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Research on Pump Inspection Cycle Early Warning Method Based on Big Data

机译:基于大数据的泵检查周期预警方法研究

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At present, the existing indicator diagram can only be used for expost judgment and can not give early warning, and the influencing factors of pump inspection period are nonlinear, multi constrained and multi variable. In this paper, big data machine learning method is used to carry out relevant research. Firstly, around the influencing factors of pump inspection cycle, relevant data are collected and the evaluation index of pump inspection cycle is designed. Then, based on feature engineering technology, the production parameters of oil wells in different pump inspection periods are calculated to form the analysis sample set of pump inspection period. Finally, the early warning model of pump inspection period is established by using machine learning technology. The experimental results show that: the pump inspection cycle early warning model established by stochastic forest algorithm can identify the pump inspection status of single well, and the accuracy rate is about 85%.
机译:目前,现有的指标图只能用于暴露判断,不能给出预警,泵检查期的影响因素是非线性,多约束和多变量。 在本文中,大型数据机学习方法用于进行相关研究。 首先,围绕泵检查周期的影响因素,收集相关数据,设计了泵检查周期的评估指标。 然后,基于特征工程技术,计算不同泵检查期间油井的生产参数,以形成分析样品泵检测期。 最后,利用机器学习技术建立了泵检查期的预警模型。 实验结果表明:随机林算法建立的泵检查周期预警模型可以识别单井的泵检查状态,精度率约为85%。

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