Multiple-input multiple-output non-orthogonal multiple access (MIMO-NOMA) cellular network is promising for supporting massive connectivity. This paper exploits low-latency machine learning in the MIMO-NOMA uplink transmission environment, where a substantial amount of data must be uploaded from multiple data sources to a one-hop away edge server for machine learning. A delay-aware edge learning framework with the collaboration of data sources, the edge server, and the base station, referred to as DACEL, is proposed. Based on the delay analysis of DACEL, a NOMA channel allocation algorithm is further designed to minimize the learning delay. The simulation results show that the proposed algorithm outperforms the baseline schemes in terms of learning delay reduction.
翻译:多输出多输出非垂直多存取(MIMO-NOMA)蜂窝网络(MIMO-NOMA)对支持大规模连通很有希望。本文利用了IMO-NOMA上行传输环境中低纬度机器学习的机会。MIMO-NOMA上行传输环境中的大量数据必须从多个数据源上传到一个一瞬间边端服务器,以便机器学习。提出了与数据源、边缘服务器和基站(称为DACEL)合作的延迟觉悟边际学习框架。根据对DACEL的延迟分析,诺马航道分配算法进一步设计,以尽量减少学习延迟。模拟结果表明,拟议的算法在减少学习延迟方面超过了基线计划。