Testing and Evaluation of the Deformation Effects Developed By Landslides in the Laboratory With Image Processing Techniques
Özet
Landslides are one of the most frequently encountered natural disasters in Türkiye and
the world, which can cause significant loss of life and property. Nowadays, various
methods such as inclinometers, tiltmeters, extensometers, fiber optic methods, and
ground-based surface measurement systems (i.e., LIDAR, electro-optics, total station) are
used to monitor sliding mass with potential stability risks. In recent years, image
processing techniques have become popular; however, their use in landslide
investigations has not yet expanded to the desired level. With the development of image
processing techniques, image recordings are used in many sectors for analysis during or
after the studies. By this way, real-time data collection and rapid response capabilities
can be increased to manage possible disaster situations effectively. This thesis uses image
processing methods to detect the deformation movement on the sliding surface caused by
any triggering mechanism (i.e., excessive rainfall, earthquake, human factors, sudden
snowmelt), regardless of lithological unit and failure types. For this purpose, the
deformation movement on an artificial landslide simulator created on a shaking table operating as a triggering mechanism in the laboratory environment was analyzed. The tilt
sensor was integrated into the landslide simulator in the vertical direction, and laser
measurements were performed to evaluate the accuracy of the results obtained by image
processing. This study is a prototype that analyses mass movements from different
perspectives in a laboratory environment. It offers new perspectives for monitoring
landslides and, accordingly, for natural disaster management and risk reduction strategies.