College of Computer Science and Software Engineering, Shenzhen University, Shenzhen 518060, China.
College of Automation Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 211100, China.
Sensors (Basel). 2022 Aug 7;22(15):5901. doi: 10.3390/s22155901.
The Industrial Internet of Things (IIoT) connects industrial assets to ubiquitous smart sensors and actuators to enhance manufacturing and industrial processes. Data-driven condition monitoring is an essential technology for intelligent manufacturing systems to identify anomalies from malfunctioning equipment, prevent unplanned downtime, and reduce the operation costs by predictive maintenance without interrupting normal machine operations. However, data-driven condition monitoring requires massive data collected from smart sensors to be transmitted to the cloud for further processing, thereby contributing to network congestion and affecting the network performance. Furthermore, unbalanced training data with very few labelled anomalies limit supervised learning models because of the lack of sufficient fault data for the training process in anomaly detection algorithms. To address these issues, we proposed an IIoT-based condition monitoring system with an edge-to-cloud architecture and computed the relative wavelet energy as feature vectors on the edge layer to reduce the network traffic overhead. We also proposed an unsupervised deep long short-term memory (LSTM) network module for anomaly detection. We implemented the proposed IIoT condition monitoring system for a manufacturing machine in a real shop site to evaluate our proposed solution. Our experimental results verify the effectiveness of our approach which can not only reduce the network traffic overhead for the IIoT but also detect anomalies accurately.
工业物联网(IIoT)将工业资产连接到无处不在的智能传感器和执行器,以增强制造和工业流程。数据驱动的状态监测是智能制造系统的一项重要技术,可识别设备故障的异常情况,防止计划外停机,并通过预测性维护降低运营成本,而不会中断正常的机器运行。然而,数据驱动的状态监测需要从智能传感器收集大量数据,并将其传输到云端进行进一步处理,从而导致网络拥塞并影响网络性能。此外,由于异常检测算法中缺乏足够的故障数据用于训练过程,因此训练数据不平衡且异常情况极少,限制了监督学习模型的应用。为了解决这些问题,我们提出了一种基于 IIoT 的状态监测系统,采用边缘到云的架构,并在边缘层计算相对小波能量作为特征向量,以减少网络流量开销。我们还提出了一种用于异常检测的无监督深度长短时记忆(LSTM)网络模块。我们在实际车间的制造机器上实现了所提出的 IIoT 状态监测系统,以评估我们提出的解决方案。我们的实验结果验证了我们方法的有效性,该方法不仅可以减少 IIoT 的网络流量开销,而且可以准确地检测异常情况。