This paper presents an enhanced design of multi-dimensional (MD) constellations which play a pivotal role in many communication systems such as code-domain non-orthogonal multiple access (CD-NOMA). MD constellations are attractive as their structural properties, if properly designed, lead to signal space diversity and hence improved error rate performance. Unlike the existing works which mostly focus on MD constellations with large minimum Euclidean distance (MED), we look for new MD constellations with additional feature that the minimum product distance (MPD) is also large. To this end, a non-convex optimization problem is formulated and then solved by the convex-concave procedure (CCCP). Compared with the state-of-the-art literature, our proposed MD constellations lead to significant error performance enhancement over Rayleigh fading channels whilst maintaining almost the same performance over the Gaussian channels. To demonstrate their application, we also show that these MD constellations give rise to good codebooks in sparse code multiple access systems. All the obtained MD constellations can be found in https://github.com/Aureliano1/Multi-dimensional-constellation.
翻译:本文展示了多维(MD)星座的强化设计,这些星座在许多通信系统中发挥着关键作用,如代码-域域非正统多存(CD-NOMA) 。 MD星座具有吸引力,因为它们的结构属性,如果设计得当,可以信号空间多样性,从而改善误差率性能。与现有的主要侧重于具有极小欧洲立度距离(MED)的多维(MD)星座的工程不同,我们寻找新的MD星座,这些新星座具有其他特性,即最小产品距离(MPD)也很大。至此端,一个非convex优化问题先由 convex-concave 程序(CCCP)解决。与最先进的文献相比,我们提议的MD星座群在Rayleigh的流道上导致显著的错误性能增强,同时在高山通道上保持几乎相同的性能。为了展示它们的应用,我们还展示了这些MD星座在稀薄多存的编码系统中提升了良好的代码。所有获得的MD星座都可以在 https://github.comm/Aureliano1/Multi-stion-stion-stion-stionallationlation) 中找到。