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Unscented Particle Filter for Delayed Car-Following Models Estimation

机译:延迟车辆后模型估计的Unscented粒子滤波器

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Microscopic simulation models have become widely applied tools in traffic engineering. Nevertheless, parameter identification remains a difficult task. This is for one caused by the fact that parameters are generally not directly observable from common traffic data. The second difficulty stems from the fact mat real driving behavior is variable in time and space, etc. This paper puts forward a new approach to identify changing parameters of delayed car-following models, i.e. models that include a reaction time. The approach is based on the unscented particle filter approach, which is generalized to enable estimation of reaction times. The estimation of this true delay is achieved without linearization. Besides the methodological contribution, we show empirical evidence for changing driving behavior by applying the approach to real-life microscopic traffic data.
机译:显微镜仿真模型已成为交通工程中广泛应用的工具。尽管如此,参数识别仍然是一项艰巨的任务。这是因为该事实,即参数通常不直接观察到普通的交通数据。第二个难度源于MAT实际驾驶行为在时间和空间中的变化等。本文提出了一种新方法来识别延迟车次型号的改变参数,即包括反应时间的模型。该方法基于未编制的颗粒滤波方法,这是推广的,以实现对反应时间的估计。在没有线性化的情况下实现了这种真实延迟的估计。除了方法论贡献,我们还通过应用现实寿命微观交通数据来改变驾驶行为的经验证据。

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