Data-driven identification of nonlinear normal modes via physics-integrated deep learning

被引:0
作者
Shanwu Li
Yongchao Yang
机构
[1] Michigan Technological University,Department of Mechanical Engineering
来源
Nonlinear Dynamics | 2021年 / 106卷
关键词
Nonlinear normal mode; Invariant manifold; Nonlinear modal analysis; Deep learning;
D O I
暂无
中图分类号
学科分类号
摘要
Identifying the characteristic coordinates or modes of nonlinear dynamical systems is critical for understanding, analysis, and reduced-order modeling of the underlying complex dynamics. While normal modal transformation exactly characterizes any linear systems, there exists no such a general mathematical framework for nonlinear dynamical systems. Nonlinear normal modes (NNMs) are natural generalization of the normal modal transformation for nonlinear systems; however, existing research for identifying NNMs has relied on theoretical derivation or numerical computation from the closed-form equation of the system, which is usually unknown. In this work, we present a new data-driven framework based on physics-integrated deep learning for nonlinear modal identification of unknown nonlinear dynamical systems from the system response data only. Leveraging the universal modeling capacity and learning flexibility of deep neural networks, we first represent the forward and inverse nonlinear modal transformations through the physically interpretable deep encoder–decoder architecture, generalizing the modal superposition to nonlinear dynamics. Furthermore, to guarantee correct nonlinear modal identification, the proposed deep learning architecture integrates prior physics knowledge of the defined NNMs by embedding a unique dynamics-coder with physics-based constraints, including generalized modal properties, dynamics evolution, and future-state prediction. We test the proposed method by a series of study on the conservative and non-conservative Duffing systems with cubic nonlinearity and observe that the proposed data-driven framework is able to identify NNMs with invariant manifolds, energy-dependent nonlinear modal spectrum, and future-state prediction for unknown nonlinear dynamical systems from response data only; these identification results are found consistent with those from theoretically derived or numerically computed from closed-form equations. We also discuss its implementations and limitations for nonlinear modal identification of dynamical systems.
引用
收藏
页码:3231 / 3246
页数:15
相关论文
共 73 条
  • [1] Haller George(2016)Ponsioen, Sten: Nonlinear normal modes and spectral submanifolds: existence, uniqueness and use in model reduction Nonlin. Dyn. 86 1493-1534
  • [2] Komatsu Keiji(1991)Sano, Masaaki, Kai, Takashi, Tsujihata, Akio, Mitsuma, Hidehiko: Experimental modal analysis for dynamic models of spacecraft J. Guid. Control Dyn. 14 686-688
  • [3] Likins Peter W(1967)Modal method for analysis of free rotations of spacecraft AIAA J. 5 1304-1308
  • [4] Touzé C(2008)Reduced-order models for large-amplitude vibrations of shells including in-plane inertia Comput. Methods Appl. Mech. Eng. 197 2030-2045
  • [5] Amabili M(2002)Dynamic response predictions for a mistuned industrial turbomachinery rotor using reduced-order modeling J. Eng. Gas Turbines Power 124 311-324
  • [6] Thomas O(2001)Component-mode-based reduced order modeling techniques for mistuned bladed disks-Part 1: theoretical models J. Eng. Gas Turbines Power 123 89-99
  • [7] Bladh R(2009)Hendricx, Wim, Debille, Jan, Climent, Hector: Modern solutions for ground vibration testing of large aircraft Sound Vibr. 43 8-15
  • [8] Pierre C(1997)Non-linear normal modes (NNMs) and their applications in vibration theory: an overview Mech. Syst. Signal Process. 11 3-22
  • [9] Castanier MP(2009)Nonlinear normal modes, Part I: a useful framework for the structural dynamicist Mech. Systems Signal Process. 23 170-194
  • [10] Kruse MJ(2005)Spectral properties of dynamical systems, model reduction and decompositions Nonlin. Dyn. 41 309-325