Incident indicators for freeway traffic flow models

IF 12.5 Q1 TRANSPORTATION
Azita Dabiri , Balázs Kulcsár
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引用次数: 7

Abstract

Developed in this paper is a traffic flow model parametrised to describe abnormal traffic behaviour. In large traffic networks, the immediate detection and categorisation of traffic incidents/accidents is of capital importance to avoid breakdowns, further accidents. First, this claims for traffic flow models capable to capture abnormal traffic condition like accidents. Second, by means of proper real-time estimation technique, observing accident related parameters, one may even categorize the severity of accidents. Hence, in this paper, we suggest to modify the nominal Aw-Rascle (AR) traffic model by a proper incident related parametrisation. The proposed Incident Traffic Flow (ITF) model is defined by introducing the incident parameters modifying the anticipation and the dynamic speed relaxation terms in the speed equation of the AR model. These modifications are proven to have physical meaning. Furthermore, the characteristic properties of the ITF model is discussed in the paper. A multi stage numerical scheme is suggested to discretise in space and time the resulting non-homogeneous system of PDEs. The resulting systems of ODE is then combined with receding horizon estimation methods to reconstruct the incident parameters. Finally, the viability of the suggested incident parametrisation is validated in a simulation environment.

高速公路交通流模型的事故指示器
本文提出了一种用于描述异常交通行为的参数化交通流模型。在大型交通网络中,即时发现和分类交通事故对避免故障和进一步事故至关重要。首先,这要求交通流模型能够捕捉异常交通状况,如事故。其次,通过适当的实时估计技术,观察事故相关参数,甚至可以对事故的严重程度进行分类。因此,在本文中,我们建议通过适当的事件相关参数化来修改标称的Aw-Rascle (AR)交通模型。本文提出的事件交通流(ITF)模型是通过在AR模型的速度方程中引入事件参数,修改预期项和动态速度松弛项来定义的。这些修改已被证明具有物理意义。此外,本文还讨论了ITF模型的特征性质。提出了一种多阶段数值格式,对得到的非齐次偏微分方程系统进行空间和时间离散。然后将得到的ODE系统与后退视界估计方法相结合来重建入射参数。最后,在仿真环境中验证了所建议的事件参数化的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
15.20
自引率
0.00%
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