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IoT Traffic Multi-Classification Using Network and Statistical Features in a Smart Environment

机译:在智能环境中使用网络和统计功能进行物联网流量多分类

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As the number of Internet of Things (IoT) devices and applications increases, the capacity of the IoT access networks is considerably stressed. This can create significant performance bottlenecks in various layers of an end-to-end communication path, including the scheduling of the spectrum, the resource requirements for processing the IoT data at the Edge and/or Cloud, and the attainable delay for critical emergency scenarios. Thus, it is required to classify or predict the time varying traffic characteristics of the IoT devices. However, this classification remains at large an open challenge. Most of the existing solutions are based on machine learning techniques, which nonetheless present high computational cost while non considering the fine-grained flow characteristics. To this end, in this paper we design a two-stage classification framework that utilizes both the network and statistical features to characterize the IoT devices in the context of a smart city. We firstly perform the data cleaning and preprocessing of the data and then analyze the dataset to extract the network and statistical features set for different types of IoT devices. The evaluation results show that the proposed classification can achieve 99% accuracy as compared to other techniques with Mathews Correlation Coefficient of 0.96.
机译:随着物联网(IoT)设备和应用程序数量的增加,物联网接入网络的容量受到很大压力。这可能会在端到端通信路径的各个层中造成严重的性能瓶颈,包括频谱调度,在Edge和/或Cloud上处理IoT数据的资源要求以及关键紧急情况下可达到的延迟。因此,需要对物联网设备的时变流量特征进行分类或预测。但是,这种分类仍然是一个很大的挑战。现有的大多数解决方案都是基于机器学习技术的,尽管这些技术在不考虑细粒度的流量特性的情况下仍具有很高的计算成本。为此,在本文中,我们设计了一个两阶段的分类框架,该框架利用网络和统计功能在智能城市的背景下表征物联网设备。我们首先执行数据清理和数据预处理,然后分析数据集以提取针对不同类型的物联网设备的网络和统计功能集。评估结果表明,与Mathews相关系数为0.96的其他技术相比,所提出的分类可以达到99%的准确性。

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