An Analysis of Vehicular Traffic Flow Using Langevin Equation

Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way to express stochastic data is the Langevin equation. Langevin equation consists of two parts. The first part is known as the deterministic drift term, the other as the stochastic diffusion term. Langev...

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Main Authors: Çağlar Koşun, Hüseyin Murat Çelik, Serhan Özdemir
Format: Article
Language:English
Published: University of Zagreb, Faculty of Transport and Traffic Sciences 2015-08-01
Series:Promet (Zagreb)
Subjects:
Online Access:http://www.fpz.unizg.hr/traffic/index.php/PROMTT/article/view/1613
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spelling doaj-929fb77744574c9eb64932e5489425262020-11-24T21:00:20ZengUniversity of Zagreb, Faculty of Transport and Traffic SciencesPromet (Zagreb)0353-53201848-40692015-08-0127431732410.7307/ptt.v27i4.16131210An Analysis of Vehicular Traffic Flow Using Langevin EquationÇağlar Koşun0Hüseyin Murat Çelik1Serhan Özdemir2IZMIR INSTITUTE OF TECHNOLOGYISTANBUL TECHNICAL UNIVERSITYIZMIR INSTITUTE OF TECHNOLOGYTraffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way to express stochastic data is the Langevin equation. Langevin equation consists of two parts. The first part is known as the deterministic drift term, the other as the stochastic diffusion term. Langevin equation does not only help derive the deterministic and random terms of the selected portion of the city of Istanbul traffic empirically, but also sheds light on the underlying dynamics of the flow. Drift diagrams have shown that slow lane tends to get congested faster when vehicle speeds attain a value of 25 km/h, and it is 20 km/h for the fast lane. Three or four distinct regimes may be discriminated again from the drift diagrams; congested, intermediate, and free-flow regimes. At places, even the intermediate regime may be divided in two, often with readiness to congestion. This has revealed the fact that for the selected portion of the highway, there are two main states of flow, namely, congestion and free-flow, with an intermediate state where the noise-driven traffic flow forces the flow into either of the distinct regimes.http://www.fpz.unizg.hr/traffic/index.php/PROMTT/article/view/1613Langevin equationtraffic dynamicsBrownian motiontraffic regimestraffic flowstochastic forcesdriftdiffusion
collection DOAJ
language English
format Article
sources DOAJ
author Çağlar Koşun
Hüseyin Murat Çelik
Serhan Özdemir
spellingShingle Çağlar Koşun
Hüseyin Murat Çelik
Serhan Özdemir
An Analysis of Vehicular Traffic Flow Using Langevin Equation
Promet (Zagreb)
Langevin equation
traffic dynamics
Brownian motion
traffic regimes
traffic flow
stochastic forces
drift
diffusion
author_facet Çağlar Koşun
Hüseyin Murat Çelik
Serhan Özdemir
author_sort Çağlar Koşun
title An Analysis of Vehicular Traffic Flow Using Langevin Equation
title_short An Analysis of Vehicular Traffic Flow Using Langevin Equation
title_full An Analysis of Vehicular Traffic Flow Using Langevin Equation
title_fullStr An Analysis of Vehicular Traffic Flow Using Langevin Equation
title_full_unstemmed An Analysis of Vehicular Traffic Flow Using Langevin Equation
title_sort analysis of vehicular traffic flow using langevin equation
publisher University of Zagreb, Faculty of Transport and Traffic Sciences
series Promet (Zagreb)
issn 0353-5320
1848-4069
publishDate 2015-08-01
description Traffic flow data are stochastic in nature, and an abundance of literature exists thereof. One way to express stochastic data is the Langevin equation. Langevin equation consists of two parts. The first part is known as the deterministic drift term, the other as the stochastic diffusion term. Langevin equation does not only help derive the deterministic and random terms of the selected portion of the city of Istanbul traffic empirically, but also sheds light on the underlying dynamics of the flow. Drift diagrams have shown that slow lane tends to get congested faster when vehicle speeds attain a value of 25 km/h, and it is 20 km/h for the fast lane. Three or four distinct regimes may be discriminated again from the drift diagrams; congested, intermediate, and free-flow regimes. At places, even the intermediate regime may be divided in two, often with readiness to congestion. This has revealed the fact that for the selected portion of the highway, there are two main states of flow, namely, congestion and free-flow, with an intermediate state where the noise-driven traffic flow forces the flow into either of the distinct regimes.
topic Langevin equation
traffic dynamics
Brownian motion
traffic regimes
traffic flow
stochastic forces
drift
diffusion
url http://www.fpz.unizg.hr/traffic/index.php/PROMTT/article/view/1613
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