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Polarity assessment of reflection seismic data: a Deep Learning approach

Academic Article
Publication Date:
2022
abstract:
We propose a procedure for the polarity assessment in reflection seismic data based on a Neural Network approach. The algorithm is based on a fully 1D approach, which does not require any input besides the seismic data since the necessary parameters are all automatically estimated. An added benefit is that the prediction has an associated probability, which automatically quantifies the reliability of the results. We tested the proposed procedure on synthetic and real reflection seismic data sets. The algorithm is able to correctly extract the seismic horizons also in case of complex conditions, such as along the flanks of salt domes, and is able to track polarity inversions.
Iris type:
01.01 Articolo in rivista
Keywords:
polarity assessment; seismic phase; Deep Learning
List of contributors:
Gasperini, Luca
Authors of the University:
GASPERINI LUCA
Handle:
https://iris.cnr.it/handle/20.500.14243/415864
Published in:
BULLETIN OF GEOPHYSICS AND OCEANOGRAPHY
Journal
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URL

https://bgo.ogs.it/pdf/bgo00409_Roncoroni.pdf
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