Persistent Identification of Instruments.
View/ Open
Average rating
votes
Date
2020Author
Stocker, Markus
Darroch, Louise
Krahl, Rolf
Habermann, Ted
Devaraju, Anusuriya
Schwardmann, Ulrich
D'Onofrio, Claudio
Häggström, Ingemar
Metadata
Show full item recordAbstract
Instruments play an essential role in creating research data. Given the importance of instruments and associated metadata to the assessment of data quality and data reuse, globally unique, persistent and resolvable identification of instruments is crucial. The Research Data Alliance Working Group Persistent Identification of Instruments (PIDINST) developed a community-driven solution for persistent identification of instruments which we present and discuss in this paper. Based on an analysis of 10 use cases, PIDINST developed a metadata schema and prototyped schema implementation with DataCite and ePIC as representative persistent identifier infrastructures and with HZB (Helmholtz-Zentrum Berlin für Materialien und Energie) and BODC (British Oceanographic Data Centre) as representative institutional instrument providers. These implementations demonstrate the viability of the proposed solution in practice. Moving forward, PIDINST will further catalyse adoption and consolidate the schema.....
Journal
Data Science JournalVolume
19Issue
Article 18Page Range
12pp.Document Language
enMaturity Level
TRL 2 Technology concept and/or application formulatedBest Practice Type
Best PracticeDOI Original
10.5334/dsj-2020-018Citation
Stocker, M.; Darroch, L.; Krahl, R.; Habermann, T.,; Devaraju, A.; Schwardmann, U.; D'Onofrio, C. and Häggström, I. (2020) Persistent Identification of Instruments. Data Science Journal, 19:18, 12pp.. DOI: http://doi.org/10.5334/dsj-2020-018Collections
- RDA Resources [6]
The following license files are associated with this item: