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Distributed communication model-learning architecture for anomaly detection in multi-service shared M2M area networks

机译:多服务共享M2M区域网中异常检测的分布式通信模型学习架构

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This paper proposes a distributed communication model-learning architecture for detecting anomalies in multiservice shared machine-to-machine (M2M) area networks. Since M2M devices are often located at remote areas, anomaly detection is essential for M2M services to promptly react to undesirable events (e.g. a device breaks or is stolen, misused, or spoofed). To autonomously set the threshold for anomaly detection, monitoring a device's communication and learning communication model for the device are required. However, this imposes high computation burden on the network, especially when a huge number of devices are connected. Therefore, we propose a distributed learning architecture that works even in large-scale networks. Computer simulation was conducted and showed that our architecture can learn a communication model in a short time while the numbers of communications and calculations for learning remain small.
机译:本文提出了一种用于在多服务共享机器对机器(M2M)区域网络中检测异常的分布式通信模型学习体系结构。由于M2M设备通常位于偏远地区,因此异常检测对于M2M服务迅速对不良事件(例如,设备损坏或被盗,误用或欺骗)做出反应至关重要。为了自主设置异常检测的阈值,需要监视设备的通信并学习该设备的通信模型。但是,这给网络带来了很高的计算负担,尤其是在连接大量设备时。因此,我们提出了一种分布式学习体系结构,即使在大型网络中也可以使用。进行了计算机仿真,结果表明我们的体系结构可以在短时间内学习通信模型,而通信和学习计算的数量仍然很少。

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