Discipline of Civil Engineering, Indian Institute of Technology Indore, Madhya Pradesh 453552, India.
Centre for Advanced Modelling and Geospatial Information Systems (CAMGIS), Faculty of Engineering and Information Technology, University of Technology Sydney, Sydney Box 123, Australia.
Sensors (Basel). 2020 May 3;20(9):2611. doi: 10.3390/s20092611.
In hilly areas across the world, landslides have been an increasing menace, causing loss of lives and properties. The damages instigated by landslides in the recent past call for attention from authorities for disaster risk reduction measures. Development of an effective landslide early warning system (LEWS) is an important risk reduction approach by which the authorities and public in general can be presaged about future landslide events. The Indian Himalayas are among the most landslide-prone areas in the world, and attempts have been made to determine the rainfall thresholds for possible occurrence of landslides in the region. The established thresholds proved to be effective in predicting most of the landslide events and the major drawback observed is the increased number of false alarms. For an LEWS to be successfully operational, it is obligatory to reduce the number of false alarms using physical monitoring. Therefore, to improve the efficiency of the LEWS and to make the thresholds serviceable, the slopes are monitored using a sensor network. In this study, micro-electro-mechanical systems (MEMS)-based tilt sensors and volumetric water content sensors were used to monitor the active slopes in Chibo, in the Darjeeling Himalayas. The Internet of Things (IoT)-based network uses wireless modules for communication between individual sensors to the data logger and from the data logger to an internet database. The slopes are on the banks of mountain rivulets (jhoras) known as the sinking zones of Kalimpong. The locality is highly affected by surface displacements in the monsoon season due to incessant rains and improper drainage. Real-time field monitoring for the study area is being conducted for the first time to evaluate the applicability of tilt sensors in the region. The sensors are embedded within the soil to measure the tilting angles and moisture content at shallow depths. The slopes were monitored continuously during three monsoon seasons (2017-2019), and the data from the sensors were compared with the field observations and rainfall data for the evaluation. The relationship between change in tilt rate, volumetric water content, and rainfall are explored in the study, and the records prove the significance of considering long-term rainfall conditions rather than immediate rainfall events in developing rainfall thresholds for the region.
在世界各地的丘陵地区,山体滑坡已经成为越来越严重的威胁,造成生命和财产损失。最近发生的山体滑坡造成的破坏需要当局关注减少灾害风险措施。开发有效的滑坡预警系统(LEWS)是减少风险的重要方法,通过该方法,当局和公众通常可以预测未来的滑坡事件。印度喜马拉雅山脉是世界上最容易发生山体滑坡的地区之一,人们已经尝试确定该地区可能发生山体滑坡的降雨阈值。已确定的阈值在预测大多数山体滑坡事件方面非常有效,观察到的主要缺点是误报数量增加。为了使 LEWS 成功运行,必须使用物理监测来减少误报数量。因此,为了提高 LEWS 的效率并使阈值可用,使用传感器网络来监测活跃的斜坡。在这项研究中,基于微机电系统(MEMS)的倾斜传感器和体积含水量传感器用于监测大吉岭喜马拉雅山 Chibo 的活跃斜坡。基于物联网(IoT)的网络使用无线模块在各个传感器与数据记录器之间以及从数据记录器到互联网数据库之间进行通信。这些斜坡位于山溪(jhoras)的岸边,这些山溪是 Kalimpong 的下沉区。由于不断的降雨和排水不当,该地区在季风季节受到地表位移的严重影响。该研究首次对研究区域进行实时现场监测,以评估倾斜传感器在该区域的适用性。传感器嵌入土壤中,以测量浅层的倾斜角度和含水量。在三个季风季节(2017-2019 年)期间,对斜坡进行了连续监测,并将传感器数据与现场观测和降雨数据进行了比较,以进行评估。在研究中探讨了倾斜率变化、体积含水量和降雨量之间的关系,记录证明了在为该地区开发降雨阈值时考虑长期降雨条件而不是立即降雨事件的重要性。