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首页> 外文期刊>Journal of geophysical research. Solid earth: JGR >Shale Anisotropy Model Building Based on Deep Neural Networks
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Shale Anisotropy Model Building Based on Deep Neural Networks

机译:基于深神经网络的页岩各向异性模型建筑

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摘要

Seismic anisotropy parameters are essential in the processing and interpretation of modern array data with multicomponent, long offsets and wide azimuth acquisitions. Traditional well logs do not measure anisotropy in a vertical well and thus cannot provide the needed information. Conventional calibration-based as well as recent inversion-based rock physics modeling methods involve tuning parameters and subjective choices that are largely empirical and difficult to generalize. Here we present a machine learning approach to alleviate these problems. Since it is impossible to collect massive labeled field well log data, we generate paired synthetic data of features (porosity, density, vertical P and S wave velocities, P wave and shear moduli) and labels (bulk and shear moduli of rock matrices and aspect ratio of ellipsoidal cracks). By tuning hyperparameters we obtain an optimal fully connected neural network with four hidden layers that fits well with the synthetic data. The neural network is applied to published laboratory measurements and field well log data from a Chinese well and a U.S. well without any modification. We show that anisotropy models estimated by the deep neural network agree well with the inversion results and with the laboratory measurements. The neural network optimized by extensive training based on massive synthetic data removes the subjectivity in parameter selection, generalizes to different geological environments, and has the potential to provide real-time anisotropy estimation while logging.
机译:地震各向异性参数对于具有多组分,长偏移和广方形采集的现代阵列数据的处理和解释是必不可少的。传统的井日志在垂直井中不测量各向异性,因此不能提供所需的信息。常规校准的基于校准以及最近的倒置的岩石物理建模方法涉及调整参数和主观选择,这些参数和主观选择在很大程度上且难以概括。在这里,我们提出了一种机器学习方法来缓解这些问题。由于不可能收集大规模标记的现场井日志数据,因此我们生成特征的成对合成数据(孔隙度,密度,垂直P和S波速度,P波和剪切模量)和标签(岩石矩阵的散块和剪切模量)椭圆裂缝的比例)。通过调整HyperParameters,我们获得了具有四个隐藏图层的最佳完全连接的神经网络,适合合成数据。神经网络应用于来自中国井和美国的实验室测量和场井数数据而没有任何修改。我们表明深度神经网络估计的各向异性模型与反演结果和实验室测量很好。基于大规模合成数据的广泛训练优化的神经网络消除了参数选择中的主观性,推广到不同的地质环境,并且有可能在记录时提供实时各向异性估计。

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