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Towards a Semantic Web of Things: A Hybrid Semantic Annotation Extraction and Reasoning Framework for Cyber-Physical System

机译:迈向物联网:网络物理系统的混合语义注释提取和推理框架

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摘要

Web of Things (WoT) facilitates the discovery and interoperability of Internet of Things (IoT) devices in a cyber-physical system (CPS). Moreover, a uniform knowledge representation of physical resources is quite necessary for further composition, collaboration, and decision-making process in CPS. Though several efforts have integrated semantics with WoT, such as knowledge engineering methods based on semantic sensor networks (SSN), it still could not represent the complex relationships between devices when dynamic composition and collaboration occur, and it totally depends on manual construction of a knowledge base with low scalability. In this paper, to addresses these limitations, we propose the semantic Web of Things (SWoT) framework for CPS (SWoT4CPS). SWoT4CPS provides a hybrid solution with both ontological engineering methods by extending SSN and machine learning methods based on an entity linking (EL) model. To testify to the feasibility and performance, we demonstrate the framework by implementing a temperature anomaly diagnosis and automatic control use case in a building automation system. Evaluation results on the EL method show that linking domain knowledge to DBpedia has a relative high accuracy and the time complexity is at a tolerant level. Advantages and disadvantages of SWoT4CPS with future work are also discussed.
机译:物联网(WoT)促进了网络物理系统(CPS)中物联网(IoT)设备的发现和互操作性。此外,物理资源的统一知识表示对于CPS中的进一步组合,协作和决策过程非常必要。尽管已经将多种语义与WoT集成在一起,例如基于语义传感器网络(SSN)的知识工程方法,但是当动态组合和协作发生时,它仍然不能表示设备之间的复杂关系,而这完全取决于知识的人工构建低可伸缩性的基础。在本文中,为了解决这些限制,我们提出了CPS的语义Web框架(SWoT)框架。 SWoT4CPS通过扩展SSN和基于实体链接(EL)模型的机器学习方法,提供了一种具有本体工程学方法的混合解决方案。为了证明其可行性和性能,我们通过在建筑物自动化系统中实施温度异常诊断和自动控制用例来演示该框架。 EL方法的评估结果表明,将领域知识链接到DBpedia具有相对较高的准确性,并且时间复杂度处于可容忍的水平。还讨论了SWoT4CPS在将来的工作中的优缺点。

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