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首页> 外文期刊>Journal of supercomputing >Adaptive virtual machine migration based on performance-to-power ratio in fog-enabled cloud data centers
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Adaptive virtual machine migration based on performance-to-power ratio in fog-enabled cloud data centers

机译:基于启用迷雾的云数据中心的性能到功率比的自适应虚拟机迁移

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Fog computing as a complementary paradigm to cloud computing is a heuristic shift in service delivery that promises a leap in efficiency and flexibility for cloud-based Internet of Things applications. The performance characteristics of cloud/fog computing attract significant attention from researchers lately. One of the critical challenges in this field is controlling and reducing the massive amount of energy consumption in the cloudlets while still maintaining the Service Level Agreement's performance requirements. Many virtual machine (VM) allocation and consolidation strategies are investigated to address the challenges mentioned earlier. However, many of the solutions save energy at the cost of performance degradation. This paper proposes a novel multi-step VM allocation algorithm called enhanced performance-to-power ratio for workflow applications "E-PRWA" in cloud/fog environment. The proposed heuristic algorithm strives to achieve a trade-off between node performance and power consumption. Operating machine hosts at the highest performance-to-power ratio can save a tremendous amount of energy without degrading system performance. The proposed model consists of four stages: (a) detecting overutilized or underutilized nodes based on the preferred utilization (PU); (b) VM selection for migration from the overutilized nodes to underutilized nodes; (c) switching off selected underutilized nodes; (d) deploying the migration VMs based on the modified best-fit decreasing algorithm with PPR, latency overhead, and computational cost consideration. Extensive simulation results illustrate that compared with three baseline energy-efficient VM allocation and selection algorithms, E-PRWA can achieve an average of up to 65.41% of energy-saving with fewer migration number in fog computing.
机译:雾计算作为云计算的互补范式是服务交付的启发式转变,这承诺为基于云的内容互联网应用程序的效率和灵活性。云/雾计算的性能特征最近吸引了研究人员的重大关注。该领域的一个关键挑战之一是控制和降低Cloudlets中的大量能耗,同时仍保持服务级别协议的性能要求。调查了许多虚拟机(VM)分配和整合策略,以解决前面提到的挑战。然而,许多解决方案以性能下降成本节省能源。本文提出了一种新型多步VM分配算法,称为增强云/雾环境中的工作流程应用程序“E-PRWA”的性能对功率比。所提出的启发式算法致力于在节点性能和功耗之间实现权衡。在最高性能到功率比下的操作机器主机可以节省大量的能量,而不会降低系统性能。所提出的模型由四个阶段组成:(a)根据优选使用(pu)检测过度化或未充分的节点; (b)从过度化节点迁移到未充分利用的节点的VM选择; (c)关闭所选择的未充分利用节点; (d)基于PPR,延迟开销和计算成本考虑的修改最佳拟合减少算法部署迁移VM。广泛的仿真结果表明,与三个基线节能VM分配和选择算法相比,E-Prwa可以平均达到高达65.41%的节能,其中雾计算中的迁移数量较少。

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