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Artificial-Intelligence-Based Performance Enhancement of the G3-PLC LOADng Routing Protocol for Sensor Networks

机译:基于人工智能的传感器网络G3-PLC LOADng路由协议的性能增强

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Powerline Communications (PLC) is a popular technology providing infrastructure for applications related to IoT, smart grids, smart cities, in-home networking and has been experimentally considered for broadband access. Sensor networks and Automatic Meter Reading applications are closely related to this technology, as it provides free infrastructure and sustains the data rate requirements. The application here considered consists in the implementation of the G3-PLC LOADng routing protocol in the nodes of a sensor/meter network, where the nodes share all the same medium. G3-PLC is a powerline communication standard, employing OFDM at the physical layer and oriented at enabling the smart grid vision. The Medium Access Control implements CSMA/CA, while the Logical Link Control implements LOADng routing, which is the ITU-T G.9903 recommended specification for Lossy and Low-power Networks (LLNs). In this paper, we consider the mapping phase of the routing protocol, in which the central element of the network establishes the routes to reach any node. By simulating this process via a physical simulation tool, it is possible to synthetically train an Artificial Neural Network and teach it how the optimally established routes correlate to the topological and geometrical properties of the network. Eventually, we discuss how, by employing this AI approach, it is possible to speed-up the routing mapping process.
机译:电力线通信(PLC)是一种流行的技术,可为与IoT,智能电网,智能城市,家庭网络相关的应用程序提供基础设施,并且已被实验性地考虑用于宽带访问。传感器网络和自动抄表应用程序与该技术紧密相关,因为它提供了免费的基础架构并满足了数据速率要求。这里考虑的应用程序包括在传感器/仪表网络的节点中实施G3-PLC LOADng路由协议,其中节点共享所有相同的介质。 G3-PLC是电力线通信标准,在物理层采用OFDM,旨在实现智能电网视觉。介质访问控制实现CSMA / CA,而逻辑链路控制实现LOADng路由,这是ITU-T G.9903建议的有损和低功率网络(LLN)规范。在本文中,我们考虑了路由协议的映射阶段,在该阶段中,网络的中心元素建立了到达任何节点的路由。通过使用物理仿真工具对这一过程进行仿真,可以综合训练一个人工神经网络,并向其传授最佳建立的路线如何与该网络的拓扑和几何特性相关联。最终,我们讨论了如何通过采用这种AI方法来加速路由映射过程。

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