油藏评价与动态分析的作业耦合虚拟学习

Guoxiang Liu, Xiongjun Wu, V. Vasylkivska, C. Shih, G. Bromhal
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引用次数: 0

摘要

快速、准确地评价储层动态和响应对于油田开发和作业的成功至关重要。作为一项新兴的现场开发技术,物理学为先进的人工智能/机器学习(AI/ML)提供了信息,它受益于基于物理学的原理和AI/ML的学习能力。基于物料平衡原理的电容和电阻模型(CRM)方法可以为优化操作提供快速见解。其灵活的时间窗口选择和测试能力对操作计划和开发特别有用。为虚拟学习环境(VLE)开发的先进AI/ML模型可以耦合在一起,以扩展和增强储层演化评价的能力。本研究的目的是将CRM与VLE相结合,为现场作业和油藏管理提供一套全面的工具集。该方法将客户关系管理与价值评估有机地结合在一起;在完成快速油藏研究后,CRM首先对任何给定注入情况下的井响应和井间连通性进行快速预测。然后将CRM的预测结果作为VLE的输入,VLE利用ML模型预测整个油田的详细压力瞬变和流体运动等关键油藏参数的相应三维分布。这些信息与现场数据流一起,可以实时提供有关注入和增产的现场作业和油藏管理的整体视图,从而用于决策。基于西德克萨斯州SACROC CO2驱数据集的油藏模拟测试用例用于演示概念和工作流程。测试用例表明,CRM可以准确捕获随着注入和生产计划的变化而产生的产量和井底压力的变化。从CRM得到的响应使VLE能够正确预测压力和流体饱和度的三维分布。CRM和VLE的联合力量使他们能够捕捉到由于注入和生产变化而产生的影响。该集成工具集能够调整注入计划、生产设计和优化油藏响应,还可以辅助现场设计进行最佳井位选择/布置,从而获得更大的效益。如上所述的初步结果表明,将物理与AI/ML相结合的综合集成工具集可以为现场作业提供动态和实时的决策支持,并优化降低作业风险的支持,提高石油采收率,以及二氧化碳储存/监测设计。这样一个工具集的成功开发使得将假设场景和多种实现集成到静态和动态不确定性量化的工作流中成为可能。该工具集显示了新兴的“SMART”油田作业和油藏管理的价值和潜力,速度提高了3到4个数量级。
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Operations Coupled Virtual Learning for Reservoir Evaluation and Performance Analysis
The quick and accurate evaluation of reservoir behaviors and responses is essential to achieve successful field development and operations. An emerging technology for field development, physics informed advanced artificial intelligence/machine learning (AI/ML) benefits from both physics-based principles and AI/ML's learning capabilities. The capacitance and resistance model (CRM) method, based on the material balance principle, can provide rapid insights for optimal operations. Its flexible time-window selection and testing capability are especially useful for operation planning and development. Advanced AI/ML models developed for virtual learning environment (VLE) can be coupled to extend and enhance the capability for reservoir evolution evaluation. The objective of this study is to synergize the CRM with the VLE to provide a comprehensive toolset for field operations and reservoir management. The proposed approach has an organic integration of the CRM with the VLE; after completing a rapid reservoir study, the CRM first performs rapid forecasting of the well responses and inter-well connectivity for any given injection situation. The forecasted results from the CRM are then supplied as the inputs to the VLE, which utilizes its ML models to predict the corresponding three-dimensional distributions of key reservoir parameters such as detailed pressure transient and fluid movement for the entire field. This information, together with the field data streams, can be used for decision-making by providing a holistic view of the field operations and reservoir management regarding the injection and production enhancement in a real-time fashion. A simulated reservoir test case based on the SACROC CO2 flooding dataset from West Texas was used to demonstrate the concept and workflow. The test case has shown that the CRM can accurately capture the variations of the production rates and bottom-hole pressures with injection and production plan changes. The responses obtained from the CRM enable the VLE to correctly predict the three-dimensional distributions of the pressure and fluid saturation. The joint force from the CRM and the VLE enable them to capture the effects due to the injection and production changes in the field. Capable of tuning the injection plan, production design, and optimizing reservoir response, this integrated toolset can also assist field design with optimal well location selection/placement as extended benefits. As demonstrated with the preliminary results from above, a comprehensive and integrated toolset that couples the physics with the AI/ML can provide dynamic and real-time decision support for field operations and optimization for de-risked operation support, enhance oil recovery, and CO2 storage/monitoring design. Successful development of such a toolset makes it possible to integrate what-if scenarios and multiple-realizations to the workflow for static and dynamic uncertainty quantification. The toolset shows value and potential for emerging "SMART" field operations and reservoir management with three to four orders of magnitude speedup.
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