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Strongly nonlinear multi-degree of freedom systems: experimental analysis and model identification

Strongly nonlinear multi-degree of freedom systems: experimental analysis and model identification
Strongly nonlinear multi-degree of freedom systems: experimental analysis and model identification

Lightweight structures, once ubiquitous in specific sectors such as aeronautics and space sectors, in recent years, have increasingly attracted the attention of industries that, historically, have not been particularly concerned with structural weight. Ample examples are provided by the civil and automotive industry, in which the paradigm shift towards lower carbon footprint and sustainability prompted new trends characterised by mass reduction, the use of novel materials, and the accounting for large deformations. However, accurately modelling the dynamic behaviour of such structures requires nonlinear mathematical models, which are not widely used in common industrial practices. Reduced-Order Models (ROMs) have emerged as a popular alternative to computationally expensive Finite Element (FE) models, nonetheless, there is still a need to evaluate their effectiveness in accurately modelling strongly nonlinear behaviours. This study investigates the capacity of multiple-degree-of-freedom (MDOF) ROMs to capture and predict the nonlinear behaviour of lightweight structures subjected to large deformations. A novel identification procedure, built on existing linear and nonlinear identification methods, is used to identify an ROM from numerical and experimental data. Being based on the separation of the linear and nonlinear restoring force contributions, the proposed method can be easily embedded in the current industrial practices for the identification of mechanical systems, paving the way to an integrated usage of linear and nonlinear dynamic models. To validate the identified MDOF-ROM, a lightweight structure composed of lumped masses and nonlinear elastic connections is experimentally studied and the numerical and experimental results are compared at different excitation conditions. We demonstrated that the existence of the Nonlinear Restoring Force (NLRF) surface in a reduced subspace corresponds to the presence of local active nonlinearities in the experimental model. This information permits simplifying the nonlinear restoring force function of the ROM, improving the overall identification process. Finally, we showed that the identified ROM accurately represents the nonlinear dynamic behaviour of the experimental test rig and correctly predicts the passage from high-amplitude response to low-amplitude response (jumps) when different levels of excitation are applied to the system, demonstrating the effectiveness of the proposed procedure.

Control system, Experimental analysis, Nonlinear dynamics, Nonlinear system identification, Reduced order models, Restoring force surface methods
0888-3270
Martinelli, Cristiano
2f6f6785-db85-4835-8ef2-aff8211fef4d
Coraddu, Andrea
eb41a72b-88f2-43f2-b685-ed948f2aa818
Cammarano, Andrea
c0c85f55-3dfc-4b97-9b79-e2554406a12b
Martinelli, Cristiano
2f6f6785-db85-4835-8ef2-aff8211fef4d
Coraddu, Andrea
eb41a72b-88f2-43f2-b685-ed948f2aa818
Cammarano, Andrea
c0c85f55-3dfc-4b97-9b79-e2554406a12b

Martinelli, Cristiano, Coraddu, Andrea and Cammarano, Andrea (2024) Strongly nonlinear multi-degree of freedom systems: experimental analysis and model identification. Mechanical Systems and Signal Processing, 218, [111532]. (doi:10.1016/j.ymssp.2024.111532).

Record type: Article

Abstract

Lightweight structures, once ubiquitous in specific sectors such as aeronautics and space sectors, in recent years, have increasingly attracted the attention of industries that, historically, have not been particularly concerned with structural weight. Ample examples are provided by the civil and automotive industry, in which the paradigm shift towards lower carbon footprint and sustainability prompted new trends characterised by mass reduction, the use of novel materials, and the accounting for large deformations. However, accurately modelling the dynamic behaviour of such structures requires nonlinear mathematical models, which are not widely used in common industrial practices. Reduced-Order Models (ROMs) have emerged as a popular alternative to computationally expensive Finite Element (FE) models, nonetheless, there is still a need to evaluate their effectiveness in accurately modelling strongly nonlinear behaviours. This study investigates the capacity of multiple-degree-of-freedom (MDOF) ROMs to capture and predict the nonlinear behaviour of lightweight structures subjected to large deformations. A novel identification procedure, built on existing linear and nonlinear identification methods, is used to identify an ROM from numerical and experimental data. Being based on the separation of the linear and nonlinear restoring force contributions, the proposed method can be easily embedded in the current industrial practices for the identification of mechanical systems, paving the way to an integrated usage of linear and nonlinear dynamic models. To validate the identified MDOF-ROM, a lightweight structure composed of lumped masses and nonlinear elastic connections is experimentally studied and the numerical and experimental results are compared at different excitation conditions. We demonstrated that the existence of the Nonlinear Restoring Force (NLRF) surface in a reduced subspace corresponds to the presence of local active nonlinearities in the experimental model. This information permits simplifying the nonlinear restoring force function of the ROM, improving the overall identification process. Finally, we showed that the identified ROM accurately represents the nonlinear dynamic behaviour of the experimental test rig and correctly predicts the passage from high-amplitude response to low-amplitude response (jumps) when different levels of excitation are applied to the system, demonstrating the effectiveness of the proposed procedure.

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Accepted/In Press date: 14 May 2024
e-pub ahead of print date: 28 May 2024
Published date: 28 May 2024
Keywords: Control system, Experimental analysis, Nonlinear dynamics, Nonlinear system identification, Reduced order models, Restoring force surface methods

Identifiers

Local EPrints ID: 491089
URI: http://eprints.soton.ac.uk/id/eprint/491089
ISSN: 0888-3270
PURE UUID: b30aaee8-b829-4513-8f38-8ab6c7b74ef7
ORCID for Andrea Cammarano: ORCID iD orcid.org/0000-0002-8222-8150

Catalogue record

Date deposited: 11 Jun 2024 23:55
Last modified: 12 Jun 2024 02:11

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Contributors

Author: Cristiano Martinelli
Author: Andrea Coraddu
Author: Andrea Cammarano ORCID iD

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