通过实时学习,在钻头之前进行实时钻井扭矩预测

IF 6.1 1区 工程技术 Q2 ENERGY & FUELS Petroleum Science Pub Date : 2025-01-01 Epub Date: 2024-12-15 DOI:10.1016/j.petsci.2024.12.014
Kan-Kan Bai , Mao Sheng , Hong-Bao Zhang , Hong-Hai Fan , Shao-Wei Pan
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引用次数: 0

摘要

数字孪生体作为自动化钻井系统的决策中心,结合物理或数据驱动模型来预测系统响应(钻速、井下循环压力、钻井扭矩等)。实时钻井扭矩预测有助于优化钻井参数,稳定钻柱,并比较观测信号与理论趋势之间的差异,从而发现井下异常。由于无法处理大量的时间序列数据,当前的机器学习技术不适合在线预测钻井扭矩。为此,提出了一种新的方法——即时学习(jit)框架和局部机器学习模型来解决这一问题。该方法的步骤是:(1)设计一个特定的度量来衡量时间序列钻井数据与钻头前预测情景之间的相似性;(2)选取部分钻井数据,分别训练特定预测场景的局部模型;(3)利用局部机器学习模型预测钻头前钻扭矩。模型数据测试结果和现场数据应用结果都证明了该方法相对于传统滑动窗口方法的优越性。实践证明,该方法在钻井参数优化和卡钻趋势检测方面是有效的。最后,根据测试结果,对局部机器学习算法的选择和使用该方法进行实时预测提出了建议。
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Real-time drilling torque prediction ahead of the bit with just-in-time learning
The digital twin, as the decision center of the automated drilling system, incorporates physical or data-driven models to predict the system response (rate of penetration, down-hole circulating pressure, drilling torques, etc.). Real-time drilling torque prediction aids in drilling parameter optimization, drill string stabilization, and comparing the discrepancy between observed signal and theoretical trend to detect down-hole anomalies. Due to their inability to handle huge amounts of time series data, current machine learning techniques are unsuitable for the online prediction of drilling torque. Therefore, a new way, the just-in-time learning (JITL) framework and local machine learning model, are proposed to solve the problem. The steps in this method are: (1) a specific metric is designed to measure the similarity between time series drilling data and scenarios to be predicted ahead of bit; (2) parts of drilling data are selected to train a local model for a specific prediction scenario separately; (3) the local machine learning model is used to predict drilling torque ahead of bit. Both the model data test results and the field data application results certify the advantages of the method over the traditional sliding window methods. Moreover, the proposed method has been proven to be effective in drilling parameter optimization and pipe sticking trend detection. Finally, we offer suggestions for the selection of local machine learning algorithms and real-time prediction with this approach based on the test results.
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来源期刊
Petroleum Science
Petroleum Science 地学-地球化学与地球物理
CiteScore
7.70
自引率
16.10%
发文量
311
审稿时长
63 days
期刊介绍: Petroleum Science is the only English journal in China on petroleum science and technology that is intended for professionals engaged in petroleum science research and technical applications all over the world, as well as the managerial personnel of oil companies. It covers petroleum geology, petroleum geophysics, petroleum engineering, petrochemistry & chemical engineering, petroleum mechanics, and economic management. It aims to introduce the latest results in oil industry research in China, promote cooperation in petroleum science research between China and the rest of the world, and build a bridge for scientific communication between China and the world.
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