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首页> 外文期刊>Communications Letters, IEEE >A Novel Spectrally-Efficient Uplink Hybrid-Domain NOMA System
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A Novel Spectrally-Efficient Uplink Hybrid-Domain NOMA System

机译:一种新型光谱有效的上行链路混合域NOMA系统

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摘要

This letter proposes a novel hybrid-domain (HD) non-orthogonal multiple access (NOMA) approach to support a larger number of uplink users than the recently proposed code-domain NOMA approach, i.e., sparse code multiple access (SCMA). HD-NOMA combines the code-domain and power-domain NOMA schemes by clustering the users in small path loss (strong) and large path loss (weak) groups. The two groups are decoded using successive interference cancellation while within the group users are decoded using the message passing algorithm. To further improve the performance of the system, a spectral-efficiency maximization problem is formulated under a user quality-of-service constraint, which dynamically assigns power and subcarriers to the users. The problem is non-convex and has sparsity constraints. The alternating optimization procedure is used to solve it iteratively. We apply successive convex approximation and reweighted $ell _1$ minimization approaches to deal with the non-convexity and sparsity constraints, respectively. The performance of the proposed HD-NOMA is evaluated and compared with the conventional SCMA scheme through numerical simulation. The results show the potential of HD-NOMA in increasing the number of uplink users that can be supported in a given time-frequency resource.
机译:这封信提出了一种新的混合域(HD)非正交多次访问(NOMA)方法来支持比最近提出的代码域NOMA方法,即稀疏代码多访问(SCMA)的较多的上行链路用户。 HD-NOMA通过在小路径损耗(强)和大路径损耗(弱)组中群集用户组合代码域和功率域NOMA方案。使用连续的干扰消除在组用户内解码,使用消息传递算法进行解码,两组进行解码。为了进一步提高系统的性能,在用户的服务质量约束下配制频谱效率最大化问题,其动态地将电力和子载波分配给用户。问题是非凸,具有稀疏限制。交替的优化过程用于迭代地解决它。我们延续凸起近似并重新推出<内联公式XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”> $ ell _1 $ 最小化方法分别处理非凸性和稀疏限制。通过数值模拟评估所提出的HD-NOMA的性能,并与传统的SCMA方案进行比较。结果显示了HD-NOMA在增加可以在给定的时频资源中支持的上行链路用户数量的潜力。

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