Adaptive machine learning-based surrogate modeling to accelerate PDE-constrained optimization in enhanced oil recovery

In this contribution, we develop an efficient surrogate modeling framework for simulation-based optimization of enhanced oil recovery, where we particularly focus on polymer flooding. The computational approach is based on an adaptive training procedure of a neural network that directly approximates...

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Veröffentlicht in:Advances in computational mathematics 2022-12, Vol.48 (6), Article 73
Hauptverfasser: Keil, Tim, Kleikamp, Hendrik, Lorentzen, Rolf J., Oguntola, Micheal B., Ohlberger, Mario
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Sprache:eng
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Zusammenfassung:In this contribution, we develop an efficient surrogate modeling framework for simulation-based optimization of enhanced oil recovery, where we particularly focus on polymer flooding. The computational approach is based on an adaptive training procedure of a neural network that directly approximates an input-output map of the underlying PDE-constrained optimization problem. The training process thereby focuses on the construction of an accurate surrogate model solely related to the optimization path of an outer iterative optimization loop. True evaluations of the objective function are used to finally obtain certified results. Numerical experiments are given to evaluate the accuracy and efficiency of the approach for a heterogeneous five-spot benchmark problem.
ISSN:1019-7168
1572-9044
DOI:10.1007/s10444-022-09981-z