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Evaluation of deep learning algorithms for national scale landslide susceptibility mapping of Iran

机译:伊朗国家规模滑坡敏感性映射的深度学习算法评价

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The identification of landslide-prone areas is an essential step in landslide hazard assessment and mitigation of landslide-related losses. In this study, we applied two novel deep learning algorithms, the recurrent neural network (RNN) and convolutional neural network (CNN), for national-scale landslide susceptibility mapping of Iran. We prepared a dataset comprising 4069 historical landslide locations and 11 conditioning factors (altitude, slope degree, profile curvature, distance to river, aspect, plan curvature, distance to road, distance to fault, rainfall, geology and land-sue) to construct a geospatial database and divided the data into the training and the testing dataset. We then developed RNN and CNN algorithms to generate landslide susceptibility maps of Iran using the training dataset. We calculated the receiver operating characteristic (ROC) curve and used the area under the curve (AUC) for the quantitative evaluation of the landslide susceptibility maps using the testing dataset. Better performance in both the training and testing phases was provided by the RNN algorithm (AUC??=??0.88) than by the CNN algorithm (AUC??=??0.85). Finally, we calculated areas of susceptibility for each province and found that 6% and 14% of the land area of Iran is very highly and highly susceptible to future landslide events, respectively, with the highest susceptibility in Chaharmahal and Bakhtiari Province (33.8%). About 31% of cities of Iran are located in areas with high and very high landslide susceptibility. The results of the present study will be useful for the development of landslide hazard mitigation strategies.
机译:静脉滑坡的识别是滑坡危害评估和减轻滑坡相关损失的重要步骤。在这项研究中,我们应用了两种深入学习算法,经常性神经网络(RNN)和卷积神经网络(CNN),用于伊朗的国家规模滑坡敏感性映射。我们准备了一个包含4069个历史滑坡位置的数据集和11个条件因素(高度,倾斜度,轮廓曲率,到河流,方面,平面曲率,距离到道路距离,距离,降雨,地质和土地和陆苏的距离)构建地理空间数据库并将数据划分为培训和测试数据集。然后,我们开发了RNN和CNN算法,使用训练数据集生成伊朗的滑坡敏感性图。我们计算了接收器操作特性(ROC)曲线,并使用曲线(AUC)下的区域,用于使用测试数据集进行旧滑坡敏感性图的定量评估。通过CNN算法(AUC ?? = ?? 0.88)提供培训和测试阶段的更好性能而不是CNN算法(AUC ?? = ?? 0.85)。最后,我们计算了每个省的易感性,发现伊朗的6%和14%的土地面积分别非常高度高,易受未来滑坡事件,在Chaharmahal和Bakhtiari省的敏感度最高(33.8%) 。大约31%的伊朗城市位于具有高且极高的滑坡易感性的地区。本研究的结果将有助于开发滑坡危害缓解策略。

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