GeoPINONet datasets, trained models, and source code for geometry-conditioned 3D elasticity
Authors/Creators
Description
This archive contains the complete finite-element datasets, CAD/STL geometry files, trained model weights, source-code snapshot, and result files associated with the manuscript "GeoPINONet: Sparse-Supervised Physics-Informed Operator Learning for Full-Field Prediction in Variable 3D Elastic Domains".
The archive includes two geometry families: a 3D lug family and a plate-with-hole family. For each geometry, STL files defining the body, loaded boundary, and fixed boundary are provided together with ANSYS FEM CSV solutions for axial compression and lateral bending. Latin Hypercube Sampling parameter files for nested training subsets and validation splits are included.
The archive also contains the final trained GeoPINONet model weights and result files used to reproduce the final-model, scaling-study, and ablation-study tables.
The accompanying source-code repository is available at:
https://github.com/v-urrutiav/GeoPINONet
Files
Geo-PINO-Net_source_v1.zip
Files
(971.6 MB)
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Additional details
Software
- Repository URL
- https://github.com/v-urrutiav/GeoPINONet
- Programming language
- Python
- Development Status
- Active