350 rub
Journal Science Intensive Technologies №4 for 2023 г.
Article in number:
Adaptive control process for a network device buffer
Type of article: scientific article
DOI: https://doi.org/10.18127/j19998465-202304-05
UDC: 004.72
Authors:

M.A. Nazarenko1, D.V. Miskov2, D.A. Maliev3

1–3 MIREA – Russian Technological University (Moscow, Russia)
 

Abstract:

The article considers the possibility of regulating information traffic for various types of network equipment. A method is specified that is related to adaptive-based control for controllers. The article also indicates the method of regulating the process of adaptive control.

Statement of the problem: the operation of the controller on an adaptive basis is based on the application of the fuzzy logic method, which requires the use of a fuzzy inference system. Since in practice it is possible to observe a change in the signal of the transmitted information, the use of a fuzzy neural network will make it possible to determine incorrect control actions.

Purpose of work: Determining the possibility of corrective action in case of controller failures.

Result: The method of data transmission control using the method of information packets will reduce the number of failures and errors in the operation of the equipment.

Practical significance: The results and conclusions presented in this work can be used to further improve the controllers of the presented type.

Pages: 36-41
For citation

Nazarenko M.A., Miskov D.V., Maliev D.A. Adaptive control process for a network device buffer. Science Intensive Technologies. 2023. V. 24. № 4. P. 36−41. DOI: https://doi.org/10.18127/j19998465-202304-05 (in Russian)

References
  1. Chryostomou C., Pitsillides A., Hadjipollas G. Fuzzy logic congestion control in TCP/IP Best—Effort Networks. University of Cyprus, Monash University Melbourne, Australia, 2007. P. 2–5.
  2. Deart V., Maslennikov A., Gaidamaka Y. Ahysteretic model of queuing system with fuzzy logic active queue management. Proc. of 15th Conf. of Open Innovations Association FRUCT. 2014. P. 32–38. DOI: 10.1109/FRUCT.2014.6872419
  3. Dmitriev V.N., Sorokin A.A., Chan Kuok Toan, Pham Hak Chong. Improving the efficiency of traffic management in heterogeneous data transmission systems under uncertainty. Bulletin of the Astrakhan State Technical University. Management, computer technology and informatics. 2015. No 1. P. 67–77.
  4. Dear V.Yu., Kozhukhov I.S., Pilyugin A.V. Development of an experimental platform for the study of the quality of perception (QOE) of video streaming services. T-Comm: Telecommunications and transport. 2013. V. 7. No 7. S. 32–35.
  5. Deart V., Maslennikov A., Gaidamaka Y. Ahysteretic model of queuing system with fuzzy logic active queue management. Proc. of 15th Conf. of Open Innovations Association FRUCT. 2014. P. 32–38. DOI: 10.1109/FRUCT.2014.6872419
  6. Dmitriev V.N., Sorokin A.A., Chan Kuok Toan, Pham Hak Chong. Improving the efficiency of traffic management in heterogeneous data transmission systems under uncertainty. Bulletin of the Astrakhan State Technical University. Management, computer technology and informatics. 2015. No 1. P. 67–77.
  7. Xu C., Li F. A congestion control algorithm of fuzzy control in routers. 4th Internat. Conf. on Wireless Communications, Networking and Mobile Computing. 2008. P. 1–4. DOI: 10.1109/WiCom.2 008.1078
  8. Maliev D.A., Mis'kov D.V., Nazarenko M.A. Upravlenie riskami informacionnoj bezopasnosti na predpriyatii elektronnoj promyshlennosti. Nelinejnyj mir. 2022. T. 20. № 4. S. 51–59. DOI: https://doi.org/10.18127/j20700970-202204-05
Date of receipt: 19.01.2023
Approved after review: 09.02.2023
Accepted for publication: 28.04.2023