ONTOLOGY MATCHING AND MANAGEMENT USING MACHINE LEARNING ASPECTS

CANTAŞ, Gökhan (2024) ONTOLOGY MATCHING AND MANAGEMENT USING MACHINE LEARNING ASPECTS. JNSM Journal of Natural Sciences and Mathematics of UT, 9 (17-18). pp. 219-227. ISSN 2671-3039

[img] Text
revista - 2024-219-227.pdf

Download (511kB)
Official URL: https://journals.unite.edu.mk/Home?JId=19

Abstract

Industry 4. zero is a brand-new generation of data era that ambitions to expand expertise bases for tracking developments in enterprise 4. zero. This paper proposes a framework to cope with the improvement of Knowledge Bases for Monitoring Trends in Industry4.zero.In this framework, we suggest an ontological model (COInd4 ontology) for the manufacturing area that describes the assets and strategies within side the manufacturing unit, and sensor observations are analysed via way of means of remark affects the use of contextual data past classical reasoning mechanism for stopping the forecasted undesired sensor effects that effect on from concept. The framework is primarily based totally on an information-pushed technique for Knowledge Graphs (CSV, JSON, and diverse styles of information) technique for growing Machine studying interoperability combining principles from diverse current ontologies for discovered predictive fashions and execution of the fashions. Moreover, LOTHBROK is designed for estimating cardinalities and paying attention to information locality. The assessment confirmed that TAO can gain appreciably quicker question processing overall performance as compared to the nation of the artwork while processing difficult queries in addition to while besides, TAO gives better transparency, flexibility, and cognitive ergonomics than its options Hontology and Accommodation Ontology. It affords a custom-designed approach to abide via way of means of the necessities of the Greek Programme Diavgeia and proposes the identical time approach to encode authorities and administrative decisions/acts that might be universally followed to combine public files produced via way of means of different EU Member States, with positive changes content-wise.

Item Type: Article
Uncontrolled Keywords: Semantic Web; Web Protégé ; ontology matching; knowledge base
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Divisions: Faculty of Engineering, Science and Mathematics > School of Electronics and Computer Science
Depositing User: Unnamed user with email zshi@unite.edu.mk
Date Deposited: 25 Dec 2024 10:43
Last Modified: 25 Dec 2024 10:43
URI: http://eprints.unite.edu.mk/id/eprint/1950

Actions (login required)

View Item View Item