In this study, we propose a novel machine learning based algorithm to improve the performance of beyond 5 generation (B5G) wireless communication system that is assisted by Orthogonal Frequency Division Multiplexing (OFDM) and Non-Orthogonal Multiple Access (NOMA) techniques. The non-linear soft margin support vector machine (SVM) problem is used to provide an automatic modulation classifier (AMC) and a signal power to noise and interference ratio (SINR) estimator. The estimation results of AMC and SINR are used to reassign the modulation type, codding rate, and transmit power through frames of eNode B connections. The AMC success rate versus SINR, total power consuming, and sum capacity are evaluated for OFDM-NOMA assisted 5G system. Results show improvement of success rate compared of some published method. Furthermore, the algorithm directly computes SINR after signal is detected by successive interference cancellation (SIC) and before any signal decoding. Moreover, because of the direct sense of physical channel, the presented algorithm can discount occupied symbols (overhead signaling) for channel quality information (CQI) in network communication signaling. The results also prove that the proposed algorithm reduces the total power consumption and increases the sum capacity through the eNode B connections. Simulation results in compare to other algorithms show more successful AMC, efficient SINR estimator, easier practical implantation, less overhead signaling, less power consumption, and more capacity achievement.
翻译:在本研究中,我们提出一个新的基于机器学习的算法,以改善5代以上(B5G)无线通信系统的性能,这种算法由Orthogonial Countrial Division(OFDM)和非Ortoocial 多重访问(NOMA)技术协助。非线性软边支持矢量机(SVM)问题被用来提供自动调控分类器(AMC)和噪音和干扰比率的信号能量。AMC和SINR的估算结果用于重新配置调制型号、调试率、调试率和通过eNode B连接框架传输电力。AMC的成功率相对于SINR、总耗能消耗和总容量的能力得到了评估。结果显示,与一些公布的方法相比,成功率率的提高率。此外,通过连续的干扰取消(SIC)和信号解码前,SINRIS的信号直接感官,所提出的算法可以将所占用的符号(overhead signing signing signinginginginging)通过频道质量信息(CQI) 也降低了Sim salalal contralationalation) 的结果。