An Efficient Wolf Optimizer System for Virtual Machine Placement in Wireless Network Over the Cloud Environment

被引:0
作者
D. Mythrayee
V. S. Lavanya
机构
[1] P. K. R. Arts College for Women,Department of Computer Science
来源
Wireless Personal Communications | 2023年 / 129卷
关键词
Cloud computing; VM placement; Migration; Optimal solution; Bio-inspired; Improved grey wolf optimization;
D O I
暂无
中图分类号
学科分类号
摘要
The drastic growth in cloud utilization makes the investigator faces a crucial issue with the virtual machine (VM) placement. Generally, VMs are allocated to physical servers for provisioning on-demand requests. This process is relatively straightforward but leads to performance degradation based on resource availability. Also, the optimal VM placement leads to unnecessary migration and network traffic. Thus, cloud storage system efficiency relies on the placement of the VM and the service provided by it. Various investigators attempt to provide an efficient placement strategy which improves QoS and reduces the computation cost. This research work concentrates on handling the VM placement problem and reducing data centres' power consumption and resource utilization. Here, a multi-objective constraint is formulated and resolved using bio-inspired optimization approach. An improved Grey-wolf optimization (IGWO) approach is proposed to leverage the multi-level optimal VM placement to provide an optimal solution concerning exploration and exploitation. The theoretical model depicts the proposed (IGWO) efficiency, which substantially enhances the system performance. The proposed IGWO model gives better results than the prevailing approaches. The extensive simulation process is carried out in a MATLAB environment.
引用
收藏
页码:2141 / 2156
页数:15
相关论文
共 67 条
[1]  
Yin Y(2017)Asser: An efficient, reliable, and cost-effective storage scheme for object-based cloud storage systems” IEEE Transactions on Computers 66 1326-1340
[2]  
Tang S(2016)Constructing performancepredictable clusters with performance-varying resources of clouds” IEEE Transactions on Computers 65 2709-2724
[3]  
Deng Y(2018)Edge computing in the industrial internet of things environment: Software-defined-networks-based edge-cloud interplay” IEEE communications magazine 56 44-51
[4]  
Li W(2015)Energy cost minimization for distributed internet data centres in smart microgrids considering power outages IEEE Transactions on Parallel and Distributed Systems 26 120-130
[5]  
Lo K(2018)Renewable energy-based multi-indexed job classification and container management scheme for sustainability of cloud data centers” IEEE Transactions on Industrial Informatics 15 2947-2957
[6]  
Dong AZ(2016)Robust workload and energy management for sustainable data centers IEEE Journal on Selected Areas in Communications 34 651-664
[7]  
Pu C(2019)Time-aware multiapplication task scheduling with guaranteed delay constraints in green data center” IEEE Transactions on Automation Science and Engineering 15 1138-1151
[8]  
Adam YC(2018)Profit maximization for geographically dispersed green data centers” IEEE Transactions on Smart Grid 9 703-711
[9]  
LeeZomaya AY(2017)Ttsa: An effective scheduling approach for delay bounded tasks in hybrid clouds” IEEE transactions on cybernetics 47 3658-3668
[10]  
Kaur S(2018)Dynamic cloud task scheduling based on a two-stage strategy” IEEE Transactions on Automation Science and Engineering 15 772-783