不可压缩纳维-斯托克斯方程的高效 hp-Variational PINNs 框架

Thivin Anandh, Divij Ghose, Ankit Tyagi, Abhineet Gupta, Suranjan Sarkar, Sashikumaar Ganesan
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摘要

物理信息神经网络(PINNs)能够通过将偏微分方程(PDEs)的残差纳入其损失函数来求解偏微分方程(PDEs)。变分物理信息神经网络(VPINN)和 hp-VPINNs 在其损失函数中使用了 PDE 残差的变分形式。虽然 hp-VPINNs 与传统 PINNs 相比显示出良好的前景,但它们的训练时间较长,而且缺乏能够处理复杂几何形状的框架,这限制了它们在更复杂 PDEs 中的应用。因此,迄今为止,hp-VPINNs 还没有应用于解决 Navier-Stokes 方程以及 CFD 中的其他问题。FastVPINNs 的推出就是为了解决这些挑战,它结合了基于张量的损失计算,大大提高了训练效率。此外,通过使用双线性变换,FastVPINNs 框架能够求解复杂几何体上的 PDE。在本研究中,我们将 FastVPINNs 框架扩展到了矢量值问题,尤其侧重于求解不可压缩的纳维尔-斯托克斯方程的二维正演和反演问题,包括盖子驱动空腔流、科瓦斯内流和雷诺数高达 200 的后向阶梯流等问题。我们的结果表明,与文献记载的 PINNs 算法相比,在保持相同精度的情况下,训练时间缩短了 2 倍。通过准确识别底层流动的雷诺数,我们进一步展示了该框架在解决不可压缩纳维-斯托克斯方程逆问题时的效率。此外,该框架处理复杂几何形状的能力突出了它在计算流体动力学领域更广泛应用的潜力。这种实现方式为 hp-VPINN 的研究开辟了新途径,有可能将其应用扩展到更复杂的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient hp-Variational PINNs framework for incompressible Navier-Stokes equations
Physics-informed neural networks (PINNs) are able to solve partial differential equations (PDEs) by incorporating the residuals of the PDEs into their loss functions. Variational Physics-Informed Neural Networks (VPINNs) and hp-VPINNs use the variational form of the PDE residuals in their loss function. Although hp-VPINNs have shown promise over traditional PINNs, they suffer from higher training times and lack a framework capable of handling complex geometries, which limits their application to more complex PDEs. As such, hp-VPINNs have not been applied in solving the Navier-Stokes equations, amongst other problems in CFD, thus far. FastVPINNs was introduced to address these challenges by incorporating tensor-based loss computations, significantly improving the training efficiency. Moreover, by using the bilinear transformation, the FastVPINNs framework was able to solve PDEs on complex geometries. In the present work, we extend the FastVPINNs framework to vector-valued problems, with a particular focus on solving the incompressible Navier-Stokes equations for two-dimensional forward and inverse problems, including problems such as the lid-driven cavity flow, the Kovasznay flow, and flow past a backward-facing step for Reynolds numbers up to 200. Our results demonstrate a 2x improvement in training time while maintaining the same order of accuracy compared to PINNs algorithms documented in the literature. We further showcase the framework's efficiency in solving inverse problems for the incompressible Navier-Stokes equations by accurately identifying the Reynolds number of the underlying flow. Additionally, the framework's ability to handle complex geometries highlights its potential for broader applications in computational fluid dynamics. This implementation opens new avenues for research on hp-VPINNs, potentially extending their applicability to more complex problems.
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