证也完成了。然后从模型中产生滑坡敏感性图。它被分为四类;低,中等,高,易感性。该研究还表明,在滑坡发生方面,近40%的安特奥洛市已被评估为潜在的危险区域。

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