Analysis of DVFS Technique for Efficient - Energy Management in Cloud Data Center

  • Authors

    • Joshua Samual
    • Masnida Hussin
    2018-12-09
    https://doi.org/10.14419/ijet.v7i4.31.25474
  • cloud data centre, energy efficiency, DVFS, cloud applications.
  • Cloud data center contains various resources which are utilized continuously without any break. The data center consumed large energy to keep the components to run 24/7 for achieving certain performances. Such energy usage becomes one of the major issues in the Cloud data center. It is due to the Cloud availability is highly demanded in network community. In this study, we formed an analysis on the energy consumption by considering the CPU usages through the existing Dynamic Voltage and Frequency Scaling (DVFS) techniques that proposed in existing researches. The aim of this work is to investigate and identify Cloud services application factors that can be employed on the DVFS for better energy management in Cloud data center. Our study expresses the areas of the Cloud service applications such as Business Application-as-a-Services, Consumer Application-as-a-Services and Scientific Application as-a Service that embedded in DVFS where it can be part of the energy saving contributors. We also analysed the two main factors in DVFS are proportional to time and frequency that can be adjusted towards energy efficient in the data center. The survey is also investigated on how far such functions can be manipulated for energy saving while investigating potential solutions for further enhancement.

     

  • References

    1. [1] Shikha Gupta, Suman Sanghwan,(2015), Load Balancing in cloud computing, International Journal of Science, Engineering and Tech-nology Research (IJSETR), Vol 4, Issues 6, ISSN: 2278-7798.

      [2] Zhuo Tang, Ling Qi, Zhenzhen Cheng, Kenli Li, Samee U, Khan, Keqin Li, (2015), An Energy-Efficient Task Scheduling Algorithm in DVFS- Enabled Cloud Environment, J Grid Computing, Springer, DOI 10.1007.

      [3] Hussin, Masnida; Muhammed, Abdullah; Mahmood, Y. M. Raja Azlina Raja (2017), An Adaptive Energy Allocation for High-Performance Computing Systems Using a Cyber-Physical Approach, Advanced Science Letters, vol. 23, no. 6, pp. 5045-5049(5).

      [4] Sakshi Grover, Mr. Navtej Singh Ghumman, (2016), Power Saving Load Balancing Strategy Using DVFS in Cloud Computing Envi-ronment, International Journal of Computer & Technology, Vol 15, Number 13, pp- 7333, ISSN 2277-3061.

      [5] Patricia Arroba, Jose M. Moya, Jose L. Ayala, Rajkumar Buyya, (2016), Dynamic Voltage and Frequency Scaling -Aware Dynamic Consolidation of Virtual Machine for Energy Efficient Cloud Data Centers, Concurrency Computation Practice and Experience, Wiley, DOI 10.1002.

      [6] Manuel Combarro, Andrei Tchernykh, Alexander Drozdov, Dzmitry Kliazovich, Gleb Radchenko, (2016), Energy-Aware Schedduling with Computing and Data Consolidation Balance in 3- Tier Data Center, International Conference on Engineering and Telecommuni-cation, IEEE, DOI 10.1109.

      [7] Atefeh Khosravi, Rajkumar Buyya, (2017), Energy and Carbon Footprint- Aware Management of Geo-Distributed Cloud computing Data Centers: A Taxonomy, State of the Art, and Future Directions, IGI Global, DOI: 10.4018/978-1-5225-2013-9.ch002.

      [8] H. Rong, H. Zhang, S. Xiao, C. Li, and C. Hu, (2016), Optimizing energy consumption for data centers Renewable and Sustainable En-ergy Reviews, Elsevier, Volume 58, , Pages 674-691.

      [9] Vrunda J.Patel , Hitesh A. Bheda,(2014), An advanced Survey On The Research Issues Of Energy Management In Cloud Computing, International Journal of Advanced Research in Computer Science and Software Engineering, Vol 4, Issue 1, ISSN: 2277-128X, PP163-166.

      [10] G. Kiryakova, N. Angelova, L. Yordanova,(2015), Application Of

      Cloudcomputing Services In Business, Trakia Journal of Sciences, Vol. 13, Suppl. 1, pp 392-396, ISSN:1313-3551(online), doi:10.15547/tjs.2015.s.01.067.

      [11] Christian Vecchiola, Suraj Pandey, Rajkumar Buyya, (2010), High-Performance Cloud Computing: A View of Scientific Applications. IEEE Xplore, Electronic,ISSN: 2375-527X, DOI: 10.1109/I-SPAN.2009.150.

      [12] A.Paulin Florence, V.Shanthi, C.B. Sunil Simon, (2016), Energy Conservation Using Dynamic Voltage Frequency Scaling for Com-putational Cloud, The Science World Journal, Hindawi Publishing

      Corporation, Vol 2016, Article ID 9328070, DOI 10.1155/2016/9328070.

      [13] Chia-Ming Wu, Ruay-Shiung Chang, Hsin-Yu Chan, (2014), A green energy- efficient scheduling algorithm using the DVFS tchnique for cloud data centers, Future Generation Computer Sys-tems, Elsevier, PP: 141-147.

      [14] Songyun Wang, Zhuzhong Qian, Jiabin Yuan and Ilsun You,(2017), A DVFS Based Energy-Efficient Task Scheduling In a Data Center, Special Selection on Emerging Trends, Issues, And Challenges In Energy-Efficient Cloud Computing, IEEE Access, Vol 5, ISSN: 2169-3536, DOI: 10.1109/ACCESS.2017.2724598, PP-13090-13102.

  • Downloads

  • How to Cite

    Samual, J., & Hussin, M. (2018). Analysis of DVFS Technique for Efficient - Energy Management in Cloud Data Center. International Journal of Engineering & Technology, 7(4.31), 516-520. https://doi.org/10.14419/ijet.v7i4.31.25474