Energy Efficient Green Cloud Data Centres using Dynamic Virtual Machine Placement: A Survey
Sajitha.A.V., Dr.A.C.Subhajini "Energy Efficient Green Cloud Data Centres using Dynamic Virtual Machine Placement: A Survey". International Journal of Computer Trends and Technology (IJCTT) V53(1):32-40, November 2017. ISSN:2231-2803. www.ijcttjournal.org. Published by Seventh Sense Research Group.
Abstract -
Cloud Computing is considered as an promising technology in which massive amount of resources such as applications, network, computer host, storage and database are assembled in large data centres. They are interconnected through common internet protocols by means of reliable, economical and safe manner to a large number of users of the geographically dispersed area. But these massive-scale data centres are energy hungry data centres which are consuming large amount of energy day by day. It is also a threatening to the environment by emitting increased amount of Carbon dioxide. Hence, an efficient management for energy conservation is arising as a necessity in the cloud environment. An effective way to advance the energy efficiency of such data centers by using Server Consolidation which tries to lessen the sum total of active Physical Machines within a data center. An extensively practiced technology for VM live migration and placement perform as a key for finest consolidation of resources dynamically. This paper proposes a comprehensive study of the dynamic VM placement and its consolidation techniques used in green cloud computing which has the aim for improving the energy efficiency.
References
[1] P. Mell and T. Grance, The NIST definition of CloudComputing,http://csrc.nist.gov/publications/PubsSPs.html #800- 145, September 2011, (Accessed September, 2017)
[2] A. Beloglazov, J. Abawajy and R. Buyya, “Energy-aware Resource Allocation Heuristics for Efficient Management of Data Centres for Cloud Computing”, Future Generation Computer Systems, vol. 28, no. 5, pp. 755–768, October 2012.
[3] “Limiting Global Climate Change to 2 degrees Celsius – The way ahead for 2020 and beyond”, publications.europa.eu/ resource/ uriserv/l28188.ENG
[4] S.Murugesan, "Harnessing green IT: Principles and practices."IT professional, Vol.10.No.1, IEEE pp:24-33 ,2008.
[5] R.Buyya “Cloud Computing: Principles and Paradigms”, Vol. 87, John Wiley & Sons, 2010. ISBN: 978-0-470-88799-8
[6] S. S Raza, A.H. Jaikar, and S.Y Noh. "A performance analysis of precopy, postcopy and hybrid live VM migration algorithms in scientific cloud computing environment." In High Performance Computing & Simulation (HPCS), 2015 International Conference on, pp. 229-236. IEEE, 2015.
[7] S. Suehring. “ Cloud Computing Bible " Wiley Publishing." 2007.
[8] A.Beloglazov and R.Buyya, “Managing Overloaded Hosts for Dynamic Consolidation of Virtual Machines in Cloud Data Centers under Quality of Service Constraints,” IEEE Transactions On Parallel And Distributed Systems, Vol. 24, No. 7, July 2014.
[9] V. Malik and C. R. Barde, “Live migration of Virtual Machines in Cloud Environment using Prediction of CPU Usage”, International Journal of Computer Applications, 2015.
[10] Y.Han, J. Chan, T.Alpcan, and C. Leckie, ”Using Virtual Machine Allocation Policies to Defend against Co-resident Attacks in Cloud Computing”, IEEE Transactions On Dependable And Secure Computing, 2015.
[11] D.Burneo,A.Lhoas, F. Longo and A.Pulicito, “Modelling and Evaluation of Energy Policies Green Clouds”, IEEE Transactiobs on Parallel And Distributed Systems, Vol.26,No.11, 2015.
[12] Z.Huang and D. H.K. Tsang, “M-convex VM Consolidation: Towards a Better VM Workload Consolidation”, IEEE Transactions on Cloud Computing, Volume: 4, Issue: 4, 2016.
[13] F. Farahnakian, A.Ashraf, T. Pahikkala,P. Liljeberg, J. Plosila, I. Porres andH.Tenhunen, “Using Ant Colony System to Consolidate VMs for Green Cloud Computing”, IEEE Transactions On Services Computing, Vol. 8, No. 2, 2015.
[14] M. Pantazoglou, G.lTzortzakis and A.Delis, “Decentralized and Energy- Efficient Workload Management in Enterprise Clouds",IEEE Transactions On Cloud Computing,Volume:4, Issue: 2, 2016.
[15] F. Farahnakian, T. Pahikkala, P.Liljeberg,J.Plosila, N.TrungHieu, and H.Tenhunen, “Energy-aware VM Consolidation in Cloud Data Centers Using Utilization Prediction Model”, IEEE Transactions on Cloud Computing Volume: PP, Issue: 99 , 2016.
[16] Q. Wu, F. Ishikawa, Q. Zhu and Y. Xia, “Energy and migration cost- aware dynamic virtual machine consolidation in heterogeneous cloud datacenters”, IEEE Transactions on Services Computing, Volume: PP, Issue: 99 , 2016.
[17] J. Octavio G.Garcia and A.R.Nafarrate, “Collaborative Agents for Distributed Load Management in Cloud Data Centers using Live Migration of Virtual Machines”,IEEE Transactions on Services Computing , Volume: 8, Issue: 6, 2015.
[18] Y.Ding, X.Qin, LiangLiu and T.Wang “Energy efficient .scheduling of virtual machines in cloud with deadline constraint”,Future Generation Computer Systems, Elsevier Volume 50, Issue C, Pages 62-74 2015.
[19] K. K. Nguyen and M. Cheriet, “Environment- aware Virtual Slice Provisioning in Green Cloud Environment”, IEEE Transactions on Services Computing, Volume: 8, Issue: 3, 2015.
[20] M.Dabbagh, B.Hamdaoui, M. Guizani and A.rRayes, “An Energy- Efficient VM Prediction and Migration Framework for Overcommitted Clouds”, IEEE Transactions on Cloud Computing Volume: 7, Issue: 4, 2017.
[21] M. A. Khoshkholghi, M. N.Derahman, A.Abdullah, S.Subramaniam and M. Othman, “Energy- Efficient Algorithms for Dynamic Virtual Machine Consolidation in Cloud Data Centers”, EEE Transactions on Green Cloud and Fog Computing: Energy Efficient and Sustainable Infrastructures, Protocols and Applications Vol. 5 , Issue: 69 PP no: 10709 – 10722, 2017.
[22] Jungmin .Son, A. V. Dastjerdi, R. N. Calheiros and R. Buyya , “SLA-aware and Energy-Efficient Dynamic Overbooking in SDN-based Cloud Data Centers” ,IEEE Transactions on Sustainable Computing Volume: 2, Issue: 2, 2017.
[23] X.F. Liu, Z.H. Zhan, J. D. Deng, Y. Li, T. Gu and J.Zhang, “An Energy Efficient Ant Colony System for Virtual Machine Placement in Cloud Computing”, IEEE Transactions on Evolutionary Computation Volume: PP, Issue: 99 PP no: 1 – 1, 2016.
[24] A.Abdelsamea, A. A.El-Moursy, E. E.Hemayed, and H.Eldeeb, “Virtual machine consolidation enhancement using hybrid regression algorithms”, Egyptian Informatics Journal, ScienceDirect, Volume: 89 Pages: 27-33 ,2017.
[25] Y. Yang, X.Chang, J.Liu and L. Li, “Towards Robust Green Virtual Cloud Data Center Provisioning”,IEEE Transactions on Cloud Computing, Volume: PP, Issue: 99, 2017.
Keywords
Cloud Computing, Green Cloud Computing, Data Center, Virtual Machine Placement, Virtual Machine Live Migration.