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Integration of ANFIS, NN and GA to determine core porosity and permeability from conventional well log data

机译:集成ANFIS,NN和GA,可根据常规测井数据确定岩心孔隙率和渗透率

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摘要

Routine core analysis provides useful information for petrophysical study of the hydrocarbon reservoirs.Effective porosity and fluid conductivity(permeability) could be obtained from core analysis in laboratory.Coring hydrocarbon bearing intervals and analysis of obtained cores in laboratory is expensive and time consuming.In this study an improved method to make a quantitative correlation between porosity and permeability obtained from core and conventional well log data by integration of different artificial intelligent systems is proposed.The proposed method combines the results of adaptive neuro-fuzzy inference system(ANFIS) and neural network(NN) algorithms for overall estimation of core data from conventional well log data.These methods multiply the output of each algorithm with a weight factor.Simple averaging and weighted averaging were used for determining the weight factors.In the weighted averaging method the genetic algorithm(GA) is used to determine the weight factors.The overall algorithm was applied in one of SW Irans oil fields with two cored wells.One-third of all data were used as the test dataset and the rest of them were used for training the networks.Results show that the output of the GA averaging method provided the best mean square error and also the best correlation coefficient with real core data.
机译:常规岩心分析为油气储集层的物性研究提供了有用的信息,可通过实验室岩心分析获得有效的孔隙度和流体电导率(渗透率),对含烃层次进行取心并在实验室中对获得的岩心进行分析既昂贵又费时。提出了一种改进的方法,通过集成不同的人工智能系统,使岩心和常规测井数据获得的孔隙度和渗透率之间存在定量关系。该方法将自适应神经模糊推理系统(ANFIS)和神经网络的结果相结合(NN)算法可从常规测井数据中全面估算核心数据,这些方法将每种算法的输出乘以权重因子,使用简单平均和加权平均来确定权重因子。 (GA)用于确定权重因子。整体算法被应用于伊朗西南部一处有两口取心油井的油田,所有数据的三分之一被用作测试数据集,其余数据被用于训练网络。结果表明,遗传算法平均法的输出提供了最佳的均方误差以及与实际核心数据的最佳相关系数。

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