Energy-Efficient Cloud Computing

Authors

  • Raja Kumar 1. Assistant Professor, Mechanical Engineering, Arya Institute of Engineering and Technology Author
  • Anupama Pandey 2. Associate Professor, Dept. of Management, Arya Institute of Engineering and Technology Author
  • Vishakha Verma 3. Research Scholar, Department of Computer Science and Engineering, Arya Institute of Engineering and Technology Author

DOI:

https://doi.org/10.61841/vj1pp619

Keywords:

Energy-Efficient Cloud Computing,, Environmental Impact,, Cloud Data Centers,Sustainability, Green Data Centres

Abstract

The summary on Energy-Efficient Cloud Computing delves into the vital exam of the environmental implications associated with cloud computing and proposes techniques to enhance the power efficiency of cloud records facilities. In this complete exploration, the focal point is on mitigating the carbon footprint of cloud technology, emphasizing the utilization of environmentally sustainable practices and revolutionary technology.

The environmental effect of cloud computing has turn out to be a urgent subject as facts facilities contribute considerably to power intake and greenhouse gasoline emissions. This research scrutinizes the present day state of energy consumption in cloud information facilities and evaluates its environmental outcomes. The goal is to identify possible answers that not most effective mitigate the ecological footprint however also align with the developing call for for scalable and green cloud offerings.

A pivotal issue of the proposed techniques includes the implementation of green records centers. These records facilities integrate eco-friendly technology, which include renewable strength sources and superior cooling structures, to decrease energy intake and decrease environmental effect. By exploring the feasibility and scalability of inexperienced records centers, the research ambitions to provide a sustainable version for future cloud infrastructure improvement.

Optimization algorithms become a key era to enhance electricity performance in cloud computing. The look at investigates the application of algorithms designed to optimize resource usage, workload distribution, and normal device overall performance. Through the implementation of these algorithms, the research seeks to enhance the operational performance of cloud statistics centers, lowering power waste and promoting a extra sustainable computing infrastructure.

Energy-conscious resource allocation is another essential detail addressed inside the abstract. The studies explores mechanisms to dynamically allocate assets primarily based on real-time power consumption information. By incorporating strength-cognizance into resource management, the goal is to strike a stability among overall performance requirements and electricity performance, ensuring most effective usage of assets whilst minimizing the environmental effect

In conclusion, this abstract units the degree for a comprehensive exploration of Energy-Efficient Cloud Computing, losing mild at the environmental challenges posed with the aid of cloud statistics facilities. Through the investigation of green records centers, optimization algorithms, and power-aware resource allocation, the studies aspires to provide practical solutions that harmonize cloud computing with ecological sustainability, fostering a greater electricity-green and environmentally responsible cloud infrastructure.

Downloads

Download data is not yet available.

References

1. Pamlin, D. (2008) The Potential Global CO2 Reductions from ICT Use: Identifying and Assessing the Opportunities to Reduce the First Billion Tonnes of CO2, Vol. May. WWF, Sweden.

2. Accenture (2008) Data Centre Energy Forecast Report. Final Report, Silicon Valley Leadership Group, July.

3. Malone, C. and Belady, C. (2006) Metrics to Characterise Data Centre & IT Equipment Energy Use. Proc. Digital Power Forum, Richardson, TX, USA, September.

4. Hewitt C. (2008) ORGs for scalable, robust, privacy-friendly client cloud computing. IEEE Internet Comput., September, 96–99.

5. Fan, X., Weber, W.-D. and Barroso, L.A. (2007) Power provisioning for a warehouse-sized computer, Proc. 34th Annual Int. Symp. Computer Architecture, San Diego, CA, USA, June 9–13, 2007. pp. 13–23. ACM, New York.

6. Intel whitepaper 30057701 (2004) Wireless Intel SpeedStep Power Manager: optimizing power consumption for the Intel PXA27x processor family.

7. Emerson, “Energy logic 2.0: New strategies for cutting data center energy costs and boosting capacity,” Emerson

Network Power, Emerson Electric Co., Emerson Network Power, Ohio, USA, Tech. Rep., 2014.

8. Greenpeace, “Make IT Green: Cloud computing and its contribution to climate change,” Greenpeace International,

Tech. Rep., March 2010.

9. Emerson, “Data Center Users Group: Survey Results,” Data Center Users Group, Emerson Electric Co., Emerson

Network Power, Ohio, USA, Tech. Rep., October 2014.

10. F. Moisan and D. Bosseboeuf, “Energy Efficiency: A Recipe for Success,” World Energy Council, London, UK,

Tech. Rep., 2010.

11. D. Kliazovich, P. Bouvry, and S. Khan, “Simulation and performance analysis of data intensive and workload intensive cloud computing data centers,” in Optical Interconnects for Future Data Center Networks, ser. Optical Networks, C. Kachris, K. Bergman, and I. Tomkos, Eds. Springer New York, 2013, pp. 47–63.

12. R. Razavi and H. Claussen, “Urban small cell deployments: Impact on the network energy consumption,” in Proc.

IEEE Wireless Communications and Networking Conference (WCNC), Paris, April 2012.

13. Emerson, “Data Center 2025,” Emerson Electric Co., Emerson Network Power, Ohio, USA, Tech. Rep., 2014.

14. U. Hoelzle and L. A. Barroso, The Datacenter As a Computer: An Introduction to the Design of Warehouse-Scale Machines, 2nd ed. Morgan and Claypool Publishers, 2013.

15. Gartner, “Servers Quarterly Statistics Worldwide: Database,” Gartner Research, Stamford, USA, Tech. Rep.,

February 2014.

16. R. K. Kaushik Anjali and D. Sharma, "Analyzing the Effect of Partial Shading on Performance of Grid Connected Solar PV System", 2018 3rd International Conference and Workshops on Recent Advances and Innovations in Engineering (ICRAIE), pp. 1-4, 2018

Downloads

Published

30.06.2020

How to Cite

Kumar, R., Pandey, A., & Verma, V. (2020). Energy-Efficient Cloud Computing. International Journal of Psychosocial Rehabilitation, 24(6), 19006-19010. https://doi.org/10.61841/vj1pp619