论文标题

通过耦合TGNN替代模型对多孔介质中两相流的不确定性定量

Uncertainty quantification of two-phase flow in porous media via coupled-TgNN surrogate model

论文作者

Li, Jian, Zhang, Dongxiao, He, Tianhao, Zheng, Qiang

论文摘要

地下两相流的不确定性定量(UQ)通常需要在不同条件下进行大量的前向模拟执行。在这项工作中,基于新颖的理论引导的神经网络(TGNN)的替代模型构建了旨在促进在令人满意的准确性的前提下计算效率。这种提出的方​​法的核心概念是在整个网络的顶部桥接两个单独的块。他们以耦合形式为TGNN模型的基础,该模型反映了两相流动方程中压力和水饱和度的耦合性质。 TGNN模型不仅依赖于标记的数据,而且还将基本的科学理论和经验规则(例如,治理方程,随机参数字段,边界和初始条件,井条件和专业知识)作为其他组成部分。通过不同数量的标记数据和搭配点以及数据噪声的存在,测试了基于TGNN的替代模型在两相流量问题上的性能。提出的基于TGNN的替代模型提供了一种解决耦合的非线性两相流问题的有效方法,与纯粹的数据驱动的替代模型相比,相比,它表现出良好的准确性和强大的鲁棒性。通过将基于TGNN的替代模型与Monte Carlo方法相结合,可以以最低成本执行UQ任务来评估统计数量。由于随机场的异质性强烈影响替代模型的结果,因此将相应的方差和相关长度添加到神经网络的输入中,以保持其预测能力。结果表明,基于TGNN的替代模型在地下两相流的UQ问题中实现了令人满意的精度,稳定性和效率。

Uncertainty quantification (UQ) of subsurface two-phase flow usually requires numerous executions of forward simulations under varying conditions. In this work, a novel coupled theory-guided neural network (TgNN) based surrogate model is built to facilitate computation efficiency under the premise of satisfactory accuracy. The core notion of this proposed method is to bridge two separate blocks on top of an overall network. They underlie the TgNN model in a coupled form, which reflects the coupling nature of pressure and water saturation in the two-phase flow equation. The TgNN model not only relies on labeled data, but also incorporates underlying scientific theory and experiential rules (e.g., governing equations, stochastic parameter fields, boundary and initial conditions, well conditions, and expert knowledge) as additional components into the loss function. The performance of the TgNN-based surrogate model for two-phase flow problems is tested by different numbers of labeled data and collocation points, as well as the existence of data noise. The proposed TgNN-based surrogate model offers an effective way to solve the coupled nonlinear two-phase flow problem and demonstrates good accuracy and strong robustness when compared with the purely data-driven surrogate model. By combining the accurate TgNN-based surrogate model with the Monte Carlo method, UQ tasks can be performed at a minimum cost to evaluate statistical quantities. Since the heterogeneity of the random fields strongly impacts the results of the surrogate model, corresponding variance and correlation length are added to the input of the neural network to maintain its predictive capacity. The results show that the TgNN-based surrogate model achieves satisfactory accuracy, stability, and efficiency in UQ problems of subsurface two-phase flow.

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