Department of Information Systems and Technology, Mid Sweden University, 851 70 Sundsvall, Sweden.
Sensors (Basel). 2018 May 12;18(5):1532. doi: 10.3390/s18051532.
Digitalization is a global trend becoming ever more important to our connected and sustainable society. This trend also affects industry where the Industrial Internet of Things is an important part, and there is a need to conserve spectrum as well as energy when communicating data to a fog or cloud back-end system. In this paper we investigate the benefits of fog computing by proposing a novel distributed learning model on the sensor device and simulating the data stream in the fog, instead of transmitting all raw sensor values to the cloud back-end. To save energy and to communicate as few packets as possible, the updated parameters of the learned model at the sensor device are communicated in longer time intervals to a fog computing system. The proposed framework is implemented and tested in a real world testbed in order to make quantitative measurements and evaluate the system. Our results show that the proposed model can achieve a 98% decrease in the number of packets sent over the wireless link, and the fog node can still simulate the data stream with an acceptable accuracy of 97%. We also observe an end-to-end delay of 180 ms in our proposed three-layer framework. Hence, the framework shows that a combination of fog and cloud computing with a distributed data modeling at the sensor device for wireless sensor networks can be beneficial for Industrial Internet of Things applications.
数字化是全球趋势,对我们的互联和可持续社会变得越来越重要。这一趋势也影响着工业,物联网是其中的重要组成部分,在将数据传输到雾或云后端系统时,需要节约频谱和能源。在本文中,我们通过在传感器设备上提出一种新颖的分布式学习模型并模拟雾中的数据流,而不是将所有原始传感器值传输到云后端,研究了雾计算的优势。为了节约能源并尽可能少地发送数据包,传感器设备上学习模型的更新参数将以更长的时间间隔传输到雾计算系统。为了进行定量测量和评估系统,我们在真实的测试平台上实现和测试了所提出的框架。我们的结果表明,所提出的模型可以将无线链路中发送的数据包数量减少 98%,并且雾节点仍然可以以可接受的 97%精度模拟数据流。我们还观察到我们提出的三层框架的端到端延迟为 180 毫秒。因此,该框架表明,结合雾计算和云计算以及在传感器设备上进行分布式数据建模,对于物联网应用可能是有益的。