A Data-Driven Car-Following Model Based on the Random Forest

Huili Shi, Ting-Yen Wang, Fusheng Zhong, Hanqing Wang, Junyan Han, Xiaoyuan Wang
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引用次数: 4

Abstract

The car-following models are the research basis of traffic flow theory and microscopic traffic simulation. Among the previous work, the theory-driven models are dominant, while the data-driven ones are relatively rare. In recent years, the related technologies of Intelligent Transportation System (ITS) re- presented by the Vehicles to Everything (V2X) technology have been developing rapidly. Utilizing the related technologies of ITS, the large-scale vehicle microscopic trajectory data with high quality can be acquired, which provides the research foundation for modeling the car-following behavior based on the data-driven methods. According to this point, a data-driven car-following model based on the Random Forest (RF) method was constructed in this work, and the Next Generation Simulation (NGSIM) dataset was used to calibrate and train the constructed model. The Artificial Neural Network (ANN) model, GM model, and Full Velocity Difference (FVD) model are em- ployed to comparatively verify the proposed model. The research results suggest that the model proposed in this work can accurately describe the car- following behavior with better performance under multiple performance indicators.
基于随机森林的数据驱动汽车跟随模型
车辆跟随模型是交通流理论和微观交通仿真的研究基础。在以往的工作中,理论驱动的模型占主导地位,而数据驱动的模型相对较少。近年来,以车联网(V2X)技术为代表的智能交通系统(ITS)相关技术得到了迅速发展。利用智能交通系统的相关技术,可以获得高质量的大规模车辆微观轨迹数据,为基于数据驱动方法的车辆跟车行为建模提供了研究基础。基于此,本文构建了基于随机森林(Random Forest, RF)方法的数据驱动汽车跟随模型,并利用NGSIM数据集对模型进行标定和训练。利用人工神经网络(ANN)模型、GM模型和全速差(FVD)模型对该模型进行了对比验证。研究结果表明,本文提出的模型在多个性能指标下能够准确地描述汽车跟随行为,并具有较好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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