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Knowledge graphs for the enhancement of process planning in manufacturing

Publication date
2024-12-20
Document type
Sammelbandbeitrag oder Buchkapitel
Author
Reif, Jonathan Tobias  
Jeleniewski, Tom Robin  
Gehlhoff, Felix  
Fay, Alexander  
Hildebrandt, Constantin
Organisational unit
Automatisierungstechnik  
DTEC.bw  
DOI
10.24405/16792
URI
https://openhsu.ub.hsu-hh.de/handle/10.24405/16792
Project
Labor für die intelligente Leichtbauproduktion  
Publisher
UB HSU
Book title
dtec.bw-Beiträge der Helmut-Schmidt-Universität / Universität der Bundeswehr Hamburg : Forschungsaktivitäten im Zentrum für Digitalisierungs- und Technologieforschung der Bundeswehr dtec.bw : Band 2 – 2024
ISBN
978-3-86818-329-0
First page
149
Last page
154
Is part of
https://openhsu.ub.hsu-hh.de/handle/10.24405/16768
Peer-reviewed
✅
Part of the university bibliography
✅
File(s)
openHSU_16792.pdf (241.6 KB)
Additional Information
Language
English
Keyword
dtec.bw
Semantic Web
Simulation
Parameter interdependencies
Abstract
The increasing complexity of modern manufacturing systems, driven by demands for sustainability, shorter product life cycles, and greater customization, necessitates frequent reconfiguration and redesign of production processes. In this context, knowledge about parameter interdependencies is crucial. Additionally, simulations play a vital role by enabling virtual testing of various parameter configurations to optimize key performance indicators such as energy consumption, emissions, processing time, and costs.
This project report presents an integrated approach to enhance process planning by incorporating semantic models that describe process parameter interdependencies. Furthermore, we describe a concept for automating the generation of simulation sequences, thereby reducing the complexity and effort involved in manual planning. The combination of these approaches is demonstrated using a web-based application, showcasing the potential to support efficient and sustainable manufacturing practices.
Version
Published version
Access right on openHSU
Open access

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