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首页> 外文期刊>IEEE transactions on wireless communications >Two-Side Coalitional Matching Approach for Joint MIMO-NOMA Clustering and BS Selection in Multi-Cell MIMO-NOMA Systems
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Two-Side Coalitional Matching Approach for Joint MIMO-NOMA Clustering and BS Selection in Multi-Cell MIMO-NOMA Systems

机译:多小区MIMO-NOMA系统中联合MIMO-NOMA聚类和BS选择的两面联盟匹配方法

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摘要

Resource management in multi-cell multiple-input multiple-output non-orthogonal multiple access (MIMO-NOMA) is challenged by computational complexity, flexible clustering, and potential channel correlation. In this paper, we focus on a combined resource allocation problem: NOMA mobile user (MU) clustering and the base station (BS) selection, to improve system data rate. Different from sum data rate maximization and max-min fairness, we introduce a new objective function, i.e., relative fairness, which integrates MU fairness into system data rate optimization to overcome the domination effect of BS in advantaged situations of sum data rate improving. Moreover, we derive the closed form solution of MIMO-NOMA resource allocation for a single cluster, and it can be employed for any size of cluster. Furthermore, we propose a new two-side coalitional matching approach to jointly optimize MIMO-NOMA clustering and BS selection, which is able to balance the tradeoff between MUs & x2019; individual benefits and the overall network performance. The proposed approach is core stable. Pauta-criterion is employed on system performance evaluation to provide a judgement on win-win solutions. In simulation, extensive comparisons provide insightful understanding of our proposed MIMO-NOMA clustering strategy, relative fairness, and the proposed two-side coalitional matching approach.
机译:多小区多输入多输出非正交多址访问(MIMO-NOMA)中的资源管理受到计算复杂性,灵活的群集和潜在信道相关性的挑战。在本文中,我们集中于一个组合的资源分配问题:NOMA移动用户(MU)集群和基站(BS)选择,以提高系统数据速率。与总和数据率最大化和最大-最小公平性不同,我们引入了一个新的目标函数,即相对公平性,该功能将MU公平性集成到系统数据率优化中,以克服在总和数据率提高的有利情况下BS的支配效应。此外,我们推导了针对单个集群的MIMO-NOMA资源分配的封闭式解决方案,并且可以将其用于任何规模的集群。此外,我们提出了一种新的双向联盟匹配方法来共同优化MIMO-NOMA聚类和BS选择,该方法能够平衡MU和x2019之间的权衡。个人利益和整体网络性能。所提出的方法是核心稳定的。 Pauta-criterion用于系统性能评估,以提供双赢解决方案的判断。在仿真中,大量的比较提供了对我们提出的MIMO-NOMA聚类策略,相对公平性以及提出的两边联盟匹配方法的深刻理解。

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