Keywords: neural networks, remodeling, capacity estimation, street and road network, mathematical modeling
Neural network modeling of street and road network capacity
UDC 04.942:625.7
DOI: 10.26102/2310-6018/2024.47.4.010
The problems of increasing the number of personal transportation vehicles in urban agglomeration as well as the number of cargos lead to applying Intelligent transportation systems based on Machine Learning techniques and Artificial Intelligence models to create strategies to reduce congestion and to prevent accidents. An important parameter of transportation system showing the effectiveness of using existing urban infrastructure is the capacity of the planned route. The paper is devoted to the creating model of urban route capacity based on the capacities of its elements, they are namely stretches and intersections. The approach to create such model is Mathematical Remodeling, where feed-forward neural network is chosen as a unified class to substitute models of different heterogeneous classes during modeling. It is proposed to use index of route capacity to form data sets for model fitting. The given numerical examples show how the proposed approach can be applied. The capacities of three planned routes are estimated and the best route is chosen, the efficiency criterion is traffic flow volume to capacity ratio. The prospective issue of the presented study is analyzing sensitivity of the created model to identify the parameters of route elements affecting the most to the capacity and to control them increasing the total efficiency of the system.
1. Schrab K., Neubauer M., Protzmann R., Radusch I., Manganiaris S., Lytrivis P. Modeling an ITS Management Solution for Mixed Highway Traffic With Eclipse MOSAIC. IEEE Transactions on Intelligent Transportation Systems. 2023;24(6):6575–6585. https://doi.org/10.1109/TITS.2022.3204174
2. National Academies of Sciences, Engineering, and Medicine. Highway Capacity Manual 7th Edition: A Guide for Multimodal Mobility Analysis. Washington, DC: The National Academies Press; 2022. 1286 p. https://doi.org/10.17226/26432
3. Abdel-Aal M.M.M., El-Maaty A.E.A., Abo Samra H.A. Factors Affecting Road Capacity Under non-Ideal Conditions in Egypt. Nova Journal of Engineering and Applied Sciences. 2018;7(1):1–13.
4. Feng X., Zhang Y., Qian S., Sun L. The Traffic Capacity Variation of Urban Road Network due to the Policy of Unblocking Community. Complexity. 2021;2021(1). https://doi.org/10.1155/2021/9292389
5. Geistefeldt J., Brilon W. A Comparative Assessment of Stochastic Capacity Estimation Methods. In: Transportation and Traffic Theory 2009: Golden Jubilee. Boston, MA: Springer; 2009. pp. 583–602. https://doi.org/10.1007/978-1-4419-0820-9_29
6. Sysoev A., Anikienko T., Blyumin S. Highway Capacity Estimation: International Regulation and Neurostructural Remodeling Approach. Periodica Polytechnica Transportation Engineering. 2020;48(2):180–188. https://doi.org/10.3311/PPtr.12880
7. Brilon W., Geistefeldt J., Zurlinden H. Implementing the concept of reliability for highway capacity analysis. Transportation Research Record. 2007;(2027):1–8. https://doi.org/10.3141/2027-01
8. Sysoev A., Voronin N. Approach to Sensitivity Analysis of Stochastic Freeway Capacity Model Based on Applying Analysis of Finite Fluctuations. In: Proceedings – 2019 1st International Conference on Control Systems, Mathematical Modelling, Automation and Energy Efficiency, SUMMA 2019, 20–22 November 2019, Lipetsk, Russia. IEEE; 2019. pp. 621–626. https://doi.org/10.1109/SUMMA48161.2019.8947493
9. Wu N., Giuliani S. Capacity and Delay Estimation at Signalized Intersections Under Unsaturated Flow Condition Based on Cycle Overflow Probability. Transportation Research Procedia. 2016;15:63–74. https://doi.org/10.1016/j.trpro.2016.06.006
10. Kovrigin A.A., Marshalkovich A.S. Assessment of Emissions from Moving Vehicles for Environmental Safety of Townspeople. Construction: Science and Education. 2016;(3). (In Russ.). URL: https://elibrary.ru/download/elibrary_27184770_47207620.pdf
11. Sedykh V.A., Belyaeva L.N., Klimov D.S. The condition of the atmospheric air in the city of Lipetsk. Problemy regional'noi ekologii. 2019;(3):77–80. (In Russ.). https://doi.org/10.24411/1728-323X-2019-13077
12. Pytaleva O.A., Fridrikhson O.V., Berdashkevich S.M. The study on environmental aspects in the organization of urban traffic flows (on the example of Magnitogorsk city). Modern Problems of Russian Transport Complex. 2016;6(1):58–64. (In Russ.). https://doi.org/10.18503/2222-9396-2016-6-1-58-64
13. Bakanov K.S. et al. Dorozhno-transportnaya avariinost' v Rossiiskoi Federatsii za 6 mesyatsev 2024 goda: informatsionno-analiticheskii obzor. Moscow: FKU "NTs BDD MVD Rossii"; 2024. 37 p. (In Russ.).
14. Korchagin V.A., Pogodaev A.K., Klyavin V.E., Suvorov V.A. Objective method for assesment of road safety level. Nauka i tekhnika v dorozhnoi otrasli. 2017;(1):10–12. (In Russ.).
15. Korchagin V.A., Pogodaev A.K., Klyavin V.E., Suvorov V.A. Comprehensive assessment method level road safety on the road network. Vestnik Moskovskogo avtomobil'no-dorozhnogo gosudarstvennogo tekhnicheskogo universiteta (MADI). 2016;(2):88–94. (In Russ.).
16. Saraev P.V., Blyumin S.L., Galkin A.V., Sysoev A.S. Neural Remodelling of Objects with Variable Structures. In: Proceedings of the Second International Scientific Conference "Intelligent Information Technologies for Industry" (IITI’17): Volume 1, 14–16 September 2017, Varna, Bulgaria. Cham: Springer; 2018. pp. 141–149. https://doi.org/10.1007/978-3-319-68321-8_15
17. Hou C.K.J., Behdinan K. Dimensionality Reduction in Surrogate Modeling: A Review of Combined Methods. Data Science and Engineering. 2022;7(4):402–427 https://doi.org/10.1007/s41019-022-00193-5
18. Stavropoulos P., Papacharalampopoulos A., Sabatakakis K., Mourtzis D. Metamodelling of Manufacturing Processes and Automation Workflows towards Designing and Operating Digital Twins. Applied Sciences. 2023;13(3). https://doi.org/10.3390/app13031945
19. Saraev P.V. Mathematical Remodeling of Technological Processes Using Factor Space Partitioning. In: 2018 International Russian Automation Conference, RusAutoCon, 09–16 September 2018, Sochi, Russia. IEEE; 2018. pp. 1–5. https://doi.org/10.1109/RUSAUTOCON.2018.8501713
20. Sysoev A. Sensitivity Analysis of Mathematical Models. Computation. 2023;11(8). https://doi.org/10.3390/computation11080159
21. Sysoev A., Galkin A., Khabibullina E. Hybrid Model of Controlling Traffic Flows Within Regional Intelligent Transportation System. In: Reliability and Statistics in Transportation and Communication: Selected Papers from the 20th International Conference on Reliability and Statistics in Transportation and Communication, RelStat2020, 14–17 October 2020, Riga, Latvia. Cham: Springer; 2021. pp. 528–537. https://doi.org/10.1007/978-3-030-68476-1_49
Keywords: neural networks, remodeling, capacity estimation, street and road network, mathematical modeling
For citation: Sysoev A.S., Pogodaev A.K., Klyavin V.E., Zhikhoreva S.V., Borovkova G.S. Neural network modeling of street and road network capacity. Modeling, Optimization and Information Technology. 2024;12(4). URL: https://moitvivt.ru/ru/journal/pdf?id=1706 DOI: 10.26102/2310-6018/2024.47.4.010 (In Russ).
Received 06.10.2024
Revised 20.10.2024
Accepted 28.10.2024