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Spatial prediction models for shallow landslide hazards: a comparative assessment of the efficacy of support vector machines, artificial neural networks, kernel logistic regression, and logistic model tree

机译:浅层滑坡灾害的空间预测模型:支持向量机,人工神经网络,核逻辑回归和逻辑模型树的有效性的比较评估

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Preparation of landslide susceptibility maps is considered as the first important step in landslide risk assessments, but these maps are accepted as an end product that can be used for land use planning. The main objective of this study is to explore some new state-of-the-art sophisticated machine learning techniques and introduce a framework for training and validation of shallow landslide susceptibility models by using the latest statistical methods. The Son La hydropower basin (Vietnam) was selected as a case study. First, a landslide inventory map was constructed using the historical landslide locations from two national projects in Vietnam. A total of 12 landslide conditioning factors were then constructed from various data sources. Landslide locations were randomly split into a ratio of 70:30 for training and validating the models. To choose the best subset of conditioning factors, predictive ability of the factors were assessed using the Information Gain Ratio with 10-fold cross-validation technique. Factors with null predictive ability were removed to optimize the models. Subsequently, five landslide models were built using support vector machines (SVM), multi-layer perceptron neural networks (MLP Neural Nets), radial basis function neural networks (RBF Neural Nets), kernel logistic regression (KLR), and logistic model trees (LMT). The resulting models were validated and compared using the receive operating characteristic (ROC), Kappa index, and several statistical evaluation measures. Additionally, Friedman and Wilcoxon signed-rank tests were applied to confirm significant statistical differences among the five machine learning models employed in this study. Overall, the MLP Neural Nets model has the highest prediction capability (90.2 %), followed by the SVM model (88.7 %) and the KLR model (87.9 %), the RBF Neural Nets model (87.1 %), and the LMT model (86.1 %). Results revealed that both the KLR and the LMT models showed promising methods for shallow landslide susceptibility mapping. The result from this study demonstrates the benefit of selecting the optimal machine learning techniques with proper conditioning selection method in shallow landslide susceptibility mapping.
机译:准备滑坡敏感性图被认为是滑坡风险评估的第一步,但是这些图被认为是可以用于土地利用规划的最终产品。这项研究的主要目的是探索一些新的先进的先进机器学习技术,并为使用最新统计方法的浅层滑坡敏感性模型的训练和验证引入框架。选择了Son La水电盆地(越南)作为案例研究。首先,利用越南两个国家项目的历史滑坡位置绘制了滑坡清单图。然后从各种数据源构建了总共12个滑坡条件因子。滑坡位置随机分成70:30的比例,以训练和验证模型。为了选择条件因素的最佳子集,使用信息增益比和10倍交叉验证技术评估了这些因素的预测能力。排除具有无效预测能力的因素以优化模型。随后,使用支持向量机(SVM),多层感知器神经网络(MLP神经网络),径向基函数神经网络(RBF神经网络),核逻辑回归(KLR)和逻辑模型树构建了五个滑坡模型( LMT)。使用接收工作特征(ROC),Kappa指数和几种统计评估方法对所得模型进行了验证和比较。此外,应用了Friedman和Wilcoxon的符号秩检验来确认本研究中使用的五个机器学习模型之间的显着统计差异。总体而言,MLP神经网络模型具有最高的预测能力(90.2%),其次是SVM模型(88.7%)和KLR模型(87.9%),RBF神经网络模型(87.1%)和LMT模型( 86.1%)。结果表明,KLR模型和LMT模型都显示了浅层滑坡敏感性地图的有前途的方法。这项研究的结果表明,在浅层滑坡敏感性地图中采用适当的条件选择方法选择最佳的机器学习技术是有好处的。

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