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A comparative study of empirical, statistical and virtual analysis for the estimation of pore network permeability

机译:孔隙网络渗透率估算的实证,统计和虚拟分析的比较研究

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Permeability of any porous medium is a key parameter to analyze the flow behavior and characterization of reservoir for the optimization of hydrocarbon production. Permeability is usually determined experimentally, and if no laboratory data is available, empirical correlations can be used to estimate it. In recent years, artificial neural network (ANN) modeling, have gained popularity in solving complex problems, such as prediction of permeability in heterogeneous formation. Degree of uncertainty associated with each technique requires more careful use of any other technique. The present study aims to estimate formation permeability by using three techniques, "Empirical Relations", "Multivariate Regression Analysis" and "Virtual Measurements" that show potentials in achieving our gOal. Core permeability is used as target data to test the validity of these techniques. For the purposes of this study, six wells from a heterogeneous Lower Goru formation from Sawan Gas Field, Pakistan are selected. Well log data and corresponding permeability values for these wells were available. The result shows that Morris and Biggs empirical relations provide acceptable results with measured permeability in different geological conditions of the wells. Five well log responses (gamma ray (GR), bulk density (RHOB), sonic log (DT), deep resistivity log (LLD) and neutron porosity (NPHI)), are used as inputs in the ANN to predict permeability in all wells. To ensure that the characteristic of neural network technique is not an isolated incident the same exercise is repeated in all available wells to predict permeability. Multivariate regression analysis is performed on the basis of well log response in wells to access definition of permeability in terms of wireline logs. Hybrid approach is developed in this paper by the integration of multivariate regression analysis and estimated permeability from neural network, which suggest a verifiable and accurate prediction of permeability from well logs. The results indicate that permeability can be estimated in precise and accurate manner by the integration of statistical and virtual techniques depending upon the geological conditions of the studied rock interval. (C) 2017 Elsevier B.V. All rights reserved.
机译:任何多孔介质的渗透性是分析用于优化烃生产的储层的流动行为和表征的关键参数。渗透率通常是通过实验确定的,如果没有实验室数据,则可以使用经验相关来估计它。近年来,人工神经网络(ANN)建模,在解决复杂问题方面取得了普及,例如在异构地层中预测渗透性的预测。与每种技术相关的不确定性程度需要更仔细地使用任何其他技术。本研究旨在通过使用三种技术,“经验关系”,“多变量回归分析”和“虚拟测量”来估计地层渗透性,这些技术表现出实现目标的潜力。核心渗透用作目标数据以测试这些技术的有效性。出于本研究的目的,选择了来自Sawan气田的异质下戈鲁的六个井,巴基斯坦被选中。井数数据和这些井的相应渗透值可用。结果表明,莫里斯和BIGGS经验关系提供了可接受的结果,在井的不同地质条件下测量渗透性。五个井日志响应(伽马射线(GR),批量密度(Rhob),声音原木(DT),深电阻率数,深度电阻率数(NPHI)被用作ANN中的输入,以预测所有井中的渗透率。为了确保神经网络技术的特征不是孤立的事件,在所有可用的井中重复相同的练习以预测渗透性。基于井中的井路响应来执行多变量回归分析,以便在有线日志方面访问渗透率的定义。本文通过集成多元回归分析和神经网络的估计渗透性来开发混合方法,这表明了从井日志的可核实和准确的渗透性预测。结果表明,根据所研究的岩石间隔的地质条件,可以通过整合统计和虚拟技术来估计渗透性。 (c)2017 Elsevier B.v.保留所有权利。

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