钻孔

钻井自动化与创新 - 2024

近年来,运营商和服务公司通过加速数字解决方案的部署,优化了钻井活动并降低了运营成本。在其他应用中,预测数据分析通常用于估计岩石特性、减少操作不确定性、改进设备维护流程以及优化特定任务的稀缺人力资源。

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近年来,运营商和服务公司通过加速数字解决方案的部署,优化了钻井活动并降低了运营成本。在其他应用中,预测数据分析通常用于估计岩石特性、减少操作不确定性、改进设备维护流程以及优化特定任务的稀缺人力资源。因此,旨在最大限度地发挥数据价值和新机器学习模型以了解复杂操作和世界各地不同水平的钻井自动化的举措数量之多也就不足为奇了。

本月精选的技术论文重点介绍了在不同地区实施的一些有趣的示例。

如今,可持续性已成为创新的关键驱动力。通过潜在更大规模地应用具有经证实的切实影响的新兴解决方案,可以加速我们行业脱碳的复杂进程。例如,钻机和设备自动化已成为现实,能够降低钻井作业中的排放,并有助于获得改进和更一致的结果。论文SPE 216249IPTC 22975说明了不同项目中实际收益的示例。

以最短的时间要求从多个来源收集、处理、组织和理解钻井信息的任务仍然是改进项目管理决策的机会。OTC 32978论文描述了一个使用人工智能对每日钻井报告进行自动分类的案例,以促进更好的规划和准确的风险分析。

值得强调的是,扩展现实作为一种不断增长且有前途的替代方案,在油井建设方面具有尚未开发的潜力,它的重要性,主要是作为主动学习的资源和多学科团队之间的协作工具。附加推荐读物中包含的论文SPE 212532对与钻井作业相关的当前应用和未来的挑战进行了有趣的概述。

本月的技术论文

钻机自动化助力厄瓜多尔油井建设

基于人工智能的系统自动对每日钻井报告进行文本分类

自主钻井方法在中东油井中使用旋转导向系统

推荐补充阅读

SPE 217113 钻井时实时预测基本岩石特性的机器学习技术, 作者:澳大利亚大学 KW Amadi 等人。

SPE 212532 Crispin Chatar、SLB 等人的钻井扩展现实和游戏化。

SPE 213043 用于数据驱动的渗透建模钻速预测分析的集成机器学习:伊拉克南部油田的案例研究,作者: Dhuha T. Al-Sahlanee, BP 等人。

Danny Ochoa, SPE,在 SLB 工作,担任西半球钻井领域的冠军。他在石油和天然气行业活跃了 21 年多,之前曾在巴西、哥伦比亚、墨西哥湾、墨西哥和委内瑞拉的各种钻井项目中担任过职务。奥乔亚领导了技术解决方案和流程的实施,以提高陆地和海上作业的钻井性能。他拥有赫瑞瓦特大学 MBA 学位和哥伦比亚美国大学石油工程学士学位。奥乔亚是JPT编辑审查委员会的成员。

原文链接/jpt
Drilling

Drilling Automation and Innovation-2024

In recent years, operators and service companies have optimized drilling activities and reduced operational costs by accelerating the deployment of digital solutions. Among other applications, predictive data analytics are commonly used to estimate rock properties, reduce operational uncertainty, improve equipment maintenance processes, and optimize scarce human resources on specific tasks.

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In recent years, operators and service companies have optimized drilling activities and reduced operational costs by accelerating the deployment of digital solutions. Among other applications, predictive data analytics are commonly used to estimate rock properties, reduce operational uncertainty, improve equipment maintenance processes, and optimize scarce human resources on specific tasks. Not surprising, then, is the number of initiatives to maximize the value of data and new machine-learning models to understand complex operations and the different levels of drilling automation around the world.

The selection of technical papers for this month highlights some interesting examples implemented in diverse geographies.

Sustainability appears today as a key driver for innovation. The complex process of decarbonization of our industry can be accelerated with the potential larger-scale application of emerging solutions with proven tangible impact. For instance, rig and equipment automation are a reality, with the capacity to lower emissions in drilling operations and help obtain improved and more-consistent results. Papers SPE 216249 and IPTC 22975 illustrate examples of actual benefits in different projects.

The task of collecting, processing, organizing, and making sense of drilling information from multiple sources with minimum time requirements remains an opportunity for improved decision-making in project management. Paper OTC 32978 describes one case with the use of artificial intelligence for automatic classification of daily drilling reports as an enabler for better planning and accurate risk analysis.

Worth emphasizing is the importance of extended reality as a growing and promising alternative with untapped potential in well construction, mainly as a resource for active learning and a collaboration tool among multidisciplinary teams. Paper SPE 212532, included in the additional recommended reading, gives an interesting overview of current applications associated with drilling operations and challenges ahead.

This Month’s Technical Papers

Rig Automation Empowers Well Construction in Ecuador

AI-Based System Automates Textual Classification of Daily Drilling Reports

Autonomous Drilling Approach Uses Rotary Steerable System in Middle East Wells

Recommended Additional Reading

SPE 217113 Machine-Learning Techniques for Real-Time Prediction of Essential Rock Properties While Drilling by K.W. Amadi, Australian University, et al.

SPE 212532 Extended Reality and Gamification for Drilling by Crispin Chatar, SLB, et al.

SPE 213043 Ensemble Machine Learning for Data-Driven Predictive Analytics of Drilling Rate of Penetration Modeling: A Case Study in a Southern Iraqi Oil Field by Dhuha T. Al-Sahlanee, BP, et al.

Danny Ochoa, SPE, works for SLB as drilling domain champion in the western hemisphere. He has been active in the oil and gas industry for more than 21 years, with previous assignments in a wide variety of drilling projects in Brazil, Colombia, the Gulf of Mexico, Mexico, and Venezuela. Ochoa has led the implementation of technological solutions and processes to drive drilling performance in land and offshore operations. He holds an MBA degree from Herriot-Watt University and a bachelor’s degree in petroleum engineering from Universidad de America at Colombia. Ochoa is a member of the JPT Editorial Review Board.