Department of Electronic Engineering, Kookmin University, Seoul 02707, Republic of Korea.
Sensors (Basel). 2022 Nov 20;22(22):8980. doi: 10.3390/s22228980.
The industrial internet of things (IIoT), a leading technology to digitize industrial sectors and applications, requires the integration of edge and cloud computing, cyber security, and artificial intelligence to enhance its efficiency, reliability, and sustainability. However, the collection of heterogeneous data from individual sensors as well as monitoring and managing large databases with sufficient security has become a concerning issue for the IIoT framework. The development of a smart and integrated IIoT infrastructure can be a possible solution that can efficiently handle the aforementioned issues. This paper proposes an AI-integrated, secured IIoT infrastructure incorporating heterogeneous data collection and storing capability, global inter-communication, and a real-time anomaly detection model. To this end, smart data acquisition devices are designed and developed through which energy data are transferred to the edge IIoT servers. Hash encoding credentials and transport layer security protocol are applied to the servers. Furthermore, these servers can exchange data through a secured message queuing telemetry transport protocol. Edge and cloud databases are exploited to handle big data. For detecting the anomalies of individual electrical appliances in real-time, an algorithm based on a group of isolation forest models is developed and implemented on edge and cloud servers as well. In addition, remote-accessible online dashboards are implemented, enabling users to monitor the system. Overall, this study covers hardware design; the development of open-source IIoT servers and databases; the implementation of an interconnected global networking system; the deployment of edge and cloud artificial intelligence; and the development of real-time monitoring dashboards. Necessary performance results are measured, and they demonstrate elaborately investigating the feasibility of the proposed IIoT framework at the end.
工业物联网 (IIoT) 是数字化工业领域和应用的领先技术,需要集成边缘计算和云计算、网络安全和人工智能,以提高其效率、可靠性和可持续性。然而,从各个传感器收集异构数据以及监控和管理具有足够安全性的大型数据库已成为 IIoT 框架的一个关注问题。开发智能和集成的 IIoT 基础设施可能是一个可行的解决方案,可以有效地解决上述问题。本文提出了一种人工智能集成的、安全的 IIoT 基础设施,该基础设施具有异构数据采集和存储能力、全球互通信和实时异常检测模型。为此,设计并开发了智能数据采集设备,通过该设备将能源数据传输到边缘 IIoT 服务器。应用哈希编码凭据和传输层安全协议对服务器进行保护。此外,这些服务器可以通过安全消息队列遥测传输协议进行数据交换。边缘和云数据库用于处理大数据。为了实时检测各个电器的异常,在边缘和云服务器上开发并实现了基于一组隔离森林模型的算法。此外,还实现了可远程访问的在线仪表板,使用户能够监控系统。总的来说,本研究涵盖了硬件设计;开源 IIoT 服务器和数据库的开发;互联全球网络系统的实现;边缘和云人工智能的部署;以及实时监控仪表板的开发。测量了必要的性能结果,并在最后详细探讨了所提出的 IIoT 框架的可行性。