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State estimation in urban traffic networks: A two-layer approach

机译:城市交通网络中的国家估计:双层方法

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摘要

Modern traffic control and management systems in urban networks require real-time estimation of the traffic states. In this paper, a novel approach for modeling traffic flow in urban networks that is especially suitable for state estimation is proposed. The complexity of the urban traffic model is reduced by assuming availability of connected vehicle data. We first investigate the observability issue in urban traffic networks using a graphical approach. Then, the proposed model for the evolution of the traffic flow in urban traffic networks is developed and used in two layers, i.e., link layer and network layer, to estimate, in high-resolution (second-by-second), the traffic states in the whole network. Traffic states in the link layer include queue tail location and the number of vehicles in the queue, while in the network layer, estimation of the total number of vehicles per link and turning rates at the intersections is carried out. In a first step, it is shown that the estimation approach only requires the detectors at the borders of the network. We further demonstrate that in the proposed scheme, one may reduce or drop the need for spot detectors for the price of reduced, but still reasonable estimation accuracy. The validation of the approach has been undertaken by comparing the produced estimates with realistic micro-simulation results as ground truth, and the achieved simulation results are promising.
机译:城市网络中的现代交通管制和管理系统需要实时估计交通态。在本文中,提出了一种提出了一种建立了尤其适合于状态估计的城市网络中的交通流量的新方法。通过假设连接的车辆数据的可用性,降低了城市交通模型的复杂性。我们首先使用图形方法调查城市交通网络中的可观察性问题。然后,在两个层数,即链路层和网络层中开发并使用了城市交通网络中交通流量演进模型,以在高分辨率(二秒)中,交通状态在整个网络中。链路层中的交通状态包括队列尾部位置和队列中的车辆的数量,而在网络层中,执行每个链路的总车辆数量和交叉点处的转换率的估计。在第一步中,示出估计方法仅需要在网络的边界处的检测器。我们进一步证明,在拟议的方案中,可以减少或降低点探测器的需求,以降低价格,但仍然合理的估计准确性。通过将产生的估计与现实的微型模拟结果进行比较作为地面真理的验证,已经进行了对方法的验证,并且实现了仿真结果是有前途的。

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