Litcius/Paper detail

Network resource optimization with reinforcement learning for low power wide area networks

Gyubong Park, Wooyeob Lee, Inwhee Joe

2020EURASIP Journal on Wireless Communications and Networking48 citationsDOIOpen Access PDF

Abstract

Abstract As the 4th industrial revolution using information becomes an issue, wireless communication technologies such as the Internet of Things have been spotlighted. Therefore, much research is needed to satisfy the technological demands for the future society. A LPWA (low power wide area) in the wireless communication environment enables low-power, long-distance communication to meet various application requirements that conventional wireless communications have been difficult to meet. We propose a method to consume the minimum transmission power relative to the maximum data rate with the target of LoRaWAN among LPWA networks. Reinforcement learning is adopted to find the appropriate parameter values for the minimum transmission power. With deep reinforcement learning, we address the LoRaWAN problem with the goal of optimizing the distribution of network resources such as spreading factor, transmission power, and channel. By creating a number of deep reinforcement learning agents that match the terminal nodes in the network server, the optimal transmission parameters are provided to the terminal nodes. The simulation results show that the proposed method is about 15% better than the existing ADR (adaptive data rate) MAX of LoRaWAN in terms of throughput relative to energy transmission.

Topics & Concepts

Reinforcement learningComputer scienceTransmission (telecommunications)WirelessThroughputWireless networkComputer networkData transmissionChannel (broadcasting)The InternetTelecommunicationsArtificial intelligenceWorld Wide WebIoT Networks and ProtocolsEnergy Harvesting in Wireless NetworksIoT and Edge/Fog Computing