Landslide Susceptibility Assessment with Machine Learning Algorithms

M. Marjanović, B. Bajat, M. Kovačević
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引用次数: 46

Abstract

Case study addresses NW slopes of Fruška GoraMountain, Serbia. Landslide activity is quite notorious in this region, especially along the Danube’s right river bank, and recently intensified seismicity coupled with atmospheric precipitation might be critical for triggering new landslide occurrences. Hence, it is not a moment too soon for serious landslide susceptibility assessment in this region. State-of-the-art approaches had been taken into consideration, cutting down to the Support Vector Machine (SVM) and k-Nearest Neighbor (k-NN) algorithms, trained upon expert based model of landslide susceptibility (a multi-criteria analysis). The latter involved Analytical Hierarchy Process (AHP) for weighting influences of different input parameters. These included elevation, slope angle, aspect, distance from flows, vegetation cover, lithology, and rainfall, to represent the natural factors of the slope stability. Processed in a GIS environment (as discrete or float raster layers) trough AHP, those parameters yielded susceptibility pattern, classified by the entropy model into four classes. Subsequently the susceptibility pattern has been featured as training set in SVM and k-NN algorithms. Detailed fitting involved several cases, among which SVM with Gaussian kernel over geo-dataset (coordinates and input parameters) reached the highest accuracy (88%)outperforming other considered cases by far.
基于机器学习算法的滑坡易感性评估
案例研究涉及塞尔维亚Fruška gormountain的西北斜坡。滑坡活动在这个地区是非常臭名昭著的,特别是沿着多瑙河右岸,最近地震活动加剧加上大气降水可能是引发新的滑坡发生的关键。因此,对该地区进行严重滑坡易感性评价为时过早。考虑到最先进的方法,减少到支持向量机(SVM)和k-最近邻(k-NN)算法,训练基于专家的滑坡易感性模型(多准则分析)。后者涉及层次分析法(AHP)对不同输入参数的权重影响。这些参数包括高程、坡角、坡向、与水流的距离、植被覆盖、岩性和降雨量,以代表边坡稳定性的自然因素。这些参数在GIS环境中(作为离散或浮动光栅层)通过AHP进行处理,得到敏感性模式,并通过熵模型分为四类。随后将敏感性模式作为训练集在支持向量机和k-NN算法中进行表征。详细拟合涉及到几种情况,其中高斯核SVM在地理数据集(坐标和输入参数)上达到了最高的精度(88%),远远优于其他考虑的情况。
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