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A Reinforcement Learning Based Medium Access Control Method for LoRa Networks

机译:一种基于增强学习的LoRa网络媒体访问控制方法

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LoRa is a low-power long-range network technology, which is used widely in power sensitive and maintenance free Internet of Things applications. LoRa only defines the physical layer protocol, while LoRaWAN is a medium access control (MAC) layer protocol above it. However, simply using ALOHA in LoRaWAN makes a high package collision rate when the number of the end-devices in the network is large, since many end-devices will send the packages to gateway at the same time. To solve this, we present a reinforcement learning (RL) based multi access method for LoRaWAN, which allows end-devices decide when to transmit data based on the environment and reduce the package collision rate. A comparation between the RL method and ALOHA is also included in the paper, which shows that the RL method has a lower package collision rate.
机译:LoRa是一种低功耗远程网络技术,已广泛用于对功耗敏感且无需维护的物联网应用程序。 LoRa仅定义物理层协议,而LoRaWAN是其之上的媒体访问控制(MAC)层协议。但是,当网络中的终端设备数量很大时,仅在LoRaWAN中使用ALOHA会导致较高的程序包冲突率,因为许多终端设备会同时将程序包发送到网关。为了解决这个问题,我们提出了一种针对LoRaWAN的基于强化学习(RL)的多址访问方法,该方法允许终端设备根据环境决定何时传输数据并降低封装冲突率。本文还包括RL方法和ALOHA的比较,这表明RL方法具有较低的包装碰撞率。

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