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Smart Proxy Modeling of SACROC CO2-EOR

机译:SACROC CO2-EOR的智能代理建模

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摘要

Large CO2-enhanced oil recovery (EOR) projects usually contain an abundance of geological and good performance data. While this volume of data leads to robust models, it often results in difficult to manage, slow-running numerical flow models. To dramatically reduce the numerical run-times associated with the traditional simulation techniques, this work investigated the feasibility of using artificial intelligence and machine learning technologies to develop a smart proxy model of the Scurry Area Canyon Reef Operators Committee (SACROC) oilfield, located in the Permian Basin, TX, USA. Smart proxy models can be used to facilitate injection-production optimization for CO2-EOR projects. The use of a coupled grid-based, and well-based surrogate reservoir model (SRM) (also known as smart proxy modeling) was investigated as the base of the optimization. A fit-for-purpose coupled SRM, which executes in seconds, was built based on high-resolution numerical reservoir simulation models of the northern platform of the SACROC oilfield. This study is unique as it is the first application of coupled SRM at a large oilfield. The developed SRM was able to identify the dynamic reservoir properties (pressure, saturations, and component mole-fraction) at every grid-block, along with the production characteristics (pressure and rate) at each well. Recent attempts to use machine learning and pattern recognition to build proxy models have been simplistic, with limited predictive capabilities. The geological model used in this study is comprised of more than nine million grid blocks. The high correlation between the actual component and SRM, which can be visualized by mapping the properties, along with the fast footprint of the developed model demonstrate the successful application of this methodology.
机译:大型二氧化碳增强型储油(EOR)项目通常包含丰富的地质和良好性能数据。虽然该数量的数据导致强大的模型,但它通常会导致难以管理,慢速运行的数字流量模型。为了大大减少与传统仿真技术相关的数值运行时间,这项工作调查了使用人工智能和机器学习技术开发SCURRY AREA CANYON REEF运营商委员会(SACROC)油田的智能代理模型的可行性二叠纪盆地,德克萨斯州,美国。智能代理模型可用于促进CO2-EOR项目的注入 - 生产优化。使用耦合网格基和基于良好的替代储层模型(SRM)(也称为智能代理建模)作为优化的基础。基于Sacroc油田北平台的高分辨率数值储层模拟模型,建立了以秒为单位执行的适合耦合SRM。本研究是独一无二的,因为它是大型油田耦合SRM的第一次应用。开发的SRM能够在每个网格块处识别动态储层性质(压力,饱和和组分摩尔分数),以及每个孔的生产特征(压力和速率)。最近尝试使用机器学习和模式识别来构建代理模型一直简单,预测能力有限。本研究中使用的地质模型包括超过九百多万电网块。通过映射属性可以通过映射性能来可视化的实际组件和SRM之间的高相关性以及开发模型的快速占地面积证明了这种方法的成功应用。

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