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Microscopic driving behavior modelling at highway entrances using Bayesian network

机译:贝叶斯网络在高速公路入口微观驾驶行为建模

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Entrances into highway represent critical sections, as entering vehicles are bound to merge with the existing traffic at a fixed junction point almost independently from the traffic conditions-in some sense a “constrained” cut-in manoeuver. Advanced driver-assistance systems (ADAS) need to perform correctly under these conditions as well, but could also be used to facilitate merging and reducing risks. In particular, vehicles on the main road could adapt their speeds-or even change lane-provided an estimate of the entering vehicle's time to merge is available, exactly as a human driver would do. This paper is concerned with providing such an estimate. To this end, we observe that the speed profile on the entering ramps is rather well predictable if the acceleration of the entering vehicles is described as a function of their actual distance from the junction point. Still, uncertainties remain and to cope with them, we use a stochastic prediction model based on Dynamic Bayesian Network. The result are probability distribution functions of the time to merge based on the observation of speed and distance of the entering vehicle once they become visible to the traffic on the main road. Experimental data are used to illustrate the model structure and the parameter determination. The model quality is then assessed by comparing statistics from simulations with the one recorded on road. The possible use of the model as a tool for traffic prediction algorithm embedded in ADAS and an extension to existing highway stochastic traffic models are shortly discussed at the end of the paper.
机译:进入公路的入口代表关键部分,因为进入车辆必将与现有交通的现有流量合并,几乎独立于交通状况 - 在某种意义上是一个“受约束”切割的操作。高级驾驶员援助系统(ADAS)也需要在这些条件下正确执行,但也可以用于促进合并和减少风险。特别是,主要道路上的车辆可以适应他们的速度 - 甚至改变车道 - 提供了对进入车辆的合并的估计,就像人类司机一样。本文涉及提供此类估算。为此,我们观察到,如果进入车辆的加速度被描述为与接合点的实际距离的函数描述,则进入坡道上的速度曲线是可预测的。仍然,不确定性仍然存在并应对它们,我们使用基于动态贝叶斯网络的随机预测模型。结果是基于对进入车辆的速度和距离的时间来合并时的概率分布函数,一旦它们对主要道路上的交通可见。实验数据用于说明模型结构和参数确定。然后通过将模拟的统计数据与在道路上记录的人进行比较来评估模型质量。在纸张结束时,很快就讨论了嵌入在ADA中的交通预测算法的工具作为用于交通预测算法的工具,并且在纸张的末尾讨论了现有公路随机流量模型的扩展。

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