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An Intelligent Model for Estimating Relative Permeability in the Abu-Sennan Oil and Gas Fields, Southwestern Egypt

机译:埃及西南部阿布 - 森南石油和天然气场中相对渗透性的智能模型

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摘要

Permeability is arguably the most critical vector flow parameter used in the analysis of hydrocarbon formations. Permeability data are usually obtained from well shut-in tests and core investigations; however, only a small number of wells have well tests or core measurements. In contrast, well logs are often available for most wells in a field. Therefore, techniques that evaluate relative permeability using well logs can be extremely useful. To this end, an effective and thorough model composed of a radial base function neural network has been constructed to predict the relative permeability of formations within the Abu-Sennan Oil and Gas Fields. A total of 105 previously reported relative permeability core data points scattered along the Abu-Sennan Fields were used to construct and evaluate the proposed model. Input parameters for the neural network were wettability, water saturation, irreducible water saturation, porosity and sample depth. The results of the proposed model were compared to reported field data. The results illustrate that the proposed model is able to predict the relative permeability of specific units within the Abu-Sennan Fields with a high correlation coefficient for unnamed data in the model. The proposed model was assessed using sensitivity analysis based on the input parameters.
机译:渗透性可以说是在分析烃地层中使用的最关键的载体流量参数。渗透性数据通常从良好的关闭测试和核心调查中获得;但是,只有少数井有井测试或核心测量。相比之下,井日志通常可用于领域的大多数井。因此,使用井日志评估相对渗透性的技术可能非常有用。为此,已经构建了由径向基函数神经网络组成的有效和彻底的模型,以预测阿布森南石油和天然气场内的形成的相对渗透性。使用沿着ABU-Sennan字段散射的总共105个以前报告的相对渗透性核心数据点来构建和评估所提出的模型。神经网络的输入参数是润湿性,水饱和度,不可缩短的水饱和度,孔隙度和样品深度。将所提出的模型的结果与报告的现场数据进行比较。结果说明所提出的模型能够预测模型中具有高相关系数的阿布 - 森纳场内特定单元的相对渗透性。基于输入参数使用灵敏度分析评估所提出的模型。

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