Challenges in adjoint-based optimization of a foam EOR process

被引:0
|
作者
M. Namdar Zanganeh
J. F. B. M. Kraaijevanger
H. W. Buurman
J. D. Jansen
W. R. Rossen
机构
[1] Xodus Group,Department of Geoscience and Engineering
[2] Shell Global Solutions International,undefined
[3] Delft University of Technology,undefined
来源
Computational Geosciences | 2014年 / 18卷
关键词
Adjoint-based optimization; Simulation; Enhanced oil recovery; Foam;
D O I
暂无
中图分类号
学科分类号
摘要
We apply adjoint-based optimization to a surfactant-alternating gas foam process using a linear foam model introducing gradual changes in gas mobility and a nonlinear foam model giving abrupt changes in gas mobility as function of oil and water saturations and surfactant concentration. For the linear foam model, the objective function is a relatively smooth function of the switching time. For the nonlinear foam model, the objective function exhibits many small-scale fluctuations. As a result, a gradient-based optimization routine could have difficulty finding the optimal switching time. For the nonlinear foam model, extremely small time steps were required in the forward integration to converge to an accurate solution to the semi-discrete (discretized in space, continuous in time) problem. The semi-discrete solution still had strong oscillations in gridblock properties associated with the steep front moving through the reservoir. In addition, an extraordinarily tight tolerance was required in the backward integration to obtain accurate adjoints. We believe the small-scale oscillations in the objective function result from the large oscillations in gridblock properties associated with the front moving through the reservoir. Other EOR processes, including surfactant EOR and near-miscible flooding, have similar sharp changes and may present similar challenges to gradient-based optimization.
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收藏
页码:563 / 577
页数:14
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