多属性关键性分析的本体建模,以指导预后和健康管理项目的开发

Adalberto Polenghi, Irene Roda, Marco Macchi, Alessandro Pozzetti
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引用次数: 0

摘要

数字技术正变得越来越普遍,工业企业正在利用这些技术来增强与诊断和健康管理(PHM)相关的潜力。事实上,PHM 可以评估有形资产的健康状态,并预测其未来行为。为了有效地制定 PHM 计划,应确定最关键的资产,以便指导建模工作。可以采用多种技术来评估资产的关键性;在工业实践中,关键性分析是最常用的技术之一。尽管人工智能在数据分析和预测方面取得了进步,但建立在定量和定性数据基础上的临界度分析却没有得到相应的改进。这项工作的目标是提出一种多属性临界度分析的本体形式化,以便 i) 固定分析中涉及的术语背后的语义,ii) 使临界度分析的执行方式标准化和统一化,iii) 利用推理能力自动评估资产临界度并关联合适的维护策略。所开发的本体(称为 MOCA)在一家遍布全球的食品公司进行了测试。应用结果表明,MOCA 可以实现预设的目标;特别是可以确定直接实施 PHM 计划的高优先级资产。从长远来看,本体可以作为一个独特的知识库,以一致的方式整合跨设施的多种数据和信息。因此,本体论可以进行高级分析,从而实现认知型网络物理系统,为遍布全球的公司提高业务绩效。
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An ontological modelling of multi-attribute criticality analysis to guide Prognostics and Health Management program development

Digital technologies are becoming more pervasive and industrial companies are exploiting them to enhance the potentialities related to Prognostics and Health Management (PHM). Indeed, PHM allows to evaluate the health state of the physical assets as well as to predict their future behaviour. To be effective in developing PHM programs, the most critical assets should be identified so to direct modelling efforts. Several techniques could be adopted to evaluate asset criticality; in industrial practice, criticality analysis is amongst the most utilised. Despite the advancement of artificial intelligence for data analysis and predictions, the criticality analysis, which is built upon both quantitative and qualitative data, has not been improved accordingly. It is the goal of this work to propose an ontological formalisation of a multi-attribute criticality analysis in order to i) fix the semantics behind the terms involved in the analysis, ii) standardize and uniform the way criticality analysis is performed, and iii) take advantage of the reasoning capabilities to automatically evaluate asset criticality and associate a suitable maintenance strategy. The developed ontology, called MOCA, is tested in a food company featuring a global footprint. The application shows that MOCA can accomplish the prefixed goals; specifically, high priority assets towards which direct PHM programs are identified. In the long run, ontologies could serve as a unique knowledge base that integrate multiple data and information across facilities in a consistent way. As such, they will enable advanced analytics to take place, allowing to move towards cognitive Cyber Physical Systems that enhance business performance for companies spread worldwide.

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