Surrogate-Assisted Optimization of Highly Constrained Oil Recovery Processes Using Classification-Based Constraint Modeling

IF 3.9 3区 工程技术 Q2 ENGINEERING, CHEMICAL
Zahir Aghayev, Dimitrios Voulanas, Eduardo Gildin and Burcu Beykal*, 
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引用次数: 0

Abstract

Real-world problems often involve constraints that must be carefully managed for feasible and efficient operations. In optimization, this becomes especially challenging with complex, high-dimensional problems that are computationally expensive and subject to hundreds or even thousands of constraints. We address these challenges by optimizing the highly constrained waterflooding process using a surrogate model of the reservoir and a classification-based constraint handling technique. Our study uses benchmark reservoir simulations, beginning with the low-dimensional Egg model and extending to the high-dimensional UNISIM model. We employ a Feedforward Neural Network (FFNN) surrogate for objective quantification and use classification-based modeling to transform the numerous constraints into a binary problem, distinguishing between feasible and infeasible reservoir settings. Our methodology involves an offline phase to develop and train models using reservoir simulation data, achieving high predictive accuracy (R2 > 0.98) with 20,000 bottom-hole pressure (BHP) settings and net present value (NPV) outputs. The classifier algorithms are then trained to model the constraints, ensuring that the solutions identified during optimization are feasible. In the online phase, we employ different model-based and search-based optimizers to find the optimal BHP settings that maximize the NPV throughout the production horizon. By integrating a highly accurate surrogate model and classification-based constraint handling, our approach significantly reduces the computational burden while ensuring that the solutions remain feasible, optimized for maximum economic gain, and yield better results compared to the deterministic approach.

基于分类约束模型的高约束采油过程代理辅助优化
现实世界中的问题往往涉及一些约束条件,必须对这些约束条件进行仔细管理,才能实现可行、高效的操作。在优化过程中,对于计算成本高、受数百甚至数千个约束条件影响的复杂高维问题,这一点尤其具有挑战性。我们通过使用油藏代理模型和基于分类的约束处理技术来优化高约束注水过程,从而应对这些挑战。我们的研究使用基准水库模拟,从低维 Egg 模型开始,扩展到高维 UNISIM 模型。我们采用了前馈神经网络(FFNN)来进行目标量化,并使用基于分类的建模方法将众多约束条件转化为二元问题,区分可行和不可行的储层设置。我们的方法包括一个离线阶段,利用油藏模拟数据开发和训练模型,在 20,000 个井底压力 (BHP) 设置和净现值 (NPV) 输出中实现了较高的预测精度(R2 > 0.98)。然后对分类器算法进行建模训练,以确保优化过程中确定的解决方案是可行的。在在线阶段,我们采用不同的基于模型和基于搜索的优化器,以找到在整个生产范围内净现值最大化的最佳 BHP 设置。通过整合高精度代用模型和基于分类的约束处理,我们的方法大大减轻了计算负担,同时确保了解决方案的可行性、优化后的经济收益最大化以及与确定性方法相比更好的结果。
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来源期刊
Industrial & Engineering Chemistry Research
Industrial & Engineering Chemistry Research 工程技术-工程:化工
CiteScore
7.40
自引率
7.10%
发文量
1467
审稿时长
2.8 months
期刊介绍: ndustrial & Engineering Chemistry, with variations in title and format, has been published since 1909 by the American Chemical Society. Industrial & Engineering Chemistry Research is a weekly publication that reports industrial and academic research in the broad fields of applied chemistry and chemical engineering with special focus on fundamentals, processes, and products.
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