Knowledge capitalization in mechatronic collaborative design

Mouna Fradi, R. Gaha, F. Mhenni, A. Mlika, J. Choley
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引用次数: 2

Abstract

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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机电协同设计中的知识资本化
在机电一体化协同设计中,存在多个专家领域的协同集成,需要异构知识的共享。为了应对这一挑战,提出了基于本体的方法作为克服这种异质性的解决方案。然而,设计团队之间的动态交流却被忽视了。因此,基于参数的方法被开发出来,在协同设计过程中一致地使用约束和参数。需要资本化的最有价值的知识,我们称之为关键知识,是用非正式的解决方案确定的。因此,需要进行正式的识别和提取。在本文中,我们提出了一种基于数学理论“范畴论”(CT)的新方法,以形式化利益相关者之间的联系,并促进合作过程中关键知识的提取和资本化。首先,我们概述了协同设计中最常用的关键知识识别方法,并简要回顾了协同设计的基本概念。其次,基于范畴论的一些基本概念,提出了一种形式化提取关键知识的方法。最后,一个案例研究被认为是验证所提出的方法。
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