一种基于轻量级深度神经网络的边缘计算多协议智能感知方法

Ganghong Zhang, Yan Zhen, Libin Zheng, Jinhong He
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引用次数: 0

摘要

正确识别不同通信通道数据包的协议类型并进行协议分析是电力物联网边缘计算数据采集的基础。到目前为止,这类研究主要局限于特定类型的协议,因为只有在类型已知的情况下才能解析协议。针对更多的协议类型,需要能够自动识别各种类型的协议,且识别率高、效率高的方法。为了适应电力物联网的边缘计算,本文提出了一种轻量级深度神经网络模型PPRNet,该模型使用不同类型协议的数据帧进行训练。实验结果表明,该技术对DL/T645-2007、Q/GDW1376.1、IEC62056等6种协议类型的传感非常有效。该模型允许我们在以前未知的数据帧进入系统时感知不同类型的协议,并克服经济地将人工智能系统部署到边缘设备的困境。该方法具有学习和扩展的能力,可以扩展到其他应用协议的识别和应用中。最终有助于加快协议类型的识别,促进接入设备的互联互通和即插即用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Protocol Smart Sensing Method Based on Lightweight Deep Neural Network for Edge Computing
Correctly recognizing protocol types of packets from different communication channels and implementing protocol analysis is fundamental to data acquisition for edge computing in power Internet of Things. Such studies have so far been largely restricted to specified type of protocol, because only when the type is known can the protocol be parsed. Targeting more protocol types requires methods that can automatically recognize various types of protocols with both high recognition rate and high efficiency. To be suitable for edge computing in power Internet of Things, this paper proposes a light-weight deep neural network model named PPRNet trained with data frames from protocols of different types. The experimental results show that the technique is very effective on sensing 6 protocol types applied in power IoT containing DL/T645-2007, Q/GDW1376.1, and IEC62056. This model allows us to sense different types of protocol when previously unknown data frames entering in a system, and overcome the dilemma of economically deploying an artificial intelligence system to an edge device. This method has the ability of learning and expanding, can be extended to identify and apply other application protocols. It may ultimately help speed up the recognition of protocol types, and promotes the interconnection and interoperation of access devices and the plug-and-play.
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