Application of Mechanistic Modeling for Gas Lift Optimization: A General Scaling Curve for Variations of Tubing Size to Optimum Gas Injection

P. A. Aziz, Ardhi Hakim Lumban Gaol, Wijoyo Niti Daton, S. Chandra
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引用次数: 0

Abstract

Gas Lift is currently held as one of the most prominent method in artificial lift, proudly operated flawlessly in hundreds of oil wells in Indonesia. However, gas lift optimization is still governed by the exhaustive Gas Lift Performance Curves (GLPC). This practice, albeit as established as it should be, does require repetitive calculations to be able to perform in life of well operations. Therefore, a new approach is introduced based on the mechanistic modeling. This research highlights the application of fundamental mechanistic modeling and its derivative, the Flow Pattern Map (FPM) for quick estimation of optimum injection gas rate, accompanied by a novel correction factor to account changing tubing sizes. It is hoped that this approach can be beneficial in developing a multitude of gas lift wells with changing tubing sizes.
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机械建模在气举优化中的应用:油管尺寸变化对最佳注气的通用比例曲线
天然气举升目前被认为是人工举升中最突出的方法之一,自豪地在印度尼西亚数百口油井中完美运行。然而,气举优化仍然由详尽的气举性能曲线(GLPC)控制。这种做法虽然已经确立,但确实需要重复计算才能在油井作业寿命内执行。因此,引入了一种基于机械建模的新方法。这项研究强调了基本机理建模及其衍生物——流型图(FPM)在快速估计最佳注入气体速率方面的应用,并结合了一种新的校正因子来解释不断变化的油管尺寸。希望这种方法能够有利于开发具有不同油管尺寸的大量气举井。
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审稿时长
8 weeks
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