Integrating Downhole Temperature Sensing Datasets and Visual Analytics for Improved Gas Lift Well Surveillance

O. Bello, D. Bale, Lei Yang, D. Yang, Ajish Kb, Murali Lajith, S. Lazarus
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引用次数: 3

Abstract

Given the near ubiquity of fiber-optic, information and communication technologies in reservoir and well management, there is a significant need for one-stop shop downhole distributed sensing data analysis methods together with machine learning techniques towards autonomous analysis of such data sources. However, traditional approaches of converting distributed temperature sensor (DTS) data to actionable insights for optimizing gas lift well operations management remain dependent on training based on human annotations. Annotation of downhole distributed temperature sensor data is a laborious task that is not feasible in practice to train a big data classification algorithm for accurate and reliable anomaly detection of gas lift valves. Furthermore, even obtaining training examples for event diagnosis is challenging due to the rarity of some gas lift valve problems. In gas lift well surveillance, it is essential to generate real-time results to allow a swift response by an engineer to prevent harmful consequences of gas lift valve failure onsets on well performance. The online learning capabilities, also mean that the data classification model can be continuously updated to accommodate reservoir changes in the well environment. In this paper, we propose a novel online real-time DTS data visual analytics platform for gas lift wells using big data tools. The proposed system combines Apache Kafka for data ingestion, Apache Spark for in-memory data processing and analytics, Apache Cassandra for storing raw data and processed results, and INT geo toolkit for data visualization. Specifically, the data analytics pipeline uses data mining algorithms to statistically learn features from the DTS measurements. The learned features are used as inputs to a k-means algorithm and then use supervised learning to predict the performance status of gas lift valves and raise alarms based on analytics-based intelligent warning system. The performance of the proposed system architecture for detecting gas lift valve anomaly is evaluated under varying deployment scenarios. To the best of our knowledge, DTS data analytics pipeline system has not been used for real-time anomaly detection in gas lift well operations.
集成井下温度传感数据集和可视化分析,改进气举井监测
鉴于光纤、信息和通信技术在油藏和井管理中几乎无处不在,因此迫切需要一站式的井下分布式传感数据分析方法以及机器学习技术,以实现对这些数据源的自主分析。然而,将分布式温度传感器(DTS)数据转换为优化气举井作业管理的可操作见解的传统方法仍然依赖于基于人工注释的培训。对井下分布式温度传感器数据进行标注是一项费力的工作,在实践中很难训练出准确可靠的气举阀异常检测大数据分类算法。此外,由于一些气举阀问题的罕见性,即使获得事件诊断的训练样例也具有挑战性。在气举井监测中,生成实时结果至关重要,以便工程师能够快速响应,以防止气举阀故障对井性能造成有害后果。在线学习功能也意味着数据分类模型可以不断更新,以适应井环境中储层的变化。在本文中,我们提出了一种基于大数据工具的气举井在线实时DTS数据可视化分析平台。该系统将Apache Kafka用于数据摄取,Apache Spark用于内存数据处理和分析,Apache Cassandra用于存储原始数据和处理结果,INT geo工具包用于数据可视化。具体来说,数据分析管道使用数据挖掘算法从DTS测量中统计地学习特征。将学习到的特征作为k-means算法的输入,然后使用监督学习来预测气举阀的性能状态,并基于基于分析的智能预警系统发出警报。在不同的部署场景下,评估了所提出的气举阀异常检测系统架构的性能。据我们所知,DTS数据分析管道系统尚未用于气举井作业的实时异常检测。
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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