CAV Traffic Control to Mitigate the Impact of Congestion from Bottlenecks: A Linear Quadratic Regulator Approach and Microsimulation Study

Suyash C. Vishnoi, Junyi Ji, MirSaleh Bahavarnia, Yuhang Zhang, A. Taha, C. Claudel, D. Work
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Abstract

This work investigates traffic control via controlled connected and automated vehicles (CAVs) using novel controllers derived from the linear-quadratic regulator (LQR) theory. CAV-platoons are modeled as moving bottlenecks impacting the surrounding traffic with their speeds as control inputs. An iterative controller algorithm based on the LQR theory is proposed along with a variant that allows for penalizing abrupt changes in platoon speeds. The controllers use the Lighthill-Whitham-Richards (LWR) model implemented using an extended cell transmission model (CTM) which considers the capacity drop phenomenon for a realistic representation of traffic in congestion. The impact of various parameters of the proposed controller on the control performance is analyzed. The effectiveness of the proposed traffic control algorithms is tested using a traffic control example and compared with existing proportional-integral (PI) and model predictive control (MPC) controllers from the literature. A case study using the TransModeler traffic microsimulation software is conducted to test the usability of the proposed controller as well as existing controllers in a realistic setting and derive qualitative insights. It is observed that the proposed controller works well in both settings to mitigate the impact of the jam caused by a fixed bottleneck. The computation time required by the controller is also small making it suitable for real-time control.
缓解瓶颈拥堵影响的 CAV 交通控制:线性二次调节器方法与微观模拟研究
本研究利用线性二次调节器(LQR)理论衍生的新型控制器,研究通过受控联网自动驾驶车辆(CAV)进行交通控制的问题。CAV 排队被模拟为移动瓶颈,以其速度作为控制输入,对周围交通产生影响。提出了一种基于 LQR 理论的迭代控制器算法,以及一种允许对排速突然变化进行惩罚的变体。控制器采用 Lighthill-Whitham-Richards (LWR) 模型,使用扩展的小区传输模型 (CTM),该模型考虑了容量下降现象,真实再现了拥堵时的交通情况。分析了拟议控制器的各种参数对控制性能的影响。利用交通控制实例测试了所提出的交通控制算法的有效性,并与文献中现有的比例积分(PI)和模型预测控制(MPC)控制器进行了比较。使用 TransModeler 交通微观模拟软件进行了一项案例研究,以测试拟议控制器和现有控制器在现实环境中的可用性,并得出定性结论。结果表明,建议的控制器在这两种情况下都能很好地缓解固定瓶颈造成的拥堵影响。该控制器所需的计算时间也很短,因此适用于实时控制。
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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