Enhancing Reservoir Model History Matching with AI Surrogate and Ensemble Iterative Algorithms
Khaled J. Hammad,
Ali A. Al-Turki,
Sharizan B. Sudirman
et al.
Abstract:In reservoir engineering, history matching and calibration process yields nonunique plausible outcomes due to the inherited uncertainty of earth models. The process is carried on with the ultimate objectives of providing reliable predictive reservoir models with the highest possible quality at minimal computational overhead. This work capitalizes on the development of a tightly-coupled Surrogate AI model with Ensemble Iterative algorithm (Alturki et. al, 2024) to devise the relationships of uncertainty variabl… Show more
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