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Load monitoring and system-traffic-aware live VM migration-based load balancing in cloud data center using graph theoretic solutions

机译:使用图形理论解决方案负载监控和系统 - 流量感知基于云数据中心的基于Live VM迁移的负载平衡

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This paper proposes solutions to monitor the load and to balance the load of cloud data center. The proposed solutions work in two phases and graph theoretical concepts are applied in both phases. In the first phase, cloud data center is modeled as a network graph. This network graph is augmented with minimum dominating set concept of graph theory for monitoring its load. For constructing minimum dominating set, this paper proposes a new variant of minimum dominating set (V-MDS) algorithm and is compared with existing construction algorithms proposed by Rooji and Fomin. The V-MDS approach of querying cloud data center load information is compared with Central monitor approach. The second phase focuses on system and network-aware live virtual machine migration for load balancing cloud data center. For this, a new system and traffic-aware live VM migration for load balancing (ST-LVM-LB) algorithm is proposed and is compared with existing benchmarked algorithms dynamic management algorithm (DMA) and Sandpiper. To study the performance of the proposed algorithms, CloudSim3.0.3 simulator is used. The experimental results show that, V-MDS algorithm takes quadratic time complexity, whereas Rooji and Fomin algorithms take exponential time complexity. Then the V-MDS approach for querying Cloud Data Center load information is compared with the Central monitor approach and the experimental result shows that the proposed approach reduces the number of message updates by half than the Central monitor approach. The experimental results show on load balancing that the developed ST-LVM-LB algorithm triggers lesser Virtual Machine migrations, takes lesser time and migration cost to migrate with minimum network overhead. Thus the proposed algorithms improve the service delivery performance of cloud data center by incorporating graph theoretical solutions in monitoring and balancing the load.
机译:本文提出了监控负载和平衡云数据中心负载的解决方案。所提出的解决方案在两个阶段工作,图表理论概念在两个阶段应用。在第一阶段,云数据中心被建模为网络图。该网络图以最小的主导集合概念进行了增强,用于监测其负载。为了构建最小主导集合,本文提出了一种最小主导集(V-MDS)算法的新变种,并与Rooji和Fomin提出的现有建筑算法进行比较。将查询云数据中心负载信息的V-MDS方法与中央监控方法进行了比较。第二阶段侧重于系统和网络感知的Live虚拟机迁移,用于负载平衡云数据中心。为此,提出了一种用于负载平衡(ST-LVM-LB)算法的新系统和流量感知的LIVE VM迁移,并与现有的基准算法动态管理算法(DMA)和Sandpiper进行比较。为研究所提出的算法的性能,使用CloudSim3.0.3模拟器。实验结果表明,V-MDS算法采取二次时间复杂度,而Rooji和Fomin算法采取指数时间复杂性。然后将用于查询云数据中心负载信息的V-MDS方法与中央监视器方法进行比较,实验结果表明,所提出的方法将消息更新的数量减少一半而不是中央监视器方法。实验结果表明,发达的ST-LVM-LB算法触发较小的虚拟机迁移,采用较短的时间和迁移成本,以迁移最小网络开销。因此,所提出的算法通过在监控和平衡负载中结合图形理论解决方案来提高云数据中心的服务交付性能。

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