Data underlying the publication: 'The Bayesian Finite Element Method in Inverse Problems: a Critical Comparison between Probabilistic Models for Discretization Error'
DOI: 10.4121/a610235b-7e45-4d8f-8a0b-64d8eb157b36
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Dataset
Two datasets to accompany the paper 'The Bayesian Finite Element Method in Inverse Problems: a Critical Comparison between Probabilistic Models for Discretization Error' by Anne Poot, Iuri Rocha, Pierre Kerfriden and Frans van der Meer. Both datasets are MCMC samples generated following the procedure described in section 2.6 of the paper. The first dataset, pullout-bar.zip, is associated with section 3.1.1 of the paper. The second dataset, three-point-hole.zip, is associated with section 3.2.1 of the paper. The code to reproduce these datasets is available via the git repository linked below, in the probfem/experiments/reproduction/inverse/ directory.
History
- 2025-09-26 first online
- 2025-10-06 published, posted
Publisher
4TU.ResearchDataAssociated peer-reviewed publication
The Bayesian Finite Element Method in Inverse Problems: a Critical Comparison between Probabilistic Models for Discretization ErrorReferences
Organizations
TU Delft, Faculty of Civil Engineering and Geosciences, Department of Materials, Mechanics, Management & Design (3MD), Applied Mechanics, SLIMM LabDATA
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- 351,816,200 bytesMD5:
873a562e52cd1564e66d7e0c382fad6a
pullout-bar.zip - 167,385,032 bytesMD5:
ff0afe55f0349a189338bdb4fb1a4726
three-point-hole.zip -
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