Structured Representation of Simulation and Annotation Data for Machine Learning in Forming Technologies

dc.contributor.author Schumann, Markus
dc.contributor.author Moske, Jonas
dc.contributor.author Wüst, Antonia
dc.contributor.author Divo, Felix
dc.contributor.author Gelbich, Daria
dc.contributor.author Niemietz, Philipp
dc.date.accessioned 2026-01-21T14:52:30Z
dc.date.created 2025-10-07
dc.date.issued 2026-01-21
dc.description The use of machine learning (ML) in manufacturing requires structured, especially standardized, access to both simulation data and domain knowledge. This paper introduces a JSON-based data format for representing synthetic force-time series alongside expert annotations. The schema captures simulation metadata, tool and material parameters, and allows explicit expert knowledge, such as failure indicators, to be linked to signal segments. The proposed structure enables process-aware ML methods that leverage both domain knowledge and raw data for improved learning and generalization. A deep drawing use case illustrates how the format facilitates knowledge-guided learning. The approach aims to bridge the gap between real and simulated production data, supporting scalable integration in modern manufacturing systems. The dataset filename encodes the preprocessing configuration. <N>pts denotes the number of uniformly resampled time points per stroke. aug-gaussian-force-Fx-Ty-<k>x specifies the augmentation strategy, where Fx is the standard deviation of additive Gaussian noise applied to the force signal, Ty the standard deviation of optional time jitter, and <k>x the number of augmented copies per original stroke. tFULL indicates that the full time series is used, while tA-Bs denotes a cropped time window from A to B seconds.
dc.identifier.uri https://tudatalib.ulb.tu-darmstadt.de/handle/tudatalib/4999
dc.language.iso en
dc.rights Open Data Commons Open Database License (ODbL) v1.0
dc.rights.licenseODbL-1.0 (https://opendatacommons.org/licenses/odbl/1.0/)
dc.rights.uri https://opendatacommons.org/licenses/odbl/1.0/
dc.subject Synthetic process data, Expert annotation, Simulation metadata, Knowledge representation, Machine learning in manufacturing
dc.subject.classification 4.11-02
dc.subject.ddc 670
dc.title Structured Representation of Simulation and Annotation Data for Machine Learning in Forming Technologies
dc.type Text
dc.type Image
dcterms.accessRights openAccess
person.identifier.orcid 0009-0002-3928-6707
person.identifier.orcid 0009-0005-7836-3447
person.identifier.orcid 0009-0005-8636-1337
person.identifier.orcid 0000-0002-1916-7711
person.identifier.orcid 0009-0006-7632-0168
person.identifier.orcid 0000-0002-3524-3411
tuda.agreements true
tuda.project DFG | GR1818/84-1 | Optimierung des Wirk
tuda.unit TUDa

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dataset_timeseries_10pts_aug-gaussian_force-F0p05-T0-5x_tFULL.json767.88 KBJson Format Download
dataset_timeseries_10pts_aug-gaussian_force-F0p05-T0-5x_tFULL.png198.42 KBPortable Network Graphics Download
dataset_timeseries_20pts_aug-gaussian_force-F0p05-T0-5x_tFULL.json966.52 KBJson Format Download
dataset_timeseries_20pts_aug-gaussian_force-F0p05-T0-5x_tFULL.png194.94 KBPortable Network Graphics Download
dataset_timeseries_100pts_aug-gaussian_force-F0p05-T0-5x_tFULL.json2.06 MBJson Format Download
dataset_timeseries_100pts_aug-gaussian_force-F0p05-T0-5x_tFULL.png221.39 KBPortable Network Graphics Download
dataset_timeseries_500pts_aug-gaussian_force-F0p1-T0-5x_tFULL.json7.82 MBJson Format Download
dataset_timeseries_500pts_aug-gaussian_force-F0p1-T0-5x_tFULL.png269.42 KBPortable Network Graphics Download
dataset_timeseries_500pts_aug-gaussian_force-F0p1-T0p001-5x_tFULL.json7.82 MBJson Format Download
dataset_timeseries_500pts_aug-gaussian_force-F0p1-T0p001-5x_tFULL.png275.07 KBPortable Network Graphics Download
dataset_timeseries_500pts_aug-gaussian_force-F0p1-T0p005-5x_tFULL.json7.83 MBJson Format Download
dataset_timeseries_500pts_aug-gaussian_force-F0p1-T0p005-5x_tFULL.png334.63 KBPortable Network Graphics Download
dataset_timeseries_500pts_aug-gaussian_force-F0p1-T0p05-5x_tFULL.json7.8 MBJson Format Download
dataset_timeseries_500pts_aug-gaussian_force-F0p1-T0p05-5x_tFULL.png513.6 KBPortable Network Graphics Download
dataset_timeseries_500pts_aug-gaussian_force-F0p2-T0p001-5x_t0-0p3s.json7.84 MBJson Format Download
dataset_timeseries_500pts_aug-gaussian_force-F0p2-T0p001-5x_t0-0p3s.png331.63 KBPortable Network Graphics Download
dataset_timeseries_500pts_aug-gaussian_force-F0p2-T0p001-5x_tFULL.json7.82 MBJson Format Download
dataset_timeseries_500pts_aug-gaussian_force-F0p2-T0p001-5x_tFULL.png340.52 KBPortable Network Graphics Download
dataset_timeseries_500pts_aug-gaussian_force-F0p05-T0-5x_tFULL.json7.83 MBJson Format Download
dataset_timeseries_500pts_aug-gaussian_force-F0p05-T0-5x_tFULL.png220.15 KBPortable Network Graphics Download

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