Towards machine learning accelerated modelling of orthotropic composite materials
Licentiatavhandling, 2026
The first paper addresses the challenge of XRCT image segmentation, and more precisely the need for annotated data for training of ML based segmentation models. A fully automated pipeline for the generation of synthetic, automatically labelled, training data for ML based segmentation models of XRCT scans of 3D-textile reinforced composites is presented. A segmentation model trained on a dataset utilising the proposed pipeline shows 88% pixel-wise agreement when compared with a hand-segmented XRCT scan.
The second paper expands on the pipeline presented in the first paper with the aim to perform elastic homogenisation of a 3D-textile reinforced composite sample. The segmentation model is upgraded to a 3D U-Net architecture. The pipeline is also expanded to create voxel meshes from the segmentations including periodic boundary condition application. A novel material mapping routine is implemented that allows the mapping of the local yarn orientation and fibre volume fraction to the voxel elements, even when it is not fully possible to separate individual yarns. Combining the ML segmentation model with the material mapping routine, finite element models are generated which can be used to predict the statistical variation of elastic properties through computational homogenisation. An application of the pipeline results in accurately predicted homogenised elastic stiffnesses, with a deviation from experiments of less than 6.5%.
machine learning
3D-textile reinforced composites
X-ray computed tomography
segmentation
finite element modelling
Orthotropic materials
carbon fibre reinforced polymers
Författare
Johan Friemann
Chalmers, Industri- och materialvetenskap, Material- och beräkningsmekanik
Synthetic, automatically labelled training data for machine learning based X-ray CT image segmentation: Application to 3D-textile carbon fibre reinforced composites
Composites Part B: Engineering,;Vol. 305(2025)
Artikel i vetenskaplig tidskrift
From X-ray CT to finite element models: A fully automated pipeline for mesoscale modelling of as-manufactured textile composites
Composites Science and Technology,;Vol. 278(2026)
Artikel i vetenskaplig tidskrift
REaL-tIme characterization of ANisotropic Carbon-based tEchnological fibres, films and composites
Europeiska kommissionen (EU) (101073040), 2023-02-01 -- 2027-01-31.
Ämneskategorier (SSIF 2025)
Datorgrafik och datorseende
Kompositmaterial och kompositteknik
Relaterade dataset
X-ray CT scan of layer to layer angle interlock composite sample with hand segmentation [dataset]
DOI: https://doi.org/10.5281/zenodo.14891845