Research and Application of Big Data Production Measurement Method for SRP Wells Based on Electrical Parameters

Shiwen Chen, Feng Deng, Guanhong Chen, Ruidong Zhao, Junfeng Shi, Weidong Jiang
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Abstract

Well metering is an important part of daily oilfield management. For wells in a block, production metering can help reservoir managers fully understand the changes in the reservoir and provide a basis for reservoir dynamics analysis and scientific field development planning. For single-well metering, accurate producing rate can help oil well operators optimize the well production system, improve the efficiency of oil wells, and even discover abnormal conditions in oil wells based on changes in production. In order to obtain accurate well production, over 300 SRP wells in an experimental area of an oil field in northeastern China are tracked and measured in this paper. Easily available continuous electrical parameter data (including electrical power, current and voltage) and real-time output of the wells were selected as training parameters. We separated the SRP well electrical curves and corresponding real-time production data into a set of samples by one-stroke time, and obtained a total of 200,000 valid samples. The production status of the pumping wells was classified by deep learning, and the electric curves were Fourier transformed to extract statistical features. Then, we performed deep learning on these samples, using production parameters as input vectors and well fluid production as output results. Finally, good results were obtained by training and a model for calculating SRP well production based on big data was developed. The model was used to calculate the production of SRP wells in an experimental area of an oil field in northeastern China and compared with the actual production data. For low-producing wells with daily production less than 6 m3, the error of the model was less than 0.5 m3 /d, and for wells with daily production greater than 6 m3, the relative error of the wells was less than 10%, which met the expectation of managers. Compared with the methods mentioned in this paper, the currently used measurement methods, such as flowmeter measurement and volumetric measurement, have limitations in terms of instrumental measurement range and real-time measurement, respectively. In addition, both of these methods increase the construction cost of flow measurement systems. The big data production measurement model provides operators with a method for optimizing the production system of oil wells and also provides signals for early warning of oil well failures. This method can help managers achieve cost reduction and efficiency increase. The processing and application methods of electrical parameters in this paper can also provide ideas for production prediction of PCP o ESP wells.
基于电参数的SRP井大数据产量测量方法研究与应用
井计量是油田日常管理的重要组成部分。对于一个区块内的油井,产量计量可以帮助油藏管理者充分了解油藏的变化情况,为油藏动态分析和科学的油田开发规划提供依据。对于单井计量,准确的产量可以帮助作业者优化油井生产系统,提高油井效率,甚至可以根据生产变化发现油井异常情况。为了获得准确的油井产量,本文对东北某油田试验区300多口SRP井进行了跟踪测量。选择容易获得的连续电参数数据(包括电功率、电流、电压)和井的实时输出作为训练参数。将SRP井电性曲线和相应的实时生产数据按一次冲程时间分离成一组样品,共获得20万份有效样品。利用深度学习对抽油井的生产状态进行分类,并对电性曲线进行傅里叶变换提取统计特征。然后,我们对这些样本进行深度学习,将生产参数作为输入向量,将井液产量作为输出结果。最后,通过训练取得了较好的效果,并建立了基于大数据的SRP井产量计算模型。将该模型应用于东北某油田某试验区SRP井的产量计算,并与实际生产数据进行了对比。对于日产量小于6 m3的低产井,模型的相对误差小于0.5 m3 /d,对于日产量大于6 m3的井,模型的相对误差小于10%,满足了管理者的期望。与本文提到的测量方法相比,目前使用的测量方法,如流量计测量和体积测量,分别在仪器测量范围和实时测量方面存在局限性。此外,这两种方法都增加了流量测量系统的建设成本。大数据生产测量模型为作业者优化油井生产系统提供了方法,也为油井故障预警提供了信号。这种方法可以帮助管理者降低成本,提高效率。本文的电参数处理及应用方法也可为PCP / ESP井的产量预测提供思路。
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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