On the transfer of damage detectors between structures: An experimental case study

Incomplete data – which fail to represent environmental effects or damage – are a significant challenge for structural health monitoring (SHM). Population-based frameworks offer one solution by considering that information might be shared, in some sense, between similar structures. In this work, the...

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Veröffentlicht in:Journal of sound and vibration 2021-06, Vol.501, p.116072, Article 116072
Hauptverfasser: Bull, L.A., Gardner, P.A., Dervilis, N., Papatheou, E., Haywood-Alexander, M., Mills, R.S., Worden, K.
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Sprache:eng
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Zusammenfassung:Incomplete data – which fail to represent environmental effects or damage – are a significant challenge for structural health monitoring (SHM). Population-based frameworks offer one solution by considering that information might be shared, in some sense, between similar structures. In this work, the data from a group of aircraft tailplanes are considered collectively, in a shared (more consistent) latent space. As a result, the measurements from one tailplane enable damage detection in another, utilising various pair-wise comparisons within the population. Specifically, Transfer Component Analysis (TCA) is applied to match the normal condition data from different population members. The resulting nonlinear projection leads to a general representation for the normal condition across the population, which informs damage detection via measures of discordancy. The method is applied to a experimental dataset, based on vibration-based laser vibrometer measurements from three tailplanes. By considering the partial datasets together, consistent damage-sensitive features can be defined, leading to an 87% increase in the true positive rate, compared to conventional SHM.
ISSN:0022-460X
1095-8568
DOI:10.1016/j.jsv.2021.116072