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首页> 外文期刊>Journal of Petroleum Science & Engineering >Neuro-fuzzy system to predict permeability and porosity from well log data: A case study of Hassi R'Mel gas field, Algeria
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Neuro-fuzzy system to predict permeability and porosity from well log data: A case study of Hassi R'Mel gas field, Algeria

机译:用神经模糊系统从测井数据预测渗透率和孔隙度:以阿尔及利亚Hassi R'Mel气田为例

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摘要

Characterization of shaly sand reservoirs by well log data is a usual way of describing oil/gas field reservoirs. Over the last few years, several studies have been conducted in the field of petroleum engineering by applying artificial intelligence. This work represents a petrophysical-based method that uses well logs and core plug data to predict well log data recorded at depth in a shaly sand reservoir of Triassic Formation in Hassi R'Mel field, Algeria. In the study of oil reservoirs, the prediction of absolute permeability is a fundamental key in reservoir descriptions and has a direct impact, in particular, on effective completion designs, successful water injection programs and more efficient reservoir management. The Triassic Formations of Hassi R'Mel fields are composed of sandstones and shaly sands with dolomites. Logs from 10 wells are the starting point for the reservoir characterization. This paper presents a hybrid neuro-fuzzy model based on the use of data from four wells regarding porosity and permeability estimation. A fuzzy logic approach is used to calibrate the calculated permeability and core permeability; and a neural network was developed in this model, based on the data available from the field. Fuzzy analysis is based on fuzzy logic and is used to choose the best well logs with regard to core porosity and permeability data. A neural network is used as a nonlinear regression method to develop transformation between the selected well logs and core measurements. Porosity and permeability are predicted in these wells through linear regression; and back-propagation models are constructed and their reliabilities are compared according to the regression coefficients for predictions in un-cored sections. This investigative hybrid neuro-fuzzy method becomes a powerful tool for the estimation of reservoir properties from well logs in oil and natural gas development projects.
机译:通过测井数据表征泥质砂岩储层是描述油气田储层的常用方法。在过去的几年中,通过应用人工智能在石油工程领域进行了数项研究。这项工作代表了一种基于岩石物理的方法,该方法使用测井和岩心塞数据来预测阿尔及利亚Hassi R'Mel油田三叠系组泥质砂岩储层中深处记录的测井数据。在油藏研究中,绝对渗透率的预测是描述油藏的根本关键,尤其对有效的完井设计,成功的注水程序和更有效的油藏管理有直接影响。 Hassi R'Mel油田的三叠纪地层由砂岩和泥质白云岩组成。 10口井的测井数据是表征储层的起点。本文基于四个井的孔隙度和渗透率估算数据,提出了一种混合神经模糊模型。使用模糊逻辑方法来校准计算出的渗透率和岩心渗透率。然后根据现场数据,在此模型中开发了神经网络。模糊分析基于模糊逻辑,用于根据岩心孔隙率和渗透率数据选择最佳测井曲线。神经网络被用作非线性回归方法,以发展所选测井曲线与岩心测量之间的转换。通过线性回归可以预测这些井的孔隙度和渗透率。并建立了反向传播模型,并根据回归系数对它们的可靠性进行了比较,以进行无核部分的预测。这种研究性的混合神经-模糊方法成为从石油和天然气开发项目中的测井曲线估算储层性质的有力工具。

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