Navigation Systems May Deteriorate Stability in Traffic Networks

Gianluca Bianchin;Fabio Pasqualetti
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Abstract

Advanced traffic navigation systems, which provide routing recommendations to drivers based on real-time congestion information, are nowadays widely adopted by roadway transportation users. Yet, the emerging effects on the traffic dynamics originating from the widespread adoption of these technologies have remained largely unexplored until now. In this paper, we propose a dynamic model where drivers imitate the path preferences of previous drivers, and we study the properties of its equilibrium points. Our model is a dynamic generalization of the classical traffic assignment framework , and extends it by accounting for dynamics both in the path decision process and in the network's traffic flows. We show that, when travelers learn shortest paths by imitating other travelers, the overall traffic system benefits from this mechanism and transfers the maximum admissible amount of traffic demand. On the other hand, we demonstrate that, when the travel delay functions are not sufficiently steep or the rates at which drivers imitate previous travelers are not adequately chosen, the trajectories of the traffic system may fail to converge to an equilibrium point, thus compromising asymptotic stability. Illustrative numerical simulations combined with empirical data from highway sensors illustrate our findings.
导航系统可能会降低交通网络的稳定性
先进的交通导航系统可根据实时拥堵信息向驾驶员提供路线建议,如今已被道路交通用户广泛采用。然而,迄今为止,这些工具的广泛应用对交通动态产生的新影响在很大程度上仍未得到探讨。在本文中,我们提出了一个动态模型,即驾驶员模仿先前驾驶员的路径偏好,并研究了其均衡点的特性。我们的模型是对经典交通分配框架的动态概括,并通过考虑路径决策过程和网络交通流的动态变化对其进行了扩展。我们的研究表明,当出行者通过模仿其他出行者学习最短路径时,整个交通系统会从这一机制中获益,并最大限度地转移可容许的交通需求量。另一方面,我们也证明了当出行延迟函数不够陡峭或驾驶者模仿前人的比率选择不当时,交通系统的轨迹可能无法收敛到均衡点,从而失去渐近稳定性。结合高速公路传感器的经验数据进行的数值模拟说明了我们的发现。
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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