基于5G/6G网络片内NoC路由器的工业物联网流量处理建模

D. Kutuzov, A. Osovsky, O. Stukach, D. Starov
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引用次数: 7

摘要

5G/6G网络的概念被广泛用于物联网(IoT)和工业物联网(IIoT)设备的网络设计。工业物联网流量的特征可能与语音流量的特征有很大不同,因此需要模型来分析工业物联网流量。在本文中,我们研究了工业物联网流量的特征:用于目标跟踪传感器的WSN网络的高斯模型,ON/OFF,重尾模型(帕累托,威布尔,对数正态分布等),自相似(分形)模型-基于归一化分形布朗运动(fBM)和分形高斯噪声(fGN),以及工业物联网流量模型。这些模型是由经验得出的,并由已知的概率分布模型进行近似。我们研究了一个指数分布的工业物联网流量模型。此外,我们考虑了使用NoC技术的交换结构的前景,并得出结论,在交换结构中建立连接的过程的分散化具有显着的优势:它允许您灵活地分配传入流量;执行分布式仲裁;灵活地扩展通信系统,从一个系统输入的大流量,通过分配许多不同的传输路径来分割它;通过允许对交换结构进行重新配置,提高系统可靠性。通过NoC技术的并行交换结构,对OBS、1C web系统、OWM、OSM等系统的流量处理进行了建模。我们使用之前创建的NoC 5×5交换系统仿真模型,模拟了不同参数值和不同分组处理时间下呈指数分布的流量处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling of IIoT Traffic Processing by Intra-Chip NoC Routers of 5G/6G Networks
The concept of 5G/6G networks is widely used to design networks of Internet of Things (IoT) and Industrial IoT (IIoT) devices. The characteristics of IIoT traffic can differ significantly from the characteristics of voice traffic, so models are required to analyze IIoT traffic. In this paper, we examined the features of IIoT traffic: the Gaussian model of WSN networks, ON/OFF, which is used for target tracking sensors, models with heavy tails (Pareto, Weibull, lognormal distribution, etc.), self-similar (fractal) models - based on normalized Fractal Brownian Motion (fBM) and Fractal Gaussian Noise (fGN), as well as the IIoT traffic model. The models are obtained empirically and approximated by known models of probability distributions. We investigated an exponential distribution IIoT traffic model. In addition, we considered the prospects of using switch fabric of NoC technology and came to the conclusion that decentralization of the process of establishing connections in switch fabric has significant advantages: it allows you to flexibly distribute incoming traffic; perform distributed arbitration; flexibly scale the communication system, with a large traffic flow from one of the system inputs, to split it by assigning many different routes for its transmission; improves system reliability by allowing reconfiguration of the switch fabric. We model the processing of traffic from such systems as OBS, 1C web systems, OWM, OSM by parallel switch fabric of NoC technology. We used the previously created simulation model of the NoC 5×5 switching system and simulated the processing of traffic having an exponential distribution with different parameter values and different packet processing times.
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