Efficient multiple-input multiple-output (MIMO) detection algorithms with satisfactory performance and low complexity are critical for future multi-antenna systems to meet the high throughput and ultra-low latency requirements in 5G and beyond communications. In this paper, we propose a low complexity graph neural network (GNN) enhanced approximate message passing (AMP) algorithm, AMP-GNN, for MIMO detection. The structure of the neural network is customized by unfolding the AMP algorithm and introducing the GNN module to address the inaccuracy of the Gaussian approximation for multiuser interference cancellation. Numerical results will show that the proposed AMP-GNN significantly improves the performance of the AMP detector and achieves comparable performance as the state-of-the-art deep learning-based MIMO detectors but with reduced computational complexity.
翻译:在本文件中,我们建议采用低复杂度的图形神经网络(GNN)强化近似电文传递算法(AMP-GNN),用于IMO检测。神经网络的结构是定制的,方法是采用AMP算法,引入GNN模块,以解决高斯近似误差导致多用户干扰取消的问题。数字结果将表明,拟议的AMP-GNN将显著改善AMP探测器的性能,并取得与最先进的深层次学习型MIMO探测器相当的类似性能,但计算复杂性将降低。