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Prediction of Subsurface NMR T2 Distributions in a Shale Petroleum System Using Variational Autoencoder-Based Neural Networks

机译:基于变分编码器的神经网络预测页岩石油系统中地下NMR T2分布

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Nuclear magnetic resonance (NMR) is used in geological characterization to investigate the internal structure of geomaterials filled with fluids containing 1H and 13C nuclei. Subsurface NMR measurements are generally acquired as well logs that provide information about fluid mobility and fluid-filled pore size distribution. Acquisition of subsurface NMR log is limited due to operational and instrumentation challenges. We implement a variational autoencoder (VAE) for improved training of a neural network (NN) to generate the NMR-T2 distributions along a 300-ft depth interval in a shale petroleum system at 11000-ft depth below sea level. Subsurface mineral and kerogen volume fractions, fluid saturations, and T2 distributions acquired at 460 discrete depth points were used as the training data set. The trained VAE-NN successfully predicts the T2 distributions for 100 discrete depths at an R2 of 0.75 and normalized root-mean-square deviation of 15%.
机译:核磁共振(NMR)用于地质特征研究中,研究了充填有 1 H和 13 C核的流体的地质材料的内部结构。通常采集地下NMR测量值以及测井曲线,以提供有关流体流动性和流体充满孔径分布的信息。由于操作和仪器方面的挑战,地下NMR测井的采集受到限制。我们实现了变分自动编码器(VAE),用于改进神经网络(NN)的训练,以在低于海平面11000英尺的页岩石油系统中沿300英尺深度的间隔生成NMR-T2分布。在460个离散深度点获得的地下矿物和干酪根的体积分数,流体饱和度和T2分布用作训练数据集。训练有素的VAE-NN成功地预测了100个离散深度的T2分布,R 2 为0.75,归一化均方差为15%。

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