论文标题
基于深度学习的反向建模方法:地下流程示例
Deep-Learning based Inverse Modeling Approaches: A Subsurface Flow Example
论文作者
论文摘要
深度学习已经取得了良好的表现,并显示出巨大的解决前进和反问题的潜力。在这项工作中,提出并比较了两类基于创新的基于深度学习的反向建模方法。第一类是深度学习的基于替代的反转方法,其中理论引导的神经网络(TGNN)被构造为对于具有不确定模型参数的问题的深度学习替代物。通过纳入物理定律和其他约束,可以在有限的模拟运行中构建TGNN替代物,并显着加速反转过程。提出了三种基于TGNN的替代反转方法,包括梯度方法,迭代集合(IES)和训练方法。第二类是直接学习的直流方法,其中提出了用地理信息(称为TGNN-GEO)约束的TGNN用于直接逆建模。在TGNN-GEO中,引入了两个神经网络,以近似各自的随机模型参数和解决方案。由于可以纳入先前的地统计信息,因此即使在空间测量稀疏或不精确的先前统计数据的情况下,基于TGNN-GEO的直接输入方法也很好地工作。尽管所提出的基于深度学习的反向建模方法本质上是普遍的,因此适用于各种各样的问题,但它们经过几个地下流问题进行了测试。发现以高效率获得令人满意的结果。此外,针对基于深度学习的反转方法的两种类别进一步分析了优势和缺点。
Deep-learning has achieved good performance and shown great potential for solving forward and inverse problems. In this work, two categories of innovative deep-learning based inverse modeling methods are proposed and compared. The first category is deep-learning surrogate-based inversion methods, in which the Theory-guided Neural Network (TgNN) is constructed as a deep-learning surrogate for problems with uncertain model parameters. By incorporating physical laws and other constraints, the TgNN surrogate can be constructed with limited simulation runs and accelerate the inversion process significantly. Three TgNN surrogate-based inversion methods are proposed, including the gradient method, the iterative ensemble smoother (IES), and the training method. The second category is direct-deep-learning-inversion methods, in which TgNN constrained with geostatistical information, named TgNN-geo, is proposed for direct inverse modeling. In TgNN-geo, two neural networks are introduced to approximate the respective random model parameters and the solution. Since the prior geostatistical information can be incorporated, the direct-inversion method based on TgNN-geo works well, even in cases with sparse spatial measurements or imprecise prior statistics. Although the proposed deep-learning based inverse modeling methods are general in nature, and thus applicable to a wide variety of problems, they are tested with several subsurface flow problems. It is found that satisfactory results are obtained with a high efficiency. Moreover, both the advantages and disadvantages are further analyzed for the proposed two categories of deep-learning based inversion methods.