Data Pruning of Tomographic Data for the Calibration of Strain Localization Models [post]

William Hilth, David Ryckelynck, Claire Menet
2018 unpublished
The development and generalization of Digital Volume Correlation (DVC) on X-ray computed tomography data highlight the issue of long term storage. The present paper proposes a new model-free method for pruning the DVC data. The size of the remaining sampled data can be user-defined, depending on the needs concerning storage space. The data pruning procedure is deeply linked to hyper-reduction techniques. The DVC data of a resin-bonded sand tested in uniaxial compression is used as an
more » ... g example. The relevance of the pruned data is tested afterwards for model calibration. A new Finite Element Model Updating (FEMU) technique coupled with an hybrid hyper-reduction method is used to successfully calibrate a constitutive model of the resin bonded sand with the pruned data only.
doi:10.20944/preprints201811.0309.v1 fatcat:axdfdknt3fgjdd3lv7gdbf23mq