A General Method for Solving Differential Equations of Motion Using Physics-Informed Neural Networks

被引:0
|
作者
Zhang, Wenhao [1 ]
Ni, Pinghe [1 ]
Zhao, Mi [1 ]
Du, Xiuli [1 ]
机构
[1] Beijing Univ Technol, Key Lab Urban Secur & Disaster Engn, Minist Educ, Beijing 100024, Peoples R China
来源
APPLIED SCIENCES-BASEL | 2024年 / 14卷 / 17期
关键词
physics-informed neural networks; differential equations of motion; loss function; multiple degrees of freedom; activation function; LEARNING APPROACH;
D O I
10.3390/app14177694
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The physics-informed neural network (PINN) is an effective alternative method for solving differential equations that do not require grid partitioning, making it easy to implement. In this study, using automatic differentiation techniques, the PINN method is employed to solve differential equations by embedding prior physical information, such as boundary and initial conditions, into the loss function. The differential equation solution is obtained by minimizing the loss function. The PINN method is trained using the Adam algorithm, taking the differential equations of motion in structural dynamics as an example. The time sample set generated by the Sobol sequence is used as the input, while the displacement is considered the output. The initial conditions are incorporated into the loss function as penalty terms using automatic differentiation techniques. The effectiveness of the proposed method is validated through the numerical analysis of a two-degree-of-freedom system, a four-story frame structure, and a cantilever beam. The study also explores the impact of the input samples, the activation functions, the weight coefficients of the loss function, and the width and depth of the neural network on the PINN predictions. The results demonstrate that the PINN method effectively solves the differential equations of motion of damped systems. It is a general approach for solving differential equations of motion.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Physics-informed kernel function neural networks for solving partial differential equations
    Fu, Zhuojia
    Xu, Wenzhi
    Liu, Shuainan
    [J]. NEURAL NETWORKS, 2024, 172
  • [2] Physics-informed kernel function neural networks for solving partial differential equations
    Fu, Zhuojia
    Xu, Wenzhi
    Liu, Shuainan
    [J]. Neural Networks, 2024, 172
  • [3] Invariant Physics-Informed Neural Networks for Ordinary Differential Equations
    Arora, Shivam
    Bihlo, Alex
    Valiquette, Francis
    [J]. JOURNAL OF MACHINE LEARNING RESEARCH, 2024, 25 : 1 - 24
  • [4] MultiPINN: multi-head enriched physics-informed neural networks for differential equations solving
    Li K.
    [J]. Neural Computing and Applications, 2024, 36 (19) : 11371 - 11395
  • [5] Solving the pulsar equation using physics-informed neural networks
    Stefanou, Petros
    Urban, Jorge F.
    Pons, Jose A.
    [J]. MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY, 2023, 526 (01) : 1504 - 1511
  • [6] Control of Partial Differential Equations via Physics-Informed Neural Networks
    Garcia-Cervera, Carlos J.
    Kessler, Mathieu
    Periago, Francisco
    [J]. JOURNAL OF OPTIMIZATION THEORY AND APPLICATIONS, 2023, 196 (02) : 391 - 414
  • [7] Control of Partial Differential Equations via Physics-Informed Neural Networks
    Carlos J. García-Cervera
    Mathieu Kessler
    Francisco Periago
    [J]. Journal of Optimization Theory and Applications, 2023, 196 : 391 - 414
  • [8] Solving spatiotemporal partial differential equations with Physics-informed Graph Neural Network
    Xiang, Zixue
    Peng, Wei
    Yao, Wen
    Liu, Xu
    Zhang, Xiaoya
    [J]. APPLIED SOFT COMPUTING, 2024, 155
  • [9] Solving combustion chemical differential equations via physics-informed neural network
    Wang Y.-C.
    Xing J.-K.
    Luo K.
    Wang H.-O.
    Fan J.-R.
    [J]. Zhejiang Daxue Xuebao (Gongxue Ban)/Journal of Zhejiang University (Engineering Science), 2022, 56 (10): : 2084 - 2092
  • [10] Multi-Net strategy: Accelerating physics-informed neural networks for solving partial differential equations
    Wang, Yunzhuo
    Li, Jianfeng
    Zhou, Liangying
    Sun, Jingwei
    Sun, Guangzhong
    [J]. SOFTWARE-PRACTICE & EXPERIENCE, 2022, 52 (12): : 2513 - 2536