Webinar Details
Geophysical Insights hosted this 2-hour Symposium on 30 July 2025; however, you are in luck! The videos of each speaker are below, in addition to their CVs and abstract of each talk. In this special session, geoscientists from three leading universities and Geophysical Insights demonstrated – in theory and practice – how Machine Learning Lithofacies Prediction (MLLP) is redefining how the industry approaches reservoir characterization for conventional plays, unconventional reservoirs, and carbon capture & storage (CCS). Case studies include:
- Comparing MLLP workflows with conventional seismic inversion offshore Egypt
- Optimizing CO₂ storage in the Illinois Basin using Lithofacies Prediction
- Predicting Lithofacies in the Permian Basin, an unconventional setting
These investigators show how interpretation time is reduced from months to days, while increasing the detail and robustness of predictions.
Why machine learning Lithofacies Prediction will transform reservoir characterization
Alvaro Chaveste
Sr. Geophysical Consultant
Geophysical Insights
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
Abo-Kingdom Field, Permian Basin Unconventional, Carbonate Reservoir
Robin Dommisse
Sr. Geomodeler
Bureau of Economic Geology
University of Texas, Austin
View CV View Abstract
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