有效的电潜泵管理预测数据分析

S. Sherif, Omisore Adenike, Eremiokhale Obehi, A. Funso, Blankson Eyituoyo
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引用次数: 10

摘要

电潜泵(ESP)故障除了会导致干预/修井成本外,还会导致生产延迟。ESP的使用寿命受到多种因素的影响,包括储层特征、泵的运行条件,甚至是安装程序,因此很难预测。动态和静态ESP参数的测量和监测对延长ESP的使用寿命起着至关重要的作用。然而,由于ESP故障的复杂性,很难通过简单的趋势数据来识别异常。在过去的几年中,在监测系统的开发方面取得了显著的进展,但大多数运营商尚未充分利用能够主动监测ESP健康状况的系统。本文使用广义机器学习技术和实时流获取的信息来预测即将发生的故障。本研究将主成分分析(PCA)应用于尼日尔三角洲边缘油田的ESP安装,该油田的生产优化和成本降低是维持生产的关键。使用Python进行数据处理/统计分析和算法开发。PCA的主要目的是确定动态ESP参数之间的相关性:进气压力、进气温度、排气压力、振动、电机温度、电机电流、系统电流和频率,这些参数由变速驱动器(VSD)定期记录。一旦确定了相关性/模式,PCA方法在高维数据(在本研究中为8维)中找到最大方差的方向,并将其投影到更小的维度子空间中,同时保留大部分信息。对于每次安装,都确定了工作频率的稳定区域,失败的esp在故障发生前几个月就明显偏离了稳定区域,这在VSD记录的参数中并不明显。本文介绍了如何使用机器学习(ML)算法来预测ESP的运行寿命,从而使行业更接近主动ESP监测,而不是目前的被动方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Data Analytics for Effective Electric Submersible Pump Management
Electrical Submersible Pump (ESP) failures cause disruptions that lead to production deferement besides the cost of interventions/workovers post failure. The service life of an ESP is difficult to predict as it is affected by several factors which include reservoir characteristics, pump operating conditions and even the installation procedure. Measurement and monitoring of both dynamic and static ESP parameters play a critical role in extending the run-life. However, due to the complex nature of ESP failures, it can be difficult to identify anomalies by simply trending data. Notable progress has been made in the past years with respect to the development of systems for monitoring but most operators are yet to fully leverage on a system that will allow for proactive ESP health condition monitoring. In this paper, generalized machine-learning techniques and information acquired through real-time streaming was used to predict impending failures. This study applies Principal Component Analysis (PCA) on ESP intallations for a marginal field in the Niger Delta where production optimization and cost reduction are key to sustenance. Python was used for the data processing/statistical analysis and the algorithm development. The major objective of the PCA was to identify correlations in the dynamic ESP parameters: Intake Pressure, Intake Temperature, Discharge Pressure, Vibrations, Motor Temperature, Motor Current, Systems Current and Frequency recorded by the Variable Speed Drive (VSD) at regular intervals. Once the correlation/pattern was identified, the PCA approach found the directions of maximum variance in the high-dimensional data (in this study eight-dimensional) and projected it onto a smaller dimensional subspace while retaining most of the information. For each installation, a stable region for the operating frequency was identified and failed ESPs showed a clear drift from the stable region months before the failure occured, which was not apparent in the recorded parameters from the VSD. The paper describes how to use Machine Learning (ML) algorithms to predict an ESP's runlife bringing the industry a step closer to proactive ESP monitoring as opposed to the current reactive methods.
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