基于混合信任的优化虚拟机迁移,用于异构云中的动态负载平衡和副本管理

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS
M. H. Nebagiri, Latha Pillappa Hanumanthappa
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引用次数: 0

摘要

云计算是一项即将问世的技术,受到学术界和商业领域的关注。云计算的优势在于提供巨大的计算能力和资源,这些资源分布在多个地点,不受时间或用户所在位置的限制。云利用虚拟化概念将同时遇到的多个任务分配给服务器。然而,向异构服务器分配任务需要在服务器之间平衡负载。为解决这一问题,提出了分布式文件系统中基于信任的动态负载平衡算法。负载平衡是在基于 Rider 优化算法的神经网络(RideNN)的帮助下,通过预测物理机的负载来实现的。此外,负载平衡还采用了所提出的分数社会逐鹿优化(FSDO)算法,根据物理机的负载情况进行虚拟机迁移。随后,在设计的 FSDO 算法的帮助下,完成了副本管理,以管理分布式文件系统中的副本。此外,还根据预测负载、预测误差、信任度、成本和能耗等参数对基于 FSDO 的动态负载平衡算法进行了性能评估,评估值分别为 0.051、0.723、0.390 和 0.431J。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid trust-based optimized virtual machine migration for dynamic load balancing and replica management in heterogeneous cloud
Cloud computing is an upcoming technology that has garnered interest from academic as well as commercial domains. Cloud offers the advantage of providing huge computing capability as well as resources that are positioned at multiple locations irrespective of time or location of the user. Cloud utilizes the concept of virtualization to dispatch the multiple tasks encountered simultaneously to the server. However, allocation of tasks to the heterogeneous servers requires that the load is balanced among the servers. To address this issue, a trust based dynamic load balancing algorithm in distributed file system is proposed. Load balancing is performed by predicting the loads in the physical machine with the help of the Rider optimization algorithm-based Neural Network (RideNN). Further, load balancing is carried out using the proposed Fractional Social Deer Optimization (FSDO) algorithm, where the virtual machine migration is performed based on the load condition in the physical machine. Later, replica management is accomplished for managing the replica in distributed file system with the help of the devised FSDO algorithm. Moreover, the proposed FSDO based dynamic load balancing algorithm is evaluated for its performance based on parameters, like predicted load, prediction error, trust, cost and energy consumption with values 0.051, 0.723, 0.390 and 0.431J correspondingly.
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来源期刊
Multiagent and Grid Systems
Multiagent and Grid Systems COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.50
自引率
0.00%
发文量
13
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