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Deep Learning-Aided Constellation Design for Downlink NOMA

机译:下行链路NOMA的深度学习辅助星座设计

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Massive connectivity is one of the most challenging issues for Internet of Things (IoT) to achieve the quality of service provisions required by the numerous IoT devices. Non-orthogonal multiple access (NOMA) technology, where multiple users multiplex on the same radio resources, is a promising candidate for next generation wireless networks (the 5th Generation, 5G) and has been expected to meet the requirements of high spectral efficiency and massive connections of 5G mobile communication systems. However, conventional downlink NOMA simply superimposes several single-user constellations, which does not consider the interactions between multiple data streams. This paper proposes a novel deep learning-aided downlink NOMA scheme by parameterizing the bit-to-symbol mapping and multi-user detection with deep neural networks (DNN). The network is trained in an end-to-end fashion with synthetic data, and then the trained bit-to-symbol mapping is extracted to derive the multi-user constellation for downlink NOMA. Simulation results demonstrate that, with the proposed constellations, our scheme achieves significantly lower symbol error rate than conventional downlink NOMA.
机译:大规模连接是事物互联网(物联网)最具挑战性问题之一,以实现众多物联网设备所需的服务质量。非正交多址(NOMA)技术,其中多个用户在相同的无线电资源上复用,是下一代无线网络(第5代,5G)的有希望的候选者,并且已经期望满足高谱效率和大量的要求5G移动通信系统的连接。然而,传统的下行链路NOMO只是叠加几个单用户星座,这不考虑多个数据流之间的交互。本文提出了一种通过使用深神经网络(DNN)的位对符号映射和多用户检测来参数来提出一种新的深度学习辅助下行链路诺马组合方案。网络以合成数据的端到端方式培训,然后提取训练的位到符号映射以导出用于下行链路NOMA的多用户星座。仿真结果表明,通过提出的星座,我们的方案比传统的下行链路NOMA实现显着较低的符号误差率。

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