基于多方面维护本体的安全关键型系统智能维护优化框架

AI EDAM Pub Date : 2024-01-18 DOI:10.1017/s0890060423000215
Xiaoxu Diao, Yunfei Zhao, Pavan K. Vaddi, Michael Pietrykowski, Marat Khafizov, Carol Smidts
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引用次数: 0

摘要

维护优化是一个提高维护策略和活动效率的过程,需要考虑目标系统和组件的各个方面,如系统故障概率、故障组件的维修和更换成本等。维护优化算法的改进通常需要来自各种数据源的信息。例如,可能需要从风险分析工具中获得系统风险信息,或从故障预报工具中获得部件的剩余寿命。数据采集(DAQ)和汇总的要求对实施和使用这些维护优化算法的维护管理系统(MMS)提出了新的挑战。本文提出了一个基于多方面维护本体的框架,以促进来自 MMS、在线监控系统、故障检测和判别工具、风险评估工具、决策工具和部件识别工具的数据采集,并加速当代维护优化模型和算法的实施和验证。本文提出的框架包括一个包含维护优化关键信息的多视角维护本体,以及用于从故障预报工具、在线监测工具、风险评估工具和决策算法等各种数据源收集信息的应用接口。此外,本文还提出了一种启发式方法,用于在现有本体论与正在构建的本体论不完全兼容时,将其他现有本体论中的概念和属性整合到拟议框架中。最后,本文使用一个为核电站设计的给水系统来验证所提出的本体框架,该系统的维护组件包括阀门和过滤器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple aspects maintenance ontology-based intelligent maintenance optimization framework for safety-critical systems
Maintenance optimization is a process for improving the efficiency of maintenance strategies and activities, considering various aspects of the target system and components, such as the probabilities of system failures and the cost of repair and replacement of a failed component. The improvement of maintenance optimization algorithms generally requires information from various data sources. For example, it may require the system risk information derived from risk analysis tools or the residual lifetime of a component from fault prognosis tools. The requirements of data acquisition (DAQ) and aggregation pose new challenges for maintenance management systems (MMSs) that implement and use these maintenance optimization algorithms. This paper proposes a multiple aspects maintenance ontology-based framework to facilitate DAQ from MMSs, online monitoring systems, fault detection and discrimination tools, risk assessment tools, decision-making tools, and component identification tools, and accelerate the implementation and verification of contemporary maintenance optimization models and algorithms. The proposed framework consists of a multi-aspect maintenance ontology with critical information for maintenance optimization and application interfaces for collecting information from various data sources, such as fault prognosis tools, online monitoring tools, risk assessment tools, and decision-making algorithms. In addition, this paper proposes a heuristic method for integrating concepts and properties from other existing ontologies into the proposed framework when the existing ontology is not fully compatible with the ontology under construction. Finally, the paper verifies the proposed ontology framework using a feedwater system designed for nuclear power plants with valves and filters as the components under maintenance.
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