Longitudinal control of Autonomous-rail Rapid Tram in platooning using Model Predictive Control

Xiwen Yuan, Q. Zhang, Sha Zhang, Ruipeng Huang, Xinrui Zhang, Hu Yunqin
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引用次数: 3

Abstract

Through the formation control, the virtual connection of two tram can be effectively relieved, which can effectively alleviate the passenger demand during peak passenger flow, flexibly decompose when the passenger flow is low, which can effectively deal with tidal passenger flow. This paper presents a method for longitudinal tram platooning control of the Autonomous-rail Rapid Tram (ART) based on cooperative adaptive cruise control(cooperation ACC). The following tram in the CACC formation will sense the position of the leading tram and adjust the speed to avoid collision. In order to realize wireless information transmission between different vehicles through V2V, and transfer information including position, speed, acceleration or road intersection status to assist the tram formation decision and planning. On the other hand, in order to improve control performance, it is important to design a closed-loop controller that takes into account vehicle dynamics. In this article, we try to solve this problem by using the Model Predictive Control (MPC) algorithm, which can explicitly deal with the constraints imposed on the actuator or the acceleration response. Finally, through hardware-in-loop simulation verification, we verified that the developed platooning control has a faster response speed and higher comfort even in traffic jam scenarios.
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基于模型预测控制的自主轨道快速电车队列纵向控制
通过队列控制,可以有效解除两路有轨电车的虚拟连接,可以有效缓解客流高峰时的乘客需求,在客流低潮时灵活分解,可以有效应对潮汐式客流。提出了一种基于协同自适应巡航控制(cooperative ACC)的自主轨道快速电车(ART)纵向有轨电车队列控制方法。在CACC队形中,后面的有轨电车会感应到前面有轨电车的位置,并调整速度以避免碰撞。通过V2V实现不同车辆之间的无线信息传输,传递位置、速度、加速度或交叉口状态等信息,辅助有轨电车的编组决策和规划。另一方面,为了提高控制性能,设计考虑车辆动力学的闭环控制器是很重要的。在本文中,我们尝试使用模型预测控制(MPC)算法来解决这个问题,该算法可以显式地处理施加在执行器或加速度响应上的约束。最后,通过硬件在环仿真验证,验证了所开发的队列控制在交通拥堵情况下具有更快的响应速度和更高的舒适性。
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