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首页> 外文期刊>Journal of geophysical research. Solid earth: JGR >Interpreting the Subsurface Lithofacies at High Lithological Resolution by Integrating Information From Well-Log Data and Rock-Core Digital Images
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Interpreting the Subsurface Lithofacies at High Lithological Resolution by Integrating Information From Well-Log Data and Rock-Core Digital Images

机译:通过将信息与井 - 日志数据和摇滚核心数字图像集成来解释高岩性分辨率的地下岩散

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摘要

Spectral facies interpretation and classification methods have been proposed to improve the sophistication of interpretation of the subsurface heterogeneity. In the spectral facies interpretations, the intensity values of the RGB spectrum and the local entropy from rock-core digital images are used, and the results are compared to conventional electrofacies and expert petrophysical interpretations. During the classification, a practically applicable model that identifies the more detailed types of lithofacies is constructed by using a multilayer neural network model, with the interpreted spectral facies and well-log data from the corresponding depths used as response and explanatory variables, respectively. Core digital images and five types of well-log data from the Satyr 5 well in Western Australia are applied for the actual implementation. Through comparative interpretations, three spectral facies are identified as separable lithofacies (i.e., shale, shaly-sandstone, and sandstone lithofacies), which is supported by detailed HyLogger mineralogy along the tested cores. On the other hand, two electrofacies (i.e., shale-dominant and sand-dominant facies) are identified by a conventional method. In the classification based on the spectral facies, the trained multilayer neural network model showed high prediction accuracy for all the lithofacies. Based on these observations, it is confirmed that more precise lithofacies interpretation and classification can be conducted with the developed methods. The developed methods have the potential to improve subsurface characterization when high lithological resolution is essential.
机译:已经提出了光谱相解释和分类方法,以改善地下异质性解释的复杂性。在光谱相的解释中,使用RGB频谱的强度值和来自岩石核数字图像的局部熵,并将结果与​​常规电散射和专家的岩石物理解释进行比较。在分类期间,通过使用多层神经网络模型来构建识别更详细类型的锂离样类型的实际应用模型,其中解释的光谱相和从用作响应和解释变量的相应深度的良好数据。核心数字图像和来自西澳大利亚州Satyr 5的五种类型的良好数据数据适用于实际实现。通过比较解释,将三个光谱相鉴定为可分离的锂外(即,页岩,Shaly-Sandstone和Sandstone Lithofacies),其通过沿着测试核心的详细的Hylogger矿物支持。另一方面,通过常规方法鉴定两个电缩膜(即页岩 - 主导和砂显性面)。在基于光谱相的分类中,训练有素的多层神经网络模型对所有锂缺陷术显示了高预测精度。基于这些观察结果,证实可以通过开发方法进行更精确的锂离样解释和分类。当高岩性分辨率至关重要时,开发方法有可能改善地下表征。

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