基于人工神经网络的两相平衡计算框架,用于二氧化碳 EOR 的快速成分储层模拟

IF 2.8 3区 工程技术 Q3 CHEMISTRY, PHYSICAL Fluid Phase Equilibria Pub Date : 2024-05-31 DOI:10.1016/j.fluid.2024.114151
Liangnan Li , Hongbin Jing , Jianqiao Liu , Huanquan Pan , Zhengbao Fang , Tie Kuang , Yubo Lan , Junhui Guo
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引用次数: 0

摘要

向储层注入二氧化碳是碳捕集、利用和封存(CCUS)以及提高石油采收率(EOR)的重要方法。然而,由于二氧化碳与碳氢化合物之间的相态行为复杂,注入过程的储层模拟变得非常耗时。为了加快 CO2-EOR 所涉及的相平衡计算(PECs),我们开发了基于人工神经网络(ANN)的 PECs 框架,包括 1P 稳定性模型和 2P 闪蒸模型,取代了传统的单相稳定性分析和两相闪蒸计算。此外,我们还提出了根据 CO2-EOR 生产特点生成训练点的直接方法。我们对这两个模型进行了特定设置,以确保解决方案 100% 正确,包括预先确定过滤稳定性模型输出的标准,以及利用闪蒸模型输出作为标准算法初始值。我们增强了基于 ANN 的模型,以便与成分模拟器无缝集成。我们选择了四种已发表的流体,通过实施独立的 PEC 来测试该框架,并将一种流体用于模拟 CO2-EOR。与传统算法相比,基于 ANN 的框架可节省多达 80% 的相平衡计算时间,使模拟时间减少 40%。总之,新开发的基于ANN的PECs框架在加速CO2-EOR储层模拟方面显示出巨大潜力,有助于通过向储层注入CO2设计CCUS方案。
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The artificial neural network-based two-phase equilibrium calculation framework for fast compositional reservoir simulation of CO2 EOR

Injecting CO2 into the reservoir is an essential method for Carbon Capture, Utilization, and Storage (CCUS) and enhanced oil recovery (EOR). However, due to the complex phase behavior between CO2 and hydrocarbons, the reservoir simulation of the injection process becomes time-consuming. To expedite phase equilibrium calculations (PECs) involved in CO2-EOR, we have developed an artificial neural network (ANN)-based PECs framework comprising the 1P-stability and 2P-flash models, which replaced traditional single-phase stability analysis and two-phase flash calculations. Additionally, We proposed a straightforward method for generating training points tailored to CO2-EOR production characteristics. Specific settings are placed on the two models to ensure a 100% correct solution, including predefining criteria to filter the stability model output and utilizing the flash model output as the standard algorithm initial value. We have enhanced the ANN-based models to integrate seamlessly with the compositional simulator. Four published fluids were selected to test this framework by implementing the standalone PECs, and one fluid was used for the simulation of CO2-EOR. The ANN-based framework can save up to 80% of time on phase equilibrium calculations, resulting in a 40% reduction in simulation time compared to the conventional algorithm. In summary, the newly developed ANN-based PECs framework shows great potential to accelerate the reservoir simulation for CO2-EOR, which helps design the program of CCUS by injecting CO2 into the reservoir.

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来源期刊
Fluid Phase Equilibria
Fluid Phase Equilibria 工程技术-工程:化工
CiteScore
5.30
自引率
15.40%
发文量
223
审稿时长
53 days
期刊介绍: Fluid Phase Equilibria publishes high-quality papers dealing with experimental, theoretical, and applied research related to equilibrium and transport properties of fluids, solids, and interfaces. Subjects of interest include physical/phase and chemical equilibria; equilibrium and nonequilibrium thermophysical properties; fundamental thermodynamic relations; and stability. The systems central to the journal include pure substances and mixtures of organic and inorganic materials, including polymers, biochemicals, and surfactants with sufficient characterization of composition and purity for the results to be reproduced. Alloys are of interest only when thermodynamic studies are included, purely material studies will not be considered. In all cases, authors are expected to provide physical or chemical interpretations of the results. Experimental research can include measurements under all conditions of temperature, pressure, and composition, including critical and supercritical. Measurements are to be associated with systems and conditions of fundamental or applied interest, and may not be only a collection of routine data, such as physical property or solubility measurements at limited pressures and temperatures close to ambient, or surfactant studies focussed strictly on micellisation or micelle structure. Papers reporting common data must be accompanied by new physical insights and/or contemporary or new theory or techniques.
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