基于物理启发的机器学习求解多孔介质中的流体流动:一种新的油藏模拟计算算法

C. Sambo, Yin Feng
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引用次数: 1

摘要

物理启发机器学习(PIML)正在成为求解偏微分方程(PDEs)的一种可行的数值方法。最近,该方法已经成功地进行了测试和验证,以找到线性和非线性偏微分方程的解。据我们所知,之前还没有研究检验过PIML方法在处理油藏工程边界条件、裂缝、源和库条件方面的可靠性和能力。在这里,我们探索了PIML在模拟多孔介质中二维单相、不可压缩和稳态流体流动方面的潜力。PIML方法的主要思想是将底层物理定律(控制方程、边界、源和集约束)作为先验信息编码到深度神经网络中。研究了PIML方法在处理无流、恒压和混合油藏边界等油藏工程边界条件下的能力。结果表明,该方法性能良好,可与解析解相媲美。此外,我们还研究了PIML方法在处理通量(汇项和源项)方面的潜力。我们的结果表明,PIML不能提供可接受的无流边界条件的预测。然而,它提供了可接受的恒压边界条件的预测。我们还评估了PIML方法处理骨折的能力。结果表明,该方法能较好地预测无流边界平行裂缝。然而,在复杂裂缝情况下,其精度受定压边界条件的限制。我们还发现混合和自适应激活函数提高了PIML模拟复杂裂缝和通量的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physics Inspired Machine Learning for Solving Fluid Flow in Porous Media: A Novel Computational Algorithm for Reservoir Simulation
The Physics Inspired Machine Learning (PIML) is emerging as a viable numerical method to solve partial differential equations (PDEs). Recently, the method has been successfully tested and validated to find solutions to both linear and non-linear PDEs. To our knowledge, no prior studies have examined the PIML method in terms of their reliability and capability to handle reservoir engineering boundary conditions, fractures, source and sink terms. Here we explored the potential of PIML for modelling 2D single phase, incompressible, and steady state fluid flow in porous media. The main idea of PIML approaches is to encode the underlying physical law (governing equations, boundary, source and sink constraints) into the deep neural network as prior information. The capability of the PIML method in handling reservoir engineering boundary including no-flow, constant pressure, and mixed reservoir boundary conditions is investigated. The results show that the PIML performs well, giving good results comparable to analytical solution. Further, we examined the potential of PIML approach in handling fluxes (sink and source terms). Our results demonstrate that the PIML fail to provide acceptable prediction for no-flow boundary conditions. However, it provides acceptable predictions for constant pressure boundary conditions. We also assessed the capability of the PIML method in handling fractures. The results indicate that the PIML can provide accurate predictions for parallel fractures subjected to no-flow boundary. However, in complex fractures scenario its accuracy is limited to constant pressure boundary conditions. We also found that mixed and adaptive activation functions improve the performance of PIML for modeling complex fractures and fluxes.
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