论文标题

通过理论引导的卷积神经网络,基于深度学习的地质模型的高尺度方法

Deep-learning-based upscaling method for geologic models via theory-guided convolutional neural network

论文作者

Wang, Nanzhe, Liao, Qinzhuo, Chang, Haibin, Zhang, Dongxiao

论文摘要

大规模或高分辨率地质模型通常包含大量的网格块,可以用数值模拟器来计算要求且耗时。因此,它是从高尺度(高分辨率网格)到粗尺度系统的高档地质模型(例如液压电导率)的优势。事实证明,数值升级方法对于粗糙的地质模型是有效且健壮的,但是它们的效率仍有待提高。在这项工作中,提出了一种基于学习的方法来提高高档地质模型,该模型可以有助于显着提高提高效率。在深度学习方法中,对深度卷积神经网络(CNN)进行了训练,以近似液压电导率场的粗网格与液压头之间的关系,然后可以利用它们来代替数值求解器,同时求解每个粗块的流动方程。此外,物理定律(例如,治理方程和周期性边界条件)也可以纳入深CNN模型的训练过程中,该模型被称为理论引导的卷积神经网络(TGCNN)。考虑到物理信息,可以大大减少对深度学习模型的数据量的依赖。引入了几个地下流量病例,以测试提出的基于深度学习的上放大方法的性能,包括2D和3D病例,以及各向同性和各向异性病例。结果表明,深度学习方法可以为数值方法提供等效的升级精度,并且与数值升级相比,可以显着提高效率。

Large-scale or high-resolution geologic models usually comprise a huge number of grid blocks, which can be computationally demanding and time-consuming to solve with numerical simulators. Therefore, it is advantageous to upscale geologic models (e.g., hydraulic conductivity) from fine-scale (high-resolution grids) to coarse-scale systems. Numerical upscaling methods have been proven to be effective and robust for coarsening geologic models, but their efficiency remains to be improved. In this work, a deep-learning-based method is proposed to upscale the fine-scale geologic models, which can assist to improve upscaling efficiency significantly. In the deep learning method, a deep convolutional neural network (CNN) is trained to approximate the relationship between the coarse grid of hydraulic conductivity fields and the hydraulic heads, which can then be utilized to replace the numerical solvers while solving the flow equations for each coarse block. In addition, physical laws (e.g., governing equations and periodic boundary conditions) can also be incorporated into the training process of the deep CNN model, which is termed the theory-guided convolutional neural network (TgCNN). With the physical information considered, dependence on the data volume of training the deep learning models can be reduced greatly. Several subsurface flow cases are introduced to test the performance of the proposed deep-learning-based upscaling method, including 2D and 3D cases, and isotropic and anisotropic cases. The results show that the deep learning method can provide equivalent upscaling accuracy to the numerical method, and efficiency can be improved significantly compared to numerical upscaling.

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