Institute of Exact and Natural Sciences (ICEN), Federal University of Pará, Belém 66075-110, Brazil.
Metropole Digital Institute (IMD), Federal University of Rio Grande do Norte (UFRN), Natal 59078-970, Brazil.
Sensors (Basel). 2023 Mar 28;23(7):3544. doi: 10.3390/s23073544.
Industrial production and manufacturing systems require automation, reliability, as well as low-latency intelligent control. Industrial Internet of Things (IIoT) is an emerging paradigm that enables precise, low latency, intelligent computing, supported by cutting-edge technology such as edge computing and machine learning. IIoT provides some of the essential building blocks to drive manufacturing systems to the next level of productivity, efficiency, and safety. Hardware failures and faults in IIoT are critical challenges to be faced. These anomalies can cause accidents and financial loss, affect productivity, and mobilize staff by producing false alarms. In this context, this article proposes a framework called Detection and Alert State for Industrial Internet of Things Faults (DASIF). The DASIF framework applies edge computing to execute highly precise and low latency machine learning models to detect industrial IoT faults and autonomously enforce an adaptive communication policy, triggering a state of alert in case of fault detection. The state of alert is a pre-stage countermeasure where the network increases communication reliability by using data replication combined with multiple-path communication. When the system is under alert, it can process a fine-grained inspection of the data for efficient decison-making. DASIF performance was obtained considering a simulation of the IIoT network and a real petrochemical dataset.
工业生产和制造系统需要自动化、可靠性以及低延迟智能控制。工业物联网(IIoT)是一种新兴的范例,它通过边缘计算和机器学习等前沿技术支持精确、低延迟、智能计算。IIoT 提供了一些必要的构建块,可将制造系统提升到更高的生产力、效率和安全性水平。硬件故障和 IIoT 中的故障是需要面对的关键挑战。这些异常会导致事故和财务损失,影响生产力,并通过产生误报来调动员工。在这种情况下,本文提出了一个称为工业物联网故障检测和警报状态(DASIF)的框架。DASIF 框架应用边缘计算来执行高精度和低延迟的机器学习模型,以检测工业物联网故障,并自主实施自适应通信策略,在检测到故障时触发警报状态。警报状态是一种预阶段的对策,其中网络通过使用数据复制和多路径通信来提高通信可靠性。当系统处于警报状态时,它可以对数据进行细粒度检查,以进行有效的决策。考虑到 IIoT 网络的模拟和实际的石化数据集,获得了 DASIF 的性能。