基于物理增强残差学习(PERL)的预测控制的交通振荡缓解

IF 12.5 Q1 TRANSPORTATION
Keke Long, Zhaohui Liang, Haotian Shi, Lei Shi, Sikai Chen, Xiaopeng Li
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引用次数: 0

摘要

实时车辆预测在自动驾驶技术中至关重要,因为它可以提前对驾驶员或车辆进行调整,使他们能够采取更平稳的驾驶动作,以避免潜在的碰撞。本研究提出了一种基于物理增强残差学习(PERL)的预测控制方法,以缓解网联和自动驾驶车辆(cav)和人类驾驶车辆(HDVs)混合交通环境中的交通振荡。所介绍的模型包括预测模型和CAV控制器。预测模型负责在前车行为的基础上预测前车未来的行为。该PERL模型将物理信息(即交通波属性)与从深度学习技术中提取的数据驱动特征相结合,从而精确预测前车的行为,特别是速度波动,从而使车辆/驾驶员有足够的时间对这些速度波动做出反应。对于自动驾驶汽车控制器,我们采用了模型预测控制(MPC)模型,该模型考虑了自动驾驶汽车及其后续车辆的动力学,提高了整个车队的安全性和舒适性。将所提出的模型通过车在环(vehicle-in- The -loop, ViL)应用于一辆自动驾驶汽车,并与实际驾驶数据和三种基准模型进行比较。实验结果验证了该方法在混合交通中,在存在不确定人为驱动车辆动力学和执行器滞后的情况下,能够有效地抑制交通振荡,提高自动驾驶汽车及其后续车辆的安全性和燃油效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic oscillation mitigation with physics-enhanced residual learning (PERL)-based predictive control
Real-time vehicle prediction is crucial in autonomous driving technology, as it allows adjustments to be made in advance to the driver or the vehicle, enabling them to take smoother driving actions to avoid potential collisions. This study proposes a physics-enhanced residual learning (PERL)-based predictive control method to mitigate traffic oscillation in the mixed traffic environment of connected and automated vehicles (CAVs) and human-driven vehicles (HDVs). The introduced model includes a prediction model and a CAV controller. The prediction model is responsible for forecasting the future behavior of the preceding vehicle on the basis of the behavior of preceding vehicles. This PERL model combines physical information (i.e., traffic wave properties) with data-driven features extracted from deep learning techniques, thereby precisely predicting the behavior of the preceding vehicle, especially speed fluctuations, to allow sufficient time for the vehicle/driver to respond to these speed fluctuations. For the CAV controller, we employ a model predictive control (MPC) model that considers the dynamics of the CAV and its following vehicles, improving safety and comfort for the entire platoon. The proposed model is applied to an autonomous driving vehicle through vehicle-in-the-loop (ViL) and compared with real driving data and three benchmark models. The experimental results validate the proposed method in terms of damping traffic oscillation and enhancing the safety and fuel efficiency of the CAV and the following vehicles in mixed traffic in the presence of uncertain human-driven vehicle dynamics and actuator lag.
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