论文标题
基于连接的车辆轨迹的信号交叉点上多相交通需求的联合估计
Joint Estimation of Multi-phase Traffic Demands at Signalized Intersections Based on Connected Vehicle Trajectories
论文作者
论文摘要
准确的交通需求估计对于信号交叉点的动态评估和优化至关重要。基于连接的车辆(CV)数据的现有研究仅针对单个阶段而设计,并且没有充分研究过度饱和交通状况的实时交通需求估计。因此,本研究提出了基于CV数据的信号交叉点上的循环多相多相交通需求估计方法,该数据考虑了既不饱和和过饱和的交通状况。首先,鉴于实时观察到的CV轨迹,得出了多个阶段的交通需求的联合加权可能性功能,该轨迹考虑了初始队列并通过将每个排队的CV视为独立观察,从而使初始队列放松了第一个排除的假设。然后,使用历史简历的样本量用于得出交通需求的事先分配。最终,为基于周期的多相交通需求估计而开发了基于最大后验(即JO-MAP方法)的联合估计方法。使用模拟和经验数据评估所提出的方法。仿真结果表明,所提出的方法可以在不同的渗透率,到达模式和交通需求下产生可靠的估计。联合估计的特征使我们的方法对CV的穿透率的要求降低,并且对先验分布的考虑可以显着提高估计准确性。经验结果表明,所提出的方法以12.73%的MAPE实现基于周期的交通需求估计,表现优于其他四种方法。
Accurate traffic demand estimation is critical for the dynamic evaluation and optimization of signalized intersections. Existing studies based on connected vehicle (CV) data are designed for a single phase only and have not sufficiently studied the real-time traffic demand estimation for oversaturated traffic conditions. Therefore, this study proposes a cycle-by-cycle multi-phase traffic demand joint estimation method at signalized intersections based on CV data that considers both undersaturated and oversaturated traffic conditions. First, a joint weighted likelihood function of traffic demands for multiple phases is derived given real-time observed CV trajectories, which considers the initial queue and relaxes the first-in-first-out assumption by treating each queued CV as an independent observation. Then, the sample size of the historical CVs is used to derive a joint prior distribution of traffic demands. Ultimately, a joint estimation method based on the maximum a posteriori (i.e., the JO-MAP method) is developed for cycle-based multi-phase traffic demand estimation. The proposed method is evaluated using both simulation and empirical data. Simulation results indicate that the proposed method can produce reliable estimates under different penetration rates, arrival patterns, and traffic demands. The feature of joint estimation makes our method less demanding for the penetration rate of CVs and the consideration of prior distribution can significantly improve the estimation accuracy. Empirical results show that the proposed method achieves accurate cycle-based traffic demand estimation with a MAPE of 12.73%, outperforming the other four methods.