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Coupled generative adversarial and auto-encoder neural networks to reconstruct three-dimensional multi-scale porous media

机译:耦合生成的对抗和自动编码器神经网络重建三维多尺度多孔介质

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In this study, coupled Generative Adversarial and Auto-Encoder neural networks have been used to reconstruct realizations of three-dimensional porous media. The gradient-descent-based optimization method is used for training and stabilizing the neural networks. The multi-scale reconstruction has been conducted for both sandstone and carbonate samples from an Iranian oilfield. The sandstone contains inter and intra-grain porosity. The generative adversarial network predicts the inter-grain pores and the auto-encoder provides the generative adversarial network result with intra-grain pores (micro-porosity). Different matching criteria, including porosity, permeability, auto-correlation function, and visual interpretation have been used to investigate the performance of the models. This methodology provides researchers with a reliable method to reconstruct multi-scale realizations of porous media.
机译:在该研究中,已经使用偶联的生成的对抗和自动编码器神经网络来重建三维多孔介质的实现。 基于梯度 - 下降的优化方法用于训练和稳定神经网络。 已经为伊朗油田的砂岩和碳酸盐样品进行了多尺度重建。 砂岩含有间晶粒和粒状孔隙率。 生成的对抗性网络预测晶粒间孔隙,并且自动编码器提供具有晶粒内孔(微孔隙率)的生成的对抗网络结果。 已经使用不同的匹配标准,包括孔隙度,渗透性,自相关函数和视觉解释来研究模型的性能。 该方法提供了具有可靠方法来重建多孔介质的多规模实现的研究人员。

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