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A database and workflow integration methodology for rapid evaluation and selection of Improved Oil Recovery (IOR) technologies for heavy oil fields

机译:一种数据库和工作流集成方法,用于快速评估和选择重油田的改进采油率(IOR)技术

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Conventional crude oil is the currently dominant but a non-renewable energy resource. Despite the development and improvement of alternative energy technologies, there is still a large gap between the capability of renewable energy systems to capture and reliably supply power, and the ever-increasing global energy demand requirements. Therefore, until technological innovations facilitate sufficient energy generation through alternative fuels, other means of sustaining crude oil production, such as Improved Oil Recovery (IOR) methods, must be systematically explored. Beyond increasing production of conventional oil, IOR methods can effectively facilitate the extraction of oil from unconventional reservoirs, such as heavy oil fields. This capability is of high strategic importance due to the considerably large size of global heavy oil reserves. There are several IOR technologies available, but each of them is suitable only for certain oil field types. The aim of this paper is to illustrate an alternative, low-cost, quick screening method which is competitive to more technically laborious and costly methods for selecting the most suitable technology for a given heavy oil extraction project, using a limited dataset. A two-stage technology screening method is hereby proposed: the first stage is based on previous project literature data evaluation, and the second stage is based on simple empirical oil production correlation methods (such as the Marx & Langenheim model) coupled with Ingen's RAVE (Risk and Value Engineering) and Schlumberger's PIPESIM software applications. The new method can achieve reasonably accurate results and minimise cost and time requirements during the preliminary stages of an oilfield development project, as evidenced via a comprehensive case study.
机译:常规原油是目前占主导地位但不可再生的能源。尽管替代能源技术得到了发展和改进,可再生能源系统捕获和可靠供电的能力与不断增长的全球能源需求之间仍然存在很大差距。因此,在技术创新促进通过替代燃料产生足够的能量之前,必须系统地探索其他维持原油生产的方式,例如改进采油率(IOR)方法。除了增加常规石油的产量外,IOR方法还可以有效地促进从非常规油藏(例如重油田)中提取石油。由于全球重油储备的规模很大,这种能力具有重要的战略意义。有几种IOR技术可用,但每种仅适用于某些油田类型。本文的目的是说明另一种低成本,快速筛选方法,该方法与使用有限数据集为给定重油开采项目选择最合适技术的技术难度更高且成本更高的方法相竞争。因此,提出了一种两阶段的技术筛选方法:第一阶段基于先前的项目文献数据评估,第二阶段基于简单的经验油产量相关方法(例如Marx&Langenheim模型)并结合Ingen的RAVE(风险和价值工程)和斯伦贝谢的PIPESIM软件应用程序。全面的案例研究证明,新方法可以在油田开发项目的初期阶段获得合理准确的结果,并最大限度地减少成本和时间要求。

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