Litcius/Paper detail

Learning-Based Handover in Mobile Millimeter-Wave Networks

Sara Khosravi, Hossein Shokri-Ghadikolaei, Marina Petrova

2020IEEE Transactions on Cognitive Communications and Networking29 citationsDOIOpen Access PDF

Abstract

Millimeter-wave (mmWave) communication is considered as a key enabler of ultra-high data rates in the future cellular and wireless networks. The need for directional communication between base stations (BSs) and users in mmWave systems, that is achieved through beamforming, increases the complexity of the channel estimation. Moreover, in order to provide better coverage, dense deployment of BSs is required which causes frequent handovers and increased association overhead. In this article, we present an approach that jointly addresses the beamforming and handover problems. Our solution entails an efficient beamforming method with a few number of pilots and a learning-based handover method supporting mobile scenarios. We use reinforcement learning algorithm to learn the optimal choices of the backup BSs in different locations of a mobile user. We show that our method provides an almost constant rate and reliability in all locations of the user's trajectory with a small number of handovers. Simulation results in an outdoor environment based on narrow band cluster mmWave channel modeling and real building map data show the superior performance of our proposed solution in achievable instantaneous rate and trajectory rate.

Topics & Concepts

Computer scienceHandoverComputer networkBase stationBeamformingBackupCellular networkWirelessReal-time computingKey (lock)Reliability (semiconductor)Mobile telephonyChannel (broadcasting)Wireless networkMobile stationTrajectorySoftware deploymentThroughputInterference (communication)Mobile computingDistributed computingMobile broadbandMobile deviceMobile radioChannel allocation schemesHeterogeneous networkShadow mappingMillimeter-Wave Propagation and ModelingAdvanced MIMO Systems OptimizationIndoor and Outdoor Localization Technologies