考虑鲁棒信道条件的基于双向LSTM深度学习的军事通用MIMO上行NOMA检测研究

IF 1 Q3 ENGINEERING, MULTIDISCIPLINARY
Joel Alanya-Beltran, Ravi Shankar, Patteti Krishna, Selva Kumar S
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引用次数: 2

摘要

无处不在的多输入多输出(MIMO)非正交多址(NOMA)网络(umn)已经成为实现安全和其他需要连续监控的应用的重要技术。然而,由于无线用户众多,可用的带宽有限,可能会阻碍它们的实现。本文分析了考虑不完全连续干扰消除(SIC)的基于双向长短期记忆(LSTM)的MIMO-NOMA检测器。仿真结果表明,传统的SIC MIMO-NOMA方案达到15 dB,深度学习(DL) MIMO-NOMA方案达到11 dB,迭代次数为105次。有4 dB的间隙,这意味着基于dl的MIMO-NOMA比传统的SIC MIMO-NOMA技术性能更好。当信道误差因子从0增加到1时,DL的性能显著下降。当信道误差因子小于0.07时,即使考虑了完美信道状态信息(CSI), DL检测器的性能也明显优于SIC检测器。尽管基于DL的检测器的性能能够在指定的公差范围内保持其优势,但当实际和预期通道状态发生变化时,DL检测器的性能会显著下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of Bi-Directional LSTM deep learning-based ubiquitous MIMO uplink NOMA detection for military application considering Robust channel conditions
Ubiquitous multiple-input multiple-output (MIMO) non-orthogonal multiple access (NOMA) networks (UMNs) have emerged as an important technology for enabling security and other applications that need continuous monitoring. Their implementation, however, could be obstructed by the limited bandwidth available due to many wireless users. In this paper, bidirectional long short-term memory (LSTM)-based MIMO-NOMA detector is analyzed considering imperfect successive interference cancelation (SIC). Simulation results demonstrate that the traditional SIC MIMO-NOMA scheme achieves 15 dB, and the deep learning (DL) MIMO-NOMA scheme achieves 11 dB for 10 5 number of iterations. There is a gap of 4 dB which means that the DL-based MIMO-NOMA performs better than the traditional SIC MIMO-NOMA techniques. It has been observed that when the channel error factor increases from 0 to 1, the performance of DL decreases significantly. For the channel error factor value less than 0.07, the DL detector performance much better than the SIC detector even though the perfect channel state information (CSI) is considered. The DL detector’s performance decreases significantly where variations between the actual and expected channel states occurred, although the DL-based detectors’ performance was able to sustain its predominance within a specified tolerance range.
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来源期刊
CiteScore
2.80
自引率
12.50%
发文量
40
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