基于相机的钻井动力学现场评估

Alexis Koulidis, Mohamed Abdullatif, Ahmed Galal Abdel-Kader, M. Ayachi, Shehab Ahmed, C. Gooneratne, A. Magana-Mora, Mike Affleck, M. Alsheikh
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引用次数: 1

摘要

地面数据测量和分析是检测钻柱低频扭振或粘滑的常用手段。该行业还开发了连接地面扭矩和井下钻头转速的模型。相机为现有的有线/无线传感器提供了一种非侵入性的方法来收集地面数据。本文介绍了利用基于摄像机的钻柱监测对钻井动力学进行初步现场评估的结果。使用计算机视觉技术和目标检测算法对视频中的事件进行检测和定时。提出了一种利用单应性估计和稀疏光流点跟踪的实时兴趣点跟踪器。我们使用经过训练的全卷积深度神经网络来检测兴趣点并计算其伴随的描述符。检测到的点和描述符在视频序列中进行匹配,并用于钻柱旋转检测和速度估计。当钻柱的振动肉眼不可见时,在点跟踪算法之前加入基于另一种深度卷积神经网络的运动放大函数。我们已经清楚地展示了基于摄像头的非侵入式地面钻柱动态数据采集和分析方法的潜力。通过实时目标检测算法在钻机视频馈送中的应用,实现了地面事件的检测和定时。我们还能够估计钻柱的旋转速度和运动曲线。扭钻柱模式可以识别,并与钻井参数和井底钻具组合设计相关联。提出了一种基于多点跟踪算法的振动阵列传感方法。利用振动阈值设置来实现额外的运动放大功能,为多尺度振动测量提供无缝评估。摄像头通常是用于获取图像/视频进行离线自动评估(最近)或在线手动监控(主要)的设备,这项工作表明,雾/边缘计算如何使这些摄像头成为“有意识”和“智能”的可能,因此在钻井平台的自动化/数字化中发挥关键作用。在这项工作中,我们展示了它们作为钻井动力学和钻机操作传感器的初步应用。摄像机是钻井环境的理想传感器,因为它们可以安装在钻井平台的任何地方,对钻井过程进行大规模的实时视频分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Field Assessment of Camera Based Drilling Dynamics
Surface data measurement and analysis are an established mean of detecting drillstring low-frequency torsional vibration or stick-slip. The industry has also developed models that link surface torque and downhole drill bit rotational speed. Cameras provide an alternative noninvasive approach to existing wired/wireless sensors used to gather such surface data. The results of a preliminary field assessment of drilling dynamics utilizing camera-based drillstring monitoring are presented in this work. Detection and timing of events from the video are performed using computer vision techniques and object detection algorithms. A real-time interest point tracker utilizing homography estimation and sparse optical flow point tracking is deployed. We use a fully convolutional deep neural network trained to detect interest points and compute their accompanying descriptors. The detected points and descriptors are matched across video sequences and used for drillstring rotation detection and speed estimation. When the drillstring's vibration is invisible to the naked eye, the point tracking algorithm is preceded with a motion amplification function based on another deep convolutional neural network. We have clearly demonstrated the potential of camera-based noninvasive approaches to surface drillstring dynamics data acquisition and analysis. Through the application of real-time object detection algorithms on rig video feed, surface events were detected and timed. We were also able to estimate drillstring rotary speed and motion profile. Torsional drillstring modes can be identified and correlated with drilling parameters and bottomhole assembly design. A novel vibration array sensing approach based on a multi-point tracking algorithm is also proposed. A vibration threshold setting was utilized to enable an additional motion amplification function providing seamless assessment for multi-scale vibration measurement. Cameras were typically devices to acquire images/videos for offline automated assessment (recently) or online manual monitoring (mainly), this work has shown how fog/edge computing makes it possible for these cameras to be "conscious" and "intelligent," hence play a critical role in automation/digitalization of drilling rigs. We showcase their preliminary application as drilling dynamics and rig operations sensors in this work. Cameras are an ideal sensor for a drilling environment since they can be installed anywhere on a rig to perform large-scale live video analytics on drilling processes.
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