AI4ESP——基于人工智能的ESP泵自动井监测技术

N. Rensburg
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引用次数: 3

摘要

在陆上油藏中使用人工举升设备进行采油,对于帮助维持产量下降的油田的产量变得越来越重要。因此,油田生产商依赖于人工举升设备的高效运行,确保设备的最大正常运行时间以连续生产石油变得越来越重要。利用电潜泵从深井中大量采油是目前应用广泛的人工举升方法之一。ESP是一种非常有效的人工举升方法,因为它具有将整个泵组和电动机直接浸入井液中的独特特性。然而,这需要对泵和电动机进行复杂的技术设计,以确保在地表以下数千进给量的安全运行。因此,有必要实施能够监控泵运行并通知操作人员可能导致设备故障的事件的系统。通常,esp连接到SCADA或其他分布式控制系统,为其有效运行和运行可见性提供监督和控制功能。目前,有许多诊断方法可以利用自动化系统中的功能来确定ESP系统的健康状况和状态。然而,虽然这些方法可以提供对问题的深刻分析,但它们通常需要对能够及时响应警报通知或实施纠正措施的操作人员进行持续监控。ESP的正确操作在很大程度上取决于ESP现场操作人员的决策,以及他们根据自己的经验有效控制ESP车队的能力。作业人员的任务复杂性随着作业人员在任何给定时间点必须管理的ESP车队的规模而增加。但这种情况正在改变,人们正在努力通过实施数字支持系统来减少对人工操作员的依赖。随着人工智能(AI)与新型物联网(IoT)技术的结合,可以有效地利用由大数据集驱动的数据驱动分析来帮助作业者完成ESP作业。特别是,涉及深度学习和神经网络的人工智能技术,可以根据从系统收集的数据,非常有效地检测esp等复杂物理系统的异常行为,为修复或管理原因问题提供决策支持。使用人工智能技术的主要优势之一是它能够检测复杂系统中的异常行为。这种人工智能系统可以利用监控系统的实时过程数据来监控ESP系统,然后利用神经网络模型识别ESP泵的异常行为。本文讨论了这种基于人工智能的异常检测系统如何以扩展形式使用,以实现可以监控整个ESP船队的自主监控系统。自主监控系统的目的是通过对需要操作人员注意的ESP装置进行选择和优先排序来支持操作人员的监督任务。本文是先前一篇论文的延续,该论文讨论了使用人工智能实现esp预测性维护系统的可能性。本文进一步阐述了使用预测性维护解决方案的ESP系统自主监控解决方案的实施,并解释了如何将人工智能技术与基于云的物联网平台相结合来实现它。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI4ESP - Autonomous Well Surveillance for ESP Pumps Using Artificial Intelligence
The use of artificial lift equipment for oil production in onshore reservoirs is becoming increasingly more important to help sustain the production rates of declining oil fields. Oil field producers therefore depend on the efficient operation of the artificial lift equipped and it is becoming increasingly more important to ensure maximum uptime of the equipment for the continuous production of oil. One of the widely used methods for artificial lift is using Electrical Submersible Pumps to produce high volumes from deep oil wells. The ESP is a very effective method of artificial lift due to its unique characteristic of having the complete pump assembly and electrical motor submersed directly in the well fluid. This however requires a complex technical design of the pump and electrical motor to ensure safe operation several thousand feed below surface. It is therefore necessary to implement systems that can monitor the pump operation and notify the operator of events that will result in failure of the equipment. 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 require constant monitoring of a human operator who is able to react in time to alarm notifications or implement corrective action. The correct operation of the ESP largely depends on the decisions made by the ESP field operator and his ability to effectively control the ESP fleet based on his experience. The complexity of the operator’s task increases with the size of the of ESP fleet that the operator must manage at any given point in time. But this situation is changing, with efforts being made to reduce the dependency on the human operator by implementing digital support systems. 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 to assist the operator with the task of operating ESP fleets. 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. One of the primary advantages of using AI technology is its ability to detect abnormal behavior in complex systems. Such an AI system can be implemented to monitor ESP systems using the real-time process data from the Supervisory system and then using a neural network model identify abnormal ESP pump behavior. The paper discuss how such an AI based anomaly detection systems can be used in a extended form to implemented an autonomous surveillance system which can monitor and entire ESP fleet. The purpose of the autonomous surveillance system is to support the operator in his supervisory tasks by doing the selection and prioritization of ESP units that requires operator attention. This paper is a continuation of an earlier paper which discussed the possibility to implement a predictive maintenance system for ESPs using AI. This paper further elaborates the implementation of an autonomous surveillance solution for ESP systems using the predictive maintenance solution and explain how it can be implemented using AI technology in combination with a cloud-based IoT platform.
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