DYNAMIC VIRTUAL MACHINE MIGRATION USING RATIO-BASED METHOD

Dr. Haresh Damjibhai Khachariya, Dr. Jayesh N. Zalavadia

Abstract


Cloud computing provides various services over the internet and its increasing day by day. Given the growing demands
of cloud services, it requires a lot of computing resources to meet customer needs. So, the addition of energy
consumption through cloud computing resources will increase day by day and become a key obstacle in the cloud
environment. In cloud computing, data centers consume more energy and additionally release carbon dioxide into the
atmosphere. To reduce energy consumption through the cloud datacenter, energy-efficient resource management is
required.
In this paper a specific technique for performing virtual machines through datacenter is given. Our goal is to reduce
power consumption on the datacenter by reducing the host running in the cloud datacenter. To reduce power
consumption, schedule the incoming task such a way that all the resources like ram, cpu(mips) and bandwidth utilize in
equal weightage. Then after if any host is over utilized then migrate one or more vm from that host to another host as well
as if any host is underutilize then migrate running vm of that host and switch off the under loaded host to save energy.


Full Text:

PDF

References


M. H. Kumar, “Energy Efficient Task Scheduling for Parallel Workflows in Cloud Environment,” pp. 1298–1303, 2014.

T. V. T. Duy, Y. Sato, and Y. Inoguchi, “Performance evaluation of a green scheduling algorithm for energy savings in cloud computing,” Proc. 2010 IEEE Int. Symp. Parallel Distrib. Process. Work. Phd Forum, IPDPSW 2010, no. September 2015, pp. 1–8, 2010.

N. Kim, J. Cho, and E. Seo, “Energy-credit scheduler: An energy-aware virtual machine scheduler for cloud systems,” Futur. Gener. Comput. Syst., vol. 32, no. 1, pp. 128–137, 2014.

J. Baliga, R. W. a Ayre, K. Hinton, and R. S. Tucker, “Green Cloud Computing: Balancing Energy in Processing, Storage and Transport,” Proc. IEEE, 2010.

L. Luo, W. Wu, D. Di, and F. Zhang, “A resource scheduling algorithm of cloud computing based on energy efficient optimization methods,” Green Comput. Conf., no. July 2007, pp. 0–5, 2012.

Y.-J. Chiang, Y.-C. Ouyang, and C.-H. R. Hsu, “An Efficient Green Control Algorithm in Cloud Computing for Cost Optimization,” IEEE Trans. Cloud Comput., vol. 3, no. 2, pp. 145–155, 2015.

A. P. M. De La, F. Vigliotti, and D. Macêdo, “Energy-Efficient Virtual Machines Placement,” Sbrc 2014, pp. 17–30, 2014.

Bhaskar Prasad , Eunmi Choi and Ian Lumb, “A Taxonomy, Survey, and Issues of Cloud Computing Ecosystems”, Springer International Conference on Computational Intelligence and Computing Research, ISBN: 978-1-84996240-7, 2010, pp: 21-46.

Anton Beloglazov,Jemal Abawajy,Rajkumar Buyya,“Energy Efficent resource allocation heustricls for efficient management of data center for cloud computing” – Science direct, Vol.28, PP. 755-768, 2014

Anton Beloglazov and Rajkumar Buyya,“Energy Efficient Resource Management in Virtualized Cloud Data Centers”­ 2010 10th IEEE/ACM International Conference onCluster, cloud and Grid Computing, 44,989100


Refbacks

  • There are currently no refbacks.