IJSTR

International Journal of Scientific & Technology Research

Home About Us Scope Editorial Board Blog/Latest News Contact Us
0.2
2019CiteScore
 
10th percentile
Powered by  Scopus
Scopus coverage:
Nov 2018 to May 2020

CALL FOR PAPERS
AUTHORS
DOWNLOADS
CONTACT

IJSTR >> Volume 9 - Issue 1, January 2020 Edition



International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616



The Impact On Load-Balancing In Cloud Computing

[Full Text]

 

AUTHOR(S)

R.GowriPrakash, R.Shankar, S.Duraisamy

 

KEYWORDS

Cloud computing, load-balancing, resource scheduling, resource utilization.

 

ABSTRACT

Cloud computing is a current model for accessing services via web. In such model, resources are circulated to clients in all around the globe for accessing services more rapidly. This model has several difficulties such as load-balancing, safety measures, resource scheduling scaling, Quality of Service (QoS) control, service accessibility and data center energy utilization. Among these, one of the most fundamental difficulties is load-balancing. This is a practice of allocating and re-allocating the load among the accessible resources for maximizing the throughput when reducing response time, energy utilization, resource consumption and cost. Therefore, an efficient load-balancing scheme is needed to improving the performance of cloud computing. Several load-balancing algorithms in cloud computing have been proposed by different researchers in the past years. In this paper, some of them are surveyed with those merits and demerits to further enhance the load-balancing in cloud using recent algorithms.

 

REFERENCES

[1] Kherani, F. F., & Vania, J. (2014). Load-balancing in Cloud Computing. International Journal of Engineering Development and Research, 2(1),907-912.
[2] Mehmood, M., Sattar, K., Khan, A. H., & Afzal, M. (2015). Load-balancing approach in cloud computing. Journal of Information Technology & Software Engineering, 5(03), 1-5.
[3] Karimi, A., Zarafshan, F., Jantan, A., Ramli, A. R., & Saripan, M. (2009). A new fuzzy approach for dynamic load-balancing algorithm. arXiv preprint arXiv:0910.0317.
[4] Kumar, R., & Prashar, T. (2016). A bio-inspired hybrid algorithm for effective load-balancing in cloud computing. International Journal of Cloud Computing, 5(3), 218-246.
[5] Keshvadi, S., & Faghih, B. (2016). A multi-agent based load-balancing system in IaaS cloud environment. International Robotics & Automation Journal, 1(1), 3-8.
[6] Naha, R. K., & Othman, M. (2016). Cost-aware service brokering and performance sentient load-balancing algorithms in the cloud. Journal of Network and Computer Applications, 75, 47-57.
[7] Khani, H., Yazdani, N., & Mohammadi, S. (2017). A self‐organized load-balancing mechanism for cloud computing. Concurrency and Computation: Practice and Experience, 29(4), e3897.
[8] Phi, N. X., & Hung, T. C. (2017). Load-balancing algorithm to improve response time on cloud computing. International Journal on Cloud Computing: Services and Architecture, 7(6), 1-12.
[9] Mousavi, S., Mosavi, A., & Varkonyi-Koczy, A. R. (2017, September). A load-balancing algorithm for resource allocation in cloud computing. In International Conference on Global Research and Education (pp. 289-296). Springer, Cham.
[10] Lawanyashri, M., Balusamy, B., & Subha, S. (2017). Energy-aware hybrid fruitfly optimization for load-balancing in cloud environments for EHR applications. Informatics in Medicine Unlocked, 8, 42-50.
[11] Shen, H. (2017). RIAL: Resource intensity aware load-balancing in clouds. IEEE Transactions on Cloud Computing, PP(99), 1-14.
[12] Adhikari, M., & Amgoth, T. (2018). Heuristic-based load-balancing algorithm for IaaS cloud. Future Generation Computer Systems, 81, 156-165.
[13] Huang, W., Ma, Z., Dai, X., Xu, M., & Gao, Y. (2018). Fuzzy Clustering with Feature Weight Preferences for Load-balancing in Cloud. International Journal of Software Engineering and Knowledge Engineering, 28(05), 593-617.
[14] Kumar, M., & Sharma, S. C. (2018). Deadline constrained based dynamic load-balancing algorithm with elasticity in cloud environment. Computers & Electrical Engineering, 69, 395-411.
[15] Priya, V., Kumar, C. S., & Kannan, R. (2019). Resource scheduling algorithm with load-balancing for cloud service provisioning. Applied Soft Computing, 76, 416-424.
[16] Haidri, R. A., Katti, C. P., & Saxena, P. C. (2019). Capacity based deadline aware dynamic load-balancing (CPDALB) model in cloud computing environment. International Journal of Computers and Applications, 1-15.
[17] Kong, L., Mapetu, J. P. B., & Chen, Z. (2019). Heuristic Load-balancing Based Zero Imbalance Mechanism in Cloud Computing. Journal of Grid Computing, 1-26.
[18] Mohanty, S., Patra, P. K., Ray, M., & Mohapatra, S. (2019). An Approach for Load-balancing in Cloud Computing Using JAYA Algorithm. International Journal of Information Technology and Web Engineering (IJITWE), 14(1), 27-41.
[19] Hsieh, H. C., & Chiang, M. L. (2019). The Incremental Load Balance Cloud Algorithm by Using Dynamic Data Deployment. Journal of Grid Computing, 1-23.
[20] Mansouri, N., Zade, B. M. H., & Javidi, M. M. (2019). Hybrid task scheduling strategy for cloud computing by modified particle swarm optimization and fuzzy theory. Computers & Industrial Engineering, 130, 597-633.
[21] Sekaran, K., Khan, M. S., Patan, R., Gandomi, A. H., Krishna, P. V., & Kallam, S. (2019). Improving the Response Time of M-Learning and Cloud Computing Environments Using a Dominant Firefly Approach. IEEE Access, 7, 30203-30212.
[22] Gamal, M., Rizk, R., Mahdi, H., & Elnaghi, B. E. (2019). Osmotic Bio-Inspired Load-balancing Algorithm in Cloud Computing. IEEE Access, 7, 42735-42744.