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A deep learning algorithm using a fully connected sparse autoencoder neural network for landslide susceptibility prediction

机译:一种深入学习算法,使用完全连接的稀疏自动化器神经网络进行滑坡敏感性预测

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摘要

The environmental factors of landslide susceptibility are generally uncorrelated or non-linearly correlated, resulting in the limited prediction performances of conventional machine learning methods for landslide susceptibility prediction (LSP). Deep learning methods can exploit low-level features and high-level representations of information from environmental factors. In this paper, a novel deep learning-based algorithm, the fully connected spare autoencoder (FC-SAE), is proposed for LSP. The FC-SAE consists of four steps: raw feature dropout in input layers, a sparse feature encoder in hidden layers, sparse feature extraction in output layers, and classification and prediction. The Sinan County of Guizhou Province in China, with a total of 23,195 landslide grid cells (306 recorded landslides) and 23,195 randomly selected non-landslide grid cells, was used as study case. The frequency ratio values of 27 environmental factors were taken as the input variables of FC-SAE. All 46,390 landslide and non-landslide grid cells were randomly divided into a training dataset (70%) and a test dataset (30%). By analyzing real landslide/non-landslide data, the performances of the FC-SAE and two other conventional machine learning methods, support vector machine (SVM) and back-propagation neural network (BPNN), were compared. The results show that the prediction rate and total accuracies of the FC-SAE are 0.854 and 85.2% which are higher than those of the SVM-only (0.827 and 81.56%) and BPNN (0.819 and 80.86%), respectively. In conclusion, the asymmetric and unsupervised FC-SAE can extract optimal non-linear features from environmental factors successfully, outperforms some conventional machine learning methods, and is promising for LSP.
机译:滑坡易感性的环境因素通常不相关或非线性相关,导致常规机器学习方法的预测性能有限,用于滑坡敏感性预测(LSP)。深度学习方法可以利用环境因素的低级功能和高级信息。本文提出了一种新型深度学习算法,完全连接的备用AutoEncoder(FC-SAE),用于LSP。 FC-SAE由四个步骤组成:输入图层中的原始功能丢失,隐藏层中的稀疏功能编码器,输出层中的稀疏特征提取,以及分类和预测。中国贵州省南南县,共有23,195个山体滑坡电池(306次记录山体滑坡)和23,195个随机选择的非滑坡电网细胞,作为研究案例。 27个环境因子的频率比值作为FC-SAE的输入变量。所有46,390个滑坡和非滑坡网格细胞随机分为训练数据集(70%)和测试数据集(30%)。通过分析真正的滑坡/非滑坡数据,比较了FC-SAE和另外两种传统机器学习方法,支持向量机(SVM)和后传播神经网络(BPNN)的性能。结果表明,FC-SAE的预测率和总精度为0.854和85.2%,其分别高于SVM-ock(0.827和81.56%)和BPNN(0.819和80.86%)。总之,非对称和无人育的FC-SAE可以成功地从环境因素中提取最佳的非线性特征,优于一些传统的机器学习方法,并且对LSP有前途。

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