Abstract

We present an efficient workflow that combines multiscale (MS) forward simulation and stochastic gradient computation - MS-StoSAG - for the optimization of well controls applied to waterflooding under geological uncertainty. A two-stage iterative Multiscale Finite Volume (i-MSFV), a mass conservative reservoir simulation strategy, is employed as the forward simulation strategy. MS methods provide the ability to accurately capture fine scale heterogeneities, and thus the fine-scale physics of the problem, while solving for the primary variables in a more computationally efficient coarse-scale simulation grid. In the workflow, the construction of the basis fuctions is performed at an offline stage and they are not reconstructed/updated throughout the optimization process. Instead, inaccuracies due to outdated basis functions are addressed by the i-MSFV smoothing stage. The Stochastic Simplex Approximate Gradient (StoSAG) method, a stochastic gradient technique is employed to compute the gradient of the objective function using forward simulation responses. Our experiments illustrate that i-MSFV simulations provide accurate forward simulation responses for the gradient computation, with the advantage of speeding up the workflow due to faster simulations. Speed-ups up to a factor of five on the forward simulation, the most computationally expensive step of the optimization workflow, were achieved for the examples considered in the paper. Additionally, we investigate the impact of MS parameters such as coarsening ratio and heterogeneity contrast on the optimization process. The combination of speed and accuracy of MS forward simulation with the flexibility of the StoSAG technique allows for a flexible and efficient optimization workflow suitable for large-scale problems.

Highlights

  • IntroductionWe consider the life-cycle optimization of hydrocarbon production by manipulating well controls (pressure, rates or valve settings) for a given configuration of wells, a process known as long-term production optimization or recovery optimization

  • We consider the life-cycle optimization of hydrocarbon production by manipulating well controls for a given configuration of wells, a process known as long-term production optimization or recovery optimization

  • Even though no basis function reconstructions were performed in our experiments, and the iterative Multiscale Finite Volume (i-Multiscale Finite Volume (MSFV)) fine-scale smoothing performed remarkably well, that might not be the case when more complex physics are involved in the simulation model

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Summary

Introduction

We consider the life-cycle optimization of hydrocarbon production by manipulating well controls (pressure, rates or valve settings) for a given configuration of wells, a process known as long-term production optimization or recovery optimization. MS simulation strategies aim to compute coarse scale primary variables, but are still able to represent an approximate solution at the fine scale, which is an advantage over upscaling techniques This leads to, approximate reservoir responses, which will be utilized by stochastic gradient computation methods. On that note, it is shown in (de Moraes et al, 2017; Krogstad et al, 2011) that analytical gradients (e.g. adjoint-based ones) computed via MS strategies provide an accurate enough approximation of the true gradient, capable of providing optimization results comparable to fine-scale optimizations. Following the theoretical descriptions of these two building blocks we illustrate the advantages and computational gains achieved on two different reservoir models for optimization cases with and without geological uncertainties

Stochastic gradient computation
Multiscale reservoir simulation
MS-StoSAG workflow
A note about computational complexity
Numerical experiments
Toy model - five-spot model
Kanaal reservoir model
Findings
Discussion
Conclusions
Full Text
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