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Multiuser Resource Allocation for Mobile-Edge Computation Offloading

机译:用于移动边缘计算卸载的多用户资源分配

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Mobile-edge computation offloading (MECO) offloads intensive mobile computation to clouds located at the edges of cellular networks. Thereby, MECO is envisioned as a promising technique for prolonging the battery lives and enhancing the computation capacities of mobiles. In this paper, we consider resource allocation in a MECO system comprising multiple users that time share a single edge cloud and have different computation loads. The optimal resource allocation is formulated as a convex optimization problem for minimizing the weighted sum mobile energy consumption under constraint on computation latency and for both the cases of infinite and finite edge cloud computation capacities. The optimal policy is proved to have a threshold-based structure with respect to a derived offloading priority function, which yields priorities for users according to their channel gains and local computing energy consumption. As a result, users with priorities above and below a given threshold perform complete and minimum offloading, respectively. Computing the threshold requires iterative computation. To reduce the complexity, a sub-optimal resource-allocation algorithm is proposed and shown by simulation to have close-to-optimal performance.
机译:移动边缘计算分流(MECO)将密集的移动计算分流到位于蜂窝网络边缘的云。从而,MECO被设想为延长电池寿命和增强移动电话的计算能力的有前途的技术。在本文中,我们考虑了MECO系统中的资源分配,该系统包括多个时间共享一个边缘云且具有不同计算负载的用户。最优资源分配被公式化为凸优化问题,以在计算等待时间约束以及无限和有限边缘云计算能力的情况下最小化加权总和移动能源消耗。事实证明,最优策略相对于导出的卸载优先级函数具有基于阈值的结构,该结构根据用户的信道增益和本地计算能耗为用户提供优先级。结果,具有高于和低于给定阈值的优先级的用户分别执行了完全卸载和最小卸载。计算阈值需要迭代计算。为了降低复杂度,提出了一种次优的资源分配算法,并通过仿真表明其具有接近最优的性能。

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