The applications of order reduction methods in nonlinear dynamic systems

Nan Wu, Kuan Lu, Yulin Jin, Haopeng Zhang, Yushu Chen

Research output: Contribution to specialist publicationArticle

1 Scopus citations

Abstract

Two different order reduction methods of the deterministic and stochastic systems are discussed in this paper. First, the transient proper orthogonal decomposition (T-POD) method is introduced based on the high-dimensional nonlinear dynamic system. The optimal order reduction conditions of the T-POD method are provided by analyzing the rotor-bearing system with pedestal looseness fault at both ends. The efficiency of the T-POD method is verified via comparing with the results of the original system. Second, the polynomial dimensional decomposition (PDD) method is applied to the 2 DOFs spring system considering the uncertain stiffness to study the amplitude-frequency response. The numerical results obtained by the PDD method agree well with the Monte Carlo simulation (MCS) method. The results of the PDD method can approximate to MCS better with the increasing of the polynomial order. Meanwhile, the Uniform-Legendre polynomials can eliminate perturbation of the PDD method to a certain extent via comparing it with the Gaussian-Hermite polynomials.

Original languageEnglish
Pages113-125
Number of pages13
Volume54
No2
Specialist publicationSound and Vibration
DOIs
StatePublished - 9 May 2020

Keywords

  • PDD method
  • Rotor
  • Spring
  • T-POD method
  • Uncertainty

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