Scientific Data (Jun 2022)

Generating FAIR research data in experimental tribology

  • Nikolay T. Garabedian,
  • Paul J. Schreiber,
  • Nico Brandt,
  • Philipp Zschumme,
  • Ines L. Blatter,
  • Antje Dollmann,
  • Christian Haug,
  • Daniel Kümmel,
  • Yulong Li,
  • Franziska Meyer,
  • Carina E. Morstein,
  • Julia S. Rau,
  • Manfred Weber,
  • Johannes Schneider,
  • Peter Gumbsch,
  • Michael Selzer,
  • Christian Greiner

DOI
https://doi.org/10.1038/s41597-022-01429-9
Journal volume & issue
Vol. 9, no. 1
pp. 1 – 11

Abstract

Read online

Abstract Solutions for the generation of FAIR (Findable, Accessible, Interoperable, and Reusable) data and metadata in experimental tribology are currently lacking. Nonetheless, FAIR data production is a promising path for implementing scalable data science techniques in tribology, which can lead to a deeper understanding of the phenomena that govern friction and wear. Missing community-wide data standards, and the reliance on custom workflows and equipment are some of the main challenges when it comes to adopting FAIR data practices. This paper, first, outlines a sample framework for scalable generation of FAIR data, and second, delivers a showcase FAIR data package for a pin-on-disk tribological experiment. The resulting curated data, consisting of 2,008 key-value pairs and 1,696 logical axioms, is the result of (1) the close collaboration with developers of a virtual research environment, (2) crowd-sourced controlled vocabulary, (3) ontology building, and (4) numerous – seemingly – small-scale digital tools. Thereby, this paper demonstrates a collection of scalable non-intrusive techniques that extend the life, reliability, and reusability of experimental tribological data beyond typical publication practices.