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Cooperative platoon control for a mixed traffic flow including human drive vehicles and connected and autonomous vehicles

机译:混合式排班控制,用于混合交通流,包括人力车,联网汽车和自动驾驶汽车

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This study seeks to develop a cooperative platoon control for a platoon mixed with connected and autonomous vehicles (CAVs) and human-drive vehicles (HDVs), aiming to ensure system level traffic flow smoothness and stability as well as individual vehicles' mobility and safety. Specifically, our study integrated/contributed the following technical approaches. First, the car-following behavior of human-drive vehicles is modeled by well accepted Newell car-following models. Accordingly, an online curve matching algorithm is integrated to anticipate the aggregated response delay of the human-drive vehicles using real-time trajectory data. Built upon that, constrained One- or P-step MPC models are developed to control the movement of the CAV platoon upstream or downstream of the HDV platoon so that we can ensure both transient traffic smoothness and asymptotic stability of this sample mixed flow platoon, leveraging the communication and computation technologies equipped on CAVs. Considering the lack of the centralized computation facilities and severe changes of the platoon topology, this study develops a distributed algorithm to solve the MPCs according to the properties of the optimizers, such as solution uniqueness, sequentially feasibility, and nonempty interior point of the solution space. The convergence of the distributed algorithm as well as the stability of the MPC control is proved by both the theoretical analysis and the experimental study. Extensive numerical experiments based on the field data indicate that the distributed algorithm can solve the One-step and P-step MPCs efficiently. The cooperative MPC can dampen traffic oscillation propagation and stabilize the traffic flow more efficiently for the entire mixed flow platoon. Moreover, the cooperative platoon control scheme outperforms the other three control strategies, including the non-cooperative control strategy and a latest CACC strategy in literature. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本研究旨在为混合,自动驾驶汽车(CAV)和人力驱动车辆(HDV)混合的排开发一种协作排控制,旨在确保系统级交通流的平稳性和稳定性以及单个车辆的机动性和安全性。具体来说,我们的研究整合/贡献了以下技术方法。首先,通过公认的纽维尔(Newell)汽车跟随模型来模拟人类驾驶汽车的汽车跟随行为。因此,集成了在线曲线匹配算法,以使用实时轨迹数据来预测人类驾驶车辆的合计响应延迟。在此基础上,开发了受约束的单步或P步MPC模型,以控制CAV排在HDV排上游或下游的运动,以便我们可以确保此示例混合流排的瞬时交通通畅性和渐近稳定性, CAV配备的通信和计算技术。考虑到缺乏集中式计算工具和排拓扑的重大变化,本研究根据优化器的属性,例如解决方案唯一性,顺序可行性和解决方案空间的非空内点,开发了一种分布式算法来解决MPC问题。 。理论分析和实验研究都证明了分布式算法的收敛性以及MPC控制的稳定性。基于现场数据的大量数值实验表明,该分布式算法可以有效地解决单步和多步MPC。协作式MPC可以抑制交通振荡传播,并在整个混合流排中更有效地稳定交通流。此外,协作排控制方案优于其他三种控制策略,包括非合作控制策略和最新的CACC策略。 (C)2018 Elsevier Ltd.保留所有权利。

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