Fast Bayesian identification of a class of elastic weakly nonlinear systems using backbone curves
Fast Bayesian identification of a class of elastic weakly nonlinear systems using backbone curves
This paper introduces a method for the identification of the parameters of nonlinear structures using a probabilistic Bayesian framework, employing a Markov chain Monte Carlo algorithm. This approach uses analytical models to describe the unforced, undamped dynamic responses of structures in the frequency–amplitude domain, known as the backbone curves. The analytical models describing these backbone curves are then fitted to measured responses, found using the resonant-decay method. To investigate the proposed identification method, a nonlinear two-degree-of-freedom example structure is simulated numerically and analytical expressions describing the backbone curves are found. These expressions are then used, in conjunction with the backbone curve data found through simulated experiment, to estimate the system parameters. It is shown that the use of these computationally-cheap analytical expressions allows for an extremely efficient method for modelling the dynamic behaviour, providing an identification procedure that is both fast and accurate. Furthermore, for the example structure, it is shown that the estimated parameters may be used to accurately predict the existence of dynamic behaviours that are well-away from the backbone curve data provided; specifically the existence of an isola is predicted.
156-170
Hill, T.L.
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Green, P.L.
5f506100-4505-4a8d-a4f7-3df78169b275
Cammarano, A.
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Neild, S.A.
e11b68bb-ddff-4cac-a8a7-798cc3cc3891
17 October 2015
Hill, T.L.
96922dda-e993-4889-a519-5f89fe6ebca8
Green, P.L.
5f506100-4505-4a8d-a4f7-3df78169b275
Cammarano, A.
c0c85f55-3dfc-4b97-9b79-e2554406a12b
Neild, S.A.
e11b68bb-ddff-4cac-a8a7-798cc3cc3891
Hill, T.L., Green, P.L., Cammarano, A. and Neild, S.A.
(2015)
Fast Bayesian identification of a class of elastic weakly nonlinear systems using backbone curves.
Journal of Sound and Vibration, 360, .
(doi:10.1016/j.jsv.2015.09.007).
Abstract
This paper introduces a method for the identification of the parameters of nonlinear structures using a probabilistic Bayesian framework, employing a Markov chain Monte Carlo algorithm. This approach uses analytical models to describe the unforced, undamped dynamic responses of structures in the frequency–amplitude domain, known as the backbone curves. The analytical models describing these backbone curves are then fitted to measured responses, found using the resonant-decay method. To investigate the proposed identification method, a nonlinear two-degree-of-freedom example structure is simulated numerically and analytical expressions describing the backbone curves are found. These expressions are then used, in conjunction with the backbone curve data found through simulated experiment, to estimate the system parameters. It is shown that the use of these computationally-cheap analytical expressions allows for an extremely efficient method for modelling the dynamic behaviour, providing an identification procedure that is both fast and accurate. Furthermore, for the example structure, it is shown that the estimated parameters may be used to accurately predict the existence of dynamic behaviours that are well-away from the backbone curve data provided; specifically the existence of an isola is predicted.
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Accepted/In Press date: 6 September 2015
e-pub ahead of print date: 28 September 2015
Published date: 17 October 2015
Identifiers
Local EPrints ID: 490794
URI: http://eprints.soton.ac.uk/id/eprint/490794
ISSN: 0022-460X
PURE UUID: 5a51004e-858f-4a56-b7c0-7edc7002a5ba
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Date deposited: 06 Jun 2024 16:51
Last modified: 07 Jun 2024 02:08
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Author:
T.L. Hill
Author:
A. Cammarano
Author:
S.A. Neild
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