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Application of case-based reasoning for well fracturing planning and execution

机译:基于案例的推理在压裂规划和执行中的应用

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Over the last two decades, there has been significant activity in the soft computing arena with focus on various computer paradigms such as neural networks, genetic algorithms, and fuzzy logic to more efficiently solve complex engineering problems. Further work concentrated on integrating two or more of these paradigms and led to what is known as "hybrid systems". The power of the hybrid system relies on the fact that technologies are intended to complement each other and exploit their individual strengths to enhance solution generation. Case-based reasoning (CBR) is another soft computing technology developed to deal with uncertainty, approximate reasoning and exploit knowledge domain. Case-based reasoning, also known as computer reasoning by analogy, is a simple and practical technique that solves new problems by comparing them to ones that have already been solved in the past, thus saving time and money. This paper provides a general framework of case-based reasoning along with a review of the four-step cycle that characterizes the technology (retrieve, reuse, revise and retrain), followed by a specific application to well fracture treatment design, planning and execution. The proposed methodology extracts the relevant historical information recorded during field job execution, utilizes a rule-based system to make adaptations, and then suggests the most appropriate solution for new well fracturing candidates. The technique was tested as a front-end tool using sample data from a tight gas field with significant hydraulic fracturing activity. This simple case demonstrates how case-based reasoning can be applied to improve hydraulic fracturing design, planning and execution of wells, thus significantly increasing the job execution success while avoiding known pitfalls. In addition, the work demonstrates the value of captured "on-site" experience and shows the advantages of using intelligent systems in decision-making.
机译:在过去的二十年中,软计算领域一直存在重大活动,专注于各种计算机范式,如神经网络,遗传算法和模糊逻辑,以更有效地解决复杂的工程问题。进一步的工作集中在整合这些范式中的两个或更多个范式并导致了所谓的“混合系统”。混合系统的力量依赖于技术旨在互相补充并利用各个优势来增强解决方案生成的事实。基于案例的推理(CBR)是另一个用于应对不确定性,大致推理和利用知识领域的另一软计算技术。基于案例的推理,也称为计算机推理是一种简单而实用的技术,通过将它们与过去已经解决的那些来解决新问题,从而节省时间和金钱。本文提供了一种基于案例的推理的一般框架,以及对特征技术(检索,重新使用,修订和培训)的四步循环的综述,其次是特定应用到骨折处理设计,规划和执行。所提出的方法提取在现场作业执行期间记录的相关历史信息,利用基于规则的系统来进行适应,然后为新的井压裂候选者建议最合适的解决方案。该技术用具有来自具有显着液压压裂活动的紧密气田的样品数据来测试该技术作为前端工具。这种简单的案例演示了如何应用基于案例的推理,以改善液压压裂设计,规划和执行井,从而显着提高工作执行成功,同时避免了已知的陷阱。此外,该工作表明捕获“现场”经验的价值,并显示了在决策中使用智能系统的优势。

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