With the development of industrialization, air pollution is also steadily on the rise since both industrial and daily activities generate a massive amount of air pollution. Since decreasing air pollution is critical for citizens' health and well-being, air pollution monitoring is becoming an essential topic. Industrial Internet of Things (IIoT) research focuses on this crucial area. Several attempts already exist for air pollution monitoring. However, none of them are improving the performance of IoT data collection at the desired level. Inspired by the genuine Yet Another Next Generation (YANG) data model, we propose a YAng-based DAta model (YA-DA) to improve the performance of IIoT data collection. Moreover, by taking advantage of digital twin (DT) technology, we propose a DT-enabled fine-grained IIoT air quality monitoring system using YA-DA. As a result, DT synchronization becomes fine-grained. In turn, we improve the performance of IIoT data collection resulting in lower round-trip time (RTT), higher DT synchronization, and lower DT latency.
翻译:随着工业化的发展,空气污染也在稳步上升,因为工业和日常活动都产生了大量的空气污染;由于空气污染减少对公民的健康和福祉至关重要,空气污染监测正在成为一个重要议题;工业物互联网(IIoT)研究集中在这一关键领域;空气污染监测已有若干尝试;然而,没有一项尝试在理想水平上改进IoT数据收集工作;在真正的又一代数据模型的启发下,我们提议以YAng为基础的Data模型(YA-DA)改进IIoT数据收集工作;此外,我们利用数字双胞胎技术,提议使用YA-DA(DA)进行基于DT的微调IIoT空气质量监测系统;结果,DT同步工作变得精细;反过来,我们改进IIoT数据收集工作,导致更短的周期性(RTT),更高的DT同步和低的DT拉长。