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Boundary Observer for Congested Freeway Traffic State Estimation via Aw-Rascle-Zhang model

机译:AW-Rascle-Zhang模型拥挤高速公路交通状态估计的边界观察

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This paper develops boundary observer for estimation of congested freeway traffic states based on Aw-Rascle-Zhang(ARZ) partial differential equations (PDE) model. Traffic state estimation refers to acquisition of traffic state information from partially observed traffic data. This problem is relevant for freeway due to its limited accessibility to real-time traffic information. We propose a boundary observer design so that estimates of aggregated traffic states in a freeway segment are obtained simply from boundary measurement of flow and velocity. The macroscopic traffic dynamics is represented by the ARZ model, consisting of 2 × 2 coupled nonlinear hyperbolic PDEs for traffic density and velocity. Analysis of the linearized ARZ model leads to the study of a hetero-directional hyperbolic PDE model for congested traffic regime. Using spatial transformation and PDE backstepping method, we construct a boundary observer with a copy of the nonlinear plant and output injection of boundary measurement errors. The output injection gains are designed for the error system of the linearized ARZ model so that the exponential stability of error system in the L2norm and finite-time convergence to zero are guaranteed. Simulations are conducted to validate the boundary observer design for nonlinear ARZ model without knowledge of initial conditions.
机译:本文发展了基于AW-Rascle-Zhang(ARZ)部分微分方程(PDE)模型的拥挤高速公路交通状态的边界观察者。交通状态估计是指从部分观察到的交通数据获取交通状态信息。由于其对实时交通信息的可访问性有限,此问题与高速公路相关。我们提出了一个边界观察者设计,使得仅从流量和速度的边界测量获得高速公路段中的聚合交通状态的估计。宏观交通动态由ARZ模型表示,由2×2耦合非线性双曲线PDE组成,用于交通密度和速度。线性化ARZ模型的分析导致了拥挤交通制度的异定双曲线PDE模型的研究。使用空间转换和PDE BackStepping方法,我们用非线性工厂的副本构造边界观察者,输出边界测量误差。输出喷射增益专为线性化ARZ模型的误差系统而设计,因此保证了L2NORM和有限时间收敛中的误差系统的指数稳定性。进行仿真以验证非线性ARZ模型的边界观测器设计,而无需了解初始条件。

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