Efficient Hybrid Load Balancer for Software Defined Networks using OpenFlow Accuracy Prediction


  • Ananth B.


Cloud Computing, Load Balancer, Service Offering, Virtualization, Scheduling


Cloud computing is a global vision for real-world IT offerings where data and resources are integrated by web-based cloud management organizations using hardware and structured, primarily web-based packages. people at a reasonable cost. Sharing resources can cause problems with access to those resources, leading to a crash. The strategy for distributing network traffic across multiple connecting node or servers is called as load balancing. It is referred that no server is overloaded. Load control builds user responsiveness by distributing shares evenly. It also makes projects and sites more accessible to customers. The reason for this archive is to understand the billing control. It has associated structures of communication organizations over the Internet. Load balancing is an important part of a distributed computer to stay away from work overload and provide equally important support. Different statistics are used to determine system complexity


Download data is not yet available.


Khan Z, Singh R, Alam J, Saxena S (2020) Classification of Load Balancing Conditions for parallel and distributed systems. International Journal of Computer Science Issue 8: 411- 419.

Gulati A, Chopra RK (2019) Dynamic Round Robin for Load Balancing in a Cloud Computing, International Journal of Computer Science and Mobile Computing: 274-278.

Shahbaz Afzal and G. Kavitha, “Load balancing in cloud computing – A hierarchical taxonomical classification”, Journal of Cloud Computing, volume 8, pp.981-991, 2019.

Wong and William, “A Comparative Study of Load Balancing Algorithms in Cloud Computing Environment using Cloud Analyst”, IJESC, Volume 7 Issue No.3, 2019

Ms. Shalini Joshi ,Dr. Uma Kumari “Load Balancing in Cloud Computing:Challenges& Issues” , Conference: 2021 2nd International Conference on Contemporary Computing and Informatics, Singapore, 2021

S.Manikandan,M.Chinnadurai, D.Maria Manuel Vianny and D.Sivabalaselvamani, "Real Time Traffic Flow Prediction and Intelligent Traffic Control from Remote Location for Large-Scale Heterogeneous Networking using TensorFlow", International Journal of Future Generation Communication and Networking, ISSN: 2233-7857, Vol.13, No.1, (2020), pp.1006-1012.

Manikandan, S, Chinnadurai, M, "Effective Energy Adaptive and Consumption in Wireless Sensor Network Using Distributed Source Coding and Sampling Techniques",.Wireless Personal Communication (2021), 118, 1393–1404 (2021).

Hongsuk Yi, HeeJin Jung and Sanghoon Bae, “Deep Neural Networks for Traffic Flow Prediciton”, IEEE Conference on Big Data and Computations, 2019, 971-5090-3015-6/17, pp.328-331

9. Ring and Winge, “TensorFlow:Large-Scale Machine Learning on Heterogeneous Distributed Systems”, IEEE Access, vol.21, pp.267-281, 2021.

N.Kato, “The deep learning vision for heterogeneous network traffic control: Proposal, challenges, and future perspective,” IEEE Wireless Communication, vol. 24, no. 3, pp. 146–153, Jun. 2020.

S. Manikandan, P. Dhanalakshmi, K. C. Rajeswari and A. Delphin Carolina Rani, "Deep sentiment learning for measuring similarity recommendations in twitter data," Intelligent Automation & Soft Computing, vol. 34, no.1, pp. 183–192, 2022.

Manikandan, S., Chinnadurai, M. (2022), "Virtualized Load Balancer for Hybrid Cloud Using Genetic Algorithm", Intelligent Automation & Soft Computing, 32(3), 1459–1466, 2022

S. Sahu and P. Manish, “Efficient load balancing algorithm analysis in cloud computing,” in Proc. of the Fourth Int. Conf. on Communication and Electronics Systems (ICCES 2019China, vol. 15, no. 6, pp. 177–184, 2019.

Karan and Bhalodia, “An efficient dynamic load balancing algorithm for virtual machine in cloud computing,” in Proc. of the Int. Conf. on Intelligent Computing and Control Systems (ICICCS 2019India, vol. 11, no. 4, pp. 215–224, 2019.

K. Sheetal, “Enhanced improved genetic algorithm for load balancing in cloud computing,” Journal of Research in Computer Science and Engineering, vol. 4, no. 1, pp. 275–286, 2020.

S. Kripa and K. Kosal, “SIQ algorithm for efficient load balancing in cloud,” IEEE Int. Conf. on Algorithms, Methodology, Models and Applications in Emerging Technologies (ICAMMAET), Singapore, vol. 21, no. 13, pp. 1756–1766, 2021.

C. Priyanka and S. Sankari. “Comparative analysis on virtual machine assignment algorithm,” IEEE Int. Conf. on Computing and Communication Technology, Tokyo, vol. 17, no. 3, pp. 526–533, 2019.

D. Menno Dobber, M. Rob van dermei and K. Gerkoole “Dynamic load balancing and job replication in a global-scale grid environment: A comparison,” IEEE Transactions on Parallel and Distributed Systems, vol. 20, no. 2, pp. 207, 2019.

C. Zenon, M. Venkatesh, S. Shahrzad and M. Christopher, “Availability and load balancing in cloud computing,” in 2011 Int. Conf. on Computer and Software Modeling (IPCSITIndia, vol. 14, no. 3, pp. 219–224, 2011.




How to Cite

Ananth B. (2024). Efficient Hybrid Load Balancer for Software Defined Networks using OpenFlow Accuracy Prediction. International Journal of Intelligent Systems and Applications in Engineering, 12(21s), 1772–1778. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/5748



Research Article