ADAPTIVE TRAFFIC LIGHT CONTROL ALGORITHM BASED ON THE DETECTION OF CARGO TRANSPORT
Abstract and keywords
Abstract (English):
The application of computer vision and traffic flow modeling with an adaptive traffic light control algorithm for prioritizing the movement of cargo transport is described. The study objective is to increase the efficiency of traffic management in the cities of the oil and gas complex by developing a traffic light control algorithm that gives priority to cargo vehicles. Python, Ultralytics framework (YOLO), OpenCV, and libraries for working with data (Pandas, NumPy) are used to solve computer vision problems. For micromodeling of traffic flows, PTV Vissim is used together with VisVap or LISA+ module for adaptive traffic light control. With the introduction of priority passage for cargo vehicles at a controlled intersection, the traffic parameters for the general traffic flow change slightly, while for cargo vehicles the changes are significant. With an increase in the traffic intensity of cargo vehicles, priority travel has a positive effect on the traffic parameters of the entire traffic flow. With the use of neural network technologies and the integration of data into technical means of traffic management, it is possible to increase the average speed of traffic flows.

Keywords:
organization, movement, modeling, flows, objects, computer vision
References

1. Titov IV, Batishchev II. Freight automobile transport in Russia: state and prospects of development. Transport of the Russian Federation. 2011;5(36):44-48.

2. Shamlichky YaI, Okhota AS, Mironenko SN. Comparison of the adaptive and rigid algorithms of traffic control based on a simulation model in AnyLogic. Software and Systems. 2018;31(2):403-408. DOI:https://doi.org/10.15827/0236-235x.122.403-408

3. Morozov V, Shepelev V, Kostyrchenko V. Modeling the operation of signal-controlled intersections with different lane occupancy. Mathematics. 2022;10:4829. DOIhttps://doi.org/10.3390/math10244829.

4. Zakharov DA, Pistsov AV. Analysis of the effectiveness of active priority methods for buses when passing through controlled intersections. Transport of the Urals. 2023;4(79):90-95. DOIhttps://doi.org/10.20291/1815-9400-2023-4-90-95.

5. Pistsov AV, Zakharov DA. Choosing the optimal method to provide public transportation priority. International Journal of Transport Development and Integration. 2022;6(3):298-312. DOI:.https://doi.org/10.2495/TDI-V6-N3-298-312

6. Fadina OS, Shepelev VD, Almetova ZV, Goryachev GN. Increasing the traffic capacity of signaled crossings based on computer vision synergy and adaptive speed control. Transport Engineering. 2025;1:28-39. DOI:https://doi.org/10.30987/2782-5957-2025-1-28-39

7. Chainikov D, Zakharov D, Kozin E, Pistsov A. Studying spatial unevenness of transport demand in cities using machine learning methods. Appl. Sci. 2024;14(8):3220. DOIhttps://doi.org/10.3390/app14083220

8. Chebykin IA. Automating road traffic monitoring using computer vision. World of Transport and Transportation Journal. 2020;18(6):74-87. DOI:https://doi.org/10.30932/1992-3252-2020-18-6-74-87

9. Yakimov MR, Arepyeva AA. Transport planning: features of modeling traffic flows in large Russian cities: monograph. Moscow: Logos; 2016.

10. Russian Government, Federal Law No. 443-fz "On the Organization of Traffic in the Russian Federation and on Amendments to Certain Legislative Acts of the Russian Federation". 2018 Jan 01.

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