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Real-Time Traffic Prediction and Probing Strategy for Lagrangian Traffic Data

机译:拉格朗日交通数据的实时交通预测和探测策略

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摘要

The objective of this paper is to present a new analytical tool that predicts highway congestion in real time by utilizing a macroscopic traffic flow model, and to investigate a data collection strategy that is adaptable to the quality of traffic information. A stochastic Lagrangian traffic flow model is proposed to capture the transition into traffic jam and randomness in the traffic flow. To calibrate the model, vehicles in a traffic flow are divided into cells, and only the first and last vehicles in each cell are probed. Model parameters and traffic information are updated in real time by the unscented Kalman filter, and an advance warning is provided for stop-and-go traffic jam. Adaptive data collection is done by adjusting the probing cell size based on the variance of the prediction from the stochastic model. By validating the model with empirical highway traffic data, the proposed stochastic model shows a 20% improvement in predicting the one-step-ahead traffic state, comparing it to the result from the deterministic model. The 3-sec prediction of traffic status, which may be applied to compensate for the latency of data processing in real-time applications, can be obtained with a 15% error. The model parameter can be used to warn the drivers 6.76 sec before entering a traffic jam. The scenario with low penetration rate and longer sample time interval is also demonstrated with traffic data collected by smartphones. The results from adaptive probing suggest that it can efficiently use less data to provide higher prediction accuracy than using nonadaptive probing.
机译:本文的目的是提供一种新的分析工具,该工具可以利用宏观交通流模型实时预测高速公路拥堵,并研究一种适合交通信息质量的数据收集策略。提出了一种随机的拉格朗日交通流模型,以捕获向交通拥堵的过渡和交通流中的随机性。为了校准模型,将交通流中的车辆分为多个单元,并且仅探测每个单元中的第一个和最后一个车辆。模型参数和交通信息通过无味的Kalman过滤器实时更新,并为走走停停的交通提供提前警告。通过基于随机模型的预测方差来调整探测单元的大小,可以完成自适应数据收集。通过使用经验性公路交通数据验证该模型,所提出的随机模型与确定性模型的结果相比,在预测一步一步交通状态方面显示出了20%的改进。可以以15%的误差获得3秒的流量状态预测,该预测可用于补偿实时应用中数据处理的延迟。在进入交通拥堵之前,可以使用model参数警告驾驶员6.76秒。智能手机收集的流量数据也演示了渗透率低且采样时间间隔较长的情况。自适应探测的结果表明,与使用非自适应探测相比,它可以有效地使用较少的数据来提供更高的预测精度。

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