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Tao Sun - Integrated Reservoir Characterization and Modeling with Computational Stratigraphy

AAPG Distinguished Lecture Series, 2022-23 Season

AAPG Distinguished Lecture Series, 2022-23 Season

Summary

A Distinguished Lecture talk given by Tao Sun during 2022-23 AAPG DL Season. Click here for abstract.

As oil and gas exploration and production occur in deeper basins and more complex geologic settings, accurate characterization and modeling of reservoirs become paramount. Existing technologies for reservoir characterization and modeling have proven inadequate for delivering detailed 3D predictions of reservoir architecture, connectivity and rock quality at scales that impact subsurface flow patterns and reservoir performance. Because of the gap between the geophysical and geologic data available constraints from external analog systems are needed.

Enabled by the rapid advancement in digital and computational technology, computational stratigraphy is a physics-based forward modeling system that simulates the Earth’s surface processes through computation of fluid flow and sediment transport to generate high resolution, geologically realistic models. Computational stratigraphy models can overcome the data sparsity and resolution gap and quantitatively predict reservoir heterogeneity in 3D, across all scales and for any depositional environment.

Integrating computational stratigraphy with existing reservoir characterization and modeling workflows, significantly improves reservoir performance forecasts and development uncertainty assessments. Integrated computational stratigraphy workflow combines characterization and interpretation of field data with sedimentologic and stratigraphic concepts to develop geologic scenarios for forward computational stratigraphy modeling.

Computational stratigraphy reservoir forecast variations emerge from fundamental geologic uncertainties rather than products of ad hoc rock property ranges and spatial correlation structures. Computational stratigraphy models with the greatest differences can be compared more directly with field data and the range of predictions can be more confidently related to physical reality.

In the News

Distinguished Lecturer

Tao

Tao Sun

Senior Principal Geologist

Chevron Technology Center

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Abstracts

  • 63718 As oil and gas exploration and production occur in deeper basins and more complex geologic settings, accurate characterization and modeling of reservoirs to improve estimated ultimate recovery (EUR) prediction, optimize well placement and maximize recovery become paramount. Existing technologies for reservoir characterization and modeling have proven inadequate for delivering detailed 3D predictions of reservoir architecture, connectivity and rock quality at scales that impact subsurface flow patterns and reservoir performance. Because of the gap between the geophysical and geologic data available (seismic, well logs, cores) and the data needed to model rock heterogeneities at the reservoir scale, constraints from external analog systems are needed. Existing stratigraphic concepts and deposition models are mostly empirical and seldom provide quantitative constraints on fine-scale reservoir heterogeneity. Current reservoir modeling tools are challenged to accurately replicate complex, nonstationary, rock heterogeneity patterns that control connectivity, such as shale layers that serve as flow baffles and barriers. Integrated Reservoir Characterization and Modeling with Computational Stratigraphy
    Integrated Reservoir Characterization and Modeling with Computational Stratigraphy

Contacts

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Susie Nolen Programs Team Leader +1 918 560 2634