Nonlinear vibration characterization by signal decomposition
Methods for nonlinear vibration characterization by decomposing dynamic responses using the Hilbert–Huang transform and a sliding-window fitting technique are presented. Numerical results show that Hilbert–Huang transform can be used for decomposing nonlinear/non-stationary signals in order to revea...
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Veröffentlicht in: | Journal of sound and vibration 2007-11, Vol.307 (3), p.527-544 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Methods for nonlinear vibration characterization by decomposing dynamic responses using the Hilbert–Huang transform and a sliding-window fitting technique are presented. Numerical results show that Hilbert–Huang transform can be used for decomposing nonlinear/non-stationary signals in order to reveal and estimate nonlinear effects. Major nonlinear phenomena that can be extracted from transient and/or steady-state dynamic responses include different nonlinearities, softening and hardening effects, intrawave amplitude- and phase-modulation, distorted harmonic responses under a single-frequency harmonic excitation, interwave amplitude- and phase-modulation, and multiple-mode vibrations caused by internal/external resonances. However, the discontinuity-induced Gibbs’ phenomenon makes Hilbert–Huang transform analysis inaccurate around the two data ends. On the other hand, the sliding-window fitting analysis has no Gibbs’ phenomenon at the two data ends, but it cannot extract accurate modulation frequencies due to the use of non-orthogonal basis functions in the sliding-window least-squares curve fitting process. |
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ISSN: | 0022-460X 1095-8568 |
DOI: | 10.1016/j.jsv.2007.06.056 |