Network-assisted full-duplex (NAFD) distributed massive multiple input multiple output (M-MIMO) enables the in-band full-duplex with existing half-duplex devices at the network level, which exceptionally improves spectral efficiency. This paper analyzes the impact of low-resolution analog-to-digital converters (ADCs) on NAFD distributed M-MIMO and designs an efficient bit allocation algorithm for low-resolution ADCs. The beamforming training mechanism relieves the heavy pilot overhead for channel estimation, which remarkably enhances system performance by guiding the interference cancellation and coherence detection. Furthermore, closed-form expressions for spectral and energy efficiency with low-resolution ADCs are derived. The multi-objective optimization problem (MOOP) for spectral and energy efficiency is solved by the deep Q network and the non-dominated sorting genetic algorithm II. The simulation results corroborate the theoretical derivation and verify the effectiveness of introducing low-resolution ADCs in NAFD distributed M-MIMO systems. Meanwhile, a set of Pareto-optimal solutions for ADC accuracy flexibly provide guidelines for deploying in a practical NAFD distributed M-MIMO system.
翻译:文件分析了低分辨率模拟数字转换器对低分辨率模拟数字转换器对低分辨率模拟数字转换器(ADCs)分布的M-MIIM(NAFD)的影响,为低分辨率自动转换器设计了一个高效的比特分配算法。波形化培训机制减轻了用于频道估计的大型试点间接间接费用(M-MIMO),通过引导干扰取消和一致性检测,大大增强了系统性能。此外,还提出了低分辨率ADC光谱和能效的封闭式表达方式,为在实际分布的NAFD M-MIMO系统中部署多分辨率光谱和能效的多目标优化问题提供了指导方针。模拟结果证实了理论推算并核实了在NAFD采用低分辨率自动转换器的M-MIMO系统的有效性。同时,一套用于ADC的低分辨率和低分辨率检测的优化解决方案为在实际分布的NAFD M-MIM系统中的部署提供了灵活的指导方针。