Igene Morris, Luo Qiyang, Jimee Keshav, Soltanirad Mohammad, Bataineh Tamer, Liu Hongchao
Department of Civil, Environmental and Construction Engineering, Texas Tech University, Lubbock, TX 79409, USA.
Sensors (Basel). 2024 Jul 6;24(13):4393. doi: 10.3390/s24134393.
Studies have shown that vehicle trajectory data are effective for calibrating microsimulation models. Light Detection and Ranging (LiDAR) technology offers high-resolution 3D data, allowing for detailed mapping of the surrounding environment, including road geometry, roadside infrastructures, and moving objects such as vehicles, cyclists, and pedestrians. Unlike other traditional methods of trajectory data collection, LiDAR's high-speed data processing, fine angular resolution, high measurement accuracy, and high performance in adverse weather and low-light conditions make it well suited for applications requiring real-time response, such as autonomous vehicles. This research presents a comprehensive framework for integrating LiDAR sensor data into simulation models and their accurate calibration strategies for proactive safety analysis. Vehicle trajectory data were extracted from LiDAR point clouds collected at six urban signalized intersections in Lubbock, Texas, in the USA. Each study intersection was modeled with PTV VISSIM and calibrated to replicate the observed field scenarios. The Directed Brute Force method was used to calibrate two car-following and two lane-change parameters of the Wiedemann 1999 model in VISSIM, resulting in an average accuracy of 92.7%. Rear-end conflicts extracted from the calibrated models combined with a ten-year historical crash dataset were fitted into a Negative Binomial (NB) model to estimate the model's parameters. In all the six intersections, rear-end conflict count is a statistically significant predictor (-value < 0.05) of observed rear-end crash frequency. The outcome of this study provides a framework for the combined use of LiDAR-based vehicle trajectory data, microsimulation, and surrogate safety assessment tools to transportation professionals. This integration allows for more accurate and proactive safety evaluations, which are essential for designing safer transportation systems, effective traffic control strategies, and predicting future congestion problems.
研究表明,车辆轨迹数据对于校准微观模拟模型是有效的。光探测与测距(LiDAR)技术提供高分辨率的三维数据,能够对周围环境进行详细测绘,包括道路几何形状、路边基础设施以及车辆、骑自行车者和行人等移动物体。与其他传统的轨迹数据收集方法不同,LiDAR的高速数据处理、精细的角分辨率、高测量精度以及在恶劣天气和低光照条件下的高性能,使其非常适合需要实时响应的应用,如自动驾驶车辆。本研究提出了一个将LiDAR传感器数据集成到模拟模型中的综合框架及其用于主动安全分析的精确校准策略。车辆轨迹数据是从美国得克萨斯州拉伯克市六个城市信号交叉口收集的LiDAR点云中提取的。每个研究交叉口都用PTV VISSIM进行建模,并进行校准以复制观察到的现场场景。使用定向蛮力法校准VISSIM中Wiedemann 1999模型的两个跟车参数和两个换道参数,平均准确率为92.7%。将从校准模型中提取的追尾冲突与十年历史碰撞数据集相结合,拟合到负二项式(NB)模型中以估计模型参数。在所有六个交叉口中,追尾冲突计数是观察到的追尾碰撞频率的一个具有统计学意义的预测因子(p值<0.05)。本研究结果为交通专业人员提供了一个结合使用基于LiDAR的车辆轨迹数据、微观模拟和替代安全评估工具的框架。这种整合能够进行更准确和主动的安全评估,这对于设计更安全的交通系统、有效的交通控制策略以及预测未来拥堵问题至关重要。