A structure-preserving neural differential operator with embedded Hamiltonian constraints for modeling structural dynamics

被引:0
|
作者
David A. Najera-Flores
Michael D. Todd
机构
[1] University of California San Diego,Department of Structural Engineering
[2] ATA Engineering,undefined
[3] Inc.,undefined
来源
Computational Mechanics | 2023年 / 72卷
关键词
Hamiltonian mechanics; Nonlinear structural dynamics; Structure-preserving machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
Data-driven machine learning models are useful for modeling complex structures based on empirical observations, bypassing the need to generate a physical model where the physics is not well known or otherwise difficult to model. One disadvantage of purely data-driven approaches is that they tend to perform poorly in regions outside the original training domain. To mitigate this limitation, physical knowledge about the structure can be embedded in the neural network architecture. For large-scale systems, relevant physical properties such as the system state matrices may be expensive to compute. One way around this problem is to use scalar functionals, such as energy, to constrain the network to operate within physical bounds. We propose a neural network framework based on Hamiltonian mechanics to enforce a physics-informed structure to the model. The Hamiltonian framework allows us to relate the energy of the system to the measured quantities through the Euler–Lagrange equations of motion. In this work, the potential, kinetic energy, and Rayleigh damping terms are each modeled with a multilayer perceptron. Auto-differentiation is used to compute partial derivatives and assemble the relevant equations. The network incorporates a numerics-informed loss function via the residual of a multi-step integration term for deployment as a neural differential operator. Our approach incorporates a physics-constrained autoencoder to perform coordinate transformation between measured and generalized coordinates. This approach results in a physics-informed, structure-preserving model of the structure that can form the basis of a digital twin for many applications. The technique is demonstrated on computational examples.
引用
收藏
页码:241 / 252
页数:11
相关论文
共 50 条
  • [21] COMPUTATIONAL EXPERIENCE WITH STRUCTURE-PRESERVING HAMILTONIAN SOLVERS IN OPTIMAL CONTROL
    Sima, Vasile
    ICINCO 2011: PROCEEDINGS OF THE 8TH INTERNATIONAL CONFERENCE ON INFORMATICS IN CONTROL, AUTOMATION AND ROBOTICS, VOL 1, 2011, : 91 - 96
  • [22] Geometric Optimization for Structure-Preserving Model Reduction of Hamiltonian Systems
    Bendokat, Thomas
    Zimmermann, Ralf
    IFAC PAPERSONLINE, 2022, 55 (20): : 457 - 462
  • [23] The Hamiltonian Structure-Preserving Control and Some Applications to Nonlinear Astrodynamics
    Xu, Ming
    Wei, Yan
    Liu, Shengli
    JOURNAL OF APPLIED MATHEMATICS, 2013,
  • [24] Formation Flying on Elliptic Orbits by Hamiltonian Structure-Preserving Control
    Xu, Ming
    Liang, Yuying
    JOURNAL OF GUIDANCE CONTROL AND DYNAMICS, 2018, 41 (01) : 294 - 302
  • [25] Structure-preserving H?, control for port-Hamiltonian systems
    Breiten, Tobias
    Karsai, Attila
    SYSTEMS & CONTROL LETTERS, 2023, 174
  • [26] Structure-preserving Sparse Identification of Nonlinear Dynamics for Data-driven Modeling
    Lee, Kookjin
    Trask, Nathaniel
    Stinis, Panos
    MATHEMATICAL AND SCIENTIFIC MACHINE LEARNING, VOL 190, 2022, 190
  • [27] Multispecies structure-preserving particle discretization of the Landau collision operator
    Zonta, Filippo
    Pusztay, Joseph V.
    Hirvijoki, Eero
    PHYSICS OF PLASMAS, 2022, 29 (12)
  • [28] Structure-Preserving Stabilization for Hamiltonian System and its Applications in Solar Sail
    Xu, Ming
    Xu, Shijie
    JOURNAL OF GUIDANCE CONTROL AND DYNAMICS, 2009, 32 (03) : 997 - 1004
  • [29] Local structure-preserving algorithms for partial differential equations
    YuShun Wang
    Bin Wang
    MengZhao Qin
    Science in China Series A: Mathematics, 2008, 51 : 2115 - 2136
  • [30] SympNets: Intrinsic structure-preserving symplectic networks for identifying Hamiltonian systems
    Jin, Pengzhan
    Zhang, Zhen
    Zhu, Aiqing
    Tang, Yifa
    Karniadakis, George Em
    NEURAL NETWORKS, 2020, 132 : 166 - 179