Mahmoudabadbozchelou Mohammadamin, Karniadakis George Em, Jamali Safa
Department of Mechanical and Industrial Engineering, Northeastern University, Boston, Massachusetts 02115, USA.
Division of Applied Mathematics, Brown University, Providence, Rhode Island 02912, USA.
Soft Matter. 2021 Dec 22;18(1):172-185. doi: 10.1039/d1sm01298c.
Time- and rate-dependent material functions in non-Newtonian fluids in response to different deformation fields pose a challenge in integrating different constitutive models into conventional computational fluid dynamic platforms. Considering their relevance in many industrial and natural settings alike, robust data-driven frameworks that enable accurate modeling of these complex fluids are of great interest. The main goal is to solve the coupled Partial Differential Equations (PDEs) consisting of the constitutive equations that relate the shear stress to the deformation and fully capture the behavior of the fluid under various flow protocols with different boundary conditions. In this work, we present non-Newtonian physics-informed neural networks (nn-PINNs) for solving systems of coupled PDEs adopted for complex fluid flow modeling. The proposed nn-PINN method is employed to solve the constitutive models in conjunction with conservation of mass and momentum by benefiting from Automatic Differentiation (AD) in neural networks, hence avoiding the mesh generation step. nn-PINNs are tested for a number of different complex fluids with different constitutive models and for several flow protocols. These include a range of Generalized Newtonian Fluid (GNF) empirical constitutive models, as well as some phenomenological models with memory effects and thixotropic timescales. nn-PINNs are found to obtain the correct solution of complex fluids in spatiotemporal domains with good accuracy compared to the ground truth solution. We also present applications of nn-PINNs for complex fluid modeling problems with unknown boundary conditions on the surface, and show that our approach can successfully recover the velocity and stress fields across the domain, including the boundaries, given some sparse velocity measurements.
非牛顿流体中与时间和速率相关的材料函数,在响应不同变形场时,给将不同本构模型集成到传统计算流体动力学平台带来了挑战。考虑到它们在许多工业和自然环境中的相关性,能够对这些复杂流体进行精确建模的强大数据驱动框架备受关注。主要目标是求解由本构方程组成的耦合偏微分方程(PDE),这些方程将剪应力与变形联系起来,并在不同边界条件下的各种流动协议下充分捕捉流体的行为。在这项工作中,我们提出了用于求解复杂流体流动建模所采用的耦合PDE系统的非牛顿物理信息神经网络(nn-PINN)。所提出的nn-PINN方法通过利用神经网络中的自动微分(AD)来求解本构模型,并结合质量和动量守恒,从而避免了网格生成步骤。nn-PINN针对多种具有不同本构模型的不同复杂流体以及几种流动协议进行了测试。这些包括一系列广义牛顿流体(GNF)经验本构模型,以及一些具有记忆效应和触变时间尺度的唯象模型。与真实解相比,发现nn-PINN能够在时空域中以良好的精度获得复杂流体的正确解。我们还展示了nn-PINN在表面边界条件未知的复杂流体建模问题中的应用,并表明我们的方法在给定一些稀疏速度测量的情况下,能够成功恢复包括边界在内的整个域中的速度和应力场。