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Theory of safety surrogates using vehicle trajectories in macroscopic and microscopic settings: Application to dynamic message signs controlled traffic at work zones

机译:在宏观和微观环境中使用车辆轨迹的安全替代理论:应用于动态消息标志控制工作区的交通

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This paper presents a new mathematical framework for obtaining quantitative safety measure using macroscopic as well as microscopic traffic data. The safety surrogate obtained from the macroscopic data is in terms of analysis performed on vehicle trajectories obtained from the macroscopic data. This method of obtaining safety measure can be used for many different types of applications. The safety surrogate for the traffic dynamics are developed in terms of a new concept of Negative Speed Differentials (NSD) that involve a convolution of vehicle speed function obtained from vehicle trajectories and then performing the integration of the square of the output for its negative values. The framework is applicable to microscopic traffic dynamics as well where we can use car following models for microscopic dynamics or the LWR model for macroscopic dynamics. This paper then presents the use of this new safety surrogate on the development of a feedback control law for controlling traffic in work zones using Dynamic Message Signs. A hybrid dynamics model is used to represent the switching dynamics due to changing DMS messages. A feedback control design for choosing those messages is presented as well as a simple simulation example to show its application.
机译:本文提出了一种新的数学框架,可使用宏观和微观交通数据来获得定量安全措施。从宏观数据获得的安全替代是根据对从宏观数据获得的车辆轨迹执行的分析。这种获得安全措施的方法可以用于许多不同类型的应用程序。根据新的负速度差(NSD)概念开发了用于交通动态的安全代理,该概念涉及对从车辆轨迹获得的车速函数进行卷积,然后对其负值进行输出平方的积分。该框架也适用于微观交通动态,我们可以将汽车跟随模型用于微观动态,将LWR模型用于宏观动态。然后,本文介绍了这种新的安全替代方法在开发反馈控制法则上的使用,该法则使用动态消息标志来控制工作区中的交通。混合动态模型用于表示由于DMS消息更改而引起的切换动态。给出了用于选择这些消息的反馈控制设计,并提供了一个简单的仿真示例来说明其应用。

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