用于钻头性能评估,分析和监测的自动偏移

Greg Skoff, David Fink, A. Poor, O. Gjertsen, Preston Wolfram, R. Santana, R. Ford
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引用次数: 0

摘要

利用大型钻井数据需要一种创新的方法。该服务公司的钻头业务主要基于内部钻井记录系统(DRS),该系统捕获全球钻头记录性能数据。自1980年以来,DRS包含了全球超过180万口井,来自100多个国家的BHA总数近540万次。仅在过去的10年里,就记录了超过140万次的钻头钻入超过28亿英尺的地层。为了利用大量数据进行钻头性能评估、分析和监测,开发并实施了本文中描述的创新方法。传统上,钻头的性能——通常以进尺和rop来衡量——已经与类似的邻井下入进行了评估。偏置钻进的选择有多种方式,但通常由钻头工程师手动完成,这意味着偏置钻进的选择是基于个人经验和偏见的主观选择。此外,人们往往只评估测试钻头设计的性能。相反,我们想要分析和监控所有钻头的性能。为了减轻这些偏差,扩大考虑的井眼范围,DRS开发并实施了一个客观的偏置井眼选择工作流程。井段的选择基于复杂的过滤和评分程序,考虑了地理位置、时间、井筒和钻井系统设计以及岩性等诸多特征。随着新数据不断输入DRS,该工作流程使用自动化管道定期运行。自动偏移选择工作流的性能评估结果可供DRS内部和可扩展应用程序中的所有数据分析师(工程师和销售人员)使用,以帮助进行性能监控和新产品开发目标设置。现在,产品性能被客观地评估为跨地域的规模,并且总是使用苹果对苹果的比较。工作流已经证明了自己非常有用,并且已经交付了业务价值,但也证明了对增强数据质量和改进位记录数据捕获率的需求。这些都是进一步加强和改进这一工作流程的持续努力。像这样的自动化工作流程可以通过消除重复的有偏见的任务来帮助我们的行业,并允许人们专注于利用客观数据的更具创造性的过程。开发新的钻头设计、材料选择或组件选择以克服新的挑战是创造性的过程,有助于提高钻井性能并降低行业成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Offsets for Drill Bit Performance Evaluation, Analysis, and Monitoring At-Scale
Utilizing big drilling data requires an innovative approach. The service company’s drill bits business is largely based upon an in-house drilling record system (DRS) that captures global bit record performance data. The DRS contains over 1.8 million wells drilled worldwide since 1980 with nearly 5.4 million total BHA runs from over 100 countries. In the last 10 years alone, over 1.4 million bit runs drilling over 2.8 billion ft of formation have been recorded. To utilize this vast amount of data for drill bit performance evaluation, analysis, and monitoring, the innovative approach described in this paper was developed and implemented. Traditionally, the performance of a drill bit run–often measured in terms of drilled footage and ROP–has been evaluated versus similar offset runs. Offset runs are chosen in various ways, but are typically done manually by bit engineers, meaning that offset run selection is subjective based on personal experience and bias. Furthermore, people often only evaluate the performance of test bit designs. Instead, we wanted to analyze and monitor the performance of all drill bit runs. To alleviate these biases and enable a wider breadth of considered runs, an objective offset run selection workflow was developed and implemented within DRS. Offset runs are selected based on a sophisticated filtering and scoring routine that considers many characteristics such as geographic location, time, wellbore and drilling system design, along with lithology. As new data enters DRS continuously, this workflow runs on a regular basis using an automated pipeline. The performance evaluation results of the automated offset selection workflow are available to all data analysts (engineers and salespeople) both inside DRS and extensible applications to aid in performance monitoring and new product development target-setting. Product performance is now objectively evaluated at-scale across geographies and always utilizing apples-to-apples comparisons. The workflow has proven itself quite useful and delivered business value already but also exemplifies the need for both enhanced data quality and improved bit record data capture rate. These are ongoing efforts to further enhance and improve this workflow. Automated workflows like this one can help our industry by eliminating repetitive biased tasks and allowing people to focus on more creative processes leveraging objective data. Developing new drill bit designs, material selections, or component selections to overcome new challenges are creative processes which contribute to increased drilling performance and lower costs for the industry.
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