Unsupervised machine learning model for predicting anomalies in subsurface safety valves and application in offshore wells during oil production

IF 2.4 4区 工程技术 Q3 ENERGY & FUELS Journal of Petroleum Exploration and Production Technology Pub Date : 2023-11-09 DOI:10.1007/s13202-023-01720-4
Pedro Esteves Aranha, Nara Angelica Policarpo, Marcio Augusto Sampaio
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Abstract

Abstract Predicting oil well behavior regarding the integrity of its equipment during production and anticipating behavioral changes and anomalies are among the main challenges in oil production. In this context, this study focuses on the development of predictive models for real-time monitoring of well behavior using sensor data from production wells. An unsupervised Novelty and Outlier Detection model has been introduced with a specific focus on predicting instances of unexpected subsurface safety valve closures in subsea wells. This model effectively classifies anomalies observed in these systems by leveraging real-world pressure and temperature data sourced from published literature. The methodology involves the implementation of a floating window for assembling training and test sets. Additionally, a comprehensive investigation is conducted into the impact of hyperparameters and the model’s threshold value (cp threshold). The results highlight the effectiveness of the developed model, observed through the accuracy achieved around 99.9% in predicting spurious closure events of the Downhole Safety Valve. On the same dataset, previous works reported 99.9% accuracy by using long short-term memory (LSTM) autoencoder, 87.1% by using random forest, and 60% with the Decision Tree method. Looking at F1-SCORE values, the developed model performs the best, followed by the LSTM model, both of which are significantly superior to the Decision Tree and random forest models. Furthermore, the model’s applicability is validated through testing in ultradeep water subsea wells within the pre-salt area of the Santos Basin. The significance lies in the potential for this research to enhance anomaly prediction in offshore wells, consequently reducing the costly interventions due to equipment malfunctions. Timely detection and corrective actions, facilitated by the model, can mitigate production loss and safeguard well integrity, addressing critical concerns in the oil and gas industry.

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井下安全阀异常预测的无监督机器学习模型及其在海上油井生产中的应用
如何预测油井在生产过程中设备的完整性,预测油井行为变化和异常是石油生产中的主要挑战之一。在这种情况下,本研究的重点是开发预测模型,利用生产井的传感器数据实时监测井的动态。引入了一种无监督的新奇值和离群值检测模型,该模型的重点是预测海底井中意外的地下安全阀关闭情况。该模型通过利用来自已发表文献的真实压力和温度数据,有效地对这些系统中观察到的异常进行分类。该方法包括实现一个用于组装训练集和测试集的浮动窗口。此外,对超参数和模型阈值(cp阈值)的影响进行了全面的研究。结果表明,该模型预测井下安全阀误闭事件的准确率达到99.9%左右。在相同的数据集上,以前的研究报告使用长短期记忆(LSTM)自编码器的准确率为99.9%,使用随机森林的准确率为87.1%,使用决策树方法的准确率为60%。从F1-SCORE值来看,开发的模型表现最好,其次是LSTM模型,两者都明显优于决策树和随机森林模型。此外,通过Santos盆地盐下区域的超深水海底井测试,验证了该模型的适用性。这项研究的意义在于,它有可能增强海上油井的异常预测,从而减少由于设备故障而导致的昂贵的干预措施。在该模型的帮助下,及时发现和纠正措施可以减少生产损失,保护油井完整性,解决油气行业的关键问题。
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来源期刊
CiteScore
5.90
自引率
4.50%
发文量
151
审稿时长
13 weeks
期刊介绍: The Journal of Petroleum Exploration and Production Technology is an international open access journal that publishes original and review articles as well as book reviews on leading edge studies in the field of petroleum engineering, petroleum geology and exploration geophysics and the implementation of related technologies to the development and management of oil and gas reservoirs from their discovery through their entire production cycle. Focusing on: Reservoir characterization and modeling Unconventional oil and gas reservoirs Geophysics: Acquisition and near surface Geophysics Modeling and Imaging Geophysics: Interpretation Geophysics: Processing Production Engineering Formation Evaluation Reservoir Management Petroleum Geology Enhanced Recovery Geomechanics Drilling Completions The Journal of Petroleum Exploration and Production Technology is committed to upholding the integrity of the scientific record. As a member of the Committee on Publication Ethics (COPE) the journal will follow the COPE guidelines on how to deal with potential acts of misconduct. Authors should refrain from misrepresenting research results which could damage the trust in the journal and ultimately the entire scientific endeavor. Maintaining integrity of the research and its presentation can be achieved by following the rules of good scientific practice as detailed here: https://www.springer.com/us/editorial-policies
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