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Design of warm solvent injection processes for heterogeneous heavy oil reservoirs: A hybrid workflow of multi-objective optimization and proxy models

机译:非均质重油储层温热溶剂注入工艺设计:多目标优化和代理模型的混合工作流程

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Injection of warm solvent vapor into the formation is often considered as a cleaner alternative for heavy oil production. However, the design of relevant operational conditions is challenging, as it involves the optimization of multiple distinct objectives including oil production and solvent-oil-ratio (solvent usage efficiency). This work develops a hybrid optimization framework involving Pareto-based multiple-objective optimization (MOO) techniques for the design of warm solvent injection (WSI) operations in heterogeneous reservoirs. First, a set of synthetic models are constructed based on field data gathered from several typical Athabasca oil sands reservoirs. Models with different heterogeneity settings and the impact of solution gas on WSI production are examined. Next, non-dominated sorting genetic algorithm II (NSGA-II), is employed to optimize two operational parameters, i.e., bottom-hole pressures, based on multiple design objectives. Several proxy models are integrated into the optimization workflow to evaluate the objective functions at reduced computational costs. The performance of the proposed workflow is validated via both homogeneous and heterogeneous cases, and it is demonstrated that a set of Pareto-optimal operating conditions for different reservoir settings can be obtained. The results reveal that the optimal bottom-hole pressure of the producer should be kept at a minimum, while there is more flexibility in the injection bottom-hole pressure. Compared with other conventional optimization strategies, the proposed workflow requires fewer costly simulations and facilitates the optimization of multiple objectives simultaneously. The result demonstrated a great potential for extending the developed MOO framework to optimize operational conditions for other natural resource extraction processes.
机译:将温热溶剂蒸气注入地层通常被认为是重油生产的清洁剂替代品。然而,相关操作条件的设计具有挑战性,因为它涉及多种不同的目标,包括石油生产和溶剂 - 油比(溶剂使用效率)。这项工作开发了一种涉及基于帕累托的多目标优化(MOO)技术的混合优化框架,用于在异构储层中设计热溶剂喷射(WSI)操作。首先,基于从几种典型的Athabasca油砂水库收集的现场数据构建了一组合成模型。研究了具有不同异质性设置的模型和解决方案气体对WSI生产的影响。接下来,基于多种设计目标,采用非主导的分类遗传算法II(NSGA-II)来优化两个操作参数,即底部孔压力。几个代理模型集成到优化工作流程中,以评估目标功能以降低的计算成本。所提出的工作流程的性能通过均匀和异质的情况验证,并且证明可以获得用于不同储层设置的一组据普通的最佳操作条件。结果表明,生产者的最佳底孔压力应保持最小,而注射底孔压力更大。与其他传统优化策略相比,所提出的工作流程需要较少的昂贵模拟,并促进同时优化多个目标。结果表明,扩展开发的MOO框架的巨大潜力,以优化其他自然资源提取过程的操作条件。

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