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A hybrid fault diagnosis method for mechanical components based on ontology and signal analysis

机译:基于本体和信号分析的机械组件混合故障诊断方法

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摘要

Fault diagnosis of mechanical components has been attracting increasing attention. Researches have been carried out to reduce unnecessary breakdowns of machinery. Signal processing approaches are the most commonly used techniques for fault diagnosis tasks. Ontology and semantic web technology have great potential in knowledge representing, organizing and utilizing. In this paper, a hybrid fault diagnosis method for mechanical components is proposed based on ontology and signal analysis (HOS-MCFD). The method is a systematic approach covering the whole process of fault diagnosis: feature extraction from raw data, fault phenomenon identification using continuous mixture Gaussian hidden Markov model and fault knowledge modeling and reasoning using ontology and semantic web technology. A semantic mapping approach is presented to relate signal analysis results to ontology elements. The hybrid method integrates the advantages of signal analysis and ontology. It can be applied to deal with fault diagnosis more accurately, systematically and intelligently. This method is assessed with vibration data of rolling bearings. The experimental results prove the proposed method effective.
机译:机械部件的故障诊断一直吸引了不断的关注。已经进行了研究,以减少不必要的机器故障。信号处理方法是故障诊断任务最常用的技术。本体和语义网络技术具有巨大的知识潜力,代表,组织和利用。本文基于本体论和信号分析(HOS-MCFD)提出了一种用于机械组件的混合故障诊断方法。该方法是一种系统方法,涵盖了故障诊断的整个过程:特征提取从原始数据,使用本体和语义Web技术使用连续混合Haussian隐马尔可夫模型和故障知识建模和推理的故障现象识别。提出了语义映射方法以将信号分析结果与本体元素相关联。混合方法集成了信号分析和本体的优点。它可以更准确,系统和智能地处理故障诊断。通过滚动轴承的振动数据评估该方法。实验结果证明了该方法有效。

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