| 注册
首页|期刊导航|中国岩溶|基于多模型的滑坡易发性评估研究

基于多模型的滑坡易发性评估研究

黄成 邓云龙 晏祥省 周鑫城

中国岩溶2024,Vol.43Issue(6):1386-1397,12.
中国岩溶2024,Vol.43Issue(6):1386-1397,12.DOI:10.11932/karst20240615

基于多模型的滑坡易发性评估研究

A study on multiple-model evaluation of landslide susceptibility

黄成 1邓云龙 2晏祥省 3周鑫城2

作者信息

  • 1. 自然资源部高原山地地质灾害预报预警与生态保护修复重点实验室,云南 昆明 650216||云南省高原山地地质灾害预报预警与生态保护修复重点实验室(筹),云南 昆明 650216||昆明理工大学国土资源工程学院,云南 昆明 650093||云南省地质环境监测院,云南 昆明 650216
  • 2. 自然资源部高原山地地质灾害预报预警与生态保护修复重点实验室,云南 昆明 650216||云南省高原山地地质灾害预报预警与生态保护修复重点实验室(筹),云南 昆明 650216||昆明理工大学国土资源工程学院,云南 昆明 650093
  • 3. 自然资源部高原山地地质灾害预报预警与生态保护修复重点实验室,云南 昆明 650216||云南省高原山地地质灾害预报预警与生态保护修复重点实验室(筹),云南 昆明 650216||云南省地质环境监测院,云南 昆明 650216
  • 折叠

摘要

Abstract

Landslides are one of the most common geological disasters in China,characterized by sudden occurrence and uncertainty.The evaluation of landslide susceptibility is a complex process.Conventional methods mainly use static factors,making it difficult to achieve dynamic assessment of landslide susceptibility.With the ongoing advancement of science and technology,interferometric synthetic aperture radar(InSAR)has been successively applied to the study of geological disasters.This technology is characterized by its all-weather capability,continuous operation,and extensive coverage,allowing for real-time monitoring of the Earth's surface under varying environmental conditions.InSAR enables a comprehensive understanding of the movement of the surface rocks and soil masses associated with landslide geological disasters.It effectively captures the dynamic deformation characteristics of landslides in the vertical direction,thereby enhancing the identification and dynamic monitoring of surface deformation and improving the accuracy of evaluating landslide susceptibility.In this study,the surface deformation representative factor has been introduced into the conventional evaluation of geological disaster susceptibility.This addition improves the reliability of the evaluation of landslide susceptibility and enhances the overall accuracy. This study focused on Shuangjiang county as the research area.It utilizes evaluation index factors such as Digital Elevation Model(DEM),slope gradients,aspects,curvatures,stratigraphic lithology,faults,land use,annual average rainfall,roads,and rivers.The representative factor of InSAR surface deformation was comprehensively considered to evaluate landslide susceptibility.Through an extensive analysis of InSAR deformation,a dataset of landslides was established,identifying a total of 116 landslide geological disasters.Among them,56 landslide areas exhibited deformation,with some slopes showing significant signs of deformation.The information quantity,certainty factor,and frequency ratio models were employed to evaluate the susceptibility of areas to landslides.The accuracy of the generated landslide susceptibility was evaluated with the use of the landslide density ratio,curve of Receiver Operating Characteristic(ROC),and the Area Under the Curve(AUC).In this study,70%of the landslide events were randomly selected for spatial modeling training,while the remaining 30%were used for model verification.The segment set statistical tool in ArcGIS software was utilized to conduct the mutual independence test on the evaluation factors.Research findings indicate that all the correlation coefficients are less than 0.3,suggesting that the evaluation factors are independent of one another.According to the natural paragraph point method in Geographic Information System(GIS),the susceptibility can be categorized into five intervals:low susceptibility area,relatively low susceptibility area,medium susceptibility area,relatively high susceptibility area,and high susceptibility area.The high landslide susceptibility areas are mainly distributed in the northern part of Shuangjiang county;the low landslide susceptibility areas are mainly concentrated in its northwestern part.In the relatively high susceptibility area and the high susceptibility area,the raster of the inspection samples accounts for 88.69%of the total landslide inspection raster. The experimental results show that the Certainty Factor(CF)model exhibits a relatively high landslide density ratio in both the high susceptibility area and the relatively high susceptibility area,with ratios of 7.77 and 1.10,respectively.Additionally,the model demonstrates the highest accuracy and AUC values,which are 0.822 and 0.879,respectively.The accuracy of Frequency Ratio(FR)model is followed by CF model,and that of Information Quantity(I)model is the lowest.The landslide susceptibility map generated by the CF model provides a more accurate evaluation of slope instability in Shuangjiang county.Therefore,deriving the surface deformation factor based on InSAR technology and the CF model for evaluating landslide susceptibility yields the highest accuracy.

关键词

滑坡易发性/InSAR/信息量/确定性系数/频率比

Key words

landslide susceptibility/InSAR/information quantity/certainty factor/frequency ratio

分类

天文与地球科学

引用本文复制引用

黄成,邓云龙,晏祥省,周鑫城..基于多模型的滑坡易发性评估研究[J].中国岩溶,2024,43(6):1386-1397,12.

基金项目

云南省地质灾害综合防治体系建设专项计划(2013-2020)(云政发[2013]108号) (2013-2020)

云南省地质灾害隐患识别中心建设(云财资环[2021]22号) (云财资环[2021]22号)

部省合作试点项目-云南高原山地地质灾害隐患综合垫遥感识别监测技术系统研究及应用(2023ZRBSHZ048) (2023ZRBSHZ048)

中国岩溶

OA北大核心CSTPCD

1001-4810

访问量0
|
下载量0
段落导航相关论文