Unsupervised Machine Learning Applied to Seismic Interpretation: Towards an Unsupervised Automated Interpretation Tool.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

Seismic interpretation is a fundamental process for hydrocarbon exploration. This activity comprises identifying geological information through the processing and analysis of seismic data represented by different attributes. The interpretation process presents limitations related to its high data volume, own complexity, time consumption, and uncertainties incorporated by the experts' work. Unsupervised machine learning models, by discovering underlying patterns in the data, can represent a novel approach to provide an accurate interpretation without any reference or label, eliminating the human bias. Therefore, in this work, we propose exploring multiple methodologies based on unsupervised learning algorithms to interpret seismic data. Specifically, two strategies considering classical clustering algorithms and image segmentation methods, combined with feature selection, were evaluated to select the best possible approach. Additionally, the resultant groups of the seismic data were associated with groups obtained from well logs of the same area, producing an interpretation with aggregated lithologic information. The resultant seismic groups correctly represented the main seismic facies and correlated adequately with the groups obtained from the well logs data.

Authors

  • Alimed Celecia
    Electrical Engineering Department, PUC-Rio, Rio de Janeiro 22451-900, Brazil.
  • Karla Figueiredo
    Department of Informatics and Computer Science, Institute of Mathematics and Statistics, State University of Rio de Janeiro (UERJ); Rio de Janeiro, 20550-900, Brazil.
  • Carlos Rodriguez
    Institute for Experimental and Translational Cardiovascular Imaging, DZHK Centre for Cardiovascular Imaging, Goethe University Frankfurt, Frankfurt am Main, Germany.
  • Marley Vellasco
    Department of Electrical Engineering, Pontifical Catholic University of Rio de Janeiro (PUC-Rio), Rio de Janeiro, 22451-900 Brazil.
  • Edwin Maldonado
    Electrical Engineering Department, PUC-Rio, Rio de Janeiro 22451-900, Brazil.
  • Marco AurĂ©lio Silva
    Department of Electronics and Telecommunications, State University of Rio de Janeiro (UERJ), Rio de Janeiro 20550-900, Brazil.
  • Anderson Rodrigues
    Electrical Engineering Department, PUC-Rio, Rio de Janeiro 22451-900, Brazil.
  • Renata Nascimento
    Tecgraf Institute, PUC-Rio, Rio de Janeiro 22451-900, Brazil.
  • Carla Ourofino
    Tecgraf Institute, PUC-Rio, Rio de Janeiro 22451-900, Brazil.