A Computational Model for Wells’ Performance Analysis

Okon Edet Ita, D. Appah
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引用次数: 1

Abstract

The ability to identify underperforming wells and recover the remaining oil in place is a cornerstone for effective reservoir management and field development strategies. As advancement in computing programming capabilities continuous to grow, Python has become an attractive method to build complicated statistical models that predicts, diagnose or analyze well performance, efficiently and accurately. The aim of this study is to develop a computational model that will allows us to diagnose and analyze well performance using nodal analysis with the help of python. In this study, python was used to compute Nodal analysis method using Darcy and Vogel Equations. A case study was carried out using the data obtained from a field operating in the Niger Delta. Again, sensitivity of tubing size was conducted using python. The results obtained showed that a computational model with python has the ability to visualize, model and analyze wells performances. This technique will petroleum engineers to better monitor evaluate and enhance their production operation without the need for expensive softwares. This will reduce operating cost increases revenue.
井动态分析的计算模型
识别表现不佳的井并回收剩余油的能力是有效的油藏管理和油田开发战略的基石。随着计算编程能力的不断进步,Python已经成为一种有吸引力的方法,用于构建复杂的统计模型,有效而准确地预测、诊断或分析井的性能。本研究的目的是开发一种计算模型,使我们能够在python的帮助下使用节点分析来诊断和分析井的性能。在本研究中,使用python计算节点分析法,使用Darcy和Vogel方程。使用从尼日尔三角洲的一个油田作业中获得的数据进行了案例研究。同样,油管尺寸的灵敏度是用蟒蛇进行的。结果表明,python计算模型具有可视化、建模和分析井动态的能力。该技术将使石油工程师能够更好地监测、评估和提高他们的生产操作,而不需要昂贵的软件。这将降低运营成本,增加收入。
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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