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Failure Detection and Prevention for Cyber-Physical Systems Using Ontology-Based Knowledge Base

机译:使用基于本体的知识库对网络物理系统进行故障检测和预防

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Cyber-physical systems have emerged as a new engineering paradigm, which combine the cyber and physical world with comprehensive computational and analytical tools to solve complex tasks. In cyber-physical systems, components are developed to detect failures, prevent failures, or mitigate the failures of a system. Sensors gather real-time data as an input to the system for further processing. Therefore, the whole cyber-physical system depends on sensors to accomplish their tasks and the failure of one sensor may lead to the failure of the whole system. To address this issue, we present an approach that utilizes the Failure Modes, Effects, and Criticality Analysis, which is a prominent hazard analysis technique to increase the understanding of risk and failure prevention. In our approach, we transform the Failure Modes, Effects, and Criticality Analysis model into a UML(Unified Modeling Language) class diagram, and then a knowledge base is constructed based on the derived UML class diagram. Finally, the UML class diagram is used to build an ontology. The proposed approach employs a 5C architecture for smart industries for its systematic application. Lastly, we use a smart home case study to validate our approach.
机译:网络物理系统已成为一种新的工程范式,它将网络和物理世界与全面的计算和分析工具结合起来,以解决复杂的任务。在网络物理系统中,开发组件来检测故障,防止故障或减轻系统故障。传感器收集实时数据作为系统的输入,以进行进一步处理。因此,整个网络物理系统依靠传感器来完成其任务,而一个传感器的故障可能会导致整个系统的故障。为解决此问题,我们提出一种利用故障模式,影响和临界度分析的方法,这是一种突出的危害分析技术,可增进对风险和故障预防的理解。在我们的方法中,我们将故障模式,影响和关键性分析模型转换为UML(统一建模语言)类图,然后基于派生的UML类图构建知识库。最后,UML类图用于构建本体。所提出的方法将5C体系结构用于智能行业,以进行系统应用。最后,我们使用智能家居案例研究来验证我们的方法。

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