Knowledge capitalization in mechatronic collaborative design

In mechatronic collaborative design, there is a synergic integration of several expert domains, where heterogeneous knowledge needs to be shared. To address this challenge, ontology-based approaches are proposed as a solution to overtake this heterogeneity. However, dynamic exchange between design t...

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Veröffentlicht in:Concurrent engineering, research and applications research and applications, 2022-03, Vol.30 (1), p.32-45
Hauptverfasser: Fradi, Mouna, Gaha, Raoudha, Mhenni, Faïda, Mlika, Abdelfattah, Choley, Jean-Yves
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container_issue 1
container_start_page 32
container_title Concurrent engineering, research and applications
container_volume 30
creator Fradi, Mouna
Gaha, Raoudha
Mhenni, Faïda
Mlika, Abdelfattah
Choley, Jean-Yves
description In mechatronic collaborative design, there is a synergic integration of several expert domains, where heterogeneous knowledge needs to be shared. To address this challenge, ontology-based approaches are proposed as a solution to overtake this heterogeneity. However, dynamic exchange between design teams is overlooked. Consequently, parametric-based approaches are developed to use constraints and parameters consistently during collaborative design. The most valuable knowledge that needs to be capitalized, which we call crucial knowledge, is identified with informal solutions. Thus, a formal identification and extraction is required. In this paper, we propose a new methodology to formalize the interconnection between stakeholders and facilitate the extraction and capitalization of crucial knowledge during the collaboration, based on the mathematical theory ‘Category Theory’ (CT). Firstly, we present an overview of most used methods for crucial knowledge identification in the context of collaborative design as well as a brief review of CT basic concepts. Secondly, we propose a methodology to formally extract crucial knowledge based on some fundamental concepts of category theory. Finally, a case study is considered to validate the proposed methodology.
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title Knowledge capitalization in mechatronic collaborative design
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