Lane changes are complex driving behaviors and frequently involve safety-critical situations. This study aims to develop a lane-change-related evasive behavior model, which can facilitate the development of safety-aware traffic simulations and predictive collision avoidance systems. Large-scale connected vehicle data from the Safety Pilot Model Deployment (SPMD) program were used for this study. A new surrogate safety measure, two-dimensional time-to-collision (2D-TTC), was proposed to identify the safety-critical situations during lane changes. The validity of 2D-TTC was confirmed by showing a high correlation between the detected conflict risks and the archived crashes. A deep deterministic policy gradient (DDPG) algorithm, which could learn the sequential decision-making process over continuous action spaces, was used to model the evasive behaviors in the identified safety-critical situations. The results showed the superiority of the proposed model in replicating both the longitudinal and lateral evasive behaviors.
翻译:该研究旨在开发一个与换车道有关的避险行为模型,该模型可促进安全意识交通模拟和预测避免碰撞系统的发展。本研究使用了安全试点模式部署(SPMD)方案提供的大规模连通车辆数据。新的代用安全措施,即双维时间对碰撞(2D-TTC),以识别车道变化期间的安全危急情况。2D-TTC的有效性通过显示所发现的冲突风险与存档碰撞之间的高度关联得到证实。一个深度确定性政策梯度算法,可以学习连续行动空间的顺序决策程序,用于模拟所查明的安全危急情况下的规避行为。结果显示拟议模型在复制纵向和横向蒸发行为方面的优势。