This paper designs a helper-assisted resource allocation strategy in non-orthogonal multiple access (NOMA)-enabled mobile edge computing (MEC) systems, in order to guarantee the quality of service (QoS) of the energy/delay-sensitive user equipments (UEs). To achieve a tradeoff between the energy consumption and the delay, we introduce a novel performance metric, called \emph{energy-delay tradeoff}, which is defined as the weighted sum of energy consumption and delay. The joint optimization of user association, resource block (RB) assignment, power allocation, task assignment, and computation resource allocation is formulated as a mixed-integer nonlinear programming problem with the aim of minimizing the maximal energy-delay tradeoff. Due to the non-convexity of the formulated problem with coupled and 0-1 variables, this problem cannot be directly solved with polynomial complexity. To tackle this challenge, we first decouple the formulated problem into a power allocation, task assignment and computation resource allocation (PATACRA) subproblem. Then, with the solution obtained from the PATACRA subproblem, we equivalently reformulate the original problem as a discrete user association and RB assignment (DUARA) problem. For the PATACRA subproblem, an iterative parametric convex approximation (IPCA) algorithm is proposed. Then, based on the solution obtained from the PATACRA subproblem, we first model the DUARA problem as a four-sided matching problem, and then propose a low-complexity four-sided UE-RB-helper-server matching (FS-URHSM) algorithm. Theoretical analysis demonstrates that the proposed algorithms are guaranteed to converge to stable solutions with polynomial complexity. Finally, simulation results are provided to show the superior performance of our proposed algorithm in terms of the energy consumption and the delay.
翻译:本文设计了一种辅助性资源配置战略,用于非垂直多重存取(NOMA)驱动的移动边缘计算(MEC)系统,以保障能源/延迟敏感用户设备(UES)的服务质量。为了实现能源消耗与延迟之间的平衡,我们引入了一个新的性能衡量标准,称为 emph{ 能源- 缓冲交易},它的定义是能源消耗和延迟的加权总和。用户关系、资源块分配(RB)配置、电力分配、任务分配和计算资源分配的联合优化是混合的内向型非线性计算(QOS),目的是最大限度地减少能源/延迟敏感用户设备(EU)的服务质量质量。由于能源消耗与0-1变量之间的不兼容性,因此这个问题无法直接通过多元复杂性来解决。为了应对这一挑战,我们首先将所拟订的问题分解为电源分配、任务分配和计算资源分配(PATACR) 和计算资源分配(RBER) 的分流分配,然后,从PATRCRA- 的混合算算法- IMLIL 的后期变价变变变变变变变变变变变变变变变的解决方案,我们展示了R的R- RF- RDI 4 变后变的系统变后变的系统变变的变的变的变数。