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An introduction to wireline log analysis by integration of ascendant hierarchical clustering and k-nearest neighbor methods for permeability prediction using conventional well logs and core data

机译:通过传统井日志和核心数据集成升级分层聚类和k最近邻的磁化性预测的电缆日志分析介绍

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Permeability is a key parameter in the evaluation of hydrocarbon reservoirs. Conventionally, the core data analysis is utilized to determine the permeability. However, core analysis method is time-consuming and expensive. In this paper, we present an approach for permeability prediction from conventional well logs and core data. Our approach integrates two methods, the ascendant hierarchical clustering, which is used to classify the well log responses into relatively homogeneous subgroups based on electrofacies, and the k-nearest neighbor method, to predict the permeability from the nearest neighbors that belong to a similar subgroup. The procedure is applied on one of the Iranian South West oil reservoirs. The results of this study show that integration of well logs and core data based on electrofacies can reliably predict permeability.
机译:渗透性是烃储层评估中的关键参数。 传统上,利用核心数据分析来确定渗透性。 然而,核心分析方法是耗时和昂贵的。 在本文中,我们提出了一种传统井日志和核心数据的渗透预测方法。 我们的方法集成了两种方法,即基于电离电流和K最近邻方法将井日志响应分类为对相对均匀的子组的井日志响应,以预测属于类似子组的最近邻居的渗透率 。 该程序适用于伊朗南西石油储层之一。 该研究的结果表明,基于电缩探的井日志和核心数据的集成可以可靠地预测渗透性。

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