论文标题

金属添加剂制造中缺陷检测的本体

An Ontology for Defect Detection in Metal Additive Manufacturing

论文作者

Carraturo, Massimo, Mazzullo, Andrea

论文摘要

行业4.0应用程序的主要挑战是为能够解决数据集成和语义互操作性问题以及监视和决策任务的自动化制造服务开发控制系统。为了解决高级制造系统中的此类问题,已经提出了基于正式本体论的原则知识表示方法,以作为在存在异质数据源的情况下进行信息管理和维护的基础。此外,在约束验证和决策的背景下,本体论提供了推理和查询功能,以帮助领域专家和最终用户。最后,基于本体的高级制造服务方法可以支持基于Black-Box机器学习算法的监视,控制和模拟系统行为的解释性和解释性。在这项工作中,我们为从金属添加剂制造文献中已知的过程引起的缺陷分类提供了一种新的本体论。加上对缺陷的特征和特征来源的形式表示,我们将知识库与该领域的最新本体论整合在一起。我们的知识库旨在通过添加进一步的缺陷分析术语和诊断推断特征来增强添加剂制造本体的建模能力。

A key challenge for Industry 4.0 applications is to develop control systems for automated manufacturing services that are capable of addressing both data integration and semantic interoperability issues, as well as monitoring and decision making tasks. To address such an issue in advanced manufacturing systems, principled knowledge representation approaches based on formal ontologies have been proposed as a foundation to information management and maintenance in presence of heterogeneous data sources. In addition, ontologies provide reasoning and querying capabilities to aid domain experts and end users in the context of constraint validation and decision making. Finally, ontology-based approaches to advanced manufacturing services can support the explainability and interpretability of the behaviour of monitoring, control, and simulation systems that are based on black-box machine learning algorithms. In this work, we provide a novel ontology for the classification of process-induced defects known from the metal additive manufacturing literature. Together with a formal representation of the characterising features and sources of defects, we integrate our knowledge base with state-of-the-art ontologies in the field. Our knowledge base aims at enhancing the modelling capabilities of additive manufacturing ontologies by adding further defect analysis terminology and diagnostic inference features.

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