钻孔

泥浆泵普遍适用的基于状态的维护系统的现场验证

使用声发射传感器和深度学习模型开发了一种通用的、自动化的钻机泥浆泵状态维护方法,可以提前发现泵故障,从而有助于缓解和减少通常与灾难性泵故障相关的成本和非生产时间。

泥浆从管内流出
来源:panic_attack/Getty Images

尽管泥浆泵被视为关键的钻机设备,但目前其健康监测仍然依赖于不频繁的人工观察和监测。这种方法通常无法在早期阶段检测到泵损坏,当初始损坏加剧并且泵意外发生灾难性故障时,会导致非生产时间 (NPT) 和井建造成本增加。迄今为止,由于缺乏适用于任何泵类型和/或操作条件的通用解决方案,泥浆泵的基于状态的维护 (CBM) 的自动化方法失败了。

本文介绍了一种经过现场验证的普遍适用的泥浆泵 CBM 解决方案。该系统使用包括声发射传感器和加速度计的传感器包,结合异常检测深度学习数据分析来查明泵及其组件的任何异常行为。深度学习模型仅使用未损坏的正常状态数据进行训练,并计算出表征泥浆泵损坏程度的损坏分数,以识别最早的损坏迹象。然后,系统可以生成警报,通知钻井人员关键泥浆泵组件的损坏程度,促使他们采取主动维护措施。

在美国德克萨斯州西部钻探非常规页岩井和日本钻探地热井(即两种截然不同的钻探作业)时进行了现场测试,以验证所开发的泵式 CBM 解决方案的可行性和普遍适用性。传感器被连接到泵模块上,并在钻探作业期间使用深度学习模型收集和分析数据。在现场测试期间,对不同的超参数和特征进行了比较,以选择最有效的超参数和特征来识别损坏,同时提供较低的误报率(即正常状态下泵运行期间的误报)。该系统只需要几个小时的正常状态数据进行训练,而无需先前的泵信息。此外,它正确识别了泵、抽吸器和阀门的退化,并在钻井人员实际采取泵维护行动前几个小时(在 0.5-17 小时范围内)发出早期警报。

这种普遍适用的泵 CBM 系统消除了人工观察泥浆泵健康状况时可能出现的环境、健康和安全问题,并避免了与灾难性泵故障相关的不必要的 NPT。该系统的最终版本将是一个完全独立的磁性连接盒,其中包含传感器和处理器,可生成简单的指标,以便在需要时推荐主动的泵维护任务。


本摘要摘自德克萨斯大学奥斯汀分校的 D. Yoon、P. Ashok 和 E. van Oort、Nabors Industries 的 P. Annaiyappa 以及日本金属和能源安全组织的 S. Abe 和 A. Ebitani 撰写的论文 SPE 212564。该论文已通过同行评审,可在 OnePetro 上的 SPE 期刊上以开放获取形式获取。

原文链接/JPT
Drilling

Field Validation of a Universally Applicable Condition-Based Maintenance System for Mud Pumps

A universal, automated approach to condition-based maintenance of drilling rig mud pumps is developed using acoustic emission sensors and deep learning models for early detection of pump failures to help mitigate and reduce costs and nonproductive time generally associated with catastrophic pump failures.

Mud flow from tube
Source: panic_attack/Getty Images

Although mud pumps are considered critical rig equipment, their health monitoring currently still relies on infrequent human observation and monitoring. This approach often fails to detect pump damage at an early stage, resulting in nonproductive time (NPT) and increased well construction costs when initial damage progresses and pumps go down unexpectedly and catastrophically. Automated approaches to condition-based maintenance (CBM) of mud pumps to date have failed due to the lack of a generalized solution applicable to any pump type and/or operating conditions.

This paper presents a field-validated universally applicable solution to mud pump CBM. The system uses a sensor package that includes acoustic emission sensors and accelerometers in combination with anomaly detection deep learning data analysis to pinpoint any abnormal behavior of the pump and its components. The deep learning models are trained with undamaged normal state data only, and a damage score characterizing the extent of damage to the mud pump is calculated to identify the earliest signs of damage. The system can then generate alerts to notify the rig crew of the damage level of key mud pump components, prompting proactive maintenance actions.

Field tests were conducted while drilling an unconventional shale well in west Texas, USA, and a geothermal well in Japan (i.e., two very different drilling operations) to verify the feasibility and general applicability of the developed pump CBM solution. Sensors were attached to pump modules, and data were collected and analyzed using the deep learning models during drilling operations. During the field tests, different hyperparameters and features were compared to select the most effective ones for identifying damage while at the same time delivering low false positive rates (i.e., false alarms during normal state pump operation). The system required only several hours of normal state data for training with no prior pump information. Moreover, it correctly identified the degradation of the pump, swabs, and valves and produced early alerts several hours (in the range of 0.5–17 hours) before actual pump maintenance action was taken by the rig crew.

This generally applicable pump CBM system eliminates the environmental, health, and safety concerns that can occur during human-based observations of mud pump health and avoids unnecessary NPT associated with catastrophic pump failures. The final version of this system will be a fully self-contained magnetically attachable box containing sensors and a processor, generating simple indicators for recommending proactive pump maintenance tasks when needed.


This abstract is taken from paper SPE 212564 by D. Yoon, P. Ashok, and E. van Oort, The University of Texas at Austin; P. Annaiyappa, Nabors Industries; and S. Abe and A. Ebitani, Japan Organization for Metals and Energy Security. The paper has been peer reviewed and is available as Open Access in SPE Journal on OnePetro.