He Weiwei, Li Jinzhao, Kong Xuan, Deng Lu
College of Civil Engineering, Hunan University, Changsha, 410082, China.
State Key Laboratory of Bridge Safety and Resilience, Key Laboratory for Damage Diagnosis of Engineering Structures of Hunan Province, College of Civil Engineering, Hunan University, Changsha, 410082, China.
Commun Eng. 2024 Nov 1;3(1):151. doi: 10.1038/s44172-024-00303-3.
Physics-informed neural network has emerged as a promising approach for solving partial differential equations. However, it is still a challenge for the computation of structural mechanics problems since it involves solving higher-order partial differential equations as the governing equations are fourth-order nonlinear equations. Here we develop a multi-level physics-informed neural network framework where an aggregation model is developed by combining multiple neural networks, with each one involving only first-order or second-order partial differential equations representing different physics information such as geometrical, constitutive, and equilibrium relations of the structure. The proposed framework demonstrates a remarkable advancement over the classical neural networks in terms of the accuracy and computation time. The proposed method holds the potential to become a promising paradigm for structural mechanics computation and facilitate the intelligent computation of digital twin systems.
物理信息神经网络已成为求解偏微分方程的一种很有前景的方法。然而,对于结构力学问题的计算来说,它仍然是一个挑战,因为其控制方程是四阶非线性方程,涉及求解高阶偏微分方程。在此,我们开发了一种多层次物理信息神经网络框架,其中通过组合多个神经网络来构建一个聚合模型,每个神经网络仅涉及表示结构的几何、本构和平衡关系等不同物理信息的一阶或二阶偏微分方程。所提出的框架在精度和计算时间方面比经典神经网络有显著进步。所提出的方法有潜力成为结构力学计算的一种有前景的范例,并促进数字孪生系统的智能计算。