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Real-time estimation of critical vehicle accumulation for maximum network throughput

机译:实时估算关键车辆的累积量,以实现最大的网络吞吐量

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Perimeter traffic flow control has recently been found to be a practical and efficient control scheme in mitigating traffic congestion in urban road networks. This control scheme aims at stabilising the accumulation of vehicles of the socalled network fundamental diagram near critical accumulation to achieve maximum network throughput. Nevertheless, the maximum throughput in urban road networks may be observed over a range of accumulation-values. In this work, an adaptive perimeter flow control strategy is proposed that allows the automatic monitoring of the critical accumulation to help maintain the accumulation near the optimal range of accumulation-values, while network's throughput is maximised. To this end, we design a Kalman filter-based estimation scheme that utilises real-time measurements of circulating flow and accumulation of vehicles to produce estimates of the currently prevailing critical accumulation. We use real data from an urban area with 70 sensors and show that the area exhibits a network fundamental diagram with low scatter. We demonstrate that the fundamental diagram is reproduced under different days but its shape and critical occupancy depend on the applied semi-real-time signal control and the distribution of congestion in the network. Results from the application of the estimation algorithm to the experimental data indicate good estimation accuracy and performance, and rapid tracking behaviour.
机译:最近发现,在减轻城市道路网络中的交通拥堵方面,周边交通流量控制是一种实用而有效的控制方案。该控制方案旨在将所谓的网络基本图的车辆的累积稳定在临界累积附近,以实现最大的网络吞吐量。但是,可以在一定的累积值范围内观察到城市道路网络中的最大吞吐量。在这项工作中,提出了一种自适应的外围流控制策略,该策略可以自动监视关键的累积量,以帮助将累积量保持在最佳的累积值范围内,同时使网络的吞吐量最大化。为此,我们设计了一种基于卡尔曼滤波器的估算方案,该方案利用车辆的循环流量和蓄积量的实时测量结果来估算当前流行的临界蓄积量。我们使用具有70个传感器的市区实际数据,结果表明该地区的网络基础图散布度较低。我们证明了基本图是在不同日期复制的,但是其形状和临界占用率取决于所应用的半实时信号控制和网络中拥塞的分布。将估计算法应用于实验数据的结果表明,估计精度和性能均良好,并且跟踪行为迅速。

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