Insights into the geomorphology of the Ceará Basin, Brazil, by combining seismic attributes, machine learning, and rock-physics analyses

Author:

Leopoldino Oliveira Karen M.1ORCID,Arroyo Alexandro V.2ORCID,Bedle Heather2ORCID,Nepomuceno Filho Francisco3

Affiliation:

1. Programa de Pós-Graduação em Geologia, Universidade Federal do Ceará, Campus do Pici, Bloco 912, Fortaleza, Ceará CEP 60440-554, Brazil

2. School of Geosciences, University of Oklahoma, 100 East Boyd St. Suite 710, Norman, OK 73019, USA

3. Departamento de Física, Universidade Federal do Ceará, Campus do Pici, Bloco 922, Fortaleza, Ceará CEP 60440-554, Brazil

Abstract

Abstract We utilize 3D seismic data and robust rock-physics models, combined with a well dataset, to investigate the subsurface of the Mundaú sub-basin, Brazil. Seismic attributes analysis and unsupervised machine-learning approaches were able to produce high-resolution images to allow the mapping of the 3D geometry of ancient geomorphological features across stratigraphic levels, from the Albian to the Turonian interval. Significant deep-water elements were identified using seismic attributes and machine-learning techniques (i.e. channel complex, point bars, feeder channels, faults, depocentres, dendritic lobes, smaller channels and distributaries). In addition, the petrophysical analysis enhanced the subsurface characterization by employing a deep convolutional network that allowed S-wave modelling and synthetic seismic generation. The well-log data analysis validated interpretation of sand-prone deposits; in addition, the rock-physics modelling provided insight into the deposited lithologies. After the petrophysical analysis, seismic facies classification was performed using machine-learning techniques, including self-organizing maps and independent component analysis, which provided valuable insights into the geomorphology of this under-researched basin. The enhancement of seismic and petrophysical data with machine learning proves to be a useful technique for better characterizing this basin. This approach may be used on similar frontier hydrocarbon basins to help de-risk petroleum exploration.

Funder

Fulbright Brazil

Coordenação de Aperfeiçoamento de Pessoal de Nível Superior

Publisher

Geological Society of London

Subject

Geology,Ocean Engineering,Water Science and Technology

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