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Prediction of Permeability Using Group Method of Data Handling (GMDH) Neural Network from Well Log Data

机译:利用井日志数据使用数据处理(GMDH)神经网络的组方法预测渗透率

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摘要

Permeability is an important petrophysical parameter that controls the fluid flow within the reservoir. Estimating permeability presents several challenges due to the conventional approach of core analysis or well testing, which are expensive and time-consuming. On the contrary, artificial intelligence has been adopted in recent years in predicting reliable permeability data. Despite its shortcomings of overfitting and low convergence speed, artificial neural network (ANN) has been the widely used artificial intelligent method. Based on this, the present study conducted permeability prediction using the group method of data handling (GMDH) neural network from well log data of the West arm of the East African Rift Valley. Comparative analysis of GMDH permeability model and ANN methods of the back propagation neural network (BPNN) and radial basis function neural network (RBFNN) were further explored. The results of the study showed that the proposed GMDH model outperformed BPNN and RBFNN as it achieved R/root mean square error (RMSE) value of 0.989/0.0241 for training and 0.868/0.204 for predicting, respectively. Sensitivity analysis carried out revealed that shale volume, standard resolution formation density, and thermal neutron porosity were the most influential well log parameters when developing the GMDH permeability model.
机译:渗透性是一种重要的岩石物理参数,可控制储存器内的流体流动。由于核心分析或良好测试的常规方法,估算渗透性呈现了几个挑战,这是昂贵且耗时的核心分析或井测试。相反,近年来在预测可靠渗透数据时采用了人工智能。尽管其过度装备和低收敛速度的缺点,但人工神经网络(ANN)一直是广泛使用的人工智能方法。基于此,本研究使用来自东非裂谷西部臂的井数数据,使用数据处理(GMDH)神经网络的组方法进行渗透率预测。进一步探索了对后传播神经网络(BPNN)和径向基函数神经网络(RBFNN)的GMDH渗透模型和ANN方法的比较分析。该研究的结果表明,所提出的GMDH模型显得优于BPNN和RBFNN,因为它达到了R / TOOT均方误差(RMSE)值为0.989 / 0.0241,分别预测0.868 / 0.204。开展的敏感性分析显示出在开发GMDH渗透性模型时,页岩体积,标准分辨率形成密度和热中子孔隙是最具影响力的日志参数。

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