Fusing physics-based and data-driven models to forecast and mitigate landslide collapse

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Authors

Carolina Seguí , Manolis Veveakis

Abstract

Deep-seated landslides represent one of the most devastating natural hazards on earth, typically creeping at inappreciable velocities over several years be- fore suddenly collapsing with catastrophic speeds. They can have detrimental consequences to society, causing fatalities and prone to affect transportation infrastructures. In this study, we validate that monitoring the basal temperature of a creeping landslide, and fusing it with physics-based modeling, can offer predictive and control capabilities for the landslide’s response. The study shows that physics-based models can be trained in the same phase-space, and has been applied to four case studies for its validity. We anticipate our results to be the starting point for a new era in monitoring, controlling, and forecasting deep-seated landslides, aiming at alleviating their devastating impact on society.

DOI

https://doi.org/10.31223/X5W642

Subjects

Engineering, Physical Sciences and Mathematics

Keywords

Dates

Published: 2022-08-26 07:11

License

CC BY Attribution 4.0 International

Additional Metadata

Conflict of interest statement:
None