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首页> 外文期刊>Journal of Petroleum Exploration and Production Technology >Data-driven approaches tests on a laboratory drilling system
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Data-driven approaches tests on a laboratory drilling system

机译:数据驱动的方法在实验室钻探系统上测试

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摘要

In recent years, considerable resources have been invested to exploit vast amounts of data that get collected during exploration, drilling and production of oil and gas. Data-related digital technologies potentially become a game changer for the industry in terms of reduced costs through increasing operational efficiency and avoiding accidents, improved health, safety and environment through strengthening situational awareness and so on. Machine learning, an application of artificial intelligence to offer systems/processes self-learning and self-driving ability, has been around for recent decades. In the last five to ten years, the increased computational powers along with heavily digitized control and monitoring systems have made machine learning algorithms more available, powerful and accurate. Considering the state-of-art technologies that exist today and the significant resources that are being invested into the technologies of tomorrow, the idea of intelligent and automated drilling systems to select best decisions or provide good recommendations based on the information available becomes closer to a reality. This study shows the results of our research activity carried out on the topic of drilling automation and digitalization. The main objective is to test the developed machine learning algorithms of formation classification and drilling operations identification on a laboratory drilling system. In this paper, an algorithm to develop data-driven models based on the laboratory data collocated in many scenarios (for instance, drilling different formation samples with varying drilling operational parameters and running different operations) is presented. Moreover, a testing algorithm based on data-driven models for new formation detection and confirmation is proposed. In the case study, results on multiple experiments conducted to test and validate the developed machine learning methods have been illustrated and discussed.
机译:近年来,已投入相当大的资源来利用在勘探,钻井和生产过程中收集的大量数据。数据相关的数字技术通过增加运营效率,避免事故,通过加强情境意识等,通过提高业务效率,提高健康,安全和环境,可能成为业界的游戏更换器。机器学习,人工智能提供系统/过程自学和自动驱动能力的应用,近几十年来了。在过去的五到十年中,增加的计算力随着重大数字化的控制和监测系统已经使机器学习算法更具可用,强大和准确。考虑到今天存在的最先进的技术以及投资明天的技术的重要资源,智能和自动化钻井系统的想法,以选择最佳决策或根据可用信息提供良好的建议变得更接近A现实。本研究显示了我们对钻井自动化和数字化主题进行的研究活动的结果。主要目的是在实验室钻井系统上测试形成分类和钻井操作识别的发发机器学习算法。在本文中,提出了一种基于许多场景(例如,利用不同钻井操作参数和运行不同操作的不同地层样本来开发数据驱动模型的算法。此外,提出了一种基于数据驱动模型的用于新形成检测和确认的测试算法。在案例研究中,对测试和验证发发的机器学习方法进行了多个实验的结果已经说明和讨论。

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