Deep Unfolding in Multicell MU-MIMO

Lukas Schynol, M. Pesavento
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引用次数: 1

Abstract

The weighted sum-rate maximization in coordinated multicell MIMO networks with intra- and intercell interference and local channel state at the base stations is considered. Based on the concept of unrolling applied to the classical weighted minimum mean squared error (WMMSE) algorithm and ideas from graph signal processing, we present the GCN-WMMSE deep network architecture for transceiver design in multicell MU-MIMO interference channels with local channel state information. Similar to the original WMMSE algorithm it facilitates a distributed implementation in multicell networks. However, GCN-WMMSE significantly accelerates the convergence and con-sequently alleviates the communication overhead in a distributed deployment. Additionally, the architecture is agnostic to different wireless network topologies while exhibiting a low number of trainable parameters and high efficiency w.r.t. training data.
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多单元MU-MIMO的深度展开
考虑了蜂窝内、蜂窝间干扰和基站本地信道状态下多蜂窝协同MIMO网络的加权和速率最大化问题。基于经典加权最小均方误差(WMMSE)算法的展开概念和图信号处理的思想,提出了一种适用于具有本地信道状态信息的多单元MU-MIMO干扰信道的GCN-WMMSE深度网络架构。与原始的WMMSE算法类似,它便于在多蜂窝网络中分布式实现。然而,GCN-WMMSE显著加快了收敛速度,从而减轻了分布式部署中的通信开销。此外,该体系结构对不同的无线网络拓扑不可知,同时显示出较少的可训练参数和高效率的w.r.t.训练数据。
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