论文标题
在城市和高速公路场景中,基于深度学习的汽车速度预测
Deep Learning-Based Vehicle Speed Prediction for Ecological Adaptive Cruise Control in Urban and Highway Scenarios
论文作者
论文摘要
在典型的汽车跟随情况下,目标车辆速度波动可作为对宿主车辆的外部干扰,进而影响其能耗。使用模型预测控制(MPC)以节能方式控制主机车辆,并提高生态自适应巡航控制(EACC)策略的性能,以预测目标车辆的未来速度是必不可少的。为此,在这项工作中研究了使用长期任期内存(LSTM)(LSTM)和封闭式复发单元(GRU)的深度复发性神经网络速度预测。除此之外,还讨论了基于物理学的恒定速度(CV)和恒定加速度(CA)模型。训练的顺序时间序列数据(例如,通过车辆到车辆(V2V)通信获得的目标及其先前的车辆速度轨迹,道路速度限制,使用车辆到基础设施(V2I)通信收集的交通信号灯电流和将来的相位。评估了提出的速度预测模型,以实现目标车辆未来速度的长期预测(最多10 s)。此外,结果表明,基于LSTM的速度预测器优于其他模型,在实现未见测试数据集的预测准确性方面,从而展示了更好的概括能力。此外,还评估了配备EACC的宿主汽车在预测速度上的性能,并提供了其对不同预测范围的节能益处。
In a typical car-following scenario, target vehicle speed fluctuations act as an external disturbance to the host vehicle and in turn affect its energy consumption. To control a host vehicle in an energy-efficient manner using model predictive control (MPC), and moreover, enhance the performance of an ecological adaptive cruise control (EACC) strategy, forecasting the future velocities of a target vehicle is essential. For this purpose, a deep recurrent neural network-based vehicle speed prediction using long-short term memory (LSTM) and gated recurrent units (GRU) is studied in this work. Besides these, the physics-based constant velocity (CV) and constant acceleration (CA) models are discussed. The sequential time series data for training (e.g. speed trajectories of the target and its preceding vehicles obtained through vehicle-to-vehicle (V2V) communication, road speed limits, traffic light current and future phases collected using vehicle-to-infrastructure (V2I) communication) is gathered from both urban and highway networks created in the microscopic traffic simulator SUMO. The proposed speed prediction models are evaluated for long-term predictions (up to 10 s) of target vehicle future velocities. Moreover, the results revealed that the LSTM-based speed predictor outperformed other models in terms of achieving better prediction accuracy on unseen test datasets, and thereby showcasing better generalization ability. Furthermore, the performance of EACC-equipped host car on the predicted velocities is evaluated, and its energy-saving benefits for different prediction horizons are presented.