Semantic Representation of Low‐Cycle‐Fatigue Testing Data Using a Fatigue Test Ontology and ckan.kupferdigital Data Management System
Hossein Beygi Nasrabadi; Thomas Hanke; Birgit Skrotzki
Advanced Engineering Materials, 2025
doi: 10.1002/adem.202400675
discovery-gemini-llm-reviewed-20260524
Addressing a strategy for publishing open and digital research data, this article presents the approach for streamlining and automating the process of storage and conversion of research data to those of semantically queryable data on the web. As the use case
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for demonstrating and evaluating the digitalization process, the primary datasets from low‐cycle‐fatigue testing of several copper alloys are prepared. The fatigue test ontology (FTO) and ckan.kupferdigital data management system are developed as two main prerequisites of the data digitalization process. FTO has been modeled according to the content of the fatigue testing standard and by reusing the basic formal ontology, industrial ontology foundry core ontology, and material science and engineering ontology. The ckan.kupferdigital data management system is also constructed in such a way that enables the users to prepare the protocols for mapping the datasets into the knowledge graph and automatically convert all the primary datasets to those machine‐readable data which are represented by the web ontology language. The retrievability of the converted digital data is also evaluated by querying the example competency questions, confirming that ckan.kupferdigital enables publishing open data that can be highly reused in the semantic web.
Hossein Beygi Nasrabadi; Thomas Hanke; Birgit Skrotzki; Semantic Representation of Low‐Cycle‐Fatigue Testing Data Using a Fatigue Test Ontology and ckan.kupferdigital Data Management System; Advanced Engineering Materials; 2025; doi:10.1002/adem.202400675
Added by matportal-botMay 24, 2026
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HosseinBeygiNasrabadi/Fatigue-Test-Ontology-FTO-
Application level ontologies for low cycle fatigue test according to DIN EN ISO 12106 standard
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