The number of connected Internet of Things (IoT) devices grows at an increasing rate, revealing shortcomings of current IoT networks for cyber-physical infrastructure systems to cope with ensuing device management and security issues. Data-based methods rooted in deep learning (DL) are recently considered to cope with such problems, albeit challenged by deployment of deep learning models at resource-constrained IoT devices. Motivated by the upcoming surge of 5G IoT connectivity in industrial environments, in this paper, we propose to integrate a DL-based anomaly detection (AD) as a service into the 3GPP mobile cellular IoT architecture. The proposed architecture embeds deep autoencoder based anomaly detection modules both at the IoT devices (ADM-EDGE) and in the mobile core network (ADM-FOG), thereby balancing between the system responsiveness and accuracy. We design, integrate, demonstrate and evaluate a testbed that implements the above service in a real-world deployment integrated within the 3GPP Narrow-Band IoT (NB-IoT) mobile operator network.
翻译:由于在工业环境中即将涌现5G IoT连接,我们在本文件中提议将基于DL的异常现象检测(AD)作为服务纳入3GPP移动移动移动式IoT结构中,拟议建筑将基于深度自动编码的异常现象检测模块嵌入IoT设备(ADM-EDGE)和移动核心网络(ADM-FOG),从而在系统响应性和准确性之间取得平衡。我们设计、整合、展示和评价一个测试台,在3GPP-Nrow-Band IoT(NB-IoT)移动操作网络中整合的实时部署中实施上述服务。