PROVIDING FAIR AND METROLOGICALLY TRACEABLE DATA SETS - A CASE STUDY

Tanja Dorst, Maximilian Gruber, Anupam P. Vedurmudi, Daniel Hutzschenreuter, Sascha Eichstädt, Andreas Schütze
Abstract:
In recent years, data science and engineering have faced many challenges concerning the increasing amount of data. In order to ensure findability, accessability, interoperability and reusability (FAIRness) of digital resources, digital objects as a synthesis of data and metadata with persistent and unique identifiers should be used. In this context, the FAIR data principles formulate requirements that research data and, ideally, also industrial data should fulfill to make full use of them, particularly when Machine Learning or other data-driven methods are under consideration. In this contribution, the process of providing scientific data of an industrial testbed in a traceable and FAIR manner is documented as an example.
Keywords:
data set, FAIR digital objects, traceability, digital SI, research data management
Download:
IMEKO-TC6-2022-003.pdf
DOI:
10.21014/tc6-2022.003
Event details
Event name:
M4Dconf2022
Title:

First International IMEKO TC6 Conference on Metrology and Digital Transformation

Place:
Berlin, GERMANY
Time:
19 September 2022 - 21 September 2022
Event details
Event name:
Special session at M4Dconf2022
Title:

First International IMEKO TC6 Conference on Metrology and Digital Transformation

Place:
Berlin, GERMANY
Time:
19 September 2022 - 21 September 2022
Event details
Event name:
M4Dconf2022 (2)
Title:

First International IMEKO TC6 Conference on Metrology and Digital Transformation

Place:
Berlin, GERMANY
Time:
19 September 2022 - 21 September 2022