14th WCCM-ECCOMAS Congress 2021
DOI: 10.23967/wccm-eccomas.2020.035
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A Practical Approach to Ontology-Based Data Modelling for Semantic Interoperability

Abstract: Efforts to provide a standard representational framework based on current materials modelling and characterization knowledge facilitating collaboration, digital data representation, knowledge systems and semantic interoperability has been the main agenda for the European Materials Modelling Council (EMMC). One challenge in adopting the technology is related to the on-boarding process, particularly regarding the availability of ontologies and practical aspects to linking data to the ontologies, which requires d… Show more

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Cited by 5 publications
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“…The objective would be to build-up all-embracing databases in terms of material data (production), process data (additive process sequences) and characterisation derived from a well-defined and common meta-data structure and ontologies (such as EMMO) [28].…”
Section: How To Achieve Green Hybrid Materials?mentioning
confidence: 99%
“…The objective would be to build-up all-embracing databases in terms of material data (production), process data (additive process sequences) and characterisation derived from a well-defined and common meta-data structure and ontologies (such as EMMO) [28].…”
Section: How To Achieve Green Hybrid Materials?mentioning
confidence: 99%
“…In smart mobility scenarios, this challenge is self-evident in the need to seamlessly integrate diverse data types/models, ranging from structured data suitable for traditional relational databases to unstructured or semistructured data aligning with noSQL databases [ 11 ]. Additionally, the necessity to semantically represent relationships among various data entities adds another complexity layer [ 12 ] since the goal is to ensure that stored data can be efficiently queried and analyzed, especially to enable any providing business intelligence tools to help decision makers perform smart mobility analysis, management and planning, including drill down and up in space, relationships and time and to provide data to final users on the move. These needs demand the creation of flexible, reliable and efficient data-integrated representations that can accommodate the complexity of any kind of mobility data, coming from multiple sources and formats.…”
Section: Introductionmentioning
confidence: 99%