论文标题
使用动态互动网络对强制性和可支配车道进行建模
Modeling mandatory and discretionary lane changes using dynamic interaction networks
论文作者
论文摘要
对改变动态车道(LC)相互作用模式的定量理解对于改善自动驾驶汽车的决策是必不可少的,尤其是在与人类驱动的车辆混合交通中。本文开发了一个新的框架,结合了隐藏的马尔可夫模型和图形结构,以确定强制性车道变化(MLC)和酌处道路变化(DLC)之间动态相互作用网络的差异。开发了一个隐藏的马尔可夫模型,以将LC相互作用分解为同质段,并揭示这些段的时间特性。然后,有条件的相互信息用于量化相互作用强度,并使用图形结构来表征车辆之间的连通性。最后,确定了每个动态交互网络中的关键车辆。基于从交互数据集中提取的LC事件,提出的分析框架应用于与服务E和F级的拥挤流量下建模MLC和DLC。结果表明,LC过程中存在多个异构动态交互网络结构。 MLC和DLC的比较表明MLC更为复杂,而DLC更随机。 MLC的复杂性归因于相互作用网络结构的强烈相互作用和频繁的过渡,而随机DLC在交互网络中没有明显的演化规则和主要的车辆。这项研究中的发现对于理解LC交互中车辆之间的连通性结构很有用,以及为自动驾驶汽车和高级驾驶员辅助系统设计适当且指导的驾驶决策模型。
A quantitative understanding of dynamic lane-changing (LC) interaction patterns is indispensable for improving the decision-making of autonomous vehicles, especially in mixed traffic with human-driven vehicles. This paper develops a novel framework combining the hidden Markov model and graph structure to identify the difference in dynamic interaction networks between mandatory lane changes (MLC) and discretionary lane changes (DLC). A hidden Markov model is developed to decompose LC interactions into homogenous segments and reveal the temporal properties of these segments. Then, conditional mutual information is used to quantify the interaction intensity, and the graph structure is used to characterize the connectivity between vehicles. Finally, the critical vehicle in each dynamic interaction network is identified. Based on the LC events extracted from the INTERACTION dataset, the proposed analytical framework is applied to modeling MLC and DLC under congested traffic with levels of service E and F. The results show that there are multiple heterogeneous dynamic interaction network structures in an LC process. A comparison of MLC and DLC demonstrates that MLC are more complex, while DLC are more random. The complexity of MLC is attributed to the intense interaction and frequent transition of the interaction network structure, while the random DLC demonstrate no obvious evolution rules and dominant vehicles in interaction networks. The findings in this study are useful for understanding the connectivity structure between vehicles in LC interactions, and for designing appropriate and well-directed driving decision-making models for autonomous vehicles and advanced driver-assistance systems.