Optimization Techniques For Low Energy Consumption In Green Cloud Computing

Main Article Content

Himanshu Sharma
Vijay Kumar Joshi

Abstract

Computing in the cloud can assist businesses in shifting their focus to the development of solid business applications that will bring about genuine value to the businesses. Green computing, often known as environmentally sustainable computing, is the definition of green computing. It is a reference to the efforts that are made to maximise the usage of power consumption & energy efficiency while simultaneously minimising the cost & the amount of CO2 emission. To conduct a study on optimisation techniques & procedures that assist us in optimising low energy consumption & evaluating multiple parameters in order to obtain the desired output is the primary purpose of this research. Energy-Conscious Multisite Computation Offloading Techniques (EMOGC) for Green Cloud Computing is the methodology that was utilised throughout this project. Simulation & analysis are presented in The Energy-Conscious Multisite Computation Offloading Techniques for Green Cloud Computing in order to investigate time-efficient scheduling on multisite, which is responsible for optimising energy, time, & cost at the optimum time. This strategy seeks to finish the application within the allotted amount of time while also consuming as little power as feasible from the connected devices. According to the findings of this research, it is clear that the explored technique is effective in obtaining high throughput (HT) while simultaneously minimising the execution time, which in turn enhances the data rate in Green Cloud Computing (GCC).

Article Details

How to Cite
Sharma, H. ., & Joshi, V. K. . (2023). Optimization Techniques For Low Energy Consumption In Green Cloud Computing. International Journal on Recent and Innovation Trends in Computing and Communication, 11(7s), 577–582. https://doi.org/10.17762/ijritcc.v11i7s.7145
Section
Articles

References

Abd-El-Atty, B., Iliyasu, A. M., Alaskar, H., & Abd El-Latif, A. A. (2020). A robust quasi-quantum walks-based steganography protocol for secure transmission of images on cloud-based E-healthcare platforms. Sensors, 20(11), 3108.

Beri, R., & Behal, V. (2015). Descriptive Study of Cloud Computing: An Emerging Technology. International Journal on Recent & Innovation Trends in Computing & Communication, 3(3), 1401-1404.

Bharany, S., Sharma, S., Khalaf, O. I., Abdulsahib, G. M., Al Humaimeedy, A. S., Aldhyani, T. H., ... & Alkahtani, H. (2022). A systematic survey on energy-efficient techniques in sustainable cloud computing. Sustainability, 14(10), 6256.

Geetha, P., & Robin, C. R. (2021). RETRACTED ARTICLE: Power conserving resource allocation scheme with improved QoS to promote green cloud computing. Journal of Ambient Intelligence & Humanized Computing, 12(7), 7153-7164.

Gulati, R., & Tyagi, S. (2020). ‘A systematic review on the various approaches used for achieving energy consumption in cloud. TEST Eng. Manage, 82, 3936-3953.

Hussain, M., Wei, L. F., Lakhan, A., Wali, S., Ali, S., & Hussain, A. (2021). Energy & performance-efficient task scheduling in heterogeneous virtualized cloud computing. Sustainable Computing: Informatics & Systems, 30, 100517.

Jeba, J. A., Roy, S., Rashid, M. O., Atik, S. T., & Whaiduzzaman, M. (2021). Towards green cloud computing an algorithmic approach for energy minimization in cloud data centers. In Research Anthology on Architectures, Frameworks, & Integration Strategies for Distributed & Cloud Computing (pp. 846-872). IGI Global.

Jeevitha, J. K., & Athisha, G. (2021). A novel scheduling approach to improve the energy efficiency in cloud computing data centers. Journal of Ambient Intelligence & Humanized Computing, 12, 6639-6649.

Kaur, S., & Bansal, M. (2014). Energy Efficient Policies in Cloud Computing. International Journal on Recent & Innovation Trends in Computing & Communication, 2(9), 2887-2890.

Mandal, R., Mondal, M. K., Banerjee, S., & Biswas, U. (2020). An approach toward design & development of an energy-aware VM selection policy with improved SLA violation in the domain of green cloud computing. The Journal of Supercomputing, 76, 7374-7393.

Singh, J. (2021). Energy consumption analysis & proposed power-aware scheduling algorithm in cloud computing. In Intelligent Computing & Applications: Proceedings of ICICA 2019 (pp. 193-201). Springer Singapore.

Xu, X., Zhang, X., Khan, M., Dou, W., Xue, S., & Yu, S. (2020). A balanced virtual machine scheduling method for energy-performance trade-offs in cyber-physical cloud systems. Future Generation Computer Systems, 105, 789-799.