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Automated classification of seismic signals recorded on the Åknes rockslope, Western Norway, using a Convolutional Neural Network
[post]
2022
unpublished
Abstract. A Convolutional Neural Network (CNN) was implemented to automatically classify fifteen years of seismic signals recorded by an eight-geophone network installed around the backscarp of the Åknes rockslope in Norway. Eight event classes could be identified and are adapted from the typology proposed by Provost et al. (2018), of which five could be directly related to movements on the slope. Almost 60,000 events were classified automatically based on their spectrogram images. The
doi:10.5194/esurf-2022-15
fatcat:4vglz53qnfheloli2iby7haedi