Effective Electrical Submersible Pump Management Using Machine Learning

S. Pham, Phien Vo, Dac Nhat Nguyen
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引用次数: 5

Abstract

Artificial lift plays an important role in petroleum industry to sustain production flowrate and to extend the lifespan of oil wells. One of the most popular artificial lift methods is Electric Submersible Pumps (ESP) because it can produce high flowrate even for wells with great depth. Although ESPs are designed to work under extreme conditions such as corrosion, high temperatures and high pressure, their lifespan is much shorter than expected. ESP failures lead to production loss and increase the cost of replacement, because the cost of intervention work for ESP is much higher than for other artificial lift methods, especially for offshore wells. Therefore, the prediction of ESP failures is highly valuable in oil production and contributes a lot to the design, construction and operation of oil wells. The contribution of this study is to use 3 machine learning algorithms, which are Decision Tree, Random Forest and Gradient Boosting Machine, to build predictive models for ESP lifespan while using both dynamic and static ESP parameters. The results of these models were compared to find out the most suitable model for the prediction of ESP life cycle. In addition, this study also evaluated the influence factor of various operating parameters to forecast the most impact parameters on the duration of ESP. The results of this study can provide a better understanding of ESP behavior so that early actions can be realized to prevent potential ESP failures.
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使用机器学习进行有效的电潜泵管理
人工举升在石油工业中发挥着维持生产流量、延长油井寿命的重要作用。电潜泵(ESP)是最流行的人工举升方法之一,因为它即使在深度很大的井中也能产生高流量。虽然esp设计用于在腐蚀、高温和高压等极端条件下工作,但它们的使用寿命比预期的要短得多。ESP故障不仅会导致生产损失,还会增加更换成本,因为ESP修井作业的成本远远高于其他人工举升方法,尤其是海上油井。因此,电潜泵故障预测在石油生产中具有重要的应用价值,对油井的设计、施工和运行具有重要的指导意义。本研究的贡献在于使用决策树、随机森林和梯度增强机3种机器学习算法,在使用动态和静态ESP参数的情况下,建立ESP寿命的预测模型。将各模型的结果进行比较,找出最适合ESP寿命周期预测的模型。此外,本研究还评估了各种操作参数的影响因素,以预测对ESP寿命影响最大的参数。本研究的结果可以更好地了解ESP的行为,以便及早采取措施防止潜在的ESP故障。
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