NANASOC-PHMar 19, 2019

Macroscopic modeling of multi-lane motorways using a two-dimensional second-order model of traffic flow

arXiv:1710.0720930 citationsh-index: 38
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For traffic flow modelers, this work provides a macroscopic model that incorporates lane-changing behavior, addressing a known limitation of one-dimensional models.

This paper proposes a two-dimensional macroscopic traffic flow model that accounts for lane-changing behavior on multi-lane motorways, extending the one-dimensional Aw-Rascle-Zhang model. The model relaxes to the one-dimensional version when lane changes are not possible, and numerical experiments illustrate its features.

Lane changing is one of the most common maneuvers on motorways. Although, macroscopic traffic models are well known for their suitability to describe fast moving crowded traffic, most of these models are generally developed in one dimensional framework, henceforth lane changing behavior is somehow neglected. In this paper, we propose a macroscopic model, which accounts for lane-changing behavior on motorway, based on a two-dimensional extension of the Aw and Rascle [Aw and Rascle, SIAM J.Appl.Math., 2000] and Zhang [Zhang, Transport.Res.B-Meth., 2002] macroscopic model for traffic flow. Under conditions, when lane changing maneuvers are no longer possible, the model "relaxes" to the one-dimensional Aw-Rascle-Zhang model. Following the same approach as in [Aw, Klar, Materne and Rascle, SIAM J.Appl.Math., 2002], we derive the two-dimensional macroscopic model through scaling of time discretization of a microscopic follow-the-leader model with driving direction. We provide a detailed analysis of the space-time discretization of the proposed macroscopic as well as an approximation of the solution to the associated Riemann problem. Furthermore, we illustrate some features of the proposed model through some numerical experiments.

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