TunaOil: A Tuning Algorithm Strategy for Reservoir Simulation Workloads
Felipe Albuquerque Portella, David Buchaca Prats, Jos\'e Roberto, Pereira Rodrigues, Josep Llu\'is Berral

TL;DR
TunaOil introduces a machine learning-based methodology to optimize reservoir simulation parameters, significantly reducing computational time in history matching workflows without compromising accuracy.
Contribution
It presents a novel approach leveraging past simulation logs and ensemble data to efficiently tune numerical parameters in reservoir simulations.
Findings
Workflow runtime improved by 31% on average.
Effective use of past simulation data for parameter tuning.
Reduced computational costs in reservoir simulation workflows.
Abstract
Reservoir simulations for petroleum fields and seismic imaging are known as the most demanding workloads for high-performance computing (HPC) in the oil and gas (O&G) industry. The optimization of the simulator numerical parameters plays a vital role as it could save considerable computational efforts. State-of-the-art optimization techniques are based on running numerous simulations, specific for that purpose, to find good parameter candidates. However, using such an approach is highly costly in terms of time and computing resources. This work presents TunaOil, a new methodology to enhance the search for optimal numerical parameters of reservoir flow simulations using a performance model. In the O&G industry, it is common to use ensembles of models in different workflows to reduce the uncertainty associated with forecasting O&G production. We leverage the runs of those ensembles in…
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