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Edge Cloud Capacity Allocation for Low Delay Computing on Mobile Devices

机译:在移动设备上进行低延迟计算的边缘云容量分配

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摘要

Newly-emerged edge computing paradigm advocates deploying one or several server-class machines at the edge of network to augment computing ability of mobile devices and save network bandwidth simultaneously. Compared with conventional mobile cloud computing, mobile edge computing is constrained in computing capacity, especially when serving a large number of mobile users. To address the above concerns, we formulate the Edge Cloud Capacity Allocation (ECCA) problem in this paper, where a certain amount of resources should be explicitly allocated to each edge cloud for optimal QoS provisioning. We firstly introduce two algorithms, namely, GACA (genetic algorithm based capacity allocation algorithm) and PSOCA (particle swarm optimization based capacity allocation algorithm) for the ECCA problem. Due to the unsatisfactory convergence speed of the previous two algorithms, we then propose IMMF (improved max-min fairness algorithm), using a combination of heuristic and mathematical optimization to solve the ECCA problem. Computational simulations confirm the effectiveness of IMMF.
机译:新兴的边缘计算范例提倡在网络边缘部署一台或几台服务器级计算机,以增强移动设备的计算能力并同时节省网络带宽。与传统的移动云计算相比,移动边缘计算的计算能力受到限制,尤其是在为大量移动用户提供服务时。为了解决上述问题,我们在本文中提出了边缘云容量分配(ECCA)问题,其中应为每个边缘云显式分配一定数量的资源,以实现最佳QoS设置。首先,针对ECCA问题,介绍了两种算法,即GACA(基于遗传算法的容量分配算法)和PSOCA(基于粒子群优化的容量分配算法)。由于前两种算法的收敛速度不理想,因此我们提出了IMMF(改进的最大-最小公平算法),并结合启发式和数学优化来解决ECCA问题。计算仿真证实了IMMF的有效性。

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