智能注水优化咨询系统——迈向数字化转型的一步

Samat Ramatullayev, M. M. Salim, Muhammad Ibrahim, Hussein Mustapha, Obeida El Jundi, Nour El Droubi, Alaa Maarouf
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引用次数: 0

摘要

在本文中,我们讨论了端到端注水优化解决方案的开发,该解决方案提供了带有人工智能(AI)和机器学习(ML)组件的监控和监视仪表板,以自动化的方式生成和评估注水作业效率的见解。该解决方案可以快速筛选不同级别(油藏、扇区、模式、井)的水驱动态,从而快速识别机会,并立即纳入机会管理流程,并在人工智能驱动的生产预测解决方案和/或油藏模拟器中进行评估。该过程从整合来自多个来源的广泛的生产和油藏工程数据类型开始。在此之后,创建了一系列关键单元和整个注水作业要素的监测和监视仪表板。这些仪表板中的工作流程以关键的水驱油藏和生产工程概念为框架。然后使用自动化的传统算法和AI/ML算法提取优化机会。确定的机会被整合到优化行动列表中。该列表被传递给人工智能驱动的生产预测解决方案和/或油藏模拟器,以评估每种情况的影响。该系统旨在改善业务时间决策周期,通过在一个平台上整合端到端优化工作流程,提高作业性能,降低注水作业成本。它结合了水驱的地面和地下方面,并提供了自上而下的油田,油藏,部门,模式和井位的水驱作业的全面了解。它的AI/ML组件有助于理解生产者-注入器的关系、注入器的动态性能、该领域的表现不佳模式,以及评估不同优化方案对增加石油产量的影响。数据驱动的产量预测组件由几个ML模型组成,用于评估不同情况下对石油产量的影响,如油藏、扇区、模式和井位的空隙替代比(VRR)变化。机会也可以自动转换为油藏模拟器兼容的格式,以便使用更严格的数值方法评估不同情况的影响。产生最大影响的场景将传递给现场操作团队执行。在成功实现后,该解决方案有望作为基准,用于优化任何油田或油藏的注入模式。该系统的新颖之处在于,除了集成人工智能/机器学习生产预测解决方案和/或油藏模拟器来评估不同的优化方案外,还实现了洞察生成过程的自动化。它是一种端到端的水驱优化解决方案,因为它集成了各种组件,可以在一个环境中识别和评估所有的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Waterflood Optimization Advisory System – A Step Change Towards Digital Transformation
In this paper, we discuss the development of an end-to-end waterflood optimization solution that provides monitoring and surveillance dashboards with artificial intelligence (AI) and machine learning (ML) components to generate and assess insights into waterflood operational efficiency in an automated manner. The solution allows for fast screening of waterflood performance at diverse levels (reservoir, sector, pattern, well) enabling prompt identification of opportunities for immediate uptake into an opportunity management process and for evaluation in AI-driven production forecast solution and/or a reservoir simulator. The process starts with the integration of a wide range of production and reservoir engineering data types from multiple sources. Following this, a series of monitoring and surveillance dashboards of key units and elements of the entire waterflood operations are created. The workflows in these dashboards are framed with key waterflood reservoir and production engineering concepts in mind. The optimization opportunity insights are then extracted using automated traditional and AI/ML algorithms. The identified opportunities are consolidated in an optimization action list. This list is passed to an AI-driven production forecast solution and/or a reservoir simulator to assess the impact of each scenario. The system is designed to improve the business-time decision-making cycle, resulting in increased operational performance and lower waterflood operating costs by consolidating end-to-end optimization workflows in one platform. It incorporates both surface and subsurface aspects of the waterflood and provides a comprehensive understanding of waterflood operations from top-down field, reservoir, sector, pattern and well levels. Its AI/ML components facilitate understanding of producer-injector relationships, injector dynamic performance, underperformance of patterns in the sector as well as evaluating the impact of different optimization scenarios on incremental oil production. The data-driven production forecast component consists of several ML models and is tailored to assess their impact on oil production of different scenarios such as changes in voidage replacement ratio (VRR) in reservoir, sector, pattern and well levels. Opportunities are also converted into reservoir simulator compatible format in an automated manner to assess the impact of different scenarios using more rigorous numerical methods. The scenarios that yield the highest impact are passed to the field operations team for execution. The solution is expected to serve as a benchmark, upon successful implementation, for optimizing injection schemas in any field or reservoir. The novelty of the system lies in automating the insights generation process, in addition to integrating with an AI/ML production forecasting solution and/or a reservoir simulator to assess different optimization scenarios. It is an end-to-end solution for waterflood optimization because of the integration of various components that allow for the identification and assessment of opportunities all in one environment.
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