基于电气参数的有杆泵工况诊断与虚拟生产计量研究与应用

Ruidong Zhao, Cai Wang, Hanjun Zhao, C. Xiong, Junfeng Shi, Xishun Zhang, Jinming Ren, Yonghui Zhang, Yizhen Sun
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引用次数: 1

摘要

抽油井物联网的常规配置由电参数指示器和测力仪组成。电流、电压、功率和其他电气参数易于获取、成本低、稳定,并且可以在抽油井日常作业中获取。如果能够通过电气参数实现抽油井的工况诊断和虚拟产量计量,就可以取消或减少对测功机的利用,这对于降低投资,提高油井物联网的覆盖率具有重要意义。传统的基于电气参数和虚拟生产计量的诊断分析方法缺乏理论依据。大数据深度学习技术与传统方法的结合,将为解决相关技术问题提供解决方案。考虑到从电机到井下泵的能量传递环节较多,由于不平衡、泵体充盈、杆/管振动、积蜡、泄漏等因素的影响,电参数曲线的特性较测功机卡更为复杂,难以识别。从时域和频域分析了抽油井电参数曲线的形状特征,为进一步的诊断、分析和生产测量提供了依据。本文提出了一种集成的多模型诊断方法。对于样本量较大的工况,利用大数据的深度学习技术,将电参数转换为测功机卡进行诊断。对于样本稀疏的工况,采用机器学习模型直接利用电气参数进行诊断。建立了用于生产测量的深度学习电参数模型。通过将电参数测功卡大数据模型、抽油杆柱三维力学模型、柱塞泄漏系数大数据模型相结合,成功实现了基于电参数的抽油井虚拟产量计量功能。基于电气参数的诊断与虚拟生产计量方法及软件已在中国石油多个油田得到应用。电气参数上、下死点识别准确率为98.0%;电气参数下的工况诊断符合率为92.0%;用电参数虚拟生产计量的平均误差为13.4%。示范区的测功机和量具室已被取消。应用电气参数对抽油井进行工况诊断和产量计量是低成本物联网建设的关键。传统的数学和物理方法难以解决这一问题,而大数据分析技术的应用可以成功解决这一问题。
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Research and Application of Rod Pump Working Condition Diagnosis and Virtual Production Metering Based on Electric Parameters
The conventional configurations of pumping well IOT consist of electric parameter indicator and dynamometer. The current, voltage, power, and other electrical parameters are easy to access, low costs, stable, and acquired daily during pumping well operation. If the working condition diagnosis and virtual production metering of pumping well can be realized through electrical parameters, the utilization of dynamometers can be cancelled or reduced, which is of great significance to reduce the investment and improve the coverage of IOT in oil wells. The conventional methods of diagnosis and analysis based on electrical parameters and virtual production metering are lack of theoretical basis. The combination of deep learning technology of big data and traditional methods will provide solutions to solve related technical problems. Considering that there are many energy transmission segments from the motor to the downhole pump, the characteristics of the electric parameter curve are more sophisticated and difficult to identify compared with dynamometer card due to the influence of the unbalance, pump fullness, rod/tube vibration, wax deposition and leakage. The shape characteristics of the electric parameter curve of the pumping well are analyzed in the time domain and frequency domain, which provides the basis for further diagnosis, analysis and production measurement. In this paper, an integrated multi-model diagnosis method is proposed. For the working conditions with a large scale of samples, the electrical parameters are converted to dynamometer cards for diagnosis by using the deep learning technology of big data. For the working conditions with sparse samples, the machine learning model is used to diagnosis directly with electrical parameters. The deep learning electric parameter model for production measurement is established. Through the combination of the big data model of electric parameters to dynamometer card, 3D mechanical model of rod string, and big data model of plunger leakage coefficient, the virtual production metering function of pumping well based on electrical parameters is successfully realized. The diagnosis and virtual production metering method and software based on electrical parameters have been applied in many oilfields of CNPC. The accuracy of identifying the upper and lower dead points of electric parameters is 98.0%; the coincidence rate of working condition diagnosis under electrical parameters is 92.0%; the average error of virtual production metering with electric parameters is 13.4%. The dynamometer and gauging room have been canceled in the demonstration area. The application of electrical parameters to diagnose working conditions and meter the production of pumping wells is the key to the low-cost IOT construction. Traditional mathematical and physical methods are difficult to solve this problem, but the application of big data analysis technology could do the job successfully.
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