Traffic modeling for aggregated periodic IoT data

T. Hossfeld, Florian Metzger, P. Heegaard
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引用次数: 38

Abstract

The Internet of Things (IoT) is emerging in the telecommunication sector, and will bring a very large number of devices that connect to the Internet in the near future. The expected growth in such IoT nodes necessitates appropriate traffic models in order to evaluate their impact on different aspects of networking, e.g., on signaling load in the networks, or on processing load of the data in a cloud. In this paper we analyze the characteristics of aggregated periodic IoT data based on related work, and compare them with a Poisson process as approximation for the superposed traffic as assumed in standardization. Such an approximation is crucial in order to investigate the scalability of an IoT network, as it may be impossible in practice to measure or to simulate large-scale IoT deployments. The accuracy and applicability of the Poisson process is investigated for the use case “IoT cloud”. The results show that the Poisson process may induce large errors depending on the performance metric of interest. This error must be considered by standardization and requires more sophisticated traffic models. As key contributions, we provide realistic traffic models for periodic IoT data, introduce performance metrics for quantifying the bias, and derive reference values as to when the Poisson process can be assumed for aggregated periodic IoT data.
用于聚合周期性物联网数据的流量建模
物联网(IoT)正在电信领域兴起,并将在不久的将来带来大量连接到互联网的设备。这些物联网节点的预期增长需要适当的流量模型,以评估它们对网络不同方面的影响,例如,对网络中的信令负载或对云中的数据处理负载的影响。本文在相关工作的基础上,分析了聚合周期物联网数据的特征,并将其与标准化中假设的叠加流量近似的泊松过程进行了比较。为了研究物联网网络的可扩展性,这种近似是至关重要的,因为在实践中可能不可能测量或模拟大规模物联网部署。针对“物联网云”用例,研究了泊松过程的准确性和适用性。结果表明,泊松过程可能会产生较大的误差,这取决于感兴趣的性能指标。标准化必须考虑这个错误,并且需要更复杂的流量模型。作为关键贡献,我们为周期性物联网数据提供了现实的流量模型,引入了量化偏差的性能指标,并得出了何时可以假设泊松过程用于聚合周期性物联网数据的参考值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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