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首页> 外文期刊>Marine Geophysical Researches >Integrating lithofacies and well logging data into smooth generalized additive model for improved permeability estimation: Zubair formation, South Rumaila oil field
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Integrating lithofacies and well logging data into smooth generalized additive model for improved permeability estimation: Zubair formation, South Rumaila oil field

机译:将岩散和测井数据集成到平滑广义添加剂模型中,提高渗透率估算:Zubair组,南方Rumaila油田

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Integrating discrete distribution of lithofacies into the petrophysical property modeling is essential to preserve reservoir heterogeneity and improve flow modeling. Specifically, various studies have been implemented to model the permeability as a function of well logging data without taking into account the effect of lithofacies, which is rational to produce distinct regression lines given each facies type. In this paper, advanced statistical learning approaches were adopted as an integrated workflow to model the core permeability given well logging records and discrete lithofacies classification for a well in the South Rumaila oil field, located in Iraq. In particular, the probabilistic neural networks was first applied for modeling and predicting the discrete lithofacies classification given the well logging records: neutron porosity, shale volume, and water saturation. Next, smooth generalized additive model (SGAM) was used to model the core permeability as a function of the same well logging records. In addition, the predicted lithofacies was included as a discrete independent variable in the core permeability modeling to provide different regression lines given each lithotype. The SGAM was also modeled for three subset data given each separate lithofacies to verify the efficiency of SGAM and to provide more accurate prediction of permeability. The same procedure of SGAM was completely repeated by the generalized linear model (GLM) to prove the higher effectiveness of SGAM for permeability modeling and prediction. The root mean square prediction error in SGAM was lower than in GLM in all the combined and separate lithofacies models. In addition, the SGAM model overcame the multicollinearity between shale volume and water saturation variables by using the smoothed terms. Finally, making accurate permeability prediction for all wells in the field should ensure capturing the spatial variation and correlation between the data and then preserving the reservoir hete
机译:将岩石酸的离散分布集成到岩石物理学建模中对保持储层异质性并改善流动建模至关重要。具体而言,已经实施了各种研究以将渗透率模拟良好测井数据的函数,而不考虑锂外的效果,这是在给定每个相类型的基础上产生不同的回归线。在本文中,采用了先进的统计学习方法作为综合工作流程来模拟核心渗透率,因为在伊拉克的南方Rumaila油田中井井井井井井流量和离散的岩石类别分类。特别地,考虑到井测井记录:中子孔隙度,页岩体积和水饱和,首先应用概率神经网络的建模和预测。接下来,使用平滑的广义添加剂模型(SGAM)来模拟作为相同井测井记录的函数的核心渗透性。此外,将预测的锂外缩放为在核心渗透性建模中作为离散独立变量,以提供给定每个碎石的不同回归线。 SGAM还为三个子集数据建模,给出了每个单独的锂缺失,以验证SGAM的效率并提供更准确的渗透性预测。通过广义的线性模型(GLM)完全重复了SGAM的相同程序,以证明SGAM用于渗透性建模和预测的更高效果。 SGAM中的根均线平方预测误差低于GLM在所有合并和单独的锂外模型中。此外,SGAM模型通过使用平滑的术语克服页岩体积和水饱和度变量之间的多色性度。最后,对现场中的所有井进行准确的渗透性预测应确保捕获数据之间的空间变化和相关性,然后保留储存器HETE

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