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Article Dans Une Revue Nature Geoscience Année : 2017

Rapid post-seismic landslide evacuation boosted by dynamic river width

Thomas Croissant
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Dimitri Lague
Philippe Steer
Philippe Davy

Résumé

Mass wasting caused by large-magnitude earthquakes chokes mountain rivers with several cubic kilometres of sediment. The timescale and mechanisms by which rivers evacuate small to gigantic landslide deposits are poorly known, but are critical for predicting post-seismic geomorphic hazards, interpreting the signature of earthquakes in sedimentary archives and deciphering the coupling between erosion and tectonics. Here, we use a new 2D hydro-sedimentary evolution model to demonstrate that river self-organization into a narrower alluvial channel overlying the bedrock valley dramatically increases sediment transport capacity and reduces export time of gigantic landslides by orders of magnitude compared with existing theory. Predicted export times obey a universal non-linear relationship of landslide volume and pre-landslide valley transport capacity. Upscaling these results to realistic populations of landslides shows that removing half of the total coarse sediment volume introduced by large earthquakes in the fluvial network would typically take 5 to 25 years in various tectonically active mountain belts, with little impact of earthquake magnitude and climate. Dynamic alluvial channel narrowing is therefore a key, previously unrecognized mechanism by which mountain rivers rapidly digest extreme events and maintain their capacity to incise uplifted rocks.

Domaines

Géomorphologie
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Dates et versions

insu-01575667 , version 1 (21-08-2017)

Identifiants

Citer

Thomas Croissant, Dimitri Lague, Philippe Steer, Philippe Davy. Rapid post-seismic landslide evacuation boosted by dynamic river width. Nature Geoscience, 2017, 10 (9), pp.680-684. ⟨10.1038/ngeo3005⟩. ⟨insu-01575667⟩
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