Complexity and energy saving in cloud load balancing algorithms: a study

Authors

  • Sahu B Associate Professor, Institute of Management and Information Science, Bhubaneswar, Odisha, India
  • Swain SK Associate Professor, Department of Computer Science, Centurion University of Technology and Management, Bhubaneswar¸ Odisha, India

Keywords:

Carbon Dioxide (CO2), Complexity of algorithm, Data Center, Emission, Pay-per-use, Energy Efficient Cloud Algorithm

Abstract

Based on the idea of pay-per-use and on-demand access to shared IT resources, cloud computing is rapidly emerging as a computing model of choice. It holds ample promises for individual users and organizations as well as impacts significantly the IT industry as a whole. Consequently, there is a pertinent demand for large, high performance and efficient data centers. These data centers necessitate energy efficient cloud computing algorithms to reduce energy consumption and diffusion of carbon dioxide. This paper follows a systematic approach to review energy consumption algorithms used in cloud data centers. Although several studies are available in the literature, it is felt that more exhaustive study is required to present the stat-of-the-art in the field. Further, the paper identifies the most common factors such as the technique used by the researchers, resources on which they focused, strength, weakness, the complexity of algorithm and percentage of energy saving resulted by the algorithms and presents a comparative assessment of some select algorithms. This will certainly help the new researchers for a comprehensive understanding of the issues in cloud computing energy saving algorithms and set path for further study.

References

Uchechukwu A, Li K. and Shen Y. 2014 Energy Consumption in Cloud Computing Data Centers, International Journal of Cloud Computing and Services Science

Alzahrani H. 2016 A Brief Survey of Cloud Computing, Global Journal of Computer Science and Technology

Afzal S. and Kavitha G., 2019 Load balancing in cloud computing – A hierarchical taxonomical classification, Journal of Cloud Computing Advance, Systems and Applications, Vol. 8(22): 1-24

Hameed A., Khoshkbarforoushha A., Ranjan R., Jayaraman P.P., Kolodziej J., Balaji P., Zeadally S., Malluhi Q. M., Tziritas N., Vishnu A., Khan S. U., Zomaya A. 2014, A survey and taxonomy on energy efficient resource allocation techniques for cloud computing systems, Springer, Vol. 98(7): 751-774

Ala'anzy M., Othman M., 2019, Load balancing and Server Consolidation in Cloud Computing Environments: A Meta-Study, IEEE Access, Vol. 7: 141868-141887

Bajaj S., Malhotra M. 2017, A Comparative Study on Load Balancing and Energy Efficiency Techniques in Cloud Paradigm, International Journal of Research in Electronics And Computer Engineering, Vol. 5(4), 76-81

Mosa A., Paton N. W., 2016, optimizing virtual machine placement for energy and SLA in clouds using utility functions, Journal of Cloud Computing: Advances, Systems and Applications, Vol. 5(17)

Motochi V., Barasa S., Owoche P., Wabwoba F., 2017, The Role of Virtualization towards Green Computing and Environmental Sustainability, International Journal of Advanced Research in Computer Engineering & Technology (IJARCET), Vol. 6(6): 851-858

Ala'anzy M., Othman M., 2019, Load Balancing and Server Consolidation in Cloud Computing Environments A Meta-Study, IEEE, Vol. 7: 141868-141887

Motochi V., Barasa S., Owoche P., Wabwoba F., 2017, International Journal of Advanced Research in Computer Engineering & Technology (IJARCET), Vol. 6(6): 851-858

Bajaj S., Malhotra M., 2017, A Comparative Study on Load Balancing and Energy Efficiency Techniques in Cloud Paradigm, International Journal of Advanced Research in Computer Engineering & Technology (IJARCET), Vol. 5(4): 76-81

Nonde L., Taisir E. H. Gorashi E., Jaafar M. H. Elmirghani, 2015, Energy Efficient Virtual Network Embedding for Cloud Networks, IEEE, Journal of Light wave Technology, Vol. 33(9): 1828-1849

You X., Li Y, Zheng M., Zhu C., Yu L., 2017, A Survey and Taxonomy of Energy Efficiency Relevant Surveys in Cloud-Related Environments, IEEE Access, Vol. 5: 14066- 14078

Shaheen Q., Shiraz M., Khan S., Majeed R., Guizani M., Khan N., And Aseere A. M., 2019, Towards Energy Saving in Computational Clouds: Taxonomy, Review, and Open Challenges, IEEE Access, Vol. 6: 29407-29418

Rahman A. U., Khan F., Jadoon W., 2016, Energy Efficiency techniques in cloud computing, IJCSIS, International Journal of Computer Science and Information Security (IJCSIS), Vol. 14 (6): 317-323

Ullah Q. Z., Khan G. M., Hassan S., 2019, Cloud Infrastructure Estimation and Auto-Scaling Using Recurrent Cartesian Genetic Programming-Based ANN, IEEE, Vol. 8: 17965-17985

Huang K., Jiang X., Zhang X., Yan R., Wang K. , Xiong D., and Yan X., 2019, Energy-Efficient Fault-Tolerant Mapping and Scheduling on Heterogeneous Multiprocessor Real-Time Systems, IEEE Access,Vol.6: 57614-57630

Song M., 2018, Minimizing Power Consumption in Video Servers by the Combined Use of Solid-State Disks and Multi-Speed Disks, IEEE Access, Vol. 6: 25737-25746

Saranya D., Maheswari L. S., 2015, Load Balancing Algorithms in Cloud Computing: A Review, International Journal of Advanced Research in Computer Science and Software Engineering, Vol. 5(7): 1107-1111

Khan D. H., Kapgate D., 2014, Efficient Virtual Machine Scheduling in Cloud Computing, International Journal of Advanced Research in Computer Science and Software Engineering, Vol. 3(5): 444-453

Bele S.B., 2018, An Empirical Study on ‘CLOUD COMPUTING’, International Journal of Computer Science and Mobile Computing, Vol.7 (2): 33-41

Xue C.T.S., Xin F.T.W., 2016, Benefits and Challenges Of The Adoption Of Cloud Computing In Business, International Journal on Cloud Computing: Services and Architecture (IJCCSA) Vol. 6(6): 1-15

Ahmed M.T., Hussain A., 2013, Survey on EnergyEfficient Cloud Computing Systems, International Journal of Advances in Engineering Research, Vol. No. 5(2): 10-24

Sharma R. M., 2014, The Impact of Virtualization in Cloud Computing, International Journal of Recent Development in Engineering and Technology. Vol. 3(1): 197-202

Wang S., Qian Z., Yuan J. You I., 2017, A DVFS Based Energy-Efficient Tasks Scheduling in a Data Center, IEEE Access, Vol. 5: 13090- 13102

Rayes A., Hamdaoui B., Dabbagh M., Guizaniy M., 2015, Energy-Efficient Resource Allocation and Provisioning Framework for Cloud Data Centers, IEEE Vol. 12(3): 377 – 391

Jason S., Suchithra R., 2019, Energy Efficient Adaptive Depth Optimized Self Cloud Mechanism for VM Migration in Data Centers, International Journal of Engineering and Advanced Technology (IJEAT), Vol. 8(6): 475-482

Sardaraz M., Tahir M., 2019, A Hybrid Algorithm for Scheduling Scientific Workflows in Cloud Computing, IEEE Access, Vol. 7: 186137-186146

Aswal S.M.S., 2019, Energy and SLA-Aware VM Selection Algorithm for Resource Allocation In Cloud Data Centers, International Journal Of Scientific & Technology Research, Vol. 8(12): 3533-3539

Khalil M.I.K, Ahmad I., Almazroi A. A., 2019, Energy Efficient Indivisible Workload Distribution in Geographically Distributed Data Centers, IEEE Access, Vol. 7: 82672-82680

Wen Y., Li Z., Jin S., Lin C., Liu Z., 2017, EnergyEfficient Virtual Resource Dynamic Integration Method in Cloud Computing, IEEE Access, Vol. 5: 12214-12223

Jawad M., Qureshi M. B., Khan M.U.S., Ali S. M., Mehmood A., Khan B., Wang X., and Khan S. U., 2017, A Robust Optimization Technique for Energy Cost Minimization of Cloud Data Centers, IEEE Computer Society, Vol #(#):1-14

Gao Y., Zhang S., and Zhou J., 2018, Adaptive EnergyAware Algorithms for Minimizing Energy Consumption and SLA Violation in Cloud Computing, IEEE Access, Vol. 6: 55923-55936

Ye X., Yin Y., Lan L., 2017, Energy-Efficient ManyObjective Virtual Machine Placement Optimization in a Cloud Computing Environment, IEEE Access, Vol. 5: 16006-16020

Kurdi H.A., Alismail S. M., Hassan M. M., 2018, LACE: A Locust-Inspired Scheduling Algorithm to Reduce Energy Consumption in Cloud Datacenters, IEEE Access, Vol. 6: 35435-35448

Song T., Wang Y., Li G., Pang S., 2019, Server Consolidation Energy-Saving Algorithm Based on Resource Reservation and Resource Allocation Strategy, IEEE Access, Vol. 7: 171452-171460

Raju Y.M.P., Devarakonda Y.,2019, Cluster based Hybrid Approach to Task Scheduling in Cloud Environment, International Journal of Advanced Computer Science and Applications, Vol. 10(4): 425-429

Farahnakian F., Pahikkala T., Liljeberg P., Plosila J., N.T.Hieu,, Tenhunen, 2019, Energy-Aware VM Consolidation in Cloud Data Centers Using Utilization Prediction Model, IEEE, Vol. 7(2): 524-536

Downloads

Published

2024-02-26

How to Cite

Sahu, B., & Swain, S. K. (2024). Complexity and energy saving in cloud load balancing algorithms: a study. COMPUSOFT: An International Journal of Advanced Computer Technology, 9(11), 3934–3943. Retrieved from https://ijact.in/index.php/j/article/view/602

Issue

Section

Review Article

Similar Articles

<< < 35 36 37 38 39 40 

You may also start an advanced similarity search for this article.