Detecting failure of a material handling system through a cognitive twin
Date published
2022-10-26
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Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Department
Type
Conference paper
ISSN
2405-8963
Format
Citation
D'Amico RD, Sarkar A, Karray H, et al., (2022) Detecting failure of a material handling system through a cognitive twin. In: 10th IFAC Conference on Manufacturing Modelling, Management and Control MIM 2022, 22-24 June 2022, Nantes, France
Abstract
This paper describes a methodology for developing a digital twin (DT) based on a rich semantic model and principles of system engineering. The aim is to provide a general model of digital twins (DT) that can improve decision making based on semantic reasoning on real-time system monitoring. The methodology has been tested on a laboratory pilot plant that acts as a material handling system. The key contribution of this research is to propose a generic information model for DT using foundational ontology and principles of systems engineering. The efficacy of the proposed methodology is demonstrated by the automatic detection of a component level failure using semantic reasoning.
Description
Software Description
Software Language
Github
Keywords
Digital twin, cognitive twin, ontology, BFO, IOF, CCO, knowledge graph, SPARQL, material handling systems, Festo MPS
DOI
Rights
Attribution-NonCommercial-NoDerivatives 4.0 International