Litcius/Paper detail

Deep Learning-Aided Distributed Transmit Power Control for Underlay Cognitive Radio Network

Woongsup Lee, Kisong Lee

2021IEEE Transactions on Vehicular Technology30 citationsDOI

Abstract

In this paper, we investigate deep learning-aided distributed transmit power control in the context of an underlay cognitive radio network (CRN). In the proposed scheme, the fully distributed transmit power control strategy of secondary users (SUs) is learned by means of a distributed deep neural network (DNN) structure in an unsupervised manner, such that the average spectral efficiency (SE) of the SUs is maximized whilst allowing the interference on primary users (PUs) to be regulated properly. Unlike previous centralized DNN-based strategies that require complete channel state information (CSI) to optimally determine the transmit power of SU transceiver pairs (TPs), in our proposed scheme, each SU TP determines its own transmit power based solely on its local CSI. Our simulation results verify that the proposed scheme can achieve a near-optimal SE comparable with a centralized DNN-based scheme, with a reduced computation time and no signaling overhead.

Topics & Concepts

UnderlayCognitive radioTransmitter power outputChannel state informationOverhead (engineering)Computer sciencePower controlContext (archaeology)TransceiverChannel (broadcasting)Control channelArtificial neural networkComputer networkCognitive networkSpectral efficiencyTransmitterPower (physics)Signal-to-noise ratio (imaging)Artificial intelligenceBase stationWirelessTelecommunicationsPhysicsQuantum mechanicsBiologyPaleontologyOperating systemCognitive Radio Networks and Spectrum SensingAdvanced MIMO Systems OptimizationFull-Duplex Wireless Communications