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Anomaly detection framework for Internet of things traffic using vector convolutional deep learning approach in fog environment

机译:使用传染媒介卷积的深度学习方法在雾环境中使用互联网交通互联网的异常检测框架

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摘要

The proliferation of Internet of things (IoT) devices has lured hackers to launch attacks. Therefore, anomalies in IoT traffic must be detected to mitigate these attacks and protect services rendered by smart devices. The lacuna in the existing anomaly detection techniques is the nonscalable nature of anomaly detection systems, resulting in the mishandling of large-scale data generated from IoT devices. The issue of scalability is addressed and an anomaly detection framework in a fog environment is proposed herein using vector convolutional deep learning (VCDL) approach. The anomaly detection system could be scalable if the traffic can be distributed to the nodes in the fog layer for processing. This is effectively captured in the VCDL approach in which the training of IoT traffic is distributed and computations are performed in the fog nodes. The parameters required for training are shared by the master node in the fog layer. Further, the proposed anomaly detection algorithm classifies IoT traffic as either normal or attack and then passes it to the cloud for attack mitigation. Experiments were conducted on UNSW's Bot-IoT dataset and the results indicate that the proposed distributed deep learning approach can efficiently handle scalable data compared with the existing centralized deep learning approaches. Experimental results show that the proposed approach is significantly better in terms of accuracy, precision, and recall compared with the state-of-the-art anomaly detection systems.
机译:互联网(物联网)设备的扩散有诱饵黑客发射攻击。因此,必须检测到IOT流量中的异常,以减轻这些攻击并保护智能设备呈现的服务。现有异常检测技术中的LACUNA是异常检测系统的无价性,导致从IOT设备产生的大规模数据的误判。通过矢量卷积深度学习(VCDL)方法,在本文中提出了可扩展性问题,并且在本文中提出了雾环境中的异常检测框架。如果流量可以分配给雾层中的节点以进行处理,则异常检测系统可以是可扩展的。这在VCDL方法中有效地捕获,其中分布了IOT流量的训练,并且在雾节点中执行计算。训练所需的参数由雾层中的主节点共享。此外,所提出的异常检测算法将IoT流量分类为正常或攻击,然后将其传递给云以进行攻击缓解。在UNSW的BOT-IOT数据集上进行了实验,结果表明,与现有的集中化深度学习方法相比,所提出的分布式深度学习方法可以有效地处理可扩展数据。实验结果表明,与最先进的异常检测系统相比,该方法在准确性,精度和召回方面明显更好。

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