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Enhancing live virtual machine migration process via optimized resource allocation in next generation mobile edge network: A hybrid evolutionary approach

机译:通过下一代移动边缘网络中的优化资源分配增强实时虚拟机迁移过程:混合进化方法

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Summary The evolution of 5th Generation wireless technology introduced Mobile Edge Computing, where edge servers are placed at the edge of the network, and are associated with evolved Node Base Stations (eNBs). This enables mobile users to offload their resource‐intensive tasks to these servers and improve network performance by reducing end‐to‐end delay. However, frequent user mobility leads to frequent re‐planning of network and increases network load. This demands dynamic Virtual Machine (VM) migration in Mobile Edge paradigm for an improved Quality of Service (QoS). For an enhanced VM migration process, an optimal pair of migrating VMs and destination edge servers needs to be chosen. In this paper, we propose an optimized decision‐making policy that chooses such optimal pairs. Several decision parameters such as average wait time, processing delay, migration delay, transmission power, and processing power are modeled. A profit function is developed using these modeled decision parameters that chooses the optimal pairs. This function is maximized using the proposed hybrid evolutionary algorithm, which combines the advantages of PSO and GA. The pairs are chosen in such a manner, that the selection guarantees high network throughput, reduced service delay, and energy consumption which is reflected in the simulation.
机译:发明内容第五代无线技术引入了移动边缘计算,其中边缘服务器放置在网络边缘,并与进化节点基站(eNB)相关联。这使移动用户能够将其资源密集型任务卸载到这些服务器,并通过降低端到端延迟来提高网络性能。但是,频繁的用户移动性导致频繁重新规划网络并增加网络负载。这要求移动边缘范例中的动态虚拟机(VM)迁移,以提高服务质量(QoS)。对于增强的VM迁移过程,需要选择最佳的迁移VM和目标边缘服务器。在本文中,我们提出了一种优化的决策政策,可选择这种最佳对。建模了几个决策参数,例如平均等待时间,处理延迟,迁移延迟,传输功率和处理能力。利用这些建模决策参数开发了利润函数,该参数选择最佳对。使用所提出的混合进化算法最大化该函数,其结合了PSO和GA的优点。以这种方式选择对,即选择保证在模拟中反映的高网络吞吐量,减少的服务延迟和能量消耗。

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