Multi-access edge computing (MEC) can enhance the computing capability of mobile devices, while non-orthogonal multiple access (NOMA) can provide high data rates. Combining these two strategies can effectively benefit the network with spectrum and energy efficiency. In this paper, we investigate the task delay minimization in multi-user NOMA-MEC networks, where multiple users can offload their tasks simultaneously through the same frequency band. We adopt the partial offloading policy, in which each user can partition its computation task into offloading and locally computing parts. We aim to minimize the task delay among users by optimizing their tasks partition ratios and offloading transmit power. The delay minimization problem is first formulated, and it is shown that it is a nonconvex one. By carefully investigating its structure, we transform the original problem into an equivalent quasi-convex. In this way, a bisection search iterative algorithm is proposed in order to achieve the minimum task delay. To reduce the complexity of the proposed algorithm and evaluate its optimality, we further derive closed-form expressions for the optimal task partition ratio and offloading power for the case of two-user NOMA-MEC networks. Simulations demonstrate the convergence and optimality of the proposed algorithm and the effectiveness of the closed-form analysis.
翻译:多存取边缘计算(MEC)可以提高移动设备的计算能力,而非横向多重存取(NOMA)可以提供高数据率。将这两个战略结合起来可以有效地使网络与频谱和能源效率相结合。在本文件中,我们调查多用户 NOMA-MEC 网络的任务延迟最小化,多用户可以通过同一个频带同时卸载任务。我们采用了部分卸载政策,让每个用户将其计算任务分成卸载到卸载和本地计算部件中。我们的目标是通过优化任务分配比率和卸载传输能力,最大限度地减少用户之间的任务延迟。 将延迟最小化问题首先提出,并显示它是一个非对等的网络。通过仔细调查其结构,我们将最初的问题转化为一个等效的准电文。 这样,我们建议了双用户搜索迭代算法,以达到最小的任务延迟。为了降低拟议算法的复杂性并评估其最佳性,我们进一步为最佳任务分配比率和卸载能力生成了双用户 OMA-MEC 最佳组合和最佳合成算法网络的功能分析案例而制作的封闭式表达方式。