基于多尺度数字验证技术的先进Eor工艺升级及FDP应用

J. Ortiz, D. Klemin, O. Savelyev, J. Gossuin, S. Melnikov, A. Serebryanskaya, Yunlong Liu, O. Gurpinar, M. Salazar, Thaer Gheneim Herrera
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引用次数: 0

摘要

利用数值模型来描述和评价储层潜力是一种广泛的行业实践,越来越多的开发决策是由有限差分模型来证实的。硬件和软件的进步,以及有效结合精确过程物理的能力,使模拟成为油田开发决策的强大工具,特别是在复杂的作业中,如提高采收率和/或具有挑战性的非均质性和孔隙结构的油藏。这些模型的使用并非没有挑战,因为数据需求(以及在实验室和现场级别使用特殊表征)随着油藏表征粒度和模型尺寸的增加而增加。不出所料,模型精度和数据要求的增加放大了包括油田开发规划(FDP)在内的任何现场评估期间获得的数值解的非唯一性。不完整/不一致的数据集通过在过程表征上引入进一步的不确定性,对预测的准确性(以及可能的风险)提出了进一步的挑战。因此,无论是在现场还是在实验室层面,使用诸如数字岩石之类的补充技术,都可以及时减轻这种不确定性的影响,特别是在提高石油采收率方面,这是非常可取的。增加数值伪影(分散、稀释等)的影响加剧了提高采收率剂表征的非线性效应,而这些伪影是复杂的化学实施容易产生的,这使得从实验室维度到现场的升级过程更加复杂。本文补充了我们之前关于使用数字岩石解决方案和多尺度升级的研究,并解决了两个互补的主题:在油田开发中使用多尺度数字岩石技术——通过一个案例研究来说明DR在现场评价中对未采样相的补充,使用多嵌套方法来调和不同桥塞尺度下的DR观测结果。评估有限差分数值模拟网格对表面活性剂注入性能的影响——强调现有模型的局限性和挑战,并提出潜在的升级替代方案。我们打算进一步将数字岩石升级与其他EOR方法(如聚合物/CO2注入,当然还有表面活性剂)相结合。虽然我们能够强调复杂化学驱的升级注意事项,但我们仍在继续研究和设计一种解决方案,该解决方案将包括化学物质(表面活性剂、碱性和聚合物)的组合,以及处理浓度/盐度变化。
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Advanced Eor Process Upscaling Using Multi-Scale Digital Verification Technology and FDP Application
Use of numerical models to characterize and evaluate reservoir potential is an industry wide practice, with increasingly more development decisions being substantiated by finite difference models. Advances on hardware and software, along with the ability to effectively incorporate accurate process physics, makes simulation a robust tool for field development decisions, particularly on complex operations such as enhanced oil recovery and/or reservoirs with challenging heterogeneity and pore structures. Use of these models does not come without its challenges where data requirements (and use of special characterization both at lab and field level) increase as does the reservoir characterization granularity and thus model sizes. Unsurprisingly the increase of model precision and data requirements amplifies non-uniqueness of the numerical solutions obtained during any field evaluation including field development planning (FDP). Incomplete/inconsistent datasets pose a further challenge to the accuracy (and arguably risk) of the forecasts by introducing further uncertainty on the process characterization. Use of complementary technology such as digital rock, that would enable mitigate impact of such uncertainties in a timely manner -either at field or laboratory level, is thus highly desirable particularly when dealing with enhanced oil recovery. Compounding the non-linearity effect of the EOR agent characterization is the effect of the augmented numerical artifacts (dispersion, dilution, etc) of which complex chemical implementations are prone to, making the upscaling process from laboratory dimensions to field more complex. This paper complements our previous investigation on the use of digital rock solutions and multi-scale upscaling and is addressing two complementing topics: Use of multiscale digital rock technology for field development – using a case study to illustrate the use of DR on field appraisal complementing otherwise unsampled facies, using a multi-nested approach to reconcile DR observations at different plug scalesEvaluate the impact of finite-difference numerical simulation grid on the surfactant injection performance- highlighting limitations and challenges of existing models as well as proposing potential upscaling alternatives. It is our intention to further reconcile digital rock upscaling with other EOR methods such as polymer/CO2 injection and of course surfactant. While we were able to highlight the caveats of upscaling on complex chemical floods we continue to investigate and design a solution that would encompass combination of chemicals (surfactant, alkaline and polymer) as well as handle of concentration/salinity changes.
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