首页> 外文期刊>Bulletin of engineering geology and the environment >Landslide susceptibility mapping at Ovacik-Karabuek (Turkey) using different artificial neural network models: comparison of training algorithms
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Landslide susceptibility mapping at Ovacik-Karabuek (Turkey) using different artificial neural network models: comparison of training algorithms

机译:使用不同的人工神经网络模型在Ovacik-Karabuek(土耳其)进行滑坡敏感性测绘:训练算法的比较

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摘要

This study aims to investigate the performances of different training algorithms used for an artificial neural network (ANN) method to produce landslide susceptibility maps. For this purpose, Ovack region (southeast of Karabuk Province), located in the Western Black Sea Region (Turkey), was selected as the study area. A total of 196 landslides were mapped, and a landslide database was prepared. Topographical elevation, slope angle, aspect, wetness index, lithology, and vegetation index parameters were taken into account for the landslide susceptibility analyses. Two different ANN structures, which were composed of single and double hidden layers, were applied to compare the effects of the ANN. Four different training algorithms, namely batch back-propagation, quick propagation, conjugate gradient descent (CGD), and Levenberg-Marquardt, were used for the training stage of the ANN models. Thus, eight different landslide susceptibility maps were produced for the study area using different ANN structures and algorithms. In order to assess the effects and spatial performances of the considered training algorithms on the ANN models, the relative operating characteristics (ROC) and relation value (r(ij)) approaches were used. The susceptibility map produced by CGD1 has the highest AUC (0.817) and r(ij) values (0.972). Comparison of the susceptibility maps indicated that CGD training algorithm is the slowest one among the other algorithms, but this algorithm showed the highest performance on the results.
机译:这项研究旨在调查用于人工神经网络(ANN)方法以生成滑坡敏感性图的不同训练算法的性能。为此,位于西部黑海地区(土耳其)的奥瓦克地区(卡拉布克省东南部)被选为研究区域。总共绘制了196个滑坡图,并准备了一个滑坡数据库。滑坡敏感性分析考虑了地形高程,坡度,纵横比,湿度指数,岩性和植被指数参数。两种不同的由单层和双层隐藏层组成的人工神经网络结构被用来比较人工神经网络的效果。 ANN模型的训练阶段使用了四种不同的训练算法,即批反向传播,快速传播,共轭梯度下降(CGD)和Levenberg-Marquardt。因此,使用不同的人工神经网络结构和算法为研究区域绘制了八张不同的滑坡敏感性图。为了评估所考虑的训练算法对ANN模型的影响和空间性能,使用了相对操作特性(ROC)和关系值(r(ij))方法。由CGD1生成的磁化率图具有最高的AUC(0.817)和r(ij)值(0.972)。敏感性图的比较表明,CGD训练算法是其他算法中最慢的一种,但该算法在结果上表现出最高的性能。

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