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Unveiling Relations in the Industry 4.0 Standards Landscape Based on Knowledge Graph Embeddings

机译:基于知识图形嵌入的行业4.0标准景观中的关系

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Industry 4.0 (14.0) standards and standardization frameworks have been proposed with the goal of empowering interoperability in smart factories. These standards enable the description and interaction of the main components, systems, and processes inside of a smart factory. Due to the growing number of frameworks and standards, there is an increasing need for approaches that automatically analyze the landscape of 14.0 standards. Standardization frameworks classify standards according to their functions into layers and dimensions. However, similar standards can be classified differently across the frameworks, producing, thus, interoperability conflicts among them. Semantic-based approaches that rely on ontologies and knowledge graphs, have been proposed to represent standards, known relations among them, as well as their classification according to existing frameworks. Albeit informative, the structured modeling of the 14.0 landscape only provides the foundations for detecting interoperability issues. Thus, graph-based analytical methods able to exploit knowledge encoded by these approaches, are required to uncover alignments among standards. We study the relatedness among standards and frameworks based on community analysis to discover knowledge that helps to cope with interoperability conflicts between standards. We use knowledge graph embeddings to automatically create these communities exploiting the meaning of the existing relationships. In particular, we focus on the identification of similar standards, i.e., communities of standards, and analyze their properties to detect unknown relations. We empirically evaluate our approach on a knowledge graph of 14.0 standards using the Trans* family of embedding models for knowledge graph entities. Our results are promising and suggest that relations among standards can be detected accurately.
机译:行业4.0(14.0)标准和标准化框架已经提出了智能工厂中互动性授权的目标。这些标准能够在智能工厂内部的主要组件,系统和过程的描述和交互。由于营业框架和标准数量越来越多,越来越需要自动分析14.0标准景观的方法。标准化框架根据其功能对标准分类为层和尺寸。然而,可以在框架中不同地归类类似标准,从而产生它们之间的互操作性冲突。已经提出了依赖于本体和知识图表的基于语义的方法,以代表它们之间的标准,已知关系以及根据现有框架的分类。虽然信息丰富的信息,但是14.0景观的结构化建模仅提供了检测互操作性问题的基础。因此,需要基于图形的分析方法,其能够利用这些方法编码的知识,以揭示标准之间的对齐。我们根据社区分析研究标准和框架之间的相关性,以发现有助于应对标准之间的互操作性冲突的知识。我们使用知识图形嵌入来自动创建这些社区利用现有关系的含义。特别是,我们专注于识别类似标准,即标准的社区,分析其性质以检测未知关系。我们使用Trans *系列用于知识图形实体的嵌入模型来凭经验评估我们的方法为14.0标准的知识图。我们的结果很有希望,表明可以准确地检测标准之间的关系。

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