Litcius/Paper detail

Joint Active User Detection and Channel Estimation Via Bayesian Learning Approaches in MTC Communications

Xiaoxu Zhang, Fabrice Labeau, Li Hao, Jiaqi Liu

2021IEEE Transactions on Vehicular Technology31 citationsDOIOpen Access PDF

Abstract

To support the massive machine-type communications (mMTC) scenario for Internet of Things (IoTs) applications featured by large-scale device connectivity and low device activity, grant-free non-orthogonal multiple access (GF-NOMA) and compressive sensing (CS)-based multi-user detection methods (MUD) are developed. In this paper, we develop two Bayesian CS-based methods, i.e., sparse Bayesian Learning (SBL) and fast inverse-free sparse Bayesian Learning (FI-SBL), for joint MUD and channel estimation (CE) in GF-NOMA with Low-Activity Code Division Multiple Access (LA-CDMA) as the multiple access technology. SBL is investigated for robust MUD and CE by utilizing the parameterized Gaussian prior information. Then to resolve the high computational complexity of SBL, FI-SBL is proposed, which replaces matrix reversion operations with relaxed evidence lower bound. Simulation results show that the two proposed algorithms outperform the traditional methods, and FI-SBL reduces the computational complexity significantly.

Topics & Concepts

Multiuser detectionComputer scienceCompressed sensingParameterized complexityCode division multiple accessComputational complexity theoryBayesian probabilityAlgorithmDecoding methodsChannel (broadcasting)Bayesian inferenceMIMONomaJoint (building)Artificial intelligenceEngineeringTelecommunicationsTelecommunications linkArchitectural engineeringSparse and Compressive Sensing TechniquesIndoor and Outdoor Localization TechnologiesAdvanced Wireless Communication Technologies