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Permeability prediction and construction of 3D geological model: application of neural networks and stochastic approaches in an Iranian gas reservoir

机译:渗透率预测和3D地质模型的构建:神经网络和随机方法在伊朗天然气藏中的应用

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Determination of petrophysical parameters by using available data has a specific importance in exploration and production studies for oil and gas industries. Modeling of corrected permeability as a petrophysical parameter can help in decision making processes. The objective of this study is to construct a comprehensive and quantitative characterization of a carbonate gas reservoir in marine gas field. Artificial neural network is applied for prediction of permeability in accordance with other petrophysical parameters at well location. Correlation coefficient for this method is 84%. In the study, the geological reservoir model is developed in two steps: First, the structure skeleton of the field is constructed, and then, reservoir property is distributed within it by applying new stochastic methods. Permeability is modeled by three techniques: kriging, sequential Gaussian simulation (SGS) and collocated co-simulation using modeled effective porosity as 3D secondary variable. This paper enhances the characterization of the reservoir by improving the modeling of permeability through a new algorithm called collocated co-simulation. Kriging is very simple in modeling the reservoir permeability, and also, original distribution of the data changes considerably in this model. In addition, the SGS model is noisy and heterogeneous, but it retains the original distribution of the data. However, the addition of a 3D secondary variable in third method resulted in a much more reliable model of permeability.
机译:利用现有数据确定岩石物理参数在石油和天然气行业的勘探和生产研究中具有特别重要的意义。将校正的渗透率建模为岩石物理参数可以帮助决策过程。这项研究的目的是建立一个海洋气田碳酸盐岩气藏的综合和定量表征。根据井位置的其他岩石物理参数,将人工神经网络应用于渗透率预测。该方法的相关系数为84%。在研究中,通过两个步骤来开发地质储层模型:首先,构造油田的结构骨架,然后通过应用新的随机方法在其中分布储层性质。通过三种技术对渗透率进行建模:克里格法,顺序高斯模拟(SGS)和使用建模的有效孔隙率作为3D次要变量的并置共模拟。本文通过一种称为并置协同仿真的新算法,通过改进渗透率建模来增强储层的表征。克里金法在模拟储层渗透率方面非常简单,而且该模型中数据的原始分布也发生了很大变化。此外,SGS模型嘈杂且异构,但保留了数据的原始分布。但是,在第三种方法中添加了3D次级变量后,渗透率模型更加可靠。

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