论文标题

驾驶风险替代及其在高速公路上的汽车跟踪方案中的应用

A Driving Risk Surrogate and Its Application in Car-Following Scenario at Expressway

论文作者

Wu, Renfei, Li, Linheng, Shi, Haotian, Rui, Yikang, Ngoduy, Dong, Ran, Bin

论文摘要

交通安全对于减少死亡和建立和谐的社会很重要。除了研究事故事件外,对驾驶风险的看法对于指导实施适当的驾驶对策也很重要。由于通信技术和计算能力的快速发展,可以实时实时进行风险评估。本文旨在解决现有风险评估方法中难以校准和阈值不一致的问题。它提出了一个基于潜在领域的风险评估模型,以量化车辆的驾驶风险。首先,考虑到车辆尺寸和速度,将虚拟能量作为属性。其次,根据潜在的现场理论提出了驾驶风险替代(DRS),以描述车辆的风险程度。通过建立子模型,包括交互式车辆风险替代,限制风险代理和速度风险代理来量化风险因素。为了统一风险阈值,实施指导的加速度来自风险场实力。最后,选择了中国南京的自然主义驾驶数据集,并筛选了3063对以下自然轨迹。基于此,通过改进的粒子优化算法校准了所提出的模型和其他用于比较的模型。模拟证明,在风险感知和响应,跟踪轨迹和速度估计中,提出的模型在风险感知和响应中的性能更好。此外,所提出的模型比现有的跟踪模型具有更好的汽车跟随能力。

Traffic safety is important in reducing death and building a harmonious society. In addition to studies of accident incidences, the perception of driving risk is significant in guiding the implementation of appropriate driving countermeasures. Risk assessment can be conducted in real-time for traffic safety due to the rapid development of communication technology and computing capabilities. This paper aims at the problems of difficult calibration and inconsistent thresholds in the existing risk assessment methods. It proposes a risk assessment model based on the potential field to quantify the driving risk of vehicles. Firstly, virtual energy is proposed as an attribute considering vehicle sizes and velocity. Secondly, the driving risk surrogate(DRS) is proposed based on potential field theory to describe the risk degree of vehicles. Risk factors are quantified by establishing submodels, including an interactive vehicle risk surrogate, a restrictions risk surrogate, and a speed risk surrogate. To unify the risk threshold, acceleration for implementation guidance is derived from the risk field strength. Finally, a naturalistic driving dataset in Nanjing, China, is selected, and 3063 pairs of following naturalistic trajectories are screened out. Based on that, the proposed model and other models use for comparisons are calibrated through the improved particle optimization algorithm. Simulations prove that the proposed model performs better than other algorithms in risk perception and response, car-following trajectory, and velocity estimation. In addition, the proposed model exhibits better car-following ability than existing car-following models.

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