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  4. Data-driven techniques for the nonlinear dynamics of mechanical structures
 
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Data-driven techniques for the nonlinear dynamics of mechanical structures

Citation Link: https://doi.org/10.15480/882.3055
Publikationstyp
Doctoral Thesis
Date Issued
2020-11
Sprache
English
Author(s)
Stender, Merten  orcid-logo
Advisor
Hoffmann, Norbert  orcid-logo
Referee
Wagner, Utz von  
Title Granting Institution
Technische Universität Hamburg
Place of Title Granting Institution
Hamburg
Examination Date
2020-10-26
Institut
Strukturdynamik M-14  
TORE-DOI
10.15480/882.3055
TORE-URI
http://hdl.handle.net/11420/7771
Citation
Technische Universität Hamburg (2020)
In structural vibrations, several modeling approaches have helped to develop better, i.e. safer, less-vibrating, and more controllable designs for machines and structures. However, complex nonlinear vibrations of multi-physics, multi-component, and multi-scale systems still represent challenges to today’s identification and vibration prediction approaches. Particularly, damping and friction can play a crucial role for vibration mitigation while being inherently difficult to characterize, quantify, or even approximate. At the same time, the data sciences have become omnipresent not only in different fields of science but also in society. This thesis introduces a rigorous framework and discusses chances and limitations for using machine learning in complex structural dynamics. Special focus is put on the physical peculiarities of the vibration signals and physics-informed learning. In the context of case studies, new methodologies are presented for several systems ranging from
single-degree-of-freedom oscillators to complete automotive disk brake systems.
Subjects
Data Science
Nonlinear dynamics
Friction-induced vibrations
Chaos
Signal processing
Vibrations
DDC Class
620: Ingenieurwissenschaften
Lizenz
https://creativecommons.org/licenses/by/4.0/
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2020_11_04_Dissertation_Stender_final.pdf

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