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Usage of Artificial Intelligence to Reduce Operational Disruptions of ESPs by Implementing Predictive Maintenance

机译:通过实施预测性维护,使用人工智能降低esps的运营中断

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The use of electrical submersible pumps (ESPs) is a highly effective artificial lift method for boosting oil production from wells operating in both onshore and offshore fields. When an ESP is deployed, its complete pump and electrical motor assembly is positioned below the surface within the oil reservoir that the well has tapped. Once deployed, the ESPs must be carefully maintained to be highly reliable and always available to prevent costly production disruptions due to unexpected pump failures. Typically, ESPs are connected to SCADA or other distributed control systems to provide supervisory and control functions for their effective operation as well as for operational visibility. Today, many diagnostic methods are available to determine the health and status of an ESP system by making use of that functionality in its automation system. However, while these methods can provide insightful analysis of problems, they usually only provide retrospective views after failure events have occurred. But this situation is changing. With recent advances in artificial intelligence (AI) combined with the new Internet of Things (IoT) technologies, it is possible to effectively use data-driven analytics fueled by large data sets. In particular, AI technology that involves deep learning and neural networks can be extremely effective in detecting abnormal behavior of complex physical systems such as ESPs, based on the data gathered from the system, providing decision support for remediating or managing the causative issues. This paper focuses on the results of implementing this AI technology combination to detect, flag, and remediate abnormal behavior for ESPs, which can increase their availability and prevent production disruptions. The subject use case involved 30 ESPs, with pumps ranging from 200-500 kW in power, installed in a medium-depth onshore oil field. The paper discusses the architecture of the solution that was deployed and explain how it supports a predictive maintenance model that is capable of accurately identifying abnormal ESP operating behaviors in advance before an ESP can fail and disrupt production.
机译:电气潜水泵(ESP)的使用是一种高效的人工升力方法,用于从陆上和海上田地运行的井中提升油生产。当展开ESP时,其完整的泵和电动机组件位于井中的油藏内的表面下方。一旦部署,必须仔细维护ESPS以高度可靠,并且始终可用于防止由于意外的泵故障导致的昂贵的生产中断。通常,ESP与SCADA或其他分布式控制系统连接,以提供监督和控制功能,以实现其有效操作以及操作可见性。如今,许多诊断方法可以通过在其自动化系统中使用该功能来确定ESP系统的健康和状态。但是,虽然这些方法可以提供富有洞察力的问题分析,但通常只在发生故障事件后才能提供回顾性视图。但这种情况正在发生变化。随着最近人工智能(AI)的进步结合了新的东西(IOT)技术,可以有效地使用由大数据集推动的数据驱动的分析。特别地,涉及深度学习和神经网络的AI技术可以基于从系统收集的数据来检测诸如ESP的复杂物理系统的异常行为非常有效,从而提供针对修复或管理致病问题的决策支持。本文重点介绍实施此AI技术组合以检测,标志和修复ESP的异常行为,这可以提高其可用性并防止生产中断。主题用例涉及30个ESP,泵在200-500千瓦的电源范围内,安装在中度陆上油田中。本文讨论了部署的解决方案的架构,并解释了它如何支持预测维护模型,该模型能够在ESP可能失败和破坏生产之前先进于预先识别异常ESP操作行为。

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