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Research on a knowledge modelling methodology for fault diagnosis of machine tools based on formal semantics

机译:基于形式语义的机床故障诊断知识建模方法研究

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Fault diagnosis is a critical activity in PHM (Prognostics and Health Management) of machine tools due to its great significance in such efforts as prolonging lifespan, improving production efficiency, and reducing production costs. An efficient knowledge model is necessary to build an intelligent fault diagnosis system. There have been several achievements in knowledge representation and modelling. However, due to their various purposes and depths, the established knowledge models are less compatible, reusable or trans-plantable, which restricts knowledge sharing and integration. A knowledge modelling methodology for fault diagnosis of machine tools based on formal semantics (KMM-MTFD) is proposed in this paper to build an open, shared, and scalable ontology-based knowledge model of fault diagnosis of various machine tools (OKM-MTFD). First, the proposed predicate-logic-based analysis method of fault elements is adopted to study the fault diagnosis domain and extract the common domain knowledge, which enables the establishment of the core ontology of OKM-MTFD to assure formal semantics. Next, using the proposed two-stage classification method of fault elements and external ontology reference methods, the core ontology can be extended into OKM-MTFD for a type or a specific machine tool. The knowledge reasoning and querying methods based on OWL axioms, SWRL rules, special fault attributes and SPARQL are provided to utilize the knowledge base efficiently. Finally, an ontology-based knowledge model and knowledge base of a hobbing machine tool is presented to exemplify the validity of the proposed KMM-MTFD.
机译:故障诊断是机床PHM(预测和健康管理)中的一项重要活动,因为它在延长使用寿命,提高生产效率和降低生产成本等方面具有重要意义。建立智能的故障诊断系统需要有效的知识模型。在知识表示和建模方面取得了一些成就。但是,由于它们的目的和深度不同,已建立的知识模型兼容性差,可重用性或可移植性差,从而限制了知识共享和集成。本文提出了一种基于形式语义的机床故障诊断知识建模方法(KMM-MTFD),以建立一个基于开放,共享,可扩展的基于本体的各种机床故障诊断知识模型(OKM-MTFD)。 。首先,采用基于谓词逻辑的故障要素分析方法,对故障诊断领域进行研究,提取公共领域知识,从而建立了OKM-MTFD的核心本体,以保证形式语义。接下来,使用所提出的故障要素的两阶段分类方法和外部本体参考方法,可以将核心本体扩展为适用于某种类型或特定机床的OKM-MTFD。提供了基于OWL公理,SWRL规则,特殊故障属性和SPARQL的知识推理和查询方法,以有效地利用知识库。最后,提出了一种基于本体的滚齿机床知识模型和知识库,以证明所提出的KMM-MTFD算法的有效性。

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