4.6 Article

Seismic facies analysis using machine learning

Journal

GEOPHYSICS
Volume 83, Issue 5, Pages O83-O95

Publisher

SOC EXPLORATION GEOPHYSICISTS
DOI: 10.1190/GEO2017-0595.1

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Funding

  1. Norwegian Academy of Science and Letters (VISTA)
  2. University of Bergen

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Seismic interpretations are, by definition, subjective and often require significant time and expertise from the interpreter. We are convinced that machine-learning techniques can help address these problems by performing seismic facies analyses in a rigorous, repeatable way. For this purpose, we use state-of-the-art 3D broadband seismic reflection data of the northern North Sea. Our workflow includes five basic steps. First, we extract seismic attributes to highlight features in the data. Second, we perform a manual seismic facies classification on 10,000 examples. Third, we use some of these examples to train a range of models to predict seismic facies. Fourth, we analyze the performance of these models on the remaining examples. Fifth, we select the best model (i.e., highest accuracy) and apply it to a seismic section. As such, we highlight that machine-learning techniques can increase the efficiency of seismic facies analyses.

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