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Estimation of Traffic Stream Density Using Connected Vehicle Data: Linear and Nonlinear Filtering Approaches

机译:使用连接的车辆数据估计交通流量密度:线性和非线性滤波方法

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摘要

The paper presents a nonlinear filtering approach to estimate the traffic stream density on signalized approaches based solely on connected vehicle (CV) data. Specifically, a particle filter (PF) is developed to produce reliable traffic density estimates using CV travel-time measurements. Traffic flow continuity is used to derive the state equation, whereas the measurement equation is derived from the hydrodynamic traffic flow relationship. Subsequently, the PF filtering approach is compared to linear estimation approaches; namely, a Kalman filter (KF) and an adaptive KF (AKF). Simulated data are used to evaluate the performance of the three estimation techniques on a signalized approach experiencing oversaturated conditions. Results demonstrate that the three techniques produce accurate estimates—with the KF, surprisingly, being the most accurate of the three techniques. A sensitivity of the estimation techniques to various factors including the CV level of market penetration, the initial conditions, and the number of particles in the PF is also presented. As expected, the study demonstrates that the accuracy of the PF estimation increases as the number of particles increases. Furthermore, the accuracy of the density estimate increases as the level of CV market penetration increases. The results indicate that the KF is least sensitive to the initial vehicle count estimate, while the PF is most sensitive to the initial condition. In conclusion, the study demonstrates that a simple linear estimation approach is best suited for the proposed application.
机译:本文提出了一种非线性滤波方法,以估计仅基于连接的车辆(CV)数据的信号化方法的业务流密度。具体地,开发了一种粒子滤波器(PF)以使用CV行驶时间测量产生可靠的业务密度估计。交通流量连续性用于得出状态等式,而测量方程源自流体动力学交通关系。随后,将PF过滤方法与线性估计方法进行比较;即,卡尔曼滤波器(KF)和Adaptive Kf(AKF)。模拟数据用于评估三种估计技术对经历过饱和条件的信号化方法的性能。结果表明,三种技术产生准确的估计 - 与KF令人惊讶的是,这是三种技术的最准确。还提出了估计技术对包括CV水平的各种因素,初始条件和PF中颗粒数的各种因素的敏感性。如预期的那样,该研究表明,随着颗粒的数量增加,PF估计的准确性增加。此外,随着CV市场渗透的水平增加,密度估计的准确性增加。结果表明,KF对初始车辆计数估计的敏感性最小,而PF对初始条件最敏感。总之,该研究表明,简单的线性估计方法最适合提出的应用。

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