CODE: OG41
DURATION: 5 Days/10 Days
CERTIFICATIONS: CPD
This course offers an in-depth exploration of reservoir characterization in deepwater systems, with a focus on the integration of cores, well logs, and seismic data. The course emphasizes practical approaches to interpreting and integrating multiple datasets to build reliable reservoir models, reduce uncertainties, and support exploration and development strategies. Participants will gain a solid understanding of depositional processes, facies architecture, and reservoir heterogeneity in deepwater environments.
This course is available in the following formats:
Virtual
Classroom
Request this course in a different delivery format.
Course Outcomes
Delegates will gain the knowledge and skills to:
Analyse and interpret bed-scale deposits of particulate gravity currents including turbidites, debris flows, and hybrid event beds.
Assess the depositional processes and predict geometrical patterns in deepwater clastic sequences from core and seismic data.
Characterize transitional flow processes and hypothesize their spatial distribution in deepwater reservoirs.
Evaluate turbidite architecture at bed and element scales to understand reservoir heterogeneity.
Develop reservoir development plans based on channelization, onlap, and slope instability effects on reservoir architecture.
Compare and apply appropriate analogue systems to model subsurface deepwater reservoirs effectively.
At the end of this course, you’ll understand:
The course is designed for geoscientists, reservoir engineers, Petro physicists, and exploration professionals who are involved in subsurface evaluation and reservoir modeling. It is also highly relevant for early-career professionals, and technical staff seeking to strengthen their understanding of deepwater reservoir systems and improve their skills in multi-disciplinary data integration.
✓ Modern facilities
✓ Course materials and certificate
✓ Accredited international trainers
✓ Training materials and workbook
✓ Access to online resources
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