Joint Identification through Hybrid Models Improved by Correlations
Zeeshan Saeed, Christian Maria Firrone, Teresa Maria Berruti

TL;DR
This paper introduces a correlation-based enhancement to the SEMM method for more accurate joint identification in mechanical systems, especially when interface DoF are inaccessible, by filtering noisy measurements using FRAC.
Contribution
It proposes a novel correlation-based filtering approach within SEMM to improve hybrid sub-model quality and joint identification accuracy in complex mechanical assemblies.
Findings
Enhanced joint identification accuracy demonstrated
Filtering noisy channels improves model quality
Method effective on dove-tail joint system
Abstract
In mechanical systems coupled with joints, accurate prediction of the joint characteristics is extremely important. Despite years of research, a lot is yet to be learnt about the joints' interface dynamics. The problem becomes even more difficult when the interface Degrees-of-Freedom (DoF) are inaccessible for Frequency Response Function (FRF) measurements. This is, for example, the case of bladed-disk systems with dove-tail or fir-tree type joints. Therefore, an FRF based expansion method called System Equivalent Model Mixing (SEMM) is used to obtain expanded interface dynamics. The method uses numerical and experimental sub-models of each component and their assembly to produce the respective expanded or hybrid sub-models. By applying substructure decoupling to these sub-models, the joint can be identified. However, the joint can be noisy due to expansion and measurement errors which…
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