A Deep Learning Model to Intelligently Identify the Working Status of Screw Pumps for Oil Well Lifting

Zhen Wang, Yeliang Dong, Xin Zheng, Xiang Wang, Peng Gao, Ligang Zhang, Yuchuan Huang, Wencun Sun, Panpan Zhang
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Abstract

Screw pumps have been widely used in many oilfields to lift the oil from wellbore to ground. The pump failure and delayed repair means well shut and production loss. A deep learning model is constructed to quickly identify the working status and accurately diagnose the failure types of the screw pumps, which can help the workers always get the information and give a fast repair. Firstly, running parameters of the screw pump, such as electric current, voltage, and instantaneous rate of flow, are obtained through the Real-time Data Acquisition System. Then the correlations between values or trends of those parameters and working status of the screw pump are calculated or analyzed. Results show that there is a good correlation between the current characteristics and various working status of screw pump. Current data at different times are expressed in polar coordinates, with the polar diameter representing the current value and the polar angle representing the time. The current-time curves of massive oil wells are then plotted in images with fixed resolution and divided into nine different groups to correspond to nine frequent working status of screw pump. A convolutional neural network (CNN) model is initialized, with the current-time curve as its input and the number codes representing working status as its output. Images mentioned above are used to train the CNN model, and the model parameters, such as the number of convolution layers, the size of convolution kernels and the activation function are optimized to minimize the training losses, which are the differences between the output codes and the right codes corresponding to the images. Finally, a robust CNN model is established, which can quickly and accurately judge the working state of the screw pump through electric current data. Based on this model, a software system connected with the oilfield database is developed, which can obtain the running parameters of the screw pumps in real time, identify their working states, judge the fault types of the abnormal situations, give alarms, and put forward solution suggestions. The system has now been widely used in Shengli Oilfield, which can help staff know the working conditions and fault types of abnormal wells in real time, speed up the maintenance progress, shorten the pump shutdown time and improve the production.
油井举升螺杆泵工作状态智能识别的深度学习模型
螺杆泵已广泛应用于许多油田,用于将石油从井筒中抽到地面。泵故障和延迟修复意味着油井关闭和生产损失。为了快速识别螺杆泵的工作状态,准确诊断螺杆泵的故障类型,建立了深度学习模型,帮助工人及时获取信息,快速进行维修。首先,通过实时数据采集系统获取螺杆泵的电流、电压、瞬时流量等运行参数;然后计算或分析这些参数的取值或变化趋势与螺杆泵工作状态的相关关系。结果表明,螺杆泵的电流特性与各种工作状态之间存在良好的相关性。不同时刻的当前数据用极坐标表示,极坐标直径表示当前值,极坐标角度表示时间。将大量油井的电流-时间曲线绘制成固定分辨率的图像,并将其分为9组,分别对应螺杆泵的9种频繁工作状态。初始化卷积神经网络(CNN)模型,电流-时间曲线作为其输入,代表工作状态的数字代码作为其输出。使用上述图像来训练CNN模型,并对模型参数如卷积层数、卷积核大小、激活函数等进行优化,使训练损失最小化,即输出代码与图像对应的正确代码之间的差异。最后,建立鲁棒CNN模型,通过电流数据快速准确地判断螺杆泵的工作状态。基于该模型,开发了与油田数据库连接的软件系统,能够实时获取螺杆泵的运行参数,识别螺杆泵的工作状态,判断异常情况下的故障类型,给出报警,并提出解决建议。该系统目前已在胜利油田广泛应用,可以帮助工作人员实时了解异常井的工况和故障类型,加快维修进度,缩短停泵时间,提高产量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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