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Learning to Beamform in Joint Multicast and Unicast Transmission With Imperfect CSI

Zhe Zhang, Meixia Tao, Ya‐Feng Liu

2023IEEE Transactions on Communications18 citationsDOI

Abstract

With the rapid development of mobile Internet, the demand for multicast is growing rapidly, such as content pushing and video streaming. The multicast service is usually offered to users without interrupting their on-going unicast transmission, and thus the multicast and unicast beamformers needs to be jointly designed, which generally requires perfect channel state information (CSI). However, perfect CSI is usually unavailable due to the channel estimation error. In this paper, we propose a learning based approach to jointly design the multicast and unicast beamformers with imperfect CSI. To learn the beamforming strategy, a new graph neural network (GNN) based architecture named unicast-multicast GNN (UMGNN) is proposed, which only requires the estimated channel. UMGNN can guarantee the permutation invariance/equivalence and model the special property in the multicast transmission, i.e., the multicast rate is determined by the worst user. Moreover, by sharing the parameters across different users, UMGNN exhibits a pretty good scalability to different number of users. Numerical results show that UMGNN outperforms a fully connected neural network and a widely used sampling-based algorithm. To highlight its performance in the multicast transmission, we also show that UMGNN can find the correct worst user that determines the multicast rate.

Topics & Concepts

MulticastComputer scienceComputer networkUnicastXcastSource-specific multicastPragmatic General MulticastIP multicastProtocol Independent MulticastMulticast addressDistributed computingAdvanced MIMO Systems OptimizationCooperative Communication and Network CodingWireless Networks and Protocols
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