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Road traffic flow model investigation by using discrete traffic flow method

Abstract

The traffic flows are influenced by various factors. In order to determine the characteristics of traffic flows in response to changing conditions, comprehensive research that is based on the best possible methods for simulating different street situations is necessary. The article determines the influence on transport flows due to changed conditions at the end of the simulated street. It presents the dynamic of the main parameters of the traffic flow (velocity, flow and density) depending on the time of changing traffic signals and the changed traffic flow density at the last simulated street point. The results are based on a discrete, mathematical model of traffic flows. The conditions determined by theoretical investigations determine the negative changes in the dynamics of traffic flows on a simulated street.


Article in Lithuanian.


Kelių transporto srautų modelio tyrimas, taikant diskretinį transporto srautų metodą


Santrauka


Transporto priemonių srautams turi įtakos įvairūs veiksniai. Norint nustatyti transporto srautų savybes priklausomai nuo pakitusių sąlygų reikalingi išsamūs tyrimai, grindžiami kuo tikslesniais metodais imituojant įvairių situacijų gatvėse modelius. Straipsnyje nustatoma įtaka transporto srautams dėl pakitusių sąlygų modeliuojamos gatvės pabaigoje. Pateikiama transporto srautų pagrindinių parametrų (greičio, eismo intensyvumo ir koncentracijos) dinamika priklausomai nuo šviesoforų signalų perjungimo laiko ir pakitusios transporto srauto koncentracijos paskutiniame modeliuojamos gatvės taške. Rezultatams gauti taikomas diskretinis transporto srautų matematinis modelis. Teoriniais tyrimais nustatytos sąlygos, lemiančios neigiamus pokyčius transporto srautų dinamikai modeliuojamame kelyje.


Reikšminiai žodžiai: greitis, koncentracija, eismo intensyvumas, diskretinis modelis, transporto srautai, šviesoforas.

Keyword : velocity, density, flow, discrete model, traffic flow, traffic light

How to Cite
Danilevičius, A., & Bogdevičius, M. (2018). Road traffic flow model investigation by using discrete traffic flow method. Mokslas – Lietuvos Ateitis / Science – Future of Lithuania, 10. https://doi.org/10.3846/mla.2018.6051
Published in Issue
Dec 21, 2018
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