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An Automated Flowing Bottom-Hole Pressure Prediction for a Vertical Well having Multiphase Flow Using Computational Intelligence Techniques

机译:一种自动流动的底孔压力预测,用于使用计算智能技术具有多相流的垂直阱

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The need for accurate estimation of flowing bottom-hole pressure (FBHP) is owning an immense importance in petroleum engineering applications such as continuous field production optimization, cost per barrel of oil reduction, assess reservoir performance and to quantify workover remedial operations. Induction of pressure down-hole gauges in oil wells to measure FBHP is a common practice especially in wells artificially lifted with downhole electrical submersible pumps. However, intervening a producing well is a quite exhaustive and expensive task which is involved with production risk, and disruptions. For these reasons, various empirical correlations and mechanistic models were developed to estimate FBHP. Majority of these models were formed under laboratory scale conditions and are, therefore, imprecise when scaled-up to field conditions. Because of the complexity associated with the numerical modeling and physical implementation these models are also computationally very expensive to run. In this study, an empirical model based on computational intelligence (CI) technique is developed to quantify FBHP in a vertical well with multiphase flow. The proposed model is based on only surface production data which includes; oil flow rate, gas flow rate, water flow rate, oil API gravity, perforation depth, surface temperature, bottom-hole temperature, and tubing diameter. The data used to develop empirical model covered a wide range of values and are collected from published sources and several wells from different locations. The proposed model is then tested against new field data and results were compared statistically with the estimations of some commonly used empirical correlations and mechanistic models in oil industry. The comparison results show that the proposed empirical model significantly outperforms all other existing models and delivers the predictions with high accuracy. A small average absolute percentage error of less than 2% was found with new proposed empirical correlation, while comparing the existing published correlations on the same data gives more than 15% error. The novelty of proposed empirical model is that it is very simple and only require surface production data while previous models requires exhaustive computationally expensive calculations. The new model is accurate enough and can serve as a handy tool for the production engineers to forecast the FBHP in wells with high level of certainty.
机译:需要精确估计流动的底孔压力(FBHP)在石油工程应用中具有巨大重要性,如连续现场生产优化,每桶降低成本,评估水库性能和量化的工作组补救措施。诱导油井中的压力下孔仪测量FBHP是一种常见的做法,特别是用井下电浸没泵人工抬起。然而,干预生产良好是一种非常详尽的和昂贵的任务,涉及生产风险和中断。由于这些原因,开发了各种经验相关和机械模型来估计FBHP。这些模型中的大部分是在实验室规模条件下形成的,因此在缩小到现场条件时不精确。由于与数值建模和物理实现相关的复杂性,这些模型也可以计算地运行非常昂贵。在本研究中,开发了一种基于计算智能(CI)技术的实证模型,以通过多相流量在垂直阱中量化FBHP。所提出的模型仅基于包括的表面生产数据;油流量,气体流速,水流速,油API重力,穿孔深度,表面温度,底部孔温度和管道直径。用于开发经验模型的数据涵盖了广泛的价值,并从已发布的来源和来自不同位置的几个井收集。然后将拟议的模型进行测试,并在统计上进行统计比较结果,并估计石油工业中一些常用的经验相关和机械模型的估计。比较结果表明,所提出的经验模型显着优于所有其他现有模型,并以高精度提供预测。具有新的提出的经验相关性的小于2%的小于平均绝对百分比误差,同时比较相同数据的现有发布相关性,给出了超过15%的错误。提出的经验模型的新颖性是它非常简单,只需要表面生产数据,而以前的模型需要详尽的计算昂贵的计算。新型号足够准确,可以作为生产工程师的便利工具,以预测具有高水平确定性的井中的FBHP。

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