Georgios Tsialiamanis
School of Mechanical, Aerospace and Civil Engineering
Lecturer in Mechanical Engineering
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Full contact details
School of Mechanical, Aerospace and Civil Engineering
Sir Frederick Mappin Building
Mappin Street
Sheffield
S1 3JD
- Profile
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I completed my PhD at the University of Sheffield from 2018 until 2021 and the title of this was "A data-driven approach to modelling structures".
After completing my PhD, I worked as a postdoc for 2 years at the Dynamics Research Group of the University of Sheffield before taking my position as a Lecturer in the same group.
Before starting my PhD, I did my MEng at the Civil Engineering Department of the National Technical University of Athens in Greece, where I come from, and after completing my studies, I worked for a year in industry as a simulation engineer.
- Research interests
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My research interests include:
- Machine learning for modelling structural dynamics
- Structural health monitoring and population-based structural health monitoring
- Use of different types of models and data for the creation of digital twins
- Publications
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Journal articles
- On a meta-learning population-based approach to damage prognosis. Mechanical Systems and Signal Processing, 209, 111119-111119.
- Towards a population-informed approach to the definition of data-driven models for structural dynamics. Mechanical Systems and Signal Processing, 200. View this article in WRRO
- On the dynamic properties of statistically-independent nonlinear normal modes. Mechanical Systems and Signal Processing, 181. View this article in WRRO
- On the application of generative adversarial networks for nonlinear modal analysis. Mechanical Systems and Signal Processing, 166.
- On generative models as the basis for digital twins. Data-Centric Engineering, 2. View this article in WRRO
- Foundations of population-based SHM, Part IV : the geometry of spaces of structures and their feature spaces. Mechanical Systems and Signal Processing, 157. View this article in WRRO
Chapters
- On the Use of Symbolic Regression for Population-Based Modelling of Structures, Conference Proceedings of the Society for Experimental Mechanics Series (pp. 85-91). Springer Nature Switzerland
- On Modelling Statistically Independent Nonlinear Normal Modes with Gaussian Process NARX Models, Nonlinear Structures & Systems, Volume 1 (pp. 135-147). Springer International Publishing
- On the Use of Variational Autoencoders for Nonlinear Modal Analysis, Nonlinear Structures & Systems, Volume 1 (pp. 297-300). Springer International Publishing
- On the Use of Cycle-Consistent Generative Adversarial Networks for Nonlinear Modal Analysis, Topics in Modal Analysis & Parameter Identification, Volume 8 (pp. 45-57). Springer International Publishing
- Artificial Neural Networks, Computational Methods in Engineering & the Sciences (pp. 85-119). Springer International Publishing
- A Meta-Learning Approach to Population-Based Modelling of Structures, Data Science in Engineering, Volume 10 (pp. 63-71). Springer Nature Switzerland
- Bayesian Graph Neural Networks for Strain-Based Crack Localization, Data Science in Engineering, Volume 9 (pp. 253-261). Springer International Publishing
- On Generating Parametrised Structural Data Using Conditional Generative Adversarial Networks, Data Science in Engineering, Volume 9 (pp. 35-46). Springer International Publishing
- On an Application of Graph Neural Networks in Population-Based SHM, Data Science in Engineering, Volume 9 (pp. 47-63). Springer International Publishing
- An Evolutionary Approach to Learning Neural Networks for Structural Health Monitoring, Model Validation and Uncertainty Quantification, Volume 3 (pp. 237-246). Springer International Publishing
Conference proceedings papers
- On the detection and quantification of nonlinearity via statistics of the gradients of a black-box model. Nonlinear Structures & Systems, Volume 1: Proceedings of the 41st IMAC, A Conference and Exposition on Structural Dynamics 2023 (pp 1-9). Austin, TX United States, 13 February 2023 - 13 February 2023. View this article in WRRO
- On an application of generative adversarial networks on remaining lifetime estimation. Structural Health Monitoring 2021: Enabling Next Generation SHM for Cyber-Physical Systems: Proceedings of the Thirteenth International Workshop on Structural Health Monitoring (IWSHM). Stanford University, CA, USA, 15 March 2022 - 15 March 2022. View this article in WRRO
- An ontological approach to structural health monitoring. Topics in Modal Analysis & Testing, Volume 8 : Proceedings of the 38th IMAC, A Conference and Exposition on Structural Dynamics 2020, Vol. 8 (pp 51-59). Houston, TX, USA, 10 February 2020 - 13 February 2020.
- On partitioning of an SHM problem and parallels with transfer learning. Topics in Modal Analysis & Testing, Volume 8 : Proceedings of the 38th IMAC, A Conference and Exposition on Structural Dynamics 2020, Vol. 8 (pp 41-50). Houston, TX, USA, 10 February 2020 - 13 February 2020.
- An application of generative adversarial networks in structural health monitoring. EURODYN 2020: Proceedings of the XI International Conference on Structural Dynamics, Vol. 2 (pp 3816-3831). Athens, Greece, 23 November 2020 - 26 November 2020.
- A neat approach to structural health monitoring. EURODYN 2020: Proceedings of the XI International Conference on Structural Dynamics (pp 3832-3845). Athens, Greece, 23 November 2020 - 23 November 2020. View this article in WRRO
Preprints
- Towards a population-informed approach to the definition of data-driven models for structural dynamics, arXiv.
- On the Detection and Quantification of Nonlinearity via Statistics of the Gradients of a Black-Box Model, arXiv.
- A Meta-Learning Approach to Population-Based Modelling of Structures, arXiv.
- Towards a Population-Informed Approach to the Definition of Data-Driven Models for Structural Dynamics, Elsevier BV.
- On an Application of Generative Adversarial Networks on Remaining Lifetime Estimation, arXiv.
- On generative models as the basis for digital twins, arXiv.
- On partitioning of an SHM problem and parallels with transfer learning, arXiv.
- On generating parametrised structural data using conditional generative adversarial networks, arXiv.
- On an application of graph neural networks in population based SHM, arXiv.
- On the application of generative adversarial networks for nonlinear modal analysis, arXiv.
- Foundations of Population-Based SHM, Part IV: The Geometry of Spaces of Structures and their Feature Spaces, arXiv.
- Bayesian graph neural networks for strain-based crack localization, arXiv.
- On a meta-learning population-based approach to damage prognosis. Mechanical Systems and Signal Processing, 209, 111119-111119.
- Teaching activities
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2023-2024: AER291: Dynamics of Structures and Machines (Aerospace)