Using state space predictive modeling with chaotic interrogation in detecting joint preload loss in a frame structure experiment

This work explores the role of steady-state dynamic analysis in the vibration-based structural health monitoring field. While more traditional approaches focus on transient or stochastic vibration analysis, the method described here utilizes a geometric portrait of system dynamics to extract informa...

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Veröffentlicht in:Smart materials and structures 2003-08, Vol.12 (4), p.580-601
Hauptverfasser: Nichols, J M, Todd, M D, Wait, J R
Format: Artikel
Sprache:eng
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Zusammenfassung:This work explores the role of steady-state dynamic analysis in the vibration-based structural health monitoring field. While more traditional approaches focus on transient or stochastic vibration analysis, the method described here utilizes a geometric portrait of system dynamics to extract information about the steady-state response of the structure to sustained excitation. The approach utilizes the fundamental properties of chaotic signals to produce low-dimensional response data which are then analyzed for features which indicate the degree to which the dynamics have been altered by damage. A discussion of the fundamental issues involved in the approach is presented along with experimental evidence of the approach's ability to discriminate among several damage scenarios.
ISSN:0964-1726
1361-665X
DOI:10.1088/0964-1726/12/4/310