基于MRF技术的聚类EO在云计算中的有效负载平衡

IF 0.6 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS International Journal of Pervasive Computing and Communications Pub Date : 2023-05-22 DOI:10.1108/ijpcc-01-2023-0022
H. N., A. Lathigara, Dr Rajanikanth Aluvalu, U. V.
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引用次数: 0

摘要

目的云计算(CC)是指使用虚拟化技术通过互联网共享计算资源。任务调度(TS)用于将计算资源分配给具有大量待处理的请求。CC依靠负载平衡来确保服务器和运行在真实服务器上的虚拟机(VM)等资源共享相同的负载量。虚拟机是虚拟化的重要组成部分,在虚拟化过程中,物理服务器被转换为虚拟机并充当物理服务器。云数据中心中的用户请求或数据传输可能是VM数据不足或过载的原因。设计/方法论/方法虚拟机是虚拟化的重要组成部分,在虚拟化过程中,物理服务器被转换为虚拟机,并在过程中充当物理服务器。云数据中心中的用户请求或数据传输可能是VM数据不足或过载的原因。对于大量的VM或作业,这种方法的制作时间很长,而且非常困难。因此,鼓励在不减少实现时间或资源消耗的情况下进行云负载的新想法。在本研究中,平衡优化最初用于将虚拟机聚类为欠载和过载虚拟机。在第二阶段中,使用负载不足的VM来提高负载平衡和资源利用率。BAT和人工蜂群(ABC)的混合算法有助于使用基于多目标的系统进行TS。VM管理器执行VM迁移决策,以提供物理机器(PM)之间的负载平衡。当一个PM负担过重而另一个PM负荷不足时,将根据适当的条件做出迁移VM的决定。在前一种情况下实现了PM中的平衡负载和减少的能量使用。蝠鲼觅食(MRF)用于迁移虚拟机,其决策基于多种因素。发现所提出的方法为VM和PM提供了尽可能好的调度。为了完成任务,Cloud TS的改进whale优化算法有42 s的完成时间,增强的多维优化器有48 s、 遗传算法的混合电搜索有50 s、 基于适应性效益因素的共生生物搜索有38个 最后,所提出的模型有30 s、 这表明所提出的模型具有更好的性能。原创性/价值用户在云数据中心的请求或数据传输可能会导致虚拟机数据不足或过载。为了识别虚拟机上的负载,最初使用EQ算法进行聚类处理。通过实现名为BAT–ABC的混合算法,了解所提出的方法在系统非常繁忙时的工作情况。在TS过程之后,VM迁移发生在最后阶段,其中通过使用MRF算法来识别最优VM。实验分析是通过使用各种指标进行的,如执行时间、传输时间、各种迭代的完成时间、资源利用率和负载公平性。对于系统负载,度量给出了负载公平性。如何计算负载公平性取决于每个任务需要多长时间。有人补充说,如果任务需要更少的时间完成,云系统可能能够实现更高的负载公平性。
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Clustering based EO with MRF technique for effective load balancing in cloud computing
Purpose Cloud computing (CC) refers to the usage of virtualization technology to share computing resources through the internet. Task scheduling (TS) is used to assign computational resources to requests that have a high volume of pending processing. CC relies on load balancing to ensure that resources like servers and virtual machines (VMs) running on real servers share the same amount of load. VMs are an important part of virtualization, where physical servers are transformed into VM and act as physical servers during the process. It is possible that a user’s request or data transmission in a cloud data centre may be the reason for the VM to be under or overloaded with data. Design/methodology/approach VMs are an important part of virtualization, where physical servers are transformed into VM and act as physical servers during the process. It is possible that a user’s request or data transmission in a cloud data centre may be the reason for the VM to be under or overloaded with data. With a large number of VM or jobs, this method has a long makespan and is very difficult. A new idea to cloud loads without decreasing implementation time or resource consumption is therefore encouraged. Equilibrium optimization is used to cluster the VM into underloaded and overloaded VMs initially in this research. Underloading VMs is used to improve load balance and resource utilization in the second stage. The hybrid algorithm of BAT and the artificial bee colony (ABC) helps with TS using a multi-objective-based system. The VM manager performs VM migration decisions to provide load balance among physical machines (PMs). When a PM is overburdened and another PM is underburdened, the decision to migrate VMs is made based on the appropriate conditions. Balanced load and reduced energy usage in PMs are achieved in the former case. Manta ray foraging (MRF) is used to migrate VMs, and its decisions are based on a variety of factors. Findings The proposed approach provides the best possible scheduling for both VMs and PMs. To complete the task, improved whale optimization algorithm for Cloud TS has 42 s of completion time, enhanced multi-verse optimizer has 48 s, hybrid electro search with a genetic algorithm has 50 s, adaptive benefit factor-based symbiotic organisms search has 38 s and, finally, the proposed model has 30 s, which shows better performance of the proposed model. Originality/value User’s request or data transmission in a cloud data centre may cause the VMs to be under or overloaded with data. To identify the load on VM, initially EQ algorithm is used for clustering process. To figure out how well the proposed method works when the system is very busy by implementing hybrid algorithm called BAT–ABC. After the TS process, VM migration is occurred at the final stage, where optimal VM is identified by using MRF algorithm. The experimental analysis is carried out by using various metrics such as execution time, transmission time, makespan for various iterations, resource utilization and load fairness. With its system load, the metric gives load fairness. How load fairness is worked out depends on how long each task takes to do. It has been added that a cloud system may be able to achieve more load fairness if tasks take less time to finish.
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来源期刊
International Journal of Pervasive Computing and Communications
International Journal of Pervasive Computing and Communications COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
6.60
自引率
0.00%
发文量
54
期刊最新文献
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