Hossein Beygi Nasrabadi; Thomas Hanke; Matthias Weber; Miriam Eisenbart; F. Bauer; Roy Meissner; Gordian Dziwis; Ladji Tikana; Yue Chen; Birgit Skrotzki
Computers in Industry, 2023
doi: 10.1016/j.compind.2023.104016
discovery-gemini-llm-reviewed-20260524
To accelerate the growth of Industry 4.0 technologies, the digitalization of mechanical testing laboratories as one of the main data-driven units of materials processing industries is introduced in this paper. The digital lab infrastructure consists of highly
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detailed and standard-compliant materials testing knowledge graphs for a wide range of mechanical testing processes, as well as some tools that enable the efficient ontology development and conversion of heterogeneous materials’ mechanical testing data to the machine-readable data of uniform and standardized structures. As a basis for designing such a digital lab, the mechanical testing ontology (MTO) was developed based on the ISO 23718 and ISO/IEC 21838-2 standards for the semantic representation of the mechanical testing experiments, quantities, artifacts, and report data. The trial digitalization of materials mechanical testing lab was successfully performed by utilizing the developed tools and knowledge graph of processes for converting the various experimental test data of heterogeneous structures, languages, and formats to standardized Resource Description Framework (RDF) data formats. The concepts of data storage and data sharing in data spaces were also introduced and SPARQL queries were utilized to evaluate how the introduced approach can result in the data retrieval and response to the competency questions. The proposed digital materials mechanical testing lab approach allows the industries to access lots of trustworthy and traceable mechanical testing data of other academic and industrial organizations, and subsequently organize various data-driven research for their faster and cheaper product development leading to a higher performance of products in engineering and ecological aspects.
Hossein Beygi Nasrabadi; Thomas Hanke; Matthias Weber; Miriam Eisenbart; F. Bauer; Roy Meissner; Gordian Dziwis; Ladji Tikana; Yue Chen; Birgit Skrotzki; Toward a digital materials mechanical testing lab; Computers in Industry; 2023; doi:10.1016/j.compind.2023.104016
Added by matportal-botMay 24, 2026
Mechanical testing ontology for digital-twins: A roadmap based on EMMO
Joana Francisco Morgado, Schmitz Georg, Gerhard Goldbeck, Emanuele Ghedini, Adham Hashibon, Anne F. de Baas, Jesper Friis
Publikationsdatenbank der Fraunhofer-Gesellschaft (Fraunhofer-Gesellschaft) - 2020
openalex
The enormous amount of materials data currently generated by high throughput experiments and computations poses a significant challenge in terms of data integration and sharing. A common ontology lays the foundation for solving this issue, enabling semantic
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interoperability of models, experiments, software and data which is vital for a more rational and efficient development of novel materials. This paper is based on the current efforts by the European Materials Modelling Council (EMMC) on establishing common standards for materials through the European Materials & Modelling Ontology (EMMO) and demonstrates the application of EMMO to the mechanical testing field. The focus of this paper is to outline the approach to develop EMMO compliant domain ontologies.
Joana Francisco Morgado; Schmitz Georg; Gerhard Goldbeck; Emanuele Ghedini; Adham Hashibon; Anne F. de Baas; Jesper Friis; Mechanical testing ontology for digital-twins: A roadmap based on EMMO; Publikationsdatenbank der Fraunhofer-Gesellschaft (Fraunhofer-Gesellschaft); 2020
Added by matportal-botMay 24, 2026
Repositories
2
Repositorygithub.com
domain-mechanical-testing (EMMO)
GitHub repository for the EMMO-based version of the Mechanical Testing Ontology.
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