Vehicles on highway on-ramps are one of the leading contributors to congestion. In this paper, we propose a prediction framework that predicts the longitudinal trajectories and lane changes (LCs) of vehicles on highway on-ramps and tapers. Specifically, our framework adopts a combination of prediction models that inputs a 4 seconds duration of a trajectory to output a forecast of the longitudinal trajectories and LCs up to 15 seconds ahead. Training and Validation based on next generation simulation (NGSIM) data show that the prediction power of the developed model and its accuracy outperforms a traditional long-short term memory (LSTM) model. Ultimately, the work presented here can alleviate the congestion experienced on on-ramps, improve safety, and guide effective traffic control strategies.
翻译:在本文中,我们提出了一个预测框架,预测高速路灯和水龙头上的车辆的纵向轨迹和车道变化(LCs),具体地说,我们的框架采用多种预测模型,将一条轨迹的4秒钟时间输入输出长距离轨迹和LCs的预测,最长提前15秒。基于下一代模拟(NGSIM)数据的培训与验证表明,开发模型的预测力及其准确性超过了传统的长距离内存(LSTM)模式。 最终,这里介绍的工作可以缓解在长距离路轨和LCs上经历的拥挤,改善安全,指导有效的交通控制战略。