Application of Artificial Intelligence and Machine Learning to Detect Drilling Anomalies Leading to Stuck Pipe Incidents

P. Bimastianto, S. Khambete, Hamdan Mohamed Alsaadi, S. A. Al Ameri, Erwan Couzigou, A. Al-Marzouqi, F. A. Ameri, Said Aboulaban, Husam Khater, P. Herve
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引用次数: 1

Abstract

This project used predictive analytics and machine learning-based modeling to detect drilling anomalies, namely stuck pipe events. Analysis focused on historical drilling data and real-time operational data to address the limitations of physics-based modeling. This project was designed to enable drilling crews to minimize downtime and non-productive time through real-time anomaly management. The solution used data science techniques to overcome data consistency/quality issues and flag drilling anomalies leading to a stuck pipe event. Predictive machine learning models were deployed across seven wells in different fields. The models analyzed both historical and real-time data across various data channels to identify anomalies (difficulties that impact non-productive time). The modeling approach mimicked the behavior of drillers using surface parameters. Small deviations from normal behavior were identified based on combinations of surface parameters, and automated machine learning was used to accelerate and optimize the modeling process. The output was a risk score that flags deviations in rig surface parameters. During the development phase, multiple data science approaches were attempted to monitor the overall health of the drilling process. They analyzed both historical and real-time data from torque, hole depth and deviation, standpipe pressure, and various other data channels. The models detected drilling anomalies with a harmonic model accuracy of 80% and produced valid alerts on 96% of stuck pipe and tight hole events. The average forewarning was two hours. This allowed personnel ample time to make corrections before stuck pipe events could occur. This also enabled the drilling operator to save the company upwards of millions of dollars in drilling costs and downtime. This project introduced novel data aggregation and deep learning-based normal behavior modeling methods. It demonstrates the benefits of adopting predictive analytics and machine learning in drilling operations. The approach enabled operators to mitigate data issues and demonstrate real-time, high-frequency and high-accuracy predictions. As a result, the operator was able to significantly reduce non-productive time.
应用人工智能和机器学习检测导致卡钻事故的钻井异常
该项目使用预测分析和基于机器学习的建模来检测钻井异常,即卡钻事件。分析侧重于历史钻井数据和实时作业数据,以解决基于物理建模的局限性。该项目旨在通过实时异常管理,使钻井人员能够最大限度地减少停机时间和非生产时间。该解决方案使用数据科学技术来克服数据一致性/质量问题,并标记导致卡钻事件的钻井异常。预测机器学习模型应用于不同油田的7口井。这些模型分析了各种数据通道上的历史和实时数据,以识别异常情况(影响非生产时间的困难)。该建模方法利用地面参数模拟了钻井人员的行为。根据表面参数组合识别出与正常行为的小偏差,并使用自动化机器学习来加速和优化建模过程。输出是一个风险评分,标记了钻机表面参数的偏差。在开发阶段,尝试了多种数据科学方法来监测钻井过程的整体健康状况。他们分析了扭矩、井深、井斜、立管压力和其他各种数据通道的历史和实时数据。该模型检测钻井异常的谐波模型准确率为80%,并对96%的卡钻和紧孔事件产生有效警报。平均预警时间为两小时。这使得工作人员有充足的时间在卡钻事件发生之前进行纠正。这也为钻井公司节省了数百万美元的钻井成本和停机时间。该项目引入了新的数据聚合和基于深度学习的正常行为建模方法。它展示了在钻井作业中采用预测分析和机器学习的好处。该方法使作业者能够减轻数据问题,并展示实时、高频和高精度的预测。因此,作业者能够显著减少非生产时间。
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