论文标题
机械系统启发的微观流量模型:建模,分析和验证
A Mechanical System Inspired Microscopic Traffic Model: Modeling, Analysis, and Validation
论文作者
论文摘要
在本文中,我们开发了一种机械系统,启发了微观交通模型,以表征一系列车辆之间的纵向相互作用动力学。特别是,我们将两辆车之间的基于质量 - 弹簧 - 戴式卡车的模型扩展到多车程的情况。该模型自然可以捕获驾驶员保持与前方车辆相同速度的趋势,同时保持(速度依赖)所需的间距。它还能够表征以下车辆对前面车辆的影响,该车辆通常在现有型号中被忽略。为考虑的多车动力学定义了一个新的字符串稳定性标准,并在系统参数和时间延迟上执行稳定性分析。开发了一种有效的在线参数识别算法,具有逆QR分解的顺序递归最小二乘(SRLS-IQR),以估计与驾驶相关的模型参数。这些实时估计参数可以用于高级纵向控制系统中,以便准确预测车辆轨迹,以提高安全性和燃油效率。提出的模型和参数识别算法在自然主义驾驶数据集NGSIM以及我们自己的连接的车辆驾驶数据上进行了验证。展示了有希望的表现。
In this paper, we develop a mechanical system inspired microscopic traffic model to characterize the longitudinal interaction dynamics among a chain of vehicles. In particular, we extend our prior work on mass-spring-damper-clutch based car-following model between two vehicles to multi-vehicle scenario. This model can naturally capture the driver's tendency to maintain the same speed as the vehicle ahead while keeping a (speed-dependent) desired spacing. It is also capable of characterizing the impact of the following vehicle on the preceding vehicle, which is generally neglected in existing models. A new string stability criterion is defined for the considered multi-vehicle dynamics, and stability analysis is performed on the system parameters and time delays. An efficient online parameter identification algorithm, sequential recursive least squares with inverse QR decomposition (SRLS-IQR), is developed to estimate the driving-related model parameters. These real-time estimated parameters can be employed in advanced longitudinal control systems to enable accurate prediction of vehicle trajectories for improved safety and fuel efficiency. The proposed model and the parameter identification algorithm are validated on NGSIM, a naturalistic driving dataset, as well as our own connected vehicle driving data. Promising performance is demonstrated.