Abstract
Avalanches and other hazardous mass movements pose a danger to the
population and critical infrastructure in alpine areas. Hence,
understanding and continuously monitoring mass movements is crucial to
mitigate their risk. We propose to use Distributed Acoustic Sensing
(DAS) to measure strain rate along a fiber-optic cable to characterize
ground deformation induced by avalanches. We recorded 12 snow avalanches
of various dimensions at the Vallée de la Sionne test site in
Switzerland, utilizing existing fiber-optic infrastructure and a DAS
interrogation unit during the winter 2020/2021. By training a Bayesian
Gaussian Mixture Model, we automatically characterize and classify
avalanche-induced ground deformations using physical properties
extracted from the frequency-wavenumber and frequency-velocity domain of
the DAS recordings. The resulting model can estimate the probability of
avalanches in the DAS data and is able to differentiate between the
avalanche-generated seismic near-field, the seismo-acoustic far-field
and the mass movement propagating on top of the fiber. By analyzing the
mass-movement propagation signals, we are able to identify group
velocity packages within an avalanche that propagate faster than the
phase velocity of the avalanche front, indicating complex internal
structures. Importantly, we show that the seismo-acoustic far-field can
be detected before the avalanche reaches the fiber-optic array,
highlighting DAS as a potential research and early warning tool for
hazardous mass movements.