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Data Mining Approaches for Landslide Susceptibility Mapping in Umyeonsan, Seoul, South Korea

机译:韩国首尔面山市滑坡敏感性地图的数据挖掘方法

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The application of data mining models has become increasingly popular in recent years in assessments of a variety of natural hazards such as landslides and floods. Data mining techniques are useful for understanding the relationships between events and their influencing variables. Because landslides are influenced by a combination of factors including geomorphological and meteorological factors, data mining techniques are helpful in elucidating the mechanisms by which these complex factors affect landslide events. In this study, spatial data mining approaches based on data on landslide locations in the geographic information system environment were investigated. The topographical factors of slope, aspect, curvature, topographic wetness index, stream power index, slope length factor, standardized height, valley depth, and downslope distance gradient were determined using topographical maps. Additional soil and forest variables using information obtained from national soil and forest maps were also investigated. A total of 17 variables affecting the frequency of landslide occurrence were selected to construct a spatial database, and support vector machine (SVM) and artificial neural network (ANN) models were applied to predict landslide susceptibility from the selected factors. In the SVM model, linear, polynomial, radial base function, and sigmoid kernels were applied in sequence; the model yielded 72.41%, 72.83%, 77.17% and 72.79% accuracy, respectively. The ANN model yielded a validity accuracy of 78.41%. The results of this study are useful in guiding effective strategies for the prevention and management of landslides in urban areas.
机译:近年来,在评估各种自然灾害(例如滑坡和洪水)时,数据挖掘模型的应用已变得越来越流行。数据挖掘技术对于理解事件及其影响变量之间的关系很有用。由于滑坡受包括地貌和气象因素在内的多种因素的影响,因此数据挖掘技术有助于阐明这些复杂因素影响滑坡事件的机制。在这项研究中,研究了基于地理信息系统环境中滑坡位置数据的空间数据挖掘方法。使用地形图确定坡度,纵横比,曲率,地形湿度指数,河流功率指数,坡长因子,标准化高度,谷底深度和下坡距离梯度的地形因子。还使用从国家土壤和森林地图获得的信息调查了其他土壤和森林变量。总共选择了17个影响滑坡发生频率的变量来构建空间数据库,并应用支持向量机(SVM)和人工神经网络(ANN)模型从所选因素中预测滑坡敏感性。在SVM模型中,依次应用了线性,多项式,径向基函数和S形核。该模型的准确率分别为72.41%,72.83%,77.17%和72.79%。人工神经网络模型的有效性准确性为78.41%。这项研究的结果对于指导预防和管理城市地区滑坡的有效策略很有用。

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