Description
This dataset contains scripts and data supporting the following following thesis: Pollet, M. (2025). Rapid structural analysis of prefabricated thin concrete shells using deep learning (Thesis). University of Bath.
Concrete thin-shells are materially efficient structures, which can be used to reduce the environmental impact of concrete structures. However, geometric imperfections, which may occur during production can negatively impact their structural behaviour. While this impact can be assessed through Finite Element Analysis (FEA), a faster analysis method, such as surrogate modelling, could benefit concrete shell manufacturers.
This dataset contains deep learning models – Multilayer Perceptrons, and Convolutional Neural Networks – that have been trained to predict the buckling factor and stress fields of geometrically imperfect concrete thin-shells of various shapes under design loads. It also contains the Python scripts that were used to train these models and assess their performance. Running these scripts necessitates the associated ConcreteShellFEA dataset to be downloaded. Further details about this data can be found in the related thesis.
Concrete thin-shells are materially efficient structures, which can be used to reduce the environmental impact of concrete structures. However, geometric imperfections, which may occur during production can negatively impact their structural behaviour. While this impact can be assessed through Finite Element Analysis (FEA), a faster analysis method, such as surrogate modelling, could benefit concrete shell manufacturers.
This dataset contains deep learning models – Multilayer Perceptrons, and Convolutional Neural Networks – that have been trained to predict the buckling factor and stress fields of geometrically imperfect concrete thin-shells of various shapes under design loads. It also contains the Python scripts that were used to train these models and assess their performance. Running these scripts necessitates the associated ConcreteShellFEA dataset to be downloaded. Further details about this data can be found in the related thesis.
| Date made available | 9 Feb 2026 |
|---|---|
| Publisher | University of Bath |
Student theses
-
Rapid structural analysis of prefabricated thin concrete shells using deep learning: (Alternative Format Thesis)
Pollet, M. (Author), Shepherd, P. (Supervisor), Hawkins, W. (Supervisor) & Costa, E. (Supervisor), 25 Jun 2025Student thesis: Doctoral Thesis › PhD
Datasets
-
ConcreteShellFEA: A surrogate modelling dataset for the buckling and stress behaviour of concrete thin-shells
Pollet, M. (Creator), Shepherd, P. (Creator), Hawkins, W. (Creator) & Costa, E. (Creator), University of Bath, 9 Feb 2026
DOI: 10.15125/BATH-01519
Dataset
Cite this
- DataSetCite