使用机器学习诊断和预测有杆泵的问题

P. Bangert
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引用次数: 1

摘要

世界上大约20%的油井使用梁式泵将原油提升到地面。因此,这些泵的适当维护是油田作业中的一个重要问题。我们希望知道,最好是在故障发生之前,泵出了什么问题。根据行程阀的位移和载荷图,可以可靠地诊断出梁泵井下部分的维护问题;称为测功卡的图表。我们在本文中证明,这种分析可以完全自动化,使用机器学习技术,在故障发生之前教会自己识别各种类型的损坏。我们使用了来自巴林油田299个束流泵的35292个样本卡的数据集。我们可以以99.9%的准确率检测出11种不同的伤害类别。这种高精度使得实时自动诊断光束泵成为可能,维护人员可以专注于固定泵而不是监控泵,从而提高了总产量并减少了对环境的影响。
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Diagnosing and Predicting Problems with Rod Pumps using Machine Learning
Approximately 20% of all oilwells in the world use a beam pump to raise crude oil to the surface. The proper maintenance of these pumps is thus an important issue in oilfield operations. We wish to know, preferably before the failure, what is wrong with the pump. Maintenance issues on the downhole part of a beam pump can be reliably diagnosed from a plot of the displacement and load on the traveling valve; a diagram known as a dynamometer card. We demonstrate in this paper that this analysis can be fully automated using machine learning techniques that teach themselves to recognize various classes of damage in advance of the failure. We use a dataset of of 35292 sample cards drawn from 299 beam pumps in the Bahrain oilfield. We can detect 11 different damage classes from each other and from the normal class with an accuracy of 99.9%. This high accuracy makes it possible to automatically diagnose beam pumps in real-time and for the maintenance crew to focus on fixing pumps instead of monitoring them, which increases overall oil yield and decreases environmental impact.
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