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Estimation of Unobserved Vehicles in Congested Traffic from Probe Vehicle Samples

机译:根据探测车辆样本估算拥堵交通中未观察到的车辆

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Probe vehicle data is increasingly becoming widely available thanks to advancements in connected and automated vehicles (CAVs) and the prevalence of personal mobile devices such as smartphones. As a result, monitoring and estimating different network conditions such as speed and travel times based on this data have been proven to be greatly beneficial. However, there have been comparatively limited studies on extracting other critical traffic flow variables such as density and flow. These limited number of studies mostly develop algorithms to extract and exploit the somewhat regular patterns solely in fully stopped regions of the congested traffic. This paper proposes a more generalized microscopic approach that is applicable to a wider range of traffic conditions. A naïve Bayes model is implemented to estimate the number of unobserved vehicles in between a set of probe vehicles. The parameters needed for the naive Bayes include means and standard deviations for the probability density functions (pdfs) for the distance headways between vehicles. The proposed model is tested based on the trajectory data collected from US 101 and I-80 in California for the FHWA's NGSIM (next generation simulation) project. Under the various traffic conditions analyzed, the results show that the number of unobserved vehicles between two probes can be predicted with reasonably high accuracy for mixed traffic conditions.
机译:得益于联网和自动驾驶汽车(CAV)的发展以及诸如智能手机之类的个人移动设备的普及,探测汽车的数据正变得越来越广泛。结果,基于该数据监视和估计不同的网络状况(例如速度和旅行时间)已被证明是非常有益的。但是,关于提取其他关键交通流量变量(例如密度和流量)的研究相对有限。这些数量有限的研究大多开发仅在拥塞的交通完全停止的区域中提取和利用某些规则模式的算法。本文提出了一种更通用的微观方法,适用于更广泛的交通状况。实施朴素的贝叶斯模型来估计一组探查车辆之间未观察到的车辆的数量。朴素贝叶斯所需的参数包括车辆之间相距距离的概率密度函数(pdfs)的平均值和标准偏差。基于从FHWA的NGSIM(下一代模拟)项目中的美国101和I-80在加利福尼亚收集的轨迹数据,对提出的模型进行了测试。在所分析的各种交通状况下,结果表明,对于混合交通状况,两个探测器之间未观察到的车辆数量可以以较高的准确度进行预测。

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