Exploration of continuous seismic recordings with a machine learning approach to document 20 yr of landslide activity in Alaska

SUMMARY Quantifying landslide activity in remote regions is difficult because of the numerous complications that prevent direct landslide observations. However, building exhaustive landslide catalogues is critical to document and assess the impacts of climate change on landslide activity such as inc...

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Bibliographic Details
Published in:Geophysical Journal International
Main Authors: Hibert, C, Michéa, D, Provost, F, Malet, J-P, Geertsema, M
Other Authors: French National Research Agency, Hydrogeophysical Monitoring of Clayey Landslides, French National Institute of Sciences of the Universe
Format: Article in Journal/Newspaper
Language:English
Published: Oxford University Press (OUP) 2019
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Online Access:http://dx.doi.org/10.1093/gji/ggz354
http://academic.oup.com/gji/advance-article-pdf/doi/10.1093/gji/ggz354/29024913/ggz354.pdf
http://academic.oup.com/gji/article-pdf/219/2/1138/29309917/ggz354.pdf
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Summary:SUMMARY Quantifying landslide activity in remote regions is difficult because of the numerous complications that prevent direct landslide observations. However, building exhaustive landslide catalogues is critical to document and assess the impacts of climate change on landslide activity such as increasing precipitation, glacial retreat and permafrost thawing, which are thought to be strong drivers of the destabilization of large parts of the high-latitude/altitude regions of the Earth. In this study, we take advantage of the capability offered by seismological observations to continuously and remotely record landslide occurrences at regional scales. We developed a new automated machine learning processing chain, based on the Random Forest classifier, able to automatically detect and identify landslide seismic signals in continuous seismic records. We processed two decades of continuous seismological observations acquired by the Alaskan seismic networks. This allowed detection of 5087 potential landslides over a period of 22 yr (1995–2017). We observe an increase in the number of landslides for the period and discuss the possible causes.