A METHOD FOR PREDICTING THE STATE OF A TRAFFIC FLOW WHEN MANAGING ON A NETWORK

  • Rajabmurod Karimov National university of Uzbekistan
Keywords: effective management, optimal strategy, traffic flow, neuro-fuzzy system, management system, fuzzy control rules

Abstract

Effective management of traffic flows on the network is carried out through a traffic flow management system, which is a complex of integrated tools for solving all types of transport problems based on high technologies, methods for modeling transport processes, software, and organizing information flows in real time. Efficiency is ensured by the adequate response of the system, system intelligence, to changes in traffic characteristics.

References

1. Garg T., Kaur G. A systematic review on intelligent transport systems //Journal of Computational and Cognitive Engineering. – 2023. – Т. 2. – №. 3. – С. 175-188.
2. Degrande T. et al. Deployment of Cooperative Intelligent Transport System infrastructure along highways: A bottom-up societal benefit analysis for Flanders //Transport policy. – 2023. – Т. 134. – С. 94-105.
3. Mangla C., Rani S., Herencsar N. A misbehavior detection framework for cooperative intelligent transport systems //ISA transactions. – 2023. – Т. 132. – С. 52-60.
4. Mangla C., Rani S., Herencsar N. A misbehavior detection framework for cooperative intelligent transport systems //ISA transactions. – 2023. – Т. 132. – С. 52-60.
5. Weibull K., Lidestam B., Prytz E. Potential of cooperative intelligent transport system services to mitigate risk factors associated with emergency vehicle accidents //Transportation research record. – 2023. – Т. 2677. – №. 3. – С. 999-1015.
6. Panigrahy S. K., Emany H. A survey and tutorial on network optimization for intelligent transport system using the internet of vehicles //Sensors. – 2023. – Т. 23. – №. 1. – С. 555.
7. Tran C. N. N. et al. Factors affecting intelligent transport systems towards a smart city: A critical review //International Journal of Construction Management. – 2023. – Т. 23. – №. 12. – С. 1982-1998.
8. Moulahi T. et al. Privacy‐preserving federated learning cyber‐threat detection for intelligent transport systems with blockchain‐based security //Expert Systems. – 2023. – Т. 40. – №. 5. – С. e13103.
9. Tirumalasetti R., Singh S. K. Automatic Dynamic User Allocation with opportunistic routing over vehicles network for Intelligent Transport System //Sustainable Energy Technologies and Assessments. – 2023. – Т. 57. – С. 103195.
10. Jiya E. A., Olanrewaju O. M., Echobu F. O. Edge Computing Paradigm for Affordable and Efficient Implementation of Intelligent Transport System in Nigeria.
11. Mikhalevich I. Transformation of transport under conditions of digital inequality of control systems //AIP Conference Proceedings. – AIP Publishing, 2023. – Т. 2476. – №. 1.
12. Alekseev V., Sidorenko V. Information security in intelligent transport control systems //AIP Conference Proceedings. – AIP Publishing, 2023. – Т. 2476. – №. 1.
13. Njoku J. N. et al. Prospects and challenges of Metaverse application in data‐driven intelligent transportation systems //IET Intelligent Transport Systems. – 2023. – Т. 17. – №. 1. – С. 1-21.
14. Rani P., Sharma R. Intelligent transportation system for internet of vehicles based vehicular networks for smart cities //Computers and Electrical Engineering. – 2023. – Т. 105. – С. 108543.
Published
2023-10-13
How to Cite
Karimov, R. (2023). A METHOD FOR PREDICTING THE STATE OF A TRAFFIC FLOW WHEN MANAGING ON A NETWORK. CENTRAL ASIAN JOURNAL OF MATHEMATICAL THEORY AND COMPUTER SCIENCES, 4(10), 12-16. Retrieved from https://cajmtcs.centralasianstudies.org/index.php/CAJMTCS/article/view/526
Section
Articles