Evaluation and Optimisation of Chemically Enhanced Oil Recovery in Fractured Reservoirs Using Dual-Porosity Models

Ali Al-Rudaini, S. Geiger, E. Mackay, C. Maier, Jackson Andreas Pola
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引用次数: 1

Abstract

We propose a workflow to optimise the configuration of multiple interacting continua (MINC) models and overcome the limitations of the classical dual-porosity model when simulating chemically enhanced oil recovery processes. Our new approach captures the evolution of the concentration front inside the matrix, which is key to design a more effective chemically enhanced oil recovery projects in naturally fractured reservoirs. Our workflow is intuitive and based on the simple concept that fine-scale single-porosity models capture fracture-matrix interaction accurately and can hence be easily applied in a commercial reservoir simulator. Results from the fine-scale single-porosity system are translated into an equivalent MINC method that yields more accurate results than the classical dual-porosity model or a MINC method where the shells are arbitrarily selected. Our approach does not require the tuning of capillary pressure curves ("pseudoisation"), diffusion coefficients, MINC shells, or the generation of recovery type curves, all of which have been suggested in the past to model more complex recovery processes. A careful examination of the fine-scale single-porosity model ("reference case") shows that a number of nested shells emerge, describing the advance of the concentration and saturation fronts inside the matrix. The number of shells is related to the required degree of refinement, i.e. the number of shells, in the improved MINC model. Using the results from a fine-scale single-porosity simulation to set up the shells in the MINC model is easy and requires only simple volume calculations. It is hence independent of the chosen simulator. Our improved MINC method yields significantly more accurate results compared to a classical dual-porosity model, a MINC method with equally sized shells, or a MINC model with arbitrarily refined shells for a number of recovery scenarios that cover a range of matrix wettabilities and permeabilities. In general, improved results can be obtained when selecting five or fewer shells in the MINC. However, the actual number of shells is case-specific. The largest improvement is observed for cases when the matrix permeability is low. The novelty of our approach is the easy-to-use method to define shells for a MINC model to predict chemically enhanced oil recovery from naturally fractured reservoirs more accurately, especially in cases where the matrix has low permeability. Hence the improved MINC method is particularly suitable to model chemical EOR processes in (tight) fractured carbonates.
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基于双孔隙度模型的裂缝性储层化学提高采收率评价与优化
我们提出了一个工作流来优化多重相互作用连续体(MINC)模型的配置,并克服了经典双孔隙度模型在模拟化学提高采收率过程中的局限性。我们的新方法捕获了基质内部浓度前沿的演变,这是在天然裂缝性油藏中设计更有效的化学提高采收率项目的关键。我们的工作流程是直观的,基于一个简单的概念,即精细的单孔隙度模型可以准确地捕获裂缝-基质的相互作用,因此可以很容易地应用于商业油藏模拟器。精细尺度单孔隙度系统的结果可转化为等效的MINC方法,其结果比经典的双孔隙度模型或任意选择壳层的MINC方法更准确。我们的方法不需要调整毛细管压力曲线(“伪化”)、扩散系数、MINC壳,也不需要生成采收率类型曲线,所有这些在过去都被建议用于模拟更复杂的采收率过程。对细尺度单孔隙率模型(“参考案例”)的仔细检查表明,出现了许多嵌套壳,描述了基质内部浓度和饱和度前沿的推进。在改进的MINC模型中,壳的数量与所需的细化程度有关,即壳的数量。利用精细尺度单孔隙度模拟的结果建立MINC模型中的壳层很容易,只需要简单的体积计算。因此,它独立于所选择的模拟器。与经典的双重孔隙度模型、具有相同大小壳层的MINC方法或具有任意细化壳层的MINC模型相比,我们改进的MINC方法的结果要准确得多,这些模型适用于覆盖一系列基质润湿性和渗透率的多种采收率方案。一般来说,在MINC中选择五个或更少的壳可以获得更好的结果。但是,shell的实际数量是具体情况的。在基质渗透率较低的情况下,效果最大。该方法的新颖之处在于,它易于使用,可以定义MINC模型的壳层,从而更准确地预测天然裂缝油藏的化学提高采收率,特别是在基质渗透率较低的情况下。因此,改进的MINC方法特别适合模拟致密裂缝型碳酸盐岩的化学提高采收率过程。
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