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Knowledge Extraction via Decentralized Knowledge Graph Aggregation

机译:通过分散的知识图形聚集的知识提取

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In many industrial manufacturing processes, human operators play a central role when it comes to parameterizing the involved machinery and dealing with errors in the process. However, large parts of the acquired process knowledge are tacit, leading to difficulties sharing the knowledge between operators. Therefore, knowledge extraction is a necessary but time and cost intensive process, requiring both specially trained personnel and experienced operators. In contrast, we propose that by gathering insights into what influenced operators' actual parameter choices, tacit process knowledge can be extracted during production in an example-based manner. This decentralized knowledge-decentralized in regards to who holds knowledge and where it was extracted—is then aggregated to a coherent knowledge graph. We showcase our methodology on a real-world dataset in the domain of fused deposition modeling (FDM), which is generated by operators providing their insights without additional assistance using extended human machine interfaces. Furthermore, we compare rules extracted from the aggregated knowledge graph against an established FDM knowledge base showing the viability of our approach even with limited amounts of data.
机译:在许多工业制造过程中,人类运营商在参数化所涉及的机器并在过程中处理错误时发挥着核心作用。然而,所获得的过程知识的大部分是默契,导致运营商之间知识的困难。因此,知识提取是必要的,但时间和成本的密集过程,需要经过特殊培训的人员和经验丰富的运营商。相比之下,我们建议通过收集对影响运营商的实际参数选择的洞察,以基于示例的方式在生产过程中可以提取默认过程知识。这对谁具有知识以及提取的凡被提取到的权力下放 - 然后聚合到连贯的知识图中。我们在融合沉积建模(FDM)的域中的实际数据集中展示了我们的方法,该数据集由运营商生成,无需使用扩展的人机接口即可提供其洞察。此外,我们将从聚合知识图中提取的规则与建立的FDM知识库中提取的规则相对于显示我们方法的可行性,即使具有有限的数据。

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