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A Stochastic Hybrid Structure for Predicting Disturbances in Mixed Automated and Human-Driven Vehicular Scenarios

机译:一种随机混合结构,用于预测混合自动化和人力驱动的车辆情景中的干扰

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In this work, we introduce a stochastic prediction method which can be utilized in applications such as cooperative adaptive cruise control (CACC) to predict interfering vehicles' movements. One of the main criteria in the design of automated vehicle systems is their robustness against the disturbances resulted from the non-homogeneity of the vehicular environment. The non-homogeneity is mainly due to the human-driven and automated/autonomous vehicles co-existence. It is therefore imperative for the automated applications to be designed with the capability of handling the uncertain behaviors of human-driven vehicles in a robust manner. This paper presents a method for vehicle movements time-series forecasting using a powerful non-parametric Bayesian inference method, namely Gaussian Processes. The proposed methodology is evaluated using realistic vehicle trajectory data from NGSIM dataset and is shown to provide more accurate results compared to baseline methods that use constant velocity coasting.
机译:在这项工作中,我们介绍了一种随机预测方法,其可用于诸如协同自适应巡航控制(CACC)的应用中,以预测干扰车辆运动。自动化车辆系统设计中的主要标准之一是抗扰动因车辆环境的非均匀性而导致的稳健性。非均匀性主要是由于人类驱动和自动/自主车辆共存。因此,自动化应用必须设计具有以稳健的方式处理人机车辆的不确定行为的能力。本文介绍了一种使用强大的非参数贝叶斯推理方法的车辆运动时间系列预测方法,即高斯过程。使用来自NGSIM数据集的现实车辆轨迹数据来评估所提出的方法,并显示与使用恒定速度滑行的基线方法相比提供更准确的结果。

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