
Webinar Details
In today’s complex energy landscape, understanding the subsurface faster and with greater accuracy can mean the difference between a stalled project and a competitive advantage. In this special session, geoscientists from three leading universities and Geophysical Insights pull back the curtain on Machine Learning Lithofacies Prediction (MLLP), an emerging workflow that’s redefining how the industry approaches reservoir characterization for conventional plays, unconventional reservoirs, and carbon capture & storage (CCS).
They’ll share real-world case studies from optimizing CO₂ storage in the Illinois Basin, to comparing ML workflows with conventional seismic inversion offshore Egypt, to mapping subtle carbonate facies in the Midland Basin.
You’ll get a firsthand look at how this technology cuts interpretation time from months to days, improves accuracy, and unlocks new levels of detail even in challenging, heterogeneous reservoirs.
What you’ll learn:
- How ML Lithofacies Prediction works: Understand how Self-Organizing Maps (SOM) and other ML methods outperform traditional seismic inversion for facies mapping.
- Accuracy & risk reduction: Discover how ML increases prediction accuracy, improves well planning, and helps identify seal integrity and leakage risks for CCS.
- Applications in diverse settings: See examples from CO₂ storage (Decatur Project), offshore gas fields (Nile Delta), and tight carbonates (Midland Basin).
- Expert insights: Hear from industry thought leaders about practical lessons learned and how this technology is shaping the future of reservoir characterization.
Why machine learning Lithofacies Prediction will transform reservoir characterization
Abo-Kingdom Field, Permian Basin
Unconventional, Carbonate Reservoir
Simian Field – Offshore Nile Delta of Egypt
Conventional Play
Alvaro Chaveste
Sr. Geophysical Consultant
Geophysical Insights
Robin Dommisse
Sr. Geomodeler
Bureau of Economic Geology
University of Texas, Austin
Dr. Marwa Hussein
Assistant Professor
Ain Shams University
View CV View Abstract
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Illinois Basin – Decatur Project, USA
Carbon Capture & Storage
Dr. Xiaowei Chen
Associate Professor
Texas A&M University
View CV View Abstract
Mr. Tarek Khalifa
Research Assistant
Texas A&M University
View CV View Abstract
Why machine learning Lithofacies Prediction will transform reservoir characterization
Alvaro Chaveste
Sr. Geophysical Consultant
Geophysical Insights
View CV View Abstract
Abo-Kingdom Field, Permian Basin
Unconventional, Carbonate Reservoir
Robin Dommisse
Sr. Geomodeler
Bureau of Economic Geology
University of Texas, Austin
View CV View Abstract
Simian Field – Offshore Nile Delta of Egypt
Conventional Play
Dr. Marwa Hussein
Assistant Professor
Ain Shams University
View CV View Abstract
Illinois Basin – Decatur Project, USA
Carbon Capture & Storage
Dr. Xiaowei Chen
Associate Professor
Texas A&M University
View CV View Abstract
Mr. Tarek Khalifa
Research Assistant
Texas A&M University
View CV View Abstract