Graph Network Surrogate Model for Subsurface Flow Optimization
Haoyu Tang, Louis J. Durlofsky

TL;DR
This paper introduces a graph network surrogate model (GNSM) that significantly accelerates subsurface flow optimization by providing accurate flow predictions with minimal error, enabling efficient well placement and control optimization.
Contribution
The paper presents a novel GNSM architecture that transforms flow models into computational graphs, improving prediction accuracy and computational efficiency for subsurface flow optimization tasks.
Findings
Median relative error of 1-2% in pressure and saturation predictions.
Achieved a 36-fold speedup in optimization runtime.
Demonstrated accurate predictions on new permeability realizations.
Abstract
The optimization of well locations and controls is an important step in the design of subsurface flow operations such as oil production or geological CO2 storage. These optimization problems can be computationally expensive, however, as many potential candidate solutions must be evaluated. In this study, we propose a graph network surrogate model (GNSM) for optimizing well placement and controls. The GNSM transforms the flow model into a computational graph that involves an encoding-processing-decoding architecture. Separate networks are constructed to provide global predictions for the pressure and saturation state variables. Model performance is enhanced through the inclusion of the single-phase steady-state pressure solution as a feature. A multistage multistep strategy is used for training. The trained GNSM is applied to predict flow responses in a 2D unstructured model of a…
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Taxonomy
TopicsEnhanced Oil Recovery Techniques · Reservoir Engineering and Simulation Methods · Hydraulic Fracturing and Reservoir Analysis
MethodsSparse Evolutionary Training
