Remote Sensing Landslide Monitoring Based on Machine Learning Method

Zhen Chen, Yiyang Zheng
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Abstract

The susceptibility evaluation of landslides has become one of the key environmental issues that people are concerned about. This study took the land-slides in Xishuangbanna, Yunnan Province as the study object, and selected 10 evaluation factors such as digital elevation model (DEM), slope aspect, precipitation, land use, water system, roads, population density, lithology, faults, and NDVI. Different machine learning methods were compared and studied, and the ROC (receiver operating characteristics) curve verification revealed that the accuracy of the random forest evaluation model was high. In the prediction and evaluation of the susceptibility of landslides, five risk levels were divided. After the superimposed analysis, 87.26% of the disaster points fell in the first and second susceptibility areas. The spot analysis found that the distribution of hot spots is consistent with the distribution of disaster spots. In a word, the results of this study can provide better technical support for the evaluation and early warning of landslides in Southwest China.
基于机器学习方法的滑坡遥感监测
滑坡易感性评价已成为人们关注的关键环境问题之一。以云南西双版纳滑坡为研究对象,选取数字高程模型(DEM)、坡向、降水、土地利用、水系、道路、人口密度、岩性、断层、NDVI等10个评价因子。对不同的机器学习方法进行了比较和研究,ROC (receiver operating characteristics)曲线验证表明,随机森林评价模型的准确率较高。在滑坡易感性预测与评价中,划分了5个风险等级。经叠加分析,87.26%的灾害点落在第一易感区和第二易感区。现场分析发现,热点分布与灾点分布一致。研究结果可为西南地区滑坡灾害评价与预警提供较好的技术支持。
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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