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Generative adversarial network as a stochastic subsurface model reconstruction

机译:生成的对抗网络作为随机地下模型重建

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摘要

In geosciences, generative adversarial networks have been successfully applied to generate multiple realizations of rock properties from geological priors described by training images, within probabilistic seismic inversion and history matching methods. Here, the use of generative adversarial networks is proposed not as a model generator but as a model reconstruction technique for subsurface models where we do have access to sparse measurements of the subsurface properties of interest. We use sets of geostatistical realizations as training datasets combined with observed experimental data. These networks are applied to reconstruct nonstationary sedimentary channels and continuous elastic properties, such as P-wave propagation velocity, in the presence and absence of conditioning data. The reconstruction examples shown herein can be considered a post-processing step applied after seismic inversion and performed at those locations where the convergence of the inversion is low, and therefore, the inverted models are associated with high uncertainty. The application examples show the suitability of generative adversarial networks in learning the spatial structure of the data from sets of geostatistical realizations. The generated models reproduce the first- and second-order statistical moments and the spatial covariance matrix of the training dataset.
机译:在地球科学中,已经成功地应用了生成的对抗网络以在概率的地震反演和历史匹配方法中产生从训练图像中描述的地质前沿的岩石属性的多次实现。这里,提出了生成的对抗网络的使用,而是作为模型发生器,而是作为用于地下模型的模型重建技术,我们确实可以访问感兴趣的地下属性的稀疏测量。我们使用一套地统计学实现作为训练数据集结合了观察到的实验数据。这些网络被应用于在存在和不存在调节数据的情况下重建非间断沉积通道和连续弹性特性,例如P波传播速度。本文所示的重建示例可以被认为是在地震反转之后施加的后处理步骤,并且在倒置的收敛低的那些位置执行,因此,倒置模型与高不确定性相关联。应用实施例表明了生成的对抗性网络在从地统计学的群体中学习数据的空间结构的适用性。生成的模型再现训练数据集的第一和二阶统计矩和空间协方差矩阵。

著录项

  • 来源
    《Computational Geosciences》 |2020年第4期|1673-1692|共20页
  • 作者单位

    CERENA/DECivil Instituto Superior Tecnico Universidade de Lisboa Av. Rovisco Pais 1 1049-001 Lisboa Portugal;

    CERENA/DECivil Instituto Superior Tecnico Universidade de Lisboa Av. Rovisco Pais 1 1049-001 Lisboa Portugal;

    CERENA/DECivil Instituto Superior Tecnico Universidade de Lisboa Av. Rovisco Pais 1 1049-001 Lisboa Portugal;

    CERENA/DECivil Instituto Superior Tecnico Universidade de Lisboa Av. Rovisco Pais 1 1049-001 Lisboa Portugal;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Generative adversarial network; Stochastic modeling; Model reconstruction;

    机译:生成对抗性网络;随机造型;模型重建;
  • 入库时间 2022-08-18 21:08:09

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