Forecasting landslides using community detection on geophysical satellite data
Vrinda Desai, Farnaz Fazelpour, Alexander L. Handwerger, Karen E., Daniels

TL;DR
This paper presents a novel network science approach using multilayer modularity optimization on satellite data to identify early signs of landslide risk by detecting community patterns in ground deformation.
Contribution
It introduces a new method combining satellite radar data and community detection to predict landslides before failure occurs.
Findings
Community persistence metric increases before landslide failure.
Method successfully identified Mud Creek and other creeping landslides.
Potential for early warning in landslide-prone regions.
Abstract
As a result of extreme weather conditions, such as heavy precipitation, natural hillslopes can fail dramatically; these slope failures can occur on a dry day due to time lags between rainfall and pore-water pressure change at depth, or even after days to years of slow-motion. While the pre-failure deformation is sometimes apparent in retrospect, it remains challenging to predict the sudden transition from gradual deformation (creep) to runaway failure. We use a network science method -- multilayer modularity optimization -- to investigate the spatiotemporal patterns of deformation in a region near the 2017 Mud Creek, California landslide. We transform satellite radar data from the study site into a spatially-embedded network in which the nodes are patches of ground and the edges connect the nearest neighbors, with a series of layers representing consecutive transits of the satellite.…
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Taxonomy
TopicsLandslides and related hazards · Cryospheric studies and observations · Fire effects on ecosystems
