Magnetic Sensors for Navigation of Untethered Downhole Robots

H. Seren, M. Deffenbaugh, Mohamed Larbi Zeghlache, A. Bukhamseen
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Abstract

Following the 4IR revolution, automation of oil and gas operations became a prime target. Various efforts have been put forward to create autonomous downhole tools which can increase the time and cost efficiency while reducing health and safety hazards. Navigation of the autonomous tools remains as one of the high barriers preventing these technologies from becoming available. This manuscript presents three new solutions we developed for our untethered autonomous logging tool to overcome this barrier. To increase the environmental self-awareness of downhole robots, we developed two technologies that will work together. The first technology is a low power miniaturized casing collar locator where a milimiter-size magnetometer chip and two 1-inch rod magnets are employed. The second technology is based on 1-D feature matching of residual magnetic fields generated by the steel casings. Here, two magnetometers are placed on the tool with a known separation along the direction of the motion. A correlation algorithm calculates the position and speed using the magnetic field logs. The low power miniaturized casing collar locator is placed on a wireline tool for the proof of concept demonstration. The tool was run in a water filled test well with 1450 feet depth. Decentralizers were used to keep the tool close to the casing wall. Clear peaks were observed at regular intervals. The detection depths were compared to a casing collar log run by a logging service company and one to one match was observed. The 1-D magnetic feature matching technology is demonstrated first by collecting residual magnetic field data from the same test well with a wireline tool. The collected signal was shifted in space and noise is added to mimic the difference with a second magnetometer. The matching algorithm was used to successfully find the shift between the two signals in time along the full log. This helped to estimate the speed of the tool which is used to calculate the position. Using information from the presented technologies, along with the data from other environmental sensors such as pressure and temperature will provide precise location that were not available before. The certainty will be improved by employing a Kalman filter that will integrate the sensor inputs. As in all autonomous vehicles, increasing the environmental self-awareness of autonomous downhole tools carries high importance for intelligent decision-making, successful and safe operation. Technologies fo surface applications, such as global positioning system, and radar may not be suitable for downhole environment. Therefore, new sensing technologies as we present here will accomplish these jobs for the robots operating below the surface.
用于无系留井下机器人导航的磁传感器
在第四次工业革命之后,油气作业的自动化成为主要目标。人们已经做出了各种努力来创造自主的井下工具,这些工具可以增加时间和成本效益,同时减少健康和安全危害。自动工具的导航仍然是阻碍这些技术应用的高障碍之一。本文介绍了我们为非拴式自主测井工具开发的三种新解决方案,以克服这一障碍。为了提高井下机器人的环境自我意识,我们开发了两种可以协同工作的技术。第一种技术是低功耗小型化套管接箍定位器,其中使用了一个毫米大小的磁力计芯片和两个1英寸的磁棒。第二种技术是基于钢套管产生的残余磁场的一维特征匹配。在这里,两个磁力计被放置在工具上,沿着运动方向有一个已知的分离。相关算法利用磁场测井计算位置和速度。低功耗小型化套管接箍定位器安装在电缆工具上,用于概念验证。该工具在一口1450英尺深的充满水的测试井中下入。分散器被用来保持工具靠近套管壁。每隔一段时间观察到清晰的峰。将探测深度与测井服务公司的套管接箍测井进行了比较,发现了一对一的匹配。通过使用电缆工具收集同一口测试井的剩余磁场数据,首先验证了一维磁特征匹配技术。收集到的信号在空间中移位,并加入噪声以模拟第二个磁力计的差异。利用匹配算法成功地找到了两个信号在全对数路上的时间位移。这有助于估计用于计算位置的工具的速度。利用现有技术的信息,以及来自压力和温度等其他环境传感器的数据,将提供以前无法获得的精确位置。通过采用集成传感器输入的卡尔曼滤波器,确定性将得到提高。与所有自动驾驶车辆一样,提高自动井下工具的环境自我意识对于智能决策、成功和安全运行具有重要意义。地面应用的技术,如全球定位系统和雷达,可能不适合井下环境。因此,我们在这里介绍的新传感技术将为在地表以下操作的机器人完成这些工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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