Received 12.09.2023, Revised 26.10.2023, Accepted 28.11.2023

Optimization passenger transport on basic organizations of uniform suburban passenger flow

Nataliia Chernetskaya-Beletskaya, Ihor Baranov, Mariia Miroshnykova, Svitlana Berezhna

The purpose article is improveefficiency of suburban passenger transportation based on organization of suburban passenger traffic. It was established that suburban passenger flow urban agglomerations consistsof following aggregated groups (segments): workers with variable work schedules, office workers, students, other passengers, while the total volume of passenger flow and the value individual components its segments are unstable and characterized by spatial and temporal unevenness. 
The task organization of passenger traffic is find a compromise between the needs passengers and possibilities of transport. The compromise is achieved due fact by obtaining formal optimum each time, with help of variable weighting factors, it is possible display priorities passenger flows from different stations and sections. The task optimizing functioning of passenger transport system ofurban agglomeration based on organization passenger flow is minimize total costs transportation and waiting. The optimization criterion is determined based on minimization costs mastering passenger flow in full, as well as waiting by passengers at departure station and delay at destination station. 
The article formulates problem of organizing suburban passenger flows in urban agglomerations reduce static reserves of suburban passenger complex at expense dynamic ones. The optimization apparatus based on dynamic transport problem was chosen and substantiated. The possibilities using method of dynamic coordination solve transport problems of urban agglomerations are analyzed and advantages are shown. The technology using optimization apparatus is proposed, which includes directed iterative process, which allows reduce the number of experiments for choosing among optimal options, most client-oriented compromise option. The method optimal organization of homogeneous suburban passenger flow based on method dynamic coordination has been developed. It was established use directed iterative process allows significantly reduce number of experiments in order achieve consensus betweeninterests passengers and efficiency of transport system

 

passenger transportation, passenger flow, passenger transport system, cost minimization, iteration process, urban agglomerations, transport problem, mathematical model
183-189
Chernetskaya-Beletskaya, N., Baranov, I., Miroshnykova, M., & Berezhna, S. (2023). Optimization passenger transport on basic organizations of uniform suburban passenger flow. Journal of Mechanical Engineering and Transport, 9(2), 183-189. https://doi.org/10.31649/2413-4503-2023-18-2-183-189

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