Department of Civil Engineering and Geomatics, Cyprus University of Technology, Limassol 3036, Cyprus.
ERATOSTHENES Centre of Excellence, Limassol 3036, Cyprus.
Sensors (Basel). 2021 Oct 13;21(20):6799. doi: 10.3390/s21206799.
Landslides are one of the most destructive natural hazards worldwide, affecting greatly built-up areas and critical infrastructure, causing loss of human lives, injuries, destruction of properties, and disturbance in everyday commute. Traditionally, landslides are monitored through time consuming and costly in situ geotechnical investigations and a wide range of conventional means, such as inclinometers and boreholes. Earth Observation and the exploitation of the freely available Copernicus datasets, and especially Sentinel-1 Synthetic Aperture Radar (SAR) images, can assist in the systematic monitoring of landslides, irrespective of weather conditions and time of day, overcoming the restrictions arising from in situ measurements. In the present study, a comprehensive statistical analysis of coherence obtained through processing of a time-series of Sentinel-1 SAR imagery was carried out to investigate and detect early indications of a landslide that took place in Cyprus on 15 February 2019. The application of the proposed methodology led to the detection of a sudden coherence loss prior to the landslide occurrence that can be used as input to Early Warning Systems, giving valuable on-time information about an upcoming landslide to emergency response authorities and the public, saving numerous lives. The statistical significance of the results was tested using Analysis of Variance (ANOVA) tests and two-tailed -tests.
滑坡是世界上最具破坏性的自然灾害之一,严重影响着人口密集区和关键基础设施,导致人员伤亡、财产损失以及日常通勤中断。传统上,滑坡监测需要进行耗时且昂贵的现场岩土工程调查以及广泛使用传统手段,如倾斜仪和钻孔。地球观测以及利用免费的哥白尼数据集,特别是 Sentinel-1 合成孔径雷达(SAR)图像,可以协助系统地监测滑坡,无论天气条件和一天中的时间如何,克服了现场测量带来的限制。在本研究中,对 Sentinel-1 SAR 图像时间序列进行处理后获得的相干性进行了全面的统计分析,以调查和检测 2019 年 2 月 15 日发生在塞浦路斯的滑坡的早期迹象。应用所提出的方法导致在滑坡发生前检测到突然的相干性损失,这可以用作预警系统的输入,为应急响应部门和公众提供即将发生的滑坡的宝贵实时信息,挽救了许多生命。使用方差分析(ANOVA)检验和双尾检验测试了结果的统计显著性。