基于多元时间序列机器学习分类器的海上油井流动不稳定性检测

Bruno Guilherme Carvalho, Ricardo Emanuel Vaz Vargas, R. M. Salgado, C. J. Munaro, F. M. Varejão
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引用次数: 6

摘要

在海上石油勘探中,海底系统容易受到各种不良事件或故障的影响,在这种情况下油井的运行被认为是异常的。为了减少停机时间、维护成本,甚至是对设备的损坏,对此类事件进行适当的检测和分类至关重要。流动失稳是一种与油气多相流动有内在联系的事件,是设备受力和失效的根本原因。本文研究了将二元机器学习分类器应用于现实世界捕获的数据,用于流量不稳定故障检测。考虑了四种不同的评估方案。机器学习研究界使用的最常见场景表明,即使是简单的算法也可以达到很高的分类性能。然而,其余的场景试图避免相似偏差问题,并显示更现实的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flow Instability Detection in Offshore Oil Wells with Multivariate Time Series Machine Learning Classifiers
In offshore petroleum exploration, subsea systems are susceptible to a variety of undesirable events or faults, in which oil wells operation is considered abnormal. Proper detection and classification of such events is crucial in order to reduce downtime, maintenance costs, and even damage to installations. Flow instability is a type of event inherently related to hydrocarbon multiphase flow and root cause of equipment stress and failure. This work investigates applying binary machine learning classifiers on real world captured data for the task of flow instability fault detection. Four different evaluation scenarios were considered. The mostly common scenarios used by the machine learning research community showed that even simple algorithms can reach high classification performance. The remaining scenarios, however, try to avoid the similarity bias problem and showed more realistic results.
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