Combined MPC and reinforcement learning for traffic signal control in urban traffic networks

Willemijn Remmerswaal, D. Sun, A. Jamshidnejad, B. Schutter
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引用次数: 2

Abstract

In general, the performance of model-based controllers cannot be guaranteed under model uncertainties or disturbances, while learning-based controllers require an extensively sufficient training process to perform well. These issues especially hold for large-scale nonlinear systems such as urban traffic networks. In this paper, a new framework is proposed by combining model predictive control (MPC) and reinforcement learning (RL) to provide desired performance for urban traffic networks even during the learning process, despite model uncertainties and disturbances. MPC and RL complement each other very well, since MPC provides a sub-optimal and constraint-satisfying control input while RL provides adaptive control laws and can handle uncertainties and disturbances. The resulting combined framework is applied for traffic signal control (TSC) of an urban traffic network. A case study is carried out to compare the performance of the proposed framework and other baseline controllers. Results show that the proposed combined framework outperforms conventional control methods under system uncertainties, in terms of reducing traffic congestion.
结合MPC和强化学习的城市交通网络交通信号控制
一般来说,基于模型的控制器在模型不确定性或干扰下的性能是无法保证的,而基于学习的控制器需要一个足够广泛的训练过程才能表现良好。这些问题尤其适用于城市交通网络等大规模非线性系统。本文提出了一种结合模型预测控制(MPC)和强化学习(RL)的新框架,即使在模型不确定和干扰的情况下,也能在学习过程中为城市交通网络提供理想的性能。MPC和RL可以很好地互补,因为MPC提供了次优和满足约束的控制输入,而RL提供了自适应控制律,可以处理不确定性和干扰。将所得到的组合框架应用于城市交通网络的交通信号控制。进行了一个案例研究,以比较所提出的框架和其他基准控制器的性能。结果表明,在系统不确定性条件下,该组合框架在减少交通拥堵方面优于传统的控制方法。
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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