Permeability Prediction in One of Iraqi Carbonate Reservoir Using Statistical, Hydraulic Flow Units, and ANN Methods

Ohood Salman, O. Hasan, S. Al-Jawad
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引用次数: 3

Abstract

   Permeability is an essential parameter in reservoir characterization because it is determined hydrocarbon flow patterns and volume, for this reason, the need for accurate and inexpensive methods for predicting permeability is important. Predictive models of permeability become more attractive as a result.    A Mishrif reservoir in Iraq's southeast has been chosen, and the study is based on data from four wells that penetrate the Mishrif formation. This study discusses some methods for predicting permeability. The conventional method of developing a link between permeability and porosity is one of the strategies. The second technique uses flow units and a flow zone indicator (FZI) to predict the permeability of a rock mass using data from cores and well logs. The approach is used to predict the permeability of some uncored wells/intervals. The flow zone indicator is an efficient metric for calculating hydraulic flow units since it is based on the geological properties of the material and varied geometries pore of rock mass (HFU) and Artificial Neural Network (ANN) analysis is another way for predicting permeability. The result shows the FZI method, gave acceptable results compared with the obtained from core analysis than the other methods.
利用统计、水力流动单元和人工神经网络方法预测伊拉克某碳酸盐岩储层渗透率
渗透率是储层表征中的一个重要参数,因为它决定了碳氢化合物的流动模式和体积,因此,需要准确而廉价的方法来预测渗透率是很重要的。渗透率的预测模型因此变得更有吸引力。选择了伊拉克东南部的Mishrif储层,该研究基于穿透Mishrif地层的四口井的数据。本研究讨论了预测渗透率的一些方法。在渗透率和孔隙度之间建立联系的传统方法是其中一种策略。第二种技术使用流动单元和流动区指示器(FZI),利用岩心和测井数据预测岩体的渗透率。该方法用于预测一些未覆盖井/层段的渗透率。流动区指标是计算水力流动单位的有效指标,因为它基于材料的地质特性和不同几何形状的岩体孔隙(HFU),而人工神经网络(ANN)分析是预测渗透率的另一种方法。结果表明,FZI法与岩心分析法相比,给出了可接受的结果。
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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