首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >AN EVALUATION OF LANDSLIDE SUSCEPTIBILITY MAPPING USING REMOTE SENSING DATA AND MACHINE LEARNING ALGORITHMS IN IRAN
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AN EVALUATION OF LANDSLIDE SUSCEPTIBILITY MAPPING USING REMOTE SENSING DATA AND MACHINE LEARNING ALGORITHMS IN IRAN

机译:伊朗遥感数据和机器学习算法的滑坡敏感性映射评估

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Landslide is painstaking as one of the most prevalent and devastating forms of mass movement that affects man and his environment. The specific objective of this research paper is to investigate the application and performances of some selected machine learning algorithms (MLA) in landslide susceptibility mapping, in Dodangeh watershed, Iran. A 112 sample point of the past landslide, occurrence or inventory data was generated from the existing and field observations. In addition, fourteen landslide-conditioning parameters were derived from DEM and other topographic databases for the modelling process. These conditioning parameters include total curvature, profile curvature, plan curvature, slope, aspect, altitude, topographic wetness index (TWI), topographic roughness index (TRI), stream transport index (STI), stream power index (SPI), lithology, land use, distance to stream, distance to the fault. Meanwhile, factor analysis was employed to optimize the landslide conditioning parameters and the inventory data, by assessing the multi-collinearity effects and outlier detections respectively. The inventory data is divided into 70% (78) training dataset and 30% (34) test dataset for model validation. The receiver operating characteristics (ROC) curve or area under curve (AUC) value was used for assessing the model's performance. The findings reveal that TRI has 0.89 collinearity effect based on variance-inflated factor (VIF) and based on Gini factor optimization total curvature is not significant in the model development, therefore the two parameters are excluded from the modelling. All the selected MLAs (RF, BRT, and DT) shown promising performances on landslide susceptibility mapping in Dodangeh watershed, Iran. The ROC curve for training and validation for RF are 86% success rate and 83% prediction rate implies the best model performance compared to BRT and DT, with ROC curve of 72% and 70% prediction rate, respectively. In conclusion, RF could be the best algorithm for producing landslide susceptibility map, and such results could be adopted for the decision-making process to support land use planner for improving landslide risk assessment in similar environmental settings.
机译:滑坡是艰苦的,作为影响人和环境的最普遍和毁灭性的群众运动形式之一。本研究论文的具体目标是研究一些选定机器学习算法(MLA)在滑坡易感性映射中的应用和演出,在Dodangeh流域,伊朗。从现有的和现场观察生成了过去滑坡,发生或库存数据的112个采样点。此外,来自DEM和其他地形数据库的14个滑坡调节参数进行建模过程。这些调节参数包括总曲率,轮廓曲率,平面曲率,斜率,方面,高度,地形湿度指数(TWI),地形粗糙度指数(TRI),流传输指数(STI),流功率指数(SPI),岩性,土地使用,距离流,距离故障。同时,采用因子分析来通过分别评估多联盟性效应和异常检测来优化山崩调理参数和库存数据。库存数据分为70%(78)训练数据集和30%(34)测试数据集进行模型验证。曲线下的接收器操作特性(ROC)曲线或面积(AUC)值用于评估模型的性能。该研究结果表明,基于方差膨胀因子(VIF)的TRI具有0.89个相连效应,基于GINI因子优化在模型开发中,总曲率在模型开发中不显着,因此从建模中排除两个参数。所有所选的MLAS(RF,BRT和DT)显示了在Dodangeh流域,伊朗的滑坡易感性映射上的有希望的表现。用于训练和验证的ROC曲线是86%的成功率,83%的预测率与BRT和DT相比,具有72%和70%的预测率的ROC曲线。总之,RF可以是生产滑坡易感性图的最佳算法,可以采用这些结果来支持土地利用规划师,以改善类似环境环境中的滑坡风险评估。

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