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U-net generative adversarial network for subsurface facies modeling

机译:用于地下相框的U-Net生成对抗网络建模

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摘要

Subsurface models are central pieces of information in different earth-related disciplines such as groundwater management and hydrocarbon reservoir characterization. These models are normally obtained using geostatistical simulation methods. Recently, methods based on deep learning algorithms have been applied as subsurface model generators. However, there are still challenges on how to include conditioning data and ensure model variability within a set of realizations. We illustrate the potential of Generative Adversarial Networks (GANs) to create unconditional and conditional facies models. Based on a synthetic facies dataset, we first train a Deep Convolution GAN (DCGAN) to produce unconditional facies models. Then, we show how image-to-image translation based on a U-Net GAN framework, including noise-layers, content loss function and diversity loss function, is used to model conditioning geological facies. Results show that GANs are powerful models to capture complex geological facies patterns and to generate facies realizations indistinguishable from the ones comprising the training dataset. The U-Net GAN framework performs well in providing variable models while honoring conditioning data in several scenarios. The results shown herein are expected to spark a new generation of methods for subsurface geological facies with fragmentary measurements.
机译:地下模型是不同地球相关学科的中央信息,如地下水管理和碳氢化合物储层表征。这些模型通常使用地统计仿真方法获得。最近,基于深度学习算法的方法已被应用为地下模型发生器。但是,如何包含调节数据并确保在一组真实内的模型变异性的挑战。我们说明了生成的对抗性网络(GANS)的潜力来创建无条件和有条件的相片模型。基于合成相数据集,我们首先培养了一个深卷积的GaN(DCGAN)来生产无条件的面部模型。然后,我们展示了基于U-Net GaN框架的图像到图像图像 - 图像 - 图像图像如何,包括噪声层,内容丢失功能和分集丢失功能,用于模拟地质相的调节。结果表明,GAN是捕获复杂地质面模式的强大模型,并生成与包括训练数据集的不同区别的相识。 U-Net GaN框架在提供变量模型时表现良好,同时在若干方案中尊重调节数据。预计本文所示的结果将引发新一代的地质地质相对于局部测量的方法。

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