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Bayesian network for red-light-running prediction at signalized intersections

机译:贝叶斯网络用于信号交叉口的红灯预测

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摘要

Red-light-running (RLR) is an important reason for the large number of intersection-related fatalities, injuries, and other losses. The accurate RLR prediction can effectively reduce crashes caused by RLR behavior. The RLR prediction is usually composed of two parts: the vehicle's stop-or-go behavior and the arrival time when the vehicle reaches the stop line. Previous stop-or-go prediction models are usually based on embedded traffic sensors using machine learning algorithms. While based on the continuous trajectories collected by radar sensors, RLR prediction can be conducted more effectively. In this paper, a probabilistic stop-or-go prediction model based on the Bayesian network (BN) is proposed for RLR prediction. We extend the deterministic output into the probabilistic output, which provides decision-makers with greater autonomy. The causality of BN improves the interpretability of the prediction model. The BN model is calibrated and tested by the continuous trajectories data measured by radar sensors installed at a signalized intersection. We not only consider the movement measurements of individual vehicles (e.g., speed and acceleration), but also take into account the car-following behavior. As a comparison, different machine learning models and the model based on the inductive loop detection (ILD) are adopted. The results show that the proposed BN model has a high prediction accuracy and performs better in the feature interpretation. This paper provides a new way for probabilistic RLR prediction based on continuous trajectories, which will significantly improve traffic safety of signalized intersections.
机译:红灯行驶(RLR)是造成大量与路口相关的死亡,伤害和其他损失的重要原因。准确的RLR预测可以有效减少RLR行为引起的崩溃。 RLR预测通常由两部分组成:车辆的停驶状态和车辆到达停靠线时的到达时间。先前的走走停停预测模型通常基于使用机器学习算法的嵌入式交通传感器。基于雷达传感器收集的连续轨迹,可以更有效地进行RLR预测。本文提出了一种基于贝叶斯网络(BN)的概率停停式预测模型进行RLR预测。我们将确定性输出扩展为概率输出,这为决策者提供了更大的自主权。 BN的因果关系提高了预测模型的可解释性。 BN模型是通过安装在信号交叉口的雷达传感器测得的连续轨迹数据进行校准和测试的。我们不仅要考虑各个车辆的运动测量值(例如速度和加速度),还要考虑到跟车行为。作为比较,采用了不同的机器学习模型和基于感应环路检测(ILD)的模型。结果表明,所提出的BN模型具有较高的预测精度,并且在特征解释方面表现更好。本文为基于连续轨迹的概率RLR预测提供了一种新方法,它将大大提高信号交叉口的交通安全性。

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