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Learning-Based Control of Multiple Connected Vehicles in the Mixed Traffic by Adaptive Dynamic Programming ?

机译:自适应动态编程中的混合流量中的多个连接车辆的基于学习控制

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摘要

The emergence of connected and autonomous vehicles (CAVs) has increased opportunities to mitigate the traffic congestion, improve safety and reduce accidents. In this paper, we consider the mixed traffic case with multiple heterogeneous human-driven vehicles and multiple CAVs on freeways. Under mild conditions, the stabilizability of the overall system is proved. With the tracking errors of relative distance and velocity as the states, we design an input-to-state stabilizing controller that solves a linear quadratic regulator problem by means of reinforcement learning and adaptive dynamic programming techniques. The priori knowledge of the vehicle network model is not needed. For a string of connected human-driven and automated vehicles, we give the sufficient conditions to guarantee the general string stability. The proposed learning-based control methodology is validated by means of simulation results.
机译:连接和自治车辆(CAVE)的出现增加了减轻交通拥堵的机会,提高安全性和减少事故。 在本文中,我们考虑使用多个异构人驱动的车辆和高速公路的多个骑士的混合交通箱。 在温和的条件下,证明了整个系统的稳定性。 随着相对距离和速度作为状态的跟踪误差,我们设计了一种输入到状态稳定控制器,通过强化学习和自适应动态规划技术来解决线性二次调节器问题。 不需要先验的车辆网络模型知识。 对于一串连接的人机驱动和自动车辆,我们提供了足够的条件来保证普通串稳定性。 通过仿真结果验证了所提出的基于学习的控制方法。

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