With the increases in computational power and advances in machine learning, data-driven learning-based methods have gained significant attention in solving PDEs. Physics-informed neural networks (PINNs) have recently emerged and succeeded in various forward and inverse PDEs problems thanks to their excellent properties, such as flexibility, mesh-free solutions, and unsupervised training. However, their slower convergence speed and relatively inaccurate solutions often limit their broader applicability in many science and engineering domains. This paper proposes a new kind of data-driven PDEs solver, physics-informed cell representations (PIXEL), elegantly combining classical numerical methods and learning-based approaches. We adopt a grid structure from the numerical methods to improve accuracy and convergence speed and overcome the spectral bias presented in PINNs. Moreover, the proposed method enjoys the same benefits in PINNs, e.g., using the same optimization frameworks to solve both forward and inverse PDE problems and readily enforcing PDE constraints with modern automatic differentiation techniques. We provide experimental results on various challenging PDEs that the original PINNs have struggled with and show that PIXEL achieves fast convergence speed and high accuracy.
翻译:随着计算能力的提高和机器学习的进步,数据驱动的学习方法在解决PDE问题方面受到极大重视。物理知情神经网络(PINNs)最近出现并成功解决了各种前方和反方PDE问题,因为其特性优异,如灵活性、无网状解决方案和无人监督的培训。然而,这些网络的趋同速度和相对不准确的解决办法往往限制其在许多科学和工程领域的更广泛适用性。本文件提出了一种新的数据驱动的PDEs解答器、物理知情的细胞表征(PIXEL),优雅地结合了经典的数字方法和基于学习的方法。我们采用了数字方法的网格结构来提高精度和趋同速度,克服PINNs提出的光谱偏差。此外,拟议的方法在PINNs也享有同样的好处,例如,利用相同的优化框架来解决前方和反面的PDE问题,以及以现代自动区分技术方便地执行PDE限制。我们从最初的PINNs所挣扎的各种具有挑战性的PDEs提供了实验性结果,并表明PIXEL实现了快速的趋同速度和精确性。