Development of an Adaptive Routing Mechanism in Software-Defined Networks
https://doi.org/10.18255/1818-1015-2015-4-521-532
Abstract
The purpose of this work is to develop a unitary mechanism of adaptive routing of different kinds, basing on the current requirements on the quality of service. The software configuration of a network is the technology of the future. The trend in communication systems constantly confirms this fact. However, the application of this technology in its current form is justified only in large networks of technology giants and telecom operators. Today we have a large number of dynamic routing protocols to route big volume traffic in communication networks. Our task is to create the solution that can use the opportunities of each node to make a decision on the transmission of information by all possible means for each type of traffic. Achieving this goal is possible by solving the problem of the development of generalized metrics, which details the links between devices in the network, and the problem of establishing a framework of adaptive logical network topology (route management) to ensure the quality of the whole network in order to meet the current requirements on the quality of a particular type service.
About the Authors
A. N. NoskovRussian Federation
Lecturer
Sovetskaya str., 14, Yaroslavl, 150000, Russia
I. A. Manov
Russian Federation
magister
Sovetskaya str., 14, Yaroslavl, 150000, Russia
References
1. ITU-T. Recommendation Y.1540 Internet protocol aspects – Quality of service and network performance, 2011.
2. ITU-T. Recommendation Y.1541 Network Performance Objectives for IP-Based Services, 2011.
3. ITU-T. Y.1541: Network performance objectives for IP-based services.
4. John F. Buford, Heather Yu, Eng Lua, P2P Networking and Applications, The Morgan Kaufmann Series in Networking, 2009.
5. Luc De Ghein, MPLS Fundamentals, Cisco Press, 2006.
6. Thomas D. Nadeau, Ken Gray, SDN: Software Defined Networks, O’Reilly Media, 2013.
7. Вешегна Ш., Качество облуживания в IP-сетях, Cisco Press, 2003, 356 с.; [Veshegna Sh., Kachestvo obslujivaniya v IP-setyah, Cisco Press, 2003, 356 pp., (in Russian).]
8. Blei D. M., Ng A. Y., Jordan M. I., “Latent Dirichlet Allocation”, Journal of Machine Learning Research, 3 (2002), 993–1022.
9. Daud A, Li J. ,Zhou L., Muhammad F., “Knowledge discovery through directed probabilistic topic models”, Frontiers of Computer Science in China, 4:2 (2010), 280–301.
10. Gelman A., Carlin J. B., Stern H. S., Rubin D. B., Bayesian Data Analysis, Chapman and Hall/CRC, 2013.
11. Vapnik V., Statistical Learning Theory, Wiley, 1998.
12. Ferguson T. S., “A bayesian analysis of some nonparametric problems”, The Annals of Statistics, 1:2 (1973), 209–230.
13. Kintsch W., Handbook of Latent Semantic Analysis, Erlbaum, Hillsdale, NJ, 2007.
14. Knorr E. M., Ng R. T., “Algorithms for Mining Distance-Based Outliers in Large
15. Datasets”, Proceedings of the 24th International Conference on Very Large Data Bases, 1 (1998), 392–403.
16. Knorr E. M., Ng R. T., “Finding Intensional Knowledge of Distance-based Outliers”, Proceedings of the 25th International Conference on Very Large Data Bases, 1 (1999), 211–222.
17. Minka T., Lafferty J., “Expectation-propagation for the generative aspect model”, Proceedings of the 18th Conference on Uncertainty in Artificial Intelligence, 2002.
18. Saurabh Ganeriwal, Laura K. Balzano, Mani B., “Reputation-based Framework for High Integrity Sensor Networks”, ACM Transactions on Sensor Networks, 5 (2007).
19. Paramasivan B. A, Prakash M. J, Kaliappan M., “Development of a secure routing protocol using game theory model in mobile ad hoc networks”, Journal of Communications and Networks, 1:15 (2015), 75–83.
20. Samsudin N. A. a, Bradley A. P. b, “Extended na?ve bayes for group based classification Advances in Intelligent Systems and Computing”, 1st International Conference on Soft Computing and Data Mining, 287 (2014), 497–506.
21. Jolliffe I. T., Principal components analysis, Springer-Verlag, New York, 1986.
22. Shipman C. M., Hopkinson K. M., Lopez J., “Con-resistant trust for improved reliability in a smart-grid special protection system”, IEEE Transactions on Power Delivery, 13:1 (2015), 455–462
Review
For citations:
Noskov A.N., Manov I.A. Development of an Adaptive Routing Mechanism in Software-Defined Networks. Modeling and Analysis of Information Systems. 2015;22(4):521-532. (In Russ.) https://doi.org/10.18255/1818-1015-2015-4-521-532