Spatial variability of petrofacies using supervised machine learning and geostatistical modeling: Sycamore Formation, Sho-Vel-Tum Field, Oklahoma, USA

Author:

Duarte David1ORCID,Pires de Lima Rafael2,Tellez Javier3,Pranter Matthew J.4ORCID

Affiliation:

1. University of Oklahoma, Department of Geology, Norman, Oklahoma, USA and Ovintiv Inc., The Woodlands, Texas, USA. (corresponding author)

2. CPRM, Sao Paulo, Brazil and University of Colorado Boulder, Department of Geography, Boulder, Colorado, USA.

3. University of Oklahoma, Department of Geology and Geophysics, Norman, Oklahoma, USA and Colorado Mesa University, Department of Physical and Environmental Sciences, Grand Junction, Colorado, USA.

4. University of Oklahoma, School of Geology and Geophysics, Norman, Oklahoma, USA.

Abstract

The Sycamore Formation at the Sho-Vel-Tum Field primarily consists of clay-rich mudstones (Mdst) and quartz-rich siltstones. The clay-rich Mdst are mainly composed of clays, quartz grains, some allochems, and detrital organic matter. The siltstones are structureless and are divided into two petrofacies: high porosity and permeability massive calcareous siltstones and low porosity and permeability massive calcite-cemented siltstones. Core and well-log data provide mineralogical, lithologic, and porosity information that is useful to define petrophysical facies (petrofacies) and to create facies logs within the Sycamore Formation. We used the data to establish the Sycamore Formation stratigraphic architecture and to map its spatial variability and reservoir properties. To classify the Sycamore Formation petrofacies in noncored wells, we developed a machine learning-based workflow that compares more than 1800 classification models and selects the best combination of well logs, algorithms, and hyperparameters to predict defined petrofacies. The process includes combinations of well logs that were optimized in four classification algorithms: artificial neural network, K-nearest neighbor, support vector machine, and random forest. To adjust each classifier, we used a grid search and a fivefold cross validation to find the best combination of three hyperparameters to improve results of each algorithm. This workflow allows for the efficient extraction of information from cores at a low cost. After we generated the petrofacies logs in noncored wells, we combined them with multiple constraints to create a 3D petrofacies model for the Sycamore Formation at the Sho-Vel-Tum Field and analyze the stratigraphic and diagenetic controls on petrofacies and its impact in reservoir quality.

Publisher

Society of Exploration Geophysicists

Subject

Geology,Geophysics

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