Extended Kalman filtering for the detection of damage in linear mechanical structures

This paper addresses the problem of assessing the location and extent of damage in a vibrating structure by means of vibration measurements. Frequency domain identification methods (e.g. finite element model updating) have been widely used in this area while time domain methods such as the extended...

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Veröffentlicht in:Journal of sound and vibration 2009-09, Vol.325 (4), p.1023-1046
Hauptverfasser: Liu, X., Escamilla-Ambrosio, P.J., Lieven, N.A.J.
Format: Artikel
Sprache:eng
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Zusammenfassung:This paper addresses the problem of assessing the location and extent of damage in a vibrating structure by means of vibration measurements. Frequency domain identification methods (e.g. finite element model updating) have been widely used in this area while time domain methods such as the extended Kalman filter (EKF) method, are more sparsely represented. The difficulty of applying EKF in mechanical system damage identification and localisation lies in: the high computational cost, the dependence of estimation results on the initial estimation error covariance matrix P ex ( 0 ) , the initial value of parameters to be estimated, and on the statistics of measurement noise R ex and process noise Q ex . To resolve these problems in the EKF, a multiple model adaptive estimator consisting of a bank of EKF in modal domain was designed, each filter in the bank is based on different P ex ( 0 ) . The algorithm was iterated by using the weighted global iteration method. A fuzzy logic model was incorporated in each filter to estimate the variance of the measurement noise R ex . The application of the method is illustrated by simulated and real examples.
ISSN:0022-460X
1095-8568
DOI:10.1016/j.jsv.2009.04.005