利用机器学习识别钻井过程中的异常冲击特征

M. Ignova, Justo Matheus, D. Amaya, E. Richards
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引用次数: 3

摘要

钻井产生的冲击和振动(扭转、轴向和横向)是钻井行业失效的主要原因之一;因为它们会影响钻进速度、定向控制和井筒质量。旋转导向系统工具配备了测量设备,如磁力计、加速度计、冲击和振动传感器,从中获得统计信息,如均方根误差、最大峰值和峰值水平。从这些统计数据中,可以推断出旋转、钻头反弹和粘滑严重程度。通常,导出的统计数据不足以区分井筒中某个位置的正常钻井与异常钻井,也不足以确定冲击和振动是否是钻井作业不当、地层扰动或井底钻具组合(包括钻头)机械故障的结果。采用机器学习方法对高频径向冲击突发数据进行分析,对数据进行压缩分类;即良好钻进和异常钻进。该方法能够进一步将数据聚类为旋转或无旋转、位反弹或无位反弹、地层变化或无变化和/或故障设备和部件;因此,有助于对现有数据集进行可靠的故障后分析,实时防止灾难性故障,并改善轨迹控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing Abnormal Shock Signatures During Drilling with Help of Machine Learning
Drilling generated shocks and vibrations (torsional, axial, and lateral) are among the main causes of failures in the drilling industry; because they affect the rate of penetration, directional control, and wellbore quality. Rotary steerable system tools are equipped with measurement devices such as magnetometers, accelerometers, and shocks and vibration sensors from which statistical information is obtained, such as root-mean squared error, maximum peaks, and peak levels. From these statistics, whirl, bit bounce, and stick/slip severity are inferred. Often, the derived statistics are not enough to distinguish between normal drilling versus abnormal drilling for a location in the wellbore or to determine whether the shocks and vibrations are the result of poor drilling practice, formation disturbances, or mechanical failures of the bottomhole assembly, including the bit. Machine learning methods were used for analyzing the high-frequency radial shock burst data, which compresses and classifies the data; i.e., good drilling and abnormal drilling. The method is capable of further clustering the data into whirl or no whirl, bit-bounce or no bit-bounce, formation change or no change, and/or faulty equipment and parts; thus, assist in the robust post-failure analysis of existing data sets and prevent catastrophic failures in real time and improve the trajectory control.
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