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首页> 外文期刊>Catena: An Interdisciplinary Journal of Soil Science Hydrology-Geomorphology Focusing on Geoecology and Landscape Evolution >A comparative study of composite kernels for landslide susceptibility mapping: A case study in Yongxin County, China
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A comparative study of composite kernels for landslide susceptibility mapping: A case study in Yongxin County, China

机译:山体滑坡敏感性粒子复合核的比较研究 - 以中国永新县为例

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摘要

In this study, an effective kernel-based learning framework for landslide susceptibility mapping (LSM) is presented through an implementation of support vector machines (SVMs) with different composite kernels. Kernel-based classification methods are very popular in statistical classification and regression analysis because they can effectively address intractable issues such as the curse of dimensionality, limited known samples and noise corruption. The most representative of such methods is the SVM technique. Although SVMs have recently been widely used in LSM, they were defined using only the attribute value of each influencing factor and did not consider the high dependency between the adjacent vector-valued grid cells. This caused a labelling uncertainty. To solve this problem, it is necessary to combine both the influencing factor's attribute features and spatial dependency information in the SVM. In this work, we present two forms of composite kernels to combine the two aforementioned types of information: 1) constructed through a single kernel with stacked vectors; 2) built through summation kernels under different restrictions. The main advantages of the proposed framework are twofold. First, the integration of the two types of information can improve the predictive capability of the SVMs by removing the isolated class noise in the LSM results. Second, other useful information can be extracted from the spatial domain, such as the structural features of grid cells within and outside of landslide areas. The SVM comparisons were based on data from Yongxin County, China, containing 364 past landslide occurrences that were separated randomly into a training set (70%) and a validation set (30%). The geo-environmental setting of the study area was analysed and sixteen influencing factors were selected. The validation of these SVMs was performed using the receiver operating characteristic (ROC) and the area under the ROC curve (AUC). Experimental results demonstrate that all the SVM-based landslide susceptibility maps have similar spatial distributions upon visual inspection. Specifically, the mountainous zones in the north and south of the study area are characterized by high and very high susceptibility values, respectively, whereas the central part of the study area is categorized as the least susceptible zone. Meanwhile, the composite kernel-based learning framework can achieve a better prediction accuracy than the original SVM. From quantitative analysis, the four SVMs with a summation kernel obtain the AUC values above 0.8900, which is 0.0117 higher than that of the original SVM. Furthermore, a weighted scheme in the summation kernel can result in AUC values that are at least 0.0014 higher than a directional scheme.
机译:在该研究中,通过使用不同的复合核的支持向量机(SVM)的实施来提出了一种用于滑坡敏感性映射(LSM)的有效内核的学习框架。基于内核的分类方法在统计分类和回归分析中非常受欢迎,因为它们可以有效地解决了顽固的问题,例如维度,有限的已知样品和噪声损坏。这些方法的最具代表性是SVM技术。虽然SVM最近被广泛用于LSM,但仅使用每个影响因素的属性值来定义,并且没有考虑相邻的矢量值网格单元之间的高依赖性。这导致标签不确定性。为了解决这个问题,有必要将影响因子的属性特征和空间依赖信息组合在SVM中。在这项工作中,我们介绍了两种形式的复合核,以将两种上述类型的信息组合在一起:1)通过单个内核构造,与堆叠矢量; 2)在不同限制下通过总结内核构建。拟议框架的主要优点是双重。首先,两种类型信息的集成可以通过在LSM结果中移除隔离的类噪声来改善SVM的预测能力。其次,可以从空间域中提取其他有用信息,例如滑坡区域内外网格单元的结构特征。 SVM比较基于来自中国永新县的数据,其中包含364次过去的滑坡事件,该出现随机分离成培训集(70%)和验证集(30%)。分析了研究区域的地质环境设定,选择了16种影响因素。使用接收器操作特征(ROC)和ROC曲线(AUC)下的区域进行这些SVM的验证。实验结果表明,基于SVM的滑坡易感性图在目视检查时具有类似的空间分布。具体而言,研究区域的北部和南部的山区分别具有高且非常高的易感值,而研究区域的中心部分被分类为最不敏感区域。同时,基于复合内核的学习框架可以实现比原始SVM更好的预测精度。根据定量分析,具有求和内核的四个SVM获得了0.8900以上的AUC值,比原始SVM高0.0117。此外,求和内核中的加权方案可以导致至少0.0014的AUC值高于方向方案。

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