Practical CO 2 —WAG Field Operational Designs Using Hybrid Numerical-Machine-Learning Approaches
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- Ampomah, W. & Balch, R.S. & Cather, M. & Will, R. & Gunda, D. & Dai, Z. & Soltanian, M.R., 2017. "Optimum design of CO2 storage and oil recovery under geological uncertainty," Applied Energy, Elsevier, vol. 195(C), pages 80-92.
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Keywords
multi-objective optimization; CO 2 -WAG; machine learning; numerical modeling; hybrid workflows;All these keywords.
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