In this paper, we investigate dynamic resource scheduling (i.e., joint user, subchannel, and power scheduling) for downlink multi-channel non-orthogonal multiple access (MC-NOMA) systems over time-varying fading channels. Specifically, we address the weighted average sum rate maximization problem with quality-of-service (QoS) constraints. In particular, to facilitate fast resource scheduling, we focus on developing a very low-complexity algorithm. To this end, by leveraging Lagrangian duality and the stochastic optimization theory, we first develop an opportunistic MC-NOMA scheduling algorithm whereby the original problem is decomposed into a series of subproblems, one for each time slot. Accordingly, resource scheduling works in an online manner by solving one subproblem per time slot, making it more applicable to practical systems. Then, we further develop a heuristic joint subchannel assignment and power allocation (Joint-SAPA) algorithm with very low computational complexity, called Joint-SAPA-LCC, that solves each subproblem. Finally, through simulation, we show that our Joint-SAPA-LCC algorithm provides good performance comparable to the existing Joint-SAPA algorithms despite requiring much lower computational complexity. We also demonstrate that our opportunistic MC-NOMA scheduling algorithm in which the Joint-SAPA-LCC algorithm is embedded works well while satisfying given QoS requirements.
翻译:在本文中,我们调查在时间变化的淡化渠道中,对多通道非正反方多存取(MC-NOMA)系统进行下行连接的动态资源时间安排(即联合用户、亚通道和动力时间安排),具体地说,我们处理加权平均总和最大化问题,处理服务质量限制(QOS),特别是为了便利快速资源时间安排,我们侧重于开发一种非常低的兼容性算法。为此,我们利用Lagrangian双轨制和随机优化理论,首先开发一种机会性的MC-NOMA列表算法,将最初的问题分解成一系列子问题,每个时档一次。因此,资源时间安排以在线方式发挥作用,解决每个时档一个子问题,使其更适用于实际的系统。随后,我们进一步开发一种计算复杂性非常低的超自然联合子网配置和权力分配算法,称为联合SAPA-LCC算法,解决每个子问题。最后,通过模拟,我们共同的ASAP-AS-AS-A 联合算法也展示了我们目前相当的IMLIMA的模拟,同时展示了我们的共同-ASAP-assemalial dalalal dal dassal dassal dassal dassal dassildaldaldaldaldaldaldaldal 。