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Knowledge-based engineering approach for defining robotic manufacturing system architectures.

Authors :
Zheng, Chen
An, Yushu
Wang, Zhanxi
Qin, Xiansheng
Eynard, Benoît
Bricogne, Matthieu
Le Duigou, Julien
Zhang, Yicha
Source :
International Journal of Production Research; Mar2023, Vol. 61 Issue 5, p1436-1454, 19p, 1 Color Photograph, 7 Diagrams, 5 Charts, 1 Graph
Publication Year :
2023

Abstract

Robotic manufacturing systems have proven to be an effective solution for modern manufacturing enterprises to deal with increasing in customer demands and market competition. However, these systems may be unable to completely satisfy user requirements because of the difference between user and design perspectives. Thus, designing robotic manufacturing systems requires iterative processes that significantly increase development costs and lead time. A user-customised design approach is needed that enables users to customise robotic manufacturing systems as well as alleviate the burden on designers of eliciting user requirements. However, most users may not be able to customise their systems because of a lack of engineering knowledge. The authors propose a knowledge-based engineering approach to aid users in customising the architectures of robotic manufacturing systems. Two models — an ontological knowledge model and a multi-attribute decision-making model — are defined and integrated in the proposed KBE architecture definition method. A rule-based reasoning process is proposed in the ontological knowledge model based on explicit semantic descriptions of users' unstructured or semi-structured requirements and the components of robotic manufacturing systems, which infers the possible architecture of the required system. The MADM model is adopted to evaluate the architecture alternatives to determine the optimal solution. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00207543
Volume :
61
Issue :
5
Database :
Complementary Index
Journal :
International Journal of Production Research
Publication Type :
Academic Journal
Accession number :
162294980
Full Text :
https://doi.org/10.1080/00207543.2022.2037025