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The Estimation of Stoneley Wave Velocity from Conventional Well Log Data: Using an Integration of Artificial Neural Networks

机译:从常规测井数据估算斯通利波速度:使用人工神经网络的集成

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摘要

Stoneley wave velocity (Vst) is capable of providing accurate data for reservoir characterization objectives, such as permeability estimation, fracture evaluation, formation anisotropy identification, etc. At the first stage of this study, different types of artificial neural networks, including generalized regression neural network, radial basis neural network, and feed-forward backpropagation neural network were utilized to predict Vst from conventional well log data. Consequently, a generalized regression neural network was employed to combine results of mentioned artificial neural networks for overall estimation of Vst. This novel hybrid method can enhance the accuracy of final prediction through reaping the benefits of individual artificial neural networks. The proposed methodology, hybrid neural network, was applied in Asmari formation, which is the major carbonate reservoir rock of Iranian southern oil field. A group of 1,640 data points was used to establish the intelligent model, and a group of 800 data points was employed to assess the reliability of the constructed model. Results showed that integration of different artificial neural networks using generalized regression neural network can significantly improve the accuracy of final prediction.
机译:斯通利波速(Vst)能够为储层表征目标提供准确的数据,例如渗透率估算,裂缝评估,地层各向异性识别等。在本研究的第一阶段,不同类型的人工神经网络(包括广义回归神经网络)网络,径向基神经网络和前馈反向传播神经网络可用于根据常规测井数据预测Vst。因此,采用广义回归神经网络将上述人工神经网络的结果进行组合,以对Vst进行总体估计。这种新的混合方法可以通过收获各个人工神经网络的好处来提高最终预测的准确性。所提出的混合神经网络方法被应用于阿斯马里组,这是伊朗南部油田的主要碳酸盐岩储集层。一组1,640个数据点用于建立智能模型,一组800个数据点用于评估所构建模型的可靠性。结果表明,使用广义回归神经网络集成不同的人工神经网络可以显着提高最终预测的准确性。

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