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Time-lapse VSP integration and calibration of subsurface stress field utilizing machine learning approaches: A case study of the morrow B formation, FWU

  • William Ampomah*
  • , Samuel Appiah Acheampong
  • , Marcia McMillan
  • , Tom Bratton
  • , Robert Will
  • , Lianjie Huang
  • , George El-Kaseeh
  • , Don Lee
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

This study aims to develop a methodology for calibrating subsurface stress changes through time-lapse vertical seismic profiling (VSP) integration. The selected study site is a region around the injector well located within Farnsworth field unit (FWU), where there is an ongoing CO2-enhanced oil recovery (EOR) operation. In our study, a site-specific rock physics model was created from extensive geological, geophysical, and geomechanical characterization through 3D seismic data, well logs, and core assessed as part of the 1D MEM conducted on the characterization well within the study area. The Biot-Gassmann workflow was utilized to combine the rock physics and reservoir simulation outputs to determine the seismic velocity change due to fluid substitution. Modeled seismic velocities attributed to mean effective stress were determined from the geomechanical simulation outputs, and the stress-velocity relationship developed from ultrasonic seismic velocity measurements. A machine learning-assisted workflow comprised of an artificial neural network and a particle swarm optimizer (PSO) was utilized to minimize a penalty function created between the modeled seismic velocities and the observed time-lapse VSP dataset. The successful execution of this workflow has affirmed the suitability of acoustic time-lapse measurements for 4D-VSP geomechanical stress calibration pending measurable stress sensitivities within the anticipated effective stress changes and the availability of suitable and reliable datasets for petroelastic modeling.

Original languageEnglish
Pages (from-to)659-688
Number of pages30
JournalGreenhouse Gases: Science and Technology
Volume13
Issue number5
DOIs
StatePublished - Oct 2023
Externally publishedYes

Keywords

  • CO-WAG
  • EOR
  • carbon capture
  • geomechanics
  • machine learning
  • utilization and storage
  • vertical seismic profiling

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