Liu Zhi, Shu Wendi, Shen Guojiang, Kong Xiangjie
College of Computer Science and Technology, Zhejiang University of Technology, Hangzhou, Zhejiang, China.
PeerJ Comput Sci. 2021 Mar 25;7:e446. doi: 10.7717/peerj-cs.446. eCollection 2021.
Urban expressways provide an effective solution to traffic congestion, and ramp signal optimization can ensure the efficiency of expressway traffic. The existing methods are mainly based on the static spatial distance between mainline and ramp to achieve multi-ramp coordinated signal optimization, which lacks the consideration of the dynamic traffic flow and lead to the long time-lag, thus affecting the efficiency. This article develops a coordinated ramp signal optimization framework based on mainline traffic states. The main contribution was traffic flow-series flux-correlation analysis based on cross-correlation, and development of a novel multifactorial matric that combines flow-correlation to assign the excess demand for mainline traffic. Besides, we used the GRU neural network for traffic flow prediction to ensure real-time optimization. To obtain a more accurate correlation between ramps and congested sections, we used gray correlation analysis to determine the percentage of each factor. We used the Simulation of Urban Mobility simulation platform to evaluate the performance of the proposed method under different traffic demand conditions, and the experimental results show that the proposed method can reduce the density of mainline bottlenecks and improve the efficiency of mainline traffic.
城市快速路为交通拥堵提供了有效的解决方案,匝道信号优化可确保快速路交通的效率。现有方法主要基于主线与匝道之间的静态空间距离来实现多匝道协调信号优化,缺乏对动态交通流的考虑,导致时间滞后较长,从而影响效率。本文基于主线交通状态开发了一种协调匝道信号优化框架。主要贡献在于基于互相关的交通流-序列通量-相关性分析,以及开发一种结合流量相关性的新型多因素矩阵来分配主线交通的过剩需求。此外,我们使用门控循环单元(GRU)神经网络进行交通流预测以确保实时优化。为了获得匝道与拥堵路段之间更准确的相关性,我们使用灰色关联分析来确定各因素的占比。我们使用城市交通仿真(SUMO)平台评估所提方法在不同交通需求条件下的性能,实验结果表明所提方法可降低主线瓶颈密度并提高主线交通效率。