在 HAPS 辅助 MEC-NOMA 系统中联合分配资源以优化能耗

Xiangbin Yu;Xinyi Zhang;Yun Rui;Kezhi Wang;Xiaoyu Dang;Mohsen Guizani
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引用次数: 0

摘要

本文研究了不完全连续干扰消除情况下高空台站(HAPS)辅助移动边缘计算(MEC)网络非正交多址(NOMA)的能耗优化问题。具体而言,提出了资源配置(RA)和二维(2D)水平位置的联合设计方案,以最小化不同约束条件下的EC总和。特别地,我们通过块坐标下降法共同优化了接收波束形成(BF)、功率分配(PA)、HAPS位置、本地计算资源、计算任务卸载系数以及为每个用户分配的计算资源。即,给定其他优化参数,我们首先优化HAPS的二维位置。然后,给定二维位置,通过引入辅助变量,采用基于逐次凸逼近法的高效迭代算法求解BF、PA、卸载系数和计算资源的联合设计;此外,还提出了一种次优节点设计方案,以降低节点的复杂度。仿真结果表明,所提出的联合RA和位置两种设计方案均能有效地降低电导率,且与基准方案相比具有较低的电导率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint Resource Allocations for Energy Consumption Optimization in HAPS-Aided MEC-NOMA Systems
In this paper, the energy consumption (EC) optimization of an aerial high altitude platform station (HAPS) aided mobile edge computing (MEC) network with non-orthogonal multiple access (NOMA) in the presence of imperfect successive interference cancellation is studied. Specifically, joint design schemes of the resource allocation (RA) and the two-dimensional (2D) horizontal position are proposed to minimize the sum EC subject to the different constraint conditions. In particular, we jointly optimize the receive beamforming (BF), the power allocation (PA), HAPS position, the local computation resource, the computation task offload coefficient, and the computation resource allocated for each user via the block coordinate descent method. Namely, given the other optimization parameters, we first optimize a 2D position of HAPS. Then, given the 2D position, by introducing the auxiliary variables, a joint design of BF, PA, offload coefficient and computation resource is solved by an efficient iteration algorithm based on the successive convex approximation method. Additionally, a suboptimal joint design scheme is also developed to lower the complexity. Simulation results show that the proposed two design schemes of the joint RA and position are effective in reducing the EC, and they have a lower EC when compared to benchmark schemes.
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