Hierarchical deep learning for data-driven identification of reduced-order models of nonlinear dynamical systems

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 / 105卷
关键词
Reduced-order models; Nonlinear dynamics; Nonlinear normal modes; Hierarchical deep learning; Data-driven modeling;
D O I
暂无
中图分类号
学科分类号
摘要
Identifying reduced-order models (ROMs) of nonlinear dynamical systems is difficult, especially when the system equation is unknown with only measurement data available. In such a case, not only a reduced subspace but also the associated dynamics need to be identified from data only, leading to a challenging data-driven ROM problem. In this study, we present a hierarchical deep learning approach to identify ROM from measurement only; it simultaneously identifies the nonlinear normal modal (NNM) subspace with a hierarchical order and the associated nonlinear modal dynamics. We conduct study to validate such an approach on both unforced and forced nonlinear dynamical systems, and find that the identified hierarchical NNMs-spanned subspace enables an efficient and effective dimensional truncation to achieve optimally lowest-dimensional ROM. We discuss in detail its performance and applicability.
引用
收藏
页码:3409 / 3422
页数:13
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