刘晓杰, 赵超英, 李滨, 王文达, 张勤, 高杨, 陈立权, 王宝行, 郝君明, 杨校辉. 基于InSAR技术的甘肃积石山震区活动滑坡识别与动态形变监测[J]. 武汉大学学报 ( 信息科学版). DOI: 10.13203/j.whugis20240054
引用本文: 刘晓杰, 赵超英, 李滨, 王文达, 张勤, 高杨, 陈立权, 王宝行, 郝君明, 杨校辉. 基于InSAR技术的甘肃积石山震区活动滑坡识别与动态形变监测[J]. 武汉大学学报 ( 信息科学版). DOI: 10.13203/j.whugis20240054
LIU Xiaojie, ZHAO Chaoying, LI Bin, WANG Wenda, ZHANG Qin, GAO Yang, CHEN Liquan, WANG Baohang, HAO Junming, YANG Xiaohui. Identification and Dynamic Deformation Monitoring of Active Landslides in Jishishan Earthquake Area, Gansu, China Using InSAR Technology[J]. Geomatics and Information Science of Wuhan University. DOI: 10.13203/j.whugis20240054
Citation: LIU Xiaojie, ZHAO Chaoying, LI Bin, WANG Wenda, ZHANG Qin, GAO Yang, CHEN Liquan, WANG Baohang, HAO Junming, YANG Xiaohui. Identification and Dynamic Deformation Monitoring of Active Landslides in Jishishan Earthquake Area, Gansu, China Using InSAR Technology[J]. Geomatics and Information Science of Wuhan University. DOI: 10.13203/j.whugis20240054

基于InSAR技术的甘肃积石山震区活动滑坡识别与动态形变监测

Identification and Dynamic Deformation Monitoring of Active Landslides in Jishishan Earthquake Area, Gansu, China Using InSAR Technology

  • 摘要: 2023年12月18日,甘肃省临夏州积石山县发生6.2级地震,造成150余人遇难及大量建筑物倒塌,并诱发了同震滑坡灾害。此外,地震还将加速活动滑坡的形变,严重威胁人民生命财产和基础设施的安全,亟需开展震区活动滑坡快速识别与动态形变监测研究。基于此,提出了一种基于InSAR技术的地震区活动滑坡自动化识别与动态形变监测框架。首先,采用2017-03—2023-12的升轨与降轨Sentinel-1影像,反演获得InSAR相位梯度速率、年平均形变速率及时间序列,建立了DeepLabv3深度学习滑坡自动化识别方法,快速绘制研究区域的活动滑坡编目图,并开展滑坡空间分布特征研究。然后,采用序贯InSAR技术实现了新获得SAR影像的快速处理,进行滑坡形变的动态监测,及时捕获地震造成的滑坡形变加速信号。研究结果表明,在积石山震中70 km范围内分布有2 021个不同尺度的潜在活动滑坡,集中在6个高密度分布区,主要分布在距断层22 km、距河流28 km、距道路10 km范围内和高程3 400 m以下、坡度为15°~35°的区域,且主要沿着正北向、东北及正东向分布;本次地震造成积石山县及黄河沿线部分区域的滑坡形变出现显著加速,降低了斜坡的稳定性,现场调查验证了动态形变监测结果的可靠性。所提方法可为类似地震事件的活动滑坡快速调查及动态监测提供重要技术指导,研究成果可为震后灾区重建及次生滑坡灾害风险评估提供科学数据支撑

     

    Abstract: Objectives: On December 18th, 2023, an Ms 6.2 earthquake occurred in Jishishan County, Hui Autonomous Prefecture of Linxia, Gansu Province, China. The earthquake caused more than 150 deaths and extensive collapse of buildings, and triggered a mass of co-seismic landslides. In addition, the earthquake will also accelerate the deformation of active landslides, seriously threatening the safety of people's lives and property and infrastructure. Therefore, it is imperative to carry out research on the rapid identification and dynamic deformation monitoring of active landslides in earthquake-affected areas. Methods: We propose a novel framework for the automatic identification and dynamic deformation monitoring of active landslides in earthquake areas based on InSAR technology. Firstly, the InSAR phase-gradient rate, deformation rate and time series are calculated by utilizing both the ascending and descending Sentinel-1 SAR images acquired during 2017-03—2023-12; and then, an approach for the automatic identification of active landslides is established using DeepLabv3 deep learning algorithm. As a result, the inventory map of active landslides in the study area was produced using the proposed method, and the spatial distribution characteristics of the landslides were investigated. Second, newly acquired SAR images were rapidly processed using the sequential InSAR method, thus achieving the dynamic deformation monitoring of landslides and the timely capture of earthquake-induced acceleration deformation signal. Results: The InSAR results revealed that there are 2 021 active landslides with varying dimensions within a 70 km radius of the epicenter, and six regions exhibited particularly dense landslide distributions. The spatial distribution of the mapped landslides exhibited a clustering pattern: primarily within 22 km of faults, 28 km of rivers, and 10 km of roads. Additionally, they were predominantly located at elevations below 3 400 m and on slopes ranging 15°-35°, and also mainly distributed along the north, north-east, and east directions. Conclusion: The deformation of some detected landslides within Jishishan County and along the Yellow River were significantly accelerated as a result of the earthquake event, thus reducing the stability of the slope. The reliability of the InSAR-derived results was verified through the field geological investigation. The proposed method offers significant technical value for the rapid investigation and dynamic monitoring of active landslides in similar seismic events, and the research findings provide scientific data support for post-earthquake reconstruction and secondary landslide disaster risk assessment.

     

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