Landslide susceptibility evaluation based on optimized support vector machine

Jiping Liu, Rongfu Lin, Shenghua Xu, Yong Wang, Xianghong Che, Jie Chen
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Abstract

Abstract. Landslide is a natural disaster that has caused great property losses and human casualties in the world. To strengthen the target prevention and management level, ZhaShui county, Shaanxi province, is selected as the research area to evaluate the landslide susceptibility. First of all, under the premise of considering the correlation, 10 evaluation factors closely related to landslide disaster (i.e., elevation, rainfall, rock group, slope, slope aspect, vegetation index, landform, distance to residential area, distance to road, distance to river system) are taken together with non-landslide points, which are selected under multi-constraint conditions to form a sample data-set. Secondly, the sample dataset is substituted into the Support Vector Machine (SVM) model optimized by firefly algorithm for training and prediction. Finally, the result map was partitioned according to the natural discontinuous point method, and the landslide susceptibility map was obtained. The results show that the model optimized by the firefly algorithm has higher accuracy, and the landslide susceptibility results are more consistent with the actual distribution of disaster points.
基于优化支持向量机的滑坡易感性评价
摘要滑坡是世界范围内造成巨大财产损失和人员伤亡的自然灾害。为加强目标预防和管理水平,选择陕西省扎水县为研究区进行滑坡易感性评价。首先,在考虑相关性的前提下,将与滑坡灾害密切相关的10个评价因子(高程、降雨量、岩性、坡度、坡向、植被指数、地貌、到居民区的距离、到道路的距离、到水系的距离)与非滑坡点结合在一起,在多约束条件下选取,形成样本数据集。其次,将样本数据代入经过萤火虫算法优化的支持向量机(SVM)模型进行训练和预测;最后,根据自然不连续点法对结果图进行分割,得到滑坡易感性图。结果表明,采用萤火虫算法优化的模型具有更高的精度,滑坡易感性结果更符合实际灾害点的分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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